LAND COVER CLASSIFICATION OF FINNISH LAPLAND USING DECISION TREE CLASSIFICATION ALGORITHM. Markus Törmä

Size: px
Start display at page:

Download "LAND COVER CLASSIFICATION OF FINNISH LAPLAND USING DECISION TREE CLASSIFICATION ALGORITHM. Markus Törmä"

Transcription

1 The Photogrammetric Journal of Finland, Vol. 23, No. 2, 2013 Received , Accepted LAND COVER CLASSIFICATION OF FINNISH LAPLAND USING DECISION TREE CLASSIFICATION ALGORITHM Markus Törmä Finnish Environment Institute SYKE Finland ABSTRACT Land cover of Finnish Lapland was classified to 16 land cover classes using optical IRS LISS, Spot XS and MODIS satellite images, ancillary GIS data and decision tree classifier. The aim of this study was to test decision tree classifier for land cover classification and study the effects of its parameters to classification result. In the best case, the overall accuracy was about 68% for all 16 classes when individual images were classified. The overall accuracy was only about 45% when whole mosaic was classified. It seems that the most problematic classes are those with vegetation but which are not forest. 1. INTRODUCTION Food and Agriculture Organization of the United Nations, when planning their Land Cover Classification System (LCCS), have defined land cover as (Di Gregorio and Jansen, 2000) "Land cover is the observed (bio)physical cover on the earth's surface." In other words, land cover should include directly observable vegetation and man-made structures, but quite often bare rock, soil and water are also included. Companion to land cover is land use, which is defined as the arrangements, activities and inputs people undertake in a certain land cover type to produce, change or maintain it (Di Gregorio and Jansen, 2000). It is important to realize that certain land cover can have several different land uses, like forested area has its economical (e.g. forestry, hunting) and recreational uses (e.g. trekking). The main resource controlling primary productivity for terrestrial ecosystems can be defined in terms of land: the area of land available, land quality and the soil moisture characteristics. Changes in land cover and land use affect the global systems (e.g. atmosphere, climate and sea level) or they occur in a localized fashion in enough places to add up to a significant total. Hence, land cover is a geographical feature which may form a reference base for applications ranging from forest and rangeland monitoring, production of statistics, planning, investment, biodiversity, climate change, to desertification control. Nowadays it is realized that it is very important to know how land cover has changed over time, in order to make assessments of the changes one could expect in the future and the impact these changes will have on peoples' lives (Di Gregorio and Jansen, 2000). There have been made many land cover classification in northern part of Boreal forest and Arctic zones, from global classification based on low resolution satellite images (Walker et al., 2002), to regional (Kumpula et al., 2006; Hagner et al., 2005; Reese and Nilsson, 2005) and local classifications based on very high resolution satellite or aerial images (Mikkola and Pellikka, 17

2 2002). An example of land cover classification for a bit specialized purpose is Finnish reindeer pasture inventory (Kumpula et al., 2006). This classification has 17 classes describing vegetation types and non-vegetated areas of Northern Finland. These classes can be combined to form three main classes of reindeer pastures. The classification is based on Landsat ETM+ and TM images, their semi-unsupervised classification, cluster labeling with plot measurements, and postprocessing with ancillary GIS data. The classification accuracies of main reindeer pasture classes were 82-92% depending on class. Another example is Swedish Corine Land Cover classification. Concerning forests, there are seven forest classes, differing according to tree height, canopy closure and species composition. Classification was based on Landsat ETM+ or TM images, maximum likelihood classification and Swedish National Forest Inventory plots for ground truth. The classification accuracies of individual classes were 50-70% depending on class, increasing to about 80% when aggregated to four Corine 3rd level forest classes (Hagner et al., 2005). The Finnish Corine Land Cover 2000 classification was based on automated interpretation of Landsat-7 ETM+ satellite images and data integration with existing digital map data. Map data provided information describing land use and soils, and satellite images provided information about land cover and were used to update map data. Continuous land cover variables like tree height, crown cover and deciduous tree crown cover as well as proportion of vegetation cover, grass- and heathlands were transformed into discrete CLC classes using thresholds of these variables according to class descriptions in CLC nomenclature. There are national version (raster with 25 m pixel size) and European versions (vector with 25 ha minimum mapping unit) available. Unfortunately, the classification accuracy of the national version was quite poor in Northern Finland when compared to Finnish National Forest Inventory plots; the overall accuracy was a bit over 50%. The reasons are that the classes on this area can be quite similar and are not easily separable if only spectral information from satellite image is used (Törmä et al., 2004; Härmä et al., 2005). The aim of this study was to test decision tree classifier for land cover classification and study the effects of its parameters to classification result. More specifically, what are the effects of different options of decision tree classifier like pruning or boosting, and the most important features for classification? The features used in this study consisted of ordinary image channels and index images computed from them, but also features computed from digital elevation model, temporal information in form of MODIS NDVI-feature, forest inventory variables and soil information. Also, interesting question is if images should be classified individually or if it would be better to classify image mosaic of whole area. On the more practical side, the aim was to increase the thematic precision of Finnish Corine Land Cover classification by making more detailed 4th-level national classes, especially concerning tree species. 2. STUDY AREA The study area belongs to the northern part of Boreal forest zone and consists of zones 4c (Forest- Lapland, southern part of study area) and 4d (Mountain-Lapland, northern part of study area) of Finnish forest vegetation zones (Härmä et al., 2005). The size of the study area is about km 2, the largest length in east-west direction is 385 km and height in south-north direction 325 km. Topographic height variations are largest in Finland, varying from about 20 m in River Teno valley to a little over 1300 m in mountains close to Norwegian border. Typically, height is between m (about 67% from area) and the median value of height is 285 m. High mountain areas (height more than 600 m) are quite rare, covering less than 4% from area. 18

3 Forest-Lapland zone belongs to northern part of taiga. Forests are low and sparse; the main tree species are pine and birch. Spruce is quite rare. There are plenty of wetlands, mostly aapa mires. Mountain-Lapland zone consists of scrubby pine and mountain birch forests, bushy vegetation above forest boundary and bare mountain tops. Understory vegetation is a mixture of tundra and taiga vegetation, and bare mountain top areas are characterized by tundra vegetation. There are plenty of wetlands, mostly aapa with some palsa mires (Linkola and Salminen, 1980). According to Corine Land Cover 2000 classification, the most common land cover types are forests (44.6% from area), other natural areas in mineral soil (32.7%), wetlands (14.7%) and water (7.7%), and the rarest are artificial surfaces (0.3%) and agricultural areas (0.04%). 3. SATELLITE IMAGES AND GIS DATA The performed classification was based on optical satellite images, forest inventory variables estimated from satellite images and GIS data like elevation model and information about soil. Biotope maps produced by Metsähallitus were used as reference data. 3.1 IRS and Spot satellite images Table 1 presents the used satellite images and their acquisition dates. The 9 IRS P6 LISS and 5 Spot-4 multispectral images used in this study are part of Finnish IMAGE2006 coverage. The instruments in both satellites have very similar channels; green, red, near-infrared and middleinfrared. Geometric and radiometric corrections were made in order to use images acquired at different times in different atmospheric conditions with different imaging geometries together in common coordinate system. The orthorectification of images was performed by Metria Sweden. Images were resampled to 20 meter pixel using cubic convolution interpolation. Geometric correction was quite successful; the mean residuals of the average residuals of individual images were 7.9 and 7.8 meters in X and Y-direction (Hatunen et al., 2008). Table 1. The used satellite images and their acquisition dates, number of training samples, size of constructed decision trees, number of classes and classification errors of training data. Name Satellite Path / Acquisition Training Size of CL Error% Row date samples tree Halti (HL) IRS 22/ / Hammasjärvi (HJ) Spot 61/ / Inari-Itäraja (II) Spot 62/ / Inarijärvi (IJä) IRS 29/ / Ivalojoki (IJo) Spot 58/ / Kaaresuvanto (KS) IRS 24/ / Lokka (LK) Spot 65/ / Lompolo (LM) IRS 27/ / Muotkatunturi (MT) IRS 27/ / Päälaki (PL) IRS 27/ / Porttipahta (PP) Spot 61/ / Salla (SL) IRS 32/ / Savukoski (SK) IRS 32/ / Sevettijärvi (SJ) IRS 29/ /

4 Figure 1. Mosaic of IRS and Spot satellite images covering vegetation zones 4c and 4d. Unfortunately, there are some holes due to lack of cloud-free satellite images. Clouds and their shadows were detected visually and masked out. Atmospheric correction was done using ATCOR2 of Erdas Imagine. The aim of atmospheric correction was to remove the effects of atmospheric disturbances and noise, and make the corrected images as similar as possible with the IMAGE2000 mosaic. Topographic correction was made using the statisticalempirical correction (Itten and Meyer, 1993) where the effect of topographic variations is determined by computing illumination image using DEM, then computing regression line between image channels and illumination image and correcting image by subtracting the product of illumination image and slope of regression line from original image. Shadow areas were also determined during topographic correction (Hatunen et al, 2008). Figure 1 presents the mosaic covering vegetation zones 4c and 4d. Histogram matching was used to fine-tune pixel values, because there were considerable differences in reflectance values between overlapping images in some cases. Histogram matching was made using stable areas like dense forests and other natural areas on mineral soil. Areas like agricultural areas, wetlands and water were omitted. Mosaics consisting of all channels were resampled to 25 m pixel size in order to be more easily usable with other GIS data. 20

5 Figure 2. The number of weeks that the long-term MODIS NDVI is greater than 0.5. Black and red areas mean short time, yellow and green longer. 3.2 MODIS satellite images MODIS-images from Terra-satellite with 250 m pixel size were used to compute Normalized Difference Vegetation Index (NDVI)-mosaics, which were further processed to form a feature indicating the length of growing season and the fertility of growth place. NDVI is a simple vegetation index which is related to photosynthesis (Sellers, 1985) and it is computed by dividing the difference between near-infrared and red channels with their sum. The daily MODIS images were received from Sodankylä Receiving Station of Finnish Meteorological Institute. Pixel values were transformed to reflectance and normalized to a nadir view with sun zenith angle of 45º. Geometric correction was done using latitude and longitude files. Clouds were detected using their temperatures and the resulting mask was visually checked and manually corrected if needed (Törmä et al., 2007). Time-series describing the phenological development was formed by computing NDVI images from daily MODIS-images from early April to mid-october, for years 2001 (287 individual images), 2005 (304), 2006 (340) and 2007 (230). Weekly mosaics were constructed for each year by selecting the maximum NDVI-value from all daily NDVI-values within that week. Then the mean value for each week was computed from mosaics of different years. Finally, the number of weeks in which the NDVI greater than 0.5 was computed from mean time-series. Figure 2 presents the resulting image; black and red areas mean short time, yellow and green longer. 21

6 3.3 GIS data The Digital Elevation Model produced by Finnish National Land Survey describes the topographic height above sea level. The DEM is interpolated into 25x25 m grid using contour lines and coastline elements of the basic map 1: Contour lines are based on photogrammetric interpretation of aerial photographs (NLS, 2013a). Slope- and aspect-images were computed from DEM and aspect-image was further divided to 19 aspect-classes, one for flat areas and others in 20-degree intervals. Slope- and aspect-images were used in topographic correction and DEM, slope-image and aspect-classes in decision tree classification. The Topographic database produced by National Land Survey is comparable to maps on scale 1: : and covers whole Finland. The database is continuously updated on regional basis using aerial images and stereo mapping. Information concerning soil was used to produce layers of bogs, open rock, boulders, and sand per hectare (NLS, 2013b). The forest inventory estimates produced by Finnish Forest Research Institute Metla were also used to enhance the separability of forest classes. Metla interpreted IMAGE 2006-images for Corine 2006 classification using k-nn estimation methods developed for Finnish National Forest Inventory (Tomppo et al., 2008a). Metla produced pixel-wise estimates of tree height, tree crown cover and deciduous tree crown cover. The reported errors for pixel and forest stand-level are high for this kind of estimation method, the coefficient of variation ranges typically from 40% to 100% for many variables (Tomppo et al., 2008b). But it should be noted that the absolute accuracy is not of interest here, because the forest inventory variables are not used directly to make the classification of forested areas. The relative accuracy is more important, because the decision tree classifier determines the classification rules. Forest boundary mask describes the area where tree growth is very low due to topographic height and environmental conditions. Tree cuttings do not happen within this area (Härmä et al., 2005). 3.4 Reference data The biotope maps produced by Metsähallitus were used as reference data. The aim of biotope mapping is to describe the nature of area; biotopes, state of nature and vegetation cover. Mapping has been performed as interpretation of 1: false color aerial photographs with the aid of available forest and topographic maps, forest fire reports, interviews and ground surveys. The minimum mapping unit is 1 hectare, but there can be smaller units due to cartographic and ecological reasons (Eeronheimo, 2000). Formed classes and their descriptions are presented in table 2 and figure 3. Classes were determined for stands by thresholding the polygon attributes of biotope maps. The polygons larger than 1 km 2 and high variance of near-infrared channel were discarded. Then vector data was rasterized and border pixels of polygons removed. The stands were classified as forest based on tree height (>5m), crown cover (>20%) and tree species information. The coniferous forests were classified according to species (pine or spruce) if the proportion of that species was more than 75%. If the proportion of coniferous trees was more than 75% but tree species proportion was less than 75%, then the stand was classified as coniferous forest. If the proportion of mountain birch was more than 75% then the stand was classified according to that but if the proportion of mountain birch was less but the proportion of all deciduous trees more than 75% then the stand was classified as deciduous forest. Otherwise, forest stands were classified as mixed forest. If the amount of trees was less, in other words height was less than 5 meters or crown cover less than 20%, then the inventory class of biotope map was used to define the class. 22

7 Figure 3. Coverage of reference data. Colors are explained in table 2. Table 2. Classes, their descriptions and the proportion from whole reference data. CC: tree crown cover, H. tree height. Code Description Color Prop.(%) 3111 Deciduous forest (CC>20%, H>5m, prop. of decid.>75%) Light green Mountain birch, over 5m (CC > 20%, H > 5m, prop. of Light green 1.8 mountain birch > 75%) 3121 Coniferous forest (CC>20%, H>5m, prop. of conif.>75%) Dark green Pine forest (CC>20%, H>5m, prop. of pine>75%) Dark green Spruce forest (CC>20%, H>5m, prop. of spruce>75%) Dark green Mixed forest (CC>20%, H>5m) Green Grassland Brown Heathland Reddish brown Transitional woodland, CC < 10% Blue Transitional woodland, CC 10-30%, mineral soil Cyan Transitional woodland, CC 10-30%, peat soil Dark cyan Transitional woodland, CC 10-30%, rocky soil Light cyan Mountain birch, H < 5m Pink Sand and dunes Yellow Open rocks and boulders Grey Open bog Magenta

8 4. CLASSIFICATION Decision trees are classification systems that form classification rules employing a top-down, divide-and-conquer strategy that partitions the given set of objects into smaller and smaller subsets in step with the growth of the tree (Friedl and Brodley, 1997). Decision tree classifier used in this study was See5 by RuleQuest (RuleQuest, 2013a) which constructs decision trees and rule sets automatically using training samples. One of the benefits of this kind of classifier is that variables can be continuous like satellite images or estimation results, or categorical like map layers or previous classification results. Following features were used in classification experiments: Image channels: Atmospherically and topographically corrected green, red, near-infrared and middle-infrared channels of IRS P6 LISS and Spot-4 XS images. Normalized Difference Indices of image channels: Six NDIs computed as ( Ch A Ch B ) / ( Ch A + Ch B ) where Ch A and Ch B are image channels A and B. NDIs were computed so that the channel with longer wavelength was A and shorter B. MODIS NDVI: The number of weeks when the long-term MODIS NDVI is greater than 0.5 for growing season. DEM: Height from sea level, surface slope in degrees and aspect class. Aspect was divided to 19 classes: one for flat land and 18 classes for different directions. Forest variable estimates: Tree height, crown cover and crown cover of deciduous trees estimated by Finnish Forest Research Institute Metla. Soil: Proportions of peat (i.e. open bogs), open rock, boulders and sand per hectare. Forest boundary mask. Datasets for training of classifier and validation of classification result were created using systematic sampling, but different start position and sampling frequency. Table 1 presents the number of training samples for each image. The number of samples for validation was Table 1 presents also the size of constructed decision trees, in other words the number of nonempty leaves in the tree, and the classification errors of training data of images. It should be remembered that this estimate of classification accuracy is optimistically biased giving too optimistic view about the success of classification. Classifications were made using all channels of individual images and whole mosaic. Input files were prepared using Erdas Imagine FIA Tools-macros which have been made by Earth Satellite Corporation for U.S.Geological Survey (Brewer et al., 2005). Classification accuracies were estimated for classifications of whole mosaic and different ways to combine the classifications of individual images: V1: Combination is made according to large number of classes in individual classification (Table 1, column CL), small difference in number of classes in classification result (Table 1, column CL, left number) and reference data (Table 1, column CL, right number), good accuracy of training data (Table 1) and amount of training data (Table 1, image with large amount of training data is preferred). V2: Good accuracy, large number of classes and amount of training data. V3: Amount of training data. V4: Use confidence layers produced by See5 classifier. 24

9 The effect of the parameters of classifier was studied using Spot-4 image 61/207 acquired These parameters were the pruning options of the decision tree and classifier boosting. Pruning means that a large tree is first grown to fit the data closely and is then pruned by removing parts that are predicted to have a relatively high error rate. The default option is global pruning, and if it is turned off then the pruning component is disabled and generally results in larger decision trees. The Pruning CF option affects the way that error rates are estimated and hence the severity of pruning; values smaller than the default 25% cause more of the initial tree to be pruned, while larger values result in less pruning. The Minimum cases pruning option constrains the degree to which the initial tree can fit the data. At each branch point in the decision tree, the stated minimum number of training cases must follow at least two of the branches. Values higher than the default (2 cases) can lead to an initial tree that fits the training data only approximately. In boosting, the idea is to generate several classifiers rather than just one. When a new case is to be classified, each classifier votes for its predicted class and the votes are counted to determine the final class (RuleQuest, 2013b). The idea of boosting is to generate several classifiers rather than just one. When a new case is to be classified, each classifier votes for its predicted class and the votes are counted to determine the final class. There is also a possibility to set out differential misclassification costs for classes, giving a much higher penalty for certain types of mistakes. Then the constructed classifier tries to avoid these mistakes (RuleQuest, 2013b). 5. RESULTS Error matrix was used to compare the classification results and reference data, and accuracy measures overall accuracy, producer s accuracies of individual classes, and user s accuracies of individual classes were computed from error matrix (Lillesand and Kiefer, 1994). 5.1 Effect of parameters of decision tree classifier The overall accuracy of classification of Spot-4 image 61/207 acquired was 86.2% for training set and 78.2% for test set when default parameters were used. Different pruning options did not necessarily increase the classification accuracy and in some cases decreased it. The overall accuracy of training set varied % and test set 77.5%-78.7%. Boosting was tested using 10 decision trees. The overall accuracy of training set increased a lot to 94.5% but the overall accuracy of test set increased much less to 80.3% indicating that the classifier fits well to training data but its ability to generalize, in other words classify the test set, is not increased that much. In the end, it was decided that the increase of classification accuracy was so small that the classification of whole area was made using default parameters, in other words using global pruning, no boosting and no weighting of classes. 5.2 Classification of whole area The sample size for validation was pixels and these were systematically sampled from the classification result and reference data. Table 3 presents the overall accuracies of different alternatives for different class combinations, in other words all 16 classes, 9 Corine level-3 classes or 4 Corine level-2 classes. The results indicate that the best way to classify the area is to classify individual images and then combine these classifications using confidence layers produced by See5. Figure 4 represents this classification result. The differences between other methods to combine individual classification are really small. The worst results were got when images were mosaicked and whole mosaic classified. 25

10 Table 3. The overall accuracies of different alternatives for different class combinations. V* means different ways to combine the classifications of individual images and Mos classification of whole mosaic. N= V1 V2 V3 V4 Mos All classes (16) CLC 3-level (9) CLC 2-level (4) Figure 4. The best classification result. Water areas in black are taken from Corine Land Cover 2000 classification. Figure 5 presents the class-wise classification accuracies for all 16 classes on the left and 9 Corine level-3 classes on the right, blue bar means user's accuracy and red bar producer's accuracy. The best classes are open bogs, open rocks and heathlands, in those cases the class-wise accuracies are about 80%. The worst classes are mountain birch (H<5m) and mixed forest. Mountain birch is mainly mixed with deciduous trees which are usually other kind of birches, and heathland. Coniferous forest and pine forest are mixed with each other quite heavily, but the mixing with spruce forest is quite small. This indicates that the coniferous forests are mixed forests dominated by pines or they are pine forests but the proper species information of stand is missing from reference data. Not surprisingly, mixed forest is mixed with other forest classes. Transitional woodland-classes are not mixed with each other that much, but forest classes, 26

11 heathland and open bog are. Heathland is mixed with quite many classes like deciduous forest, grassland, sand, open rock and open bog. Combination of classes increases the accuracies of forest classes and transitional woodland, meaning that different classes within forest are mainly mixed with each other. Same is true to transitional woodland. See5 decision tree classifier outputs also the importance of feature, in other words the percentage of the training cases that a feature has been used to classify. This gives an indication how useful or necessary a feature is from a point of view of classification. Usually, all features contribute to the classification of an image at least a little. The most notable differences were the images Salla, Lokka and Inari-Itäraja (see Table 1) in a sense that there were more redundant features when classifying these images. These images were also images with least amount of training data. Figure 6 illustrates the importance of different features for classification; horizontal axis represents the individual images and vertical the importance of feature, in other words how often the feature has influenced classification decision. All features have not been plotted due to clarity of plot, but features have been divided to groups: image channels, NDI index images, DEMfeatures, tree-features and soil features by plotting the maximum value of that group. The exceptions are the features proportion of peat soil, forest boundary mask and MODIS NDVI. The importance of different features varies quite a lot between images. The most common occurrences are that the proportion of peat is used in all decisions in all images, and usually the NDI index images are the least important features. DEM-features are usually very important as well as forest boundary, but soil features are less important. The importance of soil and tree features seems to increase northwards. In case of MODIS NDVI, the importance seems to decrease northwards. 6. CONCLUSIONS Land cover classification of Lapland was made using optical IRS and Spot satellite images, GIS data like digital elevation model and soil information, and decision tree classification algorithm. Good feature of decision tree classifier is that it can easily use continuous and categorical variables together, and it is non-parametric classifier so the user does not have to worry about statistical distribution of classes. Figure 5. Classwise accuracies for all 16 classes on the right and 9 Corine level-3 classes on the left. 27

12 Figure 6. The importance of different features. The images (see Table 1 for abbreviations) have been arranged in South-North order; the more southern images are on the left. The importance means how often a feature has influenced the classification decision, 100 means that feature has influenced all decisions and 0 none at all. The different classification options of See5 decision tree classifier were tested. The different pruning options did not increase classification accuracy much and in many cases decreased it. The boosting increased the classification accuracy of training data but the effect to the accuracy of test data was much smaller or nonexistent. This indicates that the classifier adapts to training data and the performance is worse with other data. In the end, it was decided to perform classification using default options: global pruning, no boosting and all classes would have equal weights. Considering the most important features, in other words features which are used more often, it was noticed that usually all features are used for the classification of individual images. The exceptions were the images with small amount of training data. The features dealing with soil information and computed from digital elevation model were most important ones, and the satellite images were surprisingly unimportant. Especially normalized difference index images were used rather seldom. But in order to get better idea about the importance of different types of features, more classification experiments should be carried out. The classification of individual images is preferable to classification of one large image mosaic of whole area. The mosaicking of classification results can be based on confidence values produced by decision tree classifier. In the best case the overall accuracy was about 68% for all 16 classes when individual images were classified. The overall accuracy was only about 45% when whole mosaic was classified. The drawback of this option is that it requires more training data, 28

13 especially if the size of individual image is small, than the classification of mosaic covering larger area. In the end, the more detailed 4th-level classification was not used in the production of Finnish Corine Land Cover 2006 (Törmä et al., 2011). The more general 3rd-level classification which was made by combining 4th-level classes was used above the tree line in northernmost parts of Lapland (CLC2006, 2009). It was thought that the accuracy of 4th-level classification was not good enough, and pine and spruce forest classes should have covered whole Finland. With hindsight, mountain birch class would have been useful because there is need for that information for ecological and biodiversity applications. Nowadays, tree species information is available covering whole Finland provided by Finnish Forest Research Institute Metla (see When the new Corine Land Cover 2012 classification will be made, it should be studied if the Metla information is sufficient or is there need for new classification. Another classification worth studying would be the reindeer pasture inventory data (Kumpula et al., 2006) from Finnish Game and Fisheries Research Institute. The pixel size of images used in this study was 20 m. The decrease of pixel size is already reality; there are many satellites with very-high resolution instruments. Although Corine Land Cover is based on images with 20 m pixel size, there are also available Rapideye images with 5 m pixel size or Spot with 2.5 or 1.5 m pixel size. Therefore, if there is a need for a new classification of Lapland for Corine, then the chosen interpretation method will most likely be segmentation of VHR images and classification of segments using decision tree classifier, incorporating spectral information from VHR images, temporal information from medium resolution images, forest inventory data, and available DEM and soil information. 6. ACKNOWLEDGMENT I would like to thank anonymous reviewers for their valuable comments to make this article better, and the editors Dr. Petri Rönnholm and Prof. Dr. Henrik Haggrén for patience and advice. 7. REFERENCES Brewer, K., Ruefenacht, B., Finco, M., Development and production of a moderate resolution forest type map of the United States, In M. Marsden, M. Downing, and M. Riffe, eds., Workshop Proceedings: Quantitative Techniques for Deriving National Scale Data, July , Westminster, Colorado, USA, USDA Forest Service Publication FHTET-05-12, ( ). CLC2006, CLC2006 Finland - Final technical report, Finnish Environment Institute, ( ). Di Gregorio, A., Jansen, L., Land Cover Classification System (LCCS): Classification Concepts and User Manual, Food and Agriculture Organization of the United Nations 2000, ( ). Eeronheimo, H., Ylä-Lapin luontokartoitus: Biotooppikuviointi ja LUOTI-tietojärjestelmän tiedot, , Metsähallitus, Perä-Pohjolan luontopalvelut, Rovaniemi. (Finnish) 29

14 Friedl, M., Brodley, C., Decision tree classification of land cover from remotely sensed data, Remote Sensing of Environment, Vol. 61, No. 3, pp Hagner, O., Nilsson, M., Reese, H., Egberth, M., Olsson, H., Procedure for classification of forests for CORINE land cover in Sweden, 24th EARSel Symposium on New Strategies for European Remote Sensing, Dubrovnik, Croatia, May 25-27, 2004, Oluic (ed.), pp Hatunen, S. Härmä, P. Kallio, M., Törmä, M., Classification of Natural Areas in Northern Finland Using Remote Sensing Images and Ancillary Data, Remote Sensing for Environmental Monitoring, GIS Applications, and Geology VIII, Proceedings of SPIE Vol. 7110, 71100W. Härmä, P., Teiniranta, R., Törmä, M., Repo, R., Järvenpää, E., Kallio, E., CLC2000 Finland: Final Report, Finnish Environment Institute, Geoinformatics and Land Use Division, May URL: ( ). Itten, K., Meyer, P., Geometric and Radiometric Correction of TM Data of Mountainous Forested Areas, IEEE Transactions on Geoscience and Remote Sensing, vol. 31, no. 4, pp Kumpula, J., Colpaert, A., Tanskanen, A., Anttonen, M., Törmänen, H., Siitari, J., Porolaidunten inventoinnin kehittäminen - Keski-Lapin paliskuntien laiduninventointi vuosina , Finnish Game and Fisheries Research Institute, Research Report 397, Helsinki p. 72 (Kala- ja riistaraportteja No. 397). Lillesand, T., Kiefer, R., Remote Sensing and Image Interpretation, 3rd ed., John Wiley & Sons, p. 750, ISBN Linkola, M., Salminen, P., Suomen luonto ja maisema tuntureita Itämerelle, in P. Havas, ed., Suomen Luonto 1: Luonto toimii - Tunturit, Kirjayhtymä, Helsinki, ISBN , pp Mikkola, J., Pellikka, P., Normalization of bidirectional effects in aerial CIR photographs to improve classification accuracy of boreal and subarctic vegetation for pollen-landscape calibration, Journal of Remote Sensing, Vol. 23, No. 21, pp NLS, 2013a. Elevation model 25 m, ( ). NLS, 2013b. The Topographic database, topographic-database, ( ). Reese, H., Nilsson, M., Classification of mountain vegetation using plot data from the new National Inventory of the Landscape in Sweden (NILS) and Landsat satellite data, 31st International Symposium on Remote Sensing of Environment, May, 2005, Saint Petersburg, Russia, RuleQuest, 2013a. Data Mining Tools See5 and C5.0, ( ). 30

15 RuleQuest, 2013b. See5: An Informal Tutorial, Rulequest win.html, ( ). Sellers, P. J., Canopy reflectance, photosynthesis and transpiration International Journal of Remote Sensing, Vol. 6, pp Tomppo, E., Haakana, M., Katila, M., Peräsaari, J., 2008a. MultiSource National Forest Inventory Methods and Applications, Springer-Verlag, 374 p. (Series: Managing Forest Ecosystems, Vol. 18) ISBN Tomppo, E., Olsson, H., Ståhl, G., Nilsson, M., Hagner, O., Katila, M., 2008b. Combining national forest inventory field plots and remote sensing data for forest databases, Remote Sensing of Environment, Vol. 112, pp Törmä M., Härmä P., Teiniranta R., Repo R., Järvenpää E., Kallio E., The Production of Finnish Corine Land Cover 2000 Classification, In: Altan O. (ed.), XXth ISPRS Congress 832 Technical Commission IV, ISPRS Archives Vol. XXXV Part B4, pp Törmä, M., Härmä, P., Hatunen, S., Teiniranta, R., Kallio, M., Järvenpää, E Change detection for Finnish CORINE land cover classification, Earth Resources and Environmental Remote Sensing/GIS Applications II, Proceedings of SPIE Vol. 8181, SPIE, Bellingham, WA 2011: 81810Q. Törmä, M., Rankinen, K., Härmä, P., Using phenological information derived from MODIS-data to aid nutrient modeling, IGARSS 2007, IEEE International Geoscience and Remote Sensing Symposium, July 2007, Barcelona Spain. 2007, IEEE, pp Walker, D., Gould, W., Maier, H., Raynolds, M., The Circumpolar Arctic Vegetation Map: AVHRR-derived base maps, environmental controls, and integrated mapping procedures, Journal of Remote Sensing, Vol. 23, No. 21, pp

Change detection for Finnish CORINE land cover classification

Change detection for Finnish CORINE land cover classification Change detection for Finnish CORINE land cover classification Markus Törmä, Pekka Härmä, Suvi Hatunen, Riitta Teiniranta, Minna Kallio, Elise Järvenpää Finnish Environment Institute SYKE, Mechelininkatu

More information

KNOWLEDGE-BASED CLASSIFICATION OF LAND COVER FOR THE QUALITY ASSESSEMENT OF GIS DATABASE. Israel -

KNOWLEDGE-BASED CLASSIFICATION OF LAND COVER FOR THE QUALITY ASSESSEMENT OF GIS DATABASE. Israel - KNOWLEDGE-BASED CLASSIFICATION OF LAND COVER FOR THE QUALITY ASSESSEMENT OF GIS DATABASE Ammatzia Peled a,*, Michael Gilichinsky b a University of Haifa, Department of Geography and Environmental Studies,

More information

EVALUATION OF CLASSIFICATION METHODS WITH POLARIMETRIC ALOS/PALSAR DATA

EVALUATION OF CLASSIFICATION METHODS WITH POLARIMETRIC ALOS/PALSAR DATA EVALUATION OF CLASSIFICATION METHODS WITH POLARIMETRIC ALOS/PALSAR DATA Anne LÖNNQVIST a, Yrjö RAUSTE a, Heikki AHOLA a, Matthieu MOLINIER a, and Tuomas HÄME a a VTT Technical Research Centre of Finland,

More information

GLOBAL/CONTINENTAL LAND COVER MAPPING AND MONITORING

GLOBAL/CONTINENTAL LAND COVER MAPPING AND MONITORING GLOBAL/CONTINENTAL LAND COVER MAPPING AND MONITORING Ryutaro Tateishi, Cheng Gang Wen, and Jong-Geol Park Center for Environmental Remote Sensing (CEReS), Chiba University 1-33 Yayoi-cho Inage-ku Chiba

More information

UK Contribution to the European CORINE Land Cover

UK Contribution to the European CORINE Land Cover Centre for Landscape andwww.le.ac.uk/clcr Climate Research CENTRE FOR Landscape and Climate Research UK Contribution to the European CORINE Land Cover Dr Beth Cole Corine Coordination of Information on

More information

SIF_7.1_v2. Indicator. Measurement. What should the measurement tell us?

SIF_7.1_v2. Indicator. Measurement. What should the measurement tell us? Indicator 7 Area of natural and semi-natural habitat Measurement 7.1 Area of natural and semi-natural habitat What should the measurement tell us? Natural habitats are considered the land and water areas

More information

Data Fusion and Multi-Resolution Data

Data Fusion and Multi-Resolution Data Data Fusion and Multi-Resolution Data Nature.com www.museevirtuel-virtualmuseum.ca www.srs.fs.usda.gov Meredith Gartner 3/7/14 Data fusion and multi-resolution data Dark and Bram MAUP and raster data Hilker

More information

LAND USE MAPPING AND MONITORING IN THE NETHERLANDS (LGN5)

LAND USE MAPPING AND MONITORING IN THE NETHERLANDS (LGN5) LAND USE MAPPING AND MONITORING IN THE NETHERLANDS (LGN5) Hazeu, Gerard W. Wageningen University and Research Centre - Alterra, Centre for Geo-Information, The Netherlands; gerard.hazeu@wur.nl ABSTRACT

More information

CadasterENV Sweden Time series in support of a multi-purpose land cover mapping system at national scale

CadasterENV Sweden Time series in support of a multi-purpose land cover mapping system at national scale CadasterENV Sweden Time series in support of a multi-purpose land cover mapping system at national scale Mats Rosengren, Camilla Jönsson ; Metria AB Marc Paganini ; ESA ESRIN Background CadasterENV Sweden

More information

Greening of Arctic: Knowledge and Uncertainties

Greening of Arctic: Knowledge and Uncertainties Greening of Arctic: Knowledge and Uncertainties Jiong Jia, Hesong Wang Chinese Academy of Science jiong@tea.ac.cn Howie Epstein Skip Walker Moscow, January 28, 2008 Global Warming and Its Impact IMPACTS

More information

Land cover/land use mapping and cha Mongolian plateau using remote sens. Title. Author(s) Bagan, Hasi; Yamagata, Yoshiki. Citation Japan.

Land cover/land use mapping and cha Mongolian plateau using remote sens. Title. Author(s) Bagan, Hasi; Yamagata, Yoshiki. Citation Japan. Title Land cover/land use mapping and cha Mongolian plateau using remote sens Author(s) Bagan, Hasi; Yamagata, Yoshiki International Symposium on "The Imp Citation Region Specific Systems". 6 Nove Japan.

More information

Evaluating Urban Vegetation Cover Using LiDAR and High Resolution Imagery

Evaluating Urban Vegetation Cover Using LiDAR and High Resolution Imagery Evaluating Urban Vegetation Cover Using LiDAR and High Resolution Imagery Y.A. Ayad and D. C. Mendez Clarion University of Pennsylvania Abstract One of the key planning factors in urban and built up environments

More information

Application of EO for Environmental Monitoring at the Finnish Environment Institute

Application of EO for Environmental Monitoring at the Finnish Environment Institute Application of EO for Environmental Monitoring at the Finnish Environment Institute Data Processing (CalFin) and Examples of Products Markus Törmä Finnish Environment Institute SYKE markus.torma@ymparisto.fi

More information

Deriving Uncertainty of Area Estimates from Satellite Imagery using Fuzzy Land-cover Classification

Deriving Uncertainty of Area Estimates from Satellite Imagery using Fuzzy Land-cover Classification International Journal of Information and Computation Technology. ISSN 0974-2239 Volume 3, Number 10 (2013), pp. 1059-1066 International Research Publications House http://www. irphouse.com /ijict.htm Deriving

More information

AGOG 485/585 /APLN 533 Spring Lecture 5: MODIS land cover product (MCD12Q1). Additional sources of MODIS data

AGOG 485/585 /APLN 533 Spring Lecture 5: MODIS land cover product (MCD12Q1). Additional sources of MODIS data AGOG 485/585 /APLN 533 Spring 2019 Lecture 5: MODIS land cover product (MCD12Q1). Additional sources of MODIS data Outline Current status of land cover products Overview of the MCD12Q1 algorithm Mapping

More information

Possible links between a sample of VHR images and LUCAS

Possible links between a sample of VHR images and LUCAS EUROPEAN COMMISSION EUROSTAT Directorate E: Sectoral and regional statistics Unit E-1: Farms, agro-environment and rural development CPSA/LCU/08 Original: EN (available in EN) WORKING PARTY "LAND COVER/USE

More information

7.1 INTRODUCTION 7.2 OBJECTIVE

7.1 INTRODUCTION 7.2 OBJECTIVE 7 LAND USE AND LAND COVER 7.1 INTRODUCTION The knowledge of land use and land cover is important for many planning and management activities as it is considered as an essential element for modeling and

More information

Digital Change Detection Using Remotely Sensed Data for Monitoring Green Space Destruction in Tabriz

Digital Change Detection Using Remotely Sensed Data for Monitoring Green Space Destruction in Tabriz Int. J. Environ. Res. 1 (1): 35-41, Winter 2007 ISSN:1735-6865 Graduate Faculty of Environment University of Tehran Digital Change Detection Using Remotely Sensed Data for Monitoring Green Space Destruction

More information

Vegetation Change Detection of Central part of Nepal using Landsat TM

Vegetation Change Detection of Central part of Nepal using Landsat TM Vegetation Change Detection of Central part of Nepal using Landsat TM Kalpana G. Bastakoti Department of Geography, University of Calgary, kalpanagb@gmail.com Abstract This paper presents a study of detecting

More information

DEVELOPMENT OF DIGITAL CARTOGRAPHIC DATABASE FOR MANAGING THE ENVIRONMENT AND NATURAL RESOURCES IN THE REPUBLIC OF SERBIA

DEVELOPMENT OF DIGITAL CARTOGRAPHIC DATABASE FOR MANAGING THE ENVIRONMENT AND NATURAL RESOURCES IN THE REPUBLIC OF SERBIA DEVELOPMENT OF DIGITAL CARTOGRAPHIC BASE FOR MANAGING THE ENVIRONMENT AND NATURAL RESOURCES IN THE REPUBLIC OF SERBIA Dragutin Protic, Ivan Nestorov Institute for Geodesy, Faculty of Civil Engineering,

More information

Remote Sensing Based Inversion of Gap Fraction for Determination of Leaf Area Index. Alemu Gonsamo 1 and Petri Pellikka 1

Remote Sensing Based Inversion of Gap Fraction for Determination of Leaf Area Index. Alemu Gonsamo 1 and Petri Pellikka 1 Remote Sensing Based Inversion of Gap Fraction for Determination of Leaf Area Index Alemu Gonsamo and Petri Pellikka Department of Geography, University of Helsinki, P.O. Box, FIN- Helsinki, Finland; +-()--;

More information

Landuse and Landcover change analysis in Selaiyur village, Tambaram taluk, Chennai

Landuse and Landcover change analysis in Selaiyur village, Tambaram taluk, Chennai Landuse and Landcover change analysis in Selaiyur village, Tambaram taluk, Chennai K. Ilayaraja Department of Civil Engineering BIST, Bharath University Selaiyur, Chennai 73 ABSTRACT The synoptic picture

More information

MAPPING LAND USE/ LAND COVER OF WEST GODAVARI DISTRICT USING NDVI TECHNIQUES AND GIS Anusha. B 1, Sridhar. P 2

MAPPING LAND USE/ LAND COVER OF WEST GODAVARI DISTRICT USING NDVI TECHNIQUES AND GIS Anusha. B 1, Sridhar. P 2 MAPPING LAND USE/ LAND COVER OF WEST GODAVARI DISTRICT USING NDVI TECHNIQUES AND GIS Anusha. B 1, Sridhar. P 2 1 M. Tech. Student, Department of Geoinformatics, SVECW, Bhimavaram, A.P, India 2 Assistant

More information

AN INTEGRATED METHOD FOR FOREST CANOPY COVER MAPPING USING LANDSAT ETM+ IMAGERY INTRODUCTION

AN INTEGRATED METHOD FOR FOREST CANOPY COVER MAPPING USING LANDSAT ETM+ IMAGERY INTRODUCTION AN INTEGRATED METHOD FOR FOREST CANOPY COVER MAPPING USING LANDSAT ETM+ IMAGERY Zhongwu Wang, Remote Sensing Analyst Andrew Brenner, General Manager Sanborn Map Company 455 E. Eisenhower Parkway, Suite

More information

CORINE LAND COVER CROATIA

CORINE LAND COVER CROATIA CORINE LAND COVER CROATIA INTRO Primary condition in making decisions directed to land cover and natural resources management is presence of knowledge and high quality information about biosphere and its

More information

GEOGRAPHICAL DATABASES FOR THE USE OF RADIO NETWORK PLANNING

GEOGRAPHICAL DATABASES FOR THE USE OF RADIO NETWORK PLANNING GEOGRAPHICAL DATABASES FOR THE USE OF RADIO NETWORK PLANNING Tommi Turkka and Jaana Mäkelä Geodata Oy / Sanoma WSOY Corporation Konalantie 6-8 B FIN-00370 Helsinki tommi.turkka@geodata.fi jaana.makela@geodata.fi

More information

Quality and Coverage of Data Sources

Quality and Coverage of Data Sources Quality and Coverage of Data Sources Objectives Selecting an appropriate source for each item of information to be stored in the GIS database is very important for GIS Data Capture. Selection of quality

More information

LAND COVER CATEGORY DEFINITION BY IMAGE INVARIANTS FOR AUTOMATED CLASSIFICATION

LAND COVER CATEGORY DEFINITION BY IMAGE INVARIANTS FOR AUTOMATED CLASSIFICATION LAND COVER CATEGORY DEFINITION BY IMAGE INVARIANTS FOR AUTOMATED CLASSIFICATION Nguyen Dinh Duong Environmental Remote Sensing Laboratory Institute of Geography Hoang Quoc Viet Rd., Cau Giay, Hanoi, Vietnam

More information

SIMULATION OF SPACEBORNE MICROWAVE RADIOMETER MEASUREMENTS OF SNOW COVER FROM IN-SITU DATA AND EMISSION MODELS

SIMULATION OF SPACEBORNE MICROWAVE RADIOMETER MEASUREMENTS OF SNOW COVER FROM IN-SITU DATA AND EMISSION MODELS SIMULATION OF SPACEBORNE MICROWAVE RADIOMETER MEASUREMENTS OF SNOW COVER FROM IN-SITU DATA AND EMISSION MODELS Anna Kontu 1 and Jouni Pulliainen 1 1. Finnish Meteorological Institute, Arctic Research,

More information

IMPROVING REMOTE SENSING-DERIVED LAND USE/LAND COVER CLASSIFICATION WITH THE AID OF SPATIAL INFORMATION

IMPROVING REMOTE SENSING-DERIVED LAND USE/LAND COVER CLASSIFICATION WITH THE AID OF SPATIAL INFORMATION IMPROVING REMOTE SENSING-DERIVED LAND USE/LAND COVER CLASSIFICATION WITH THE AID OF SPATIAL INFORMATION Yingchun Zhou1, Sunil Narumalani1, Dennis E. Jelinski2 Department of Geography, University of Nebraska,

More information

Environmental Impact Assessment Land Use and Land Cover CISMHE 7.1 INTRODUCTION

Environmental Impact Assessment Land Use and Land Cover CISMHE 7.1 INTRODUCTION 7 LAND USE AND LAND COVER 7.1 INTRODUCTION The knowledge of land use and land cover is important for many planning and management activities as it is considered an essential element for modeling and understanding

More information

Capabilities and Limitations of Land Cover and Satellite Data for Biomass Estimation in African Ecosystems Valerio Avitabile

Capabilities and Limitations of Land Cover and Satellite Data for Biomass Estimation in African Ecosystems Valerio Avitabile Capabilities and Limitations of Land Cover and Satellite Data for Biomass Estimation in African Ecosystems Valerio Avitabile Kaniyo Pabidi - Budongo Forest Reserve November 13th, 2008 Outline of the presentation

More information

SATELLITE REMOTE SENSING

SATELLITE REMOTE SENSING SATELLITE REMOTE SENSING of NATURAL RESOURCES David L. Verbyla LEWIS PUBLISHERS Boca Raton New York London Tokyo Contents CHAPTER 1. SATELLITE IMAGES 1 Raster Image Data 2 Remote Sensing Detectors 2 Analog

More information

The Wide Dynamic Range Vegetation Index and its Potential Utility for Gap Analysis

The Wide Dynamic Range Vegetation Index and its Potential Utility for Gap Analysis Summary StatMod provides an easy-to-use and inexpensive tool for spatially applying the classification rules generated from the CT algorithm in S-PLUS. While the focus of this article was to use StatMod

More information

Image Interpretation and Landscape Analysis: The Verka River Valley

Image Interpretation and Landscape Analysis: The Verka River Valley Image Interpretation and Landscape Analysis: The Verka River Valley Terms of reference Background The local government for the region of Scania has a need for improving the knowledge about current vegetation

More information

THE USE OF MERIS SPECTROMETER DATA IN SEASONAL SNOW MAPPING

THE USE OF MERIS SPECTROMETER DATA IN SEASONAL SNOW MAPPING THE USE OF MERIS SPECTROMETER DATA IN SEASONAL SNOW MAPPING Miia Eskelinen, Sari Metsämäki The Finnish Environment Institute Geoinformatics and Land use division P.O.Box 140, FI 00251 Helsinki, Finland

More information

Geospatial technology for land cover analysis

Geospatial technology for land cover analysis Home Articles Application Environment & Climate Conservation & monitoring Published in : Middle East & Africa Geospatial Digest November 2013 Lemenkova Polina Charles University in Prague, Faculty of Science,

More information

IMAGE CLASSIFICATION TOOL FOR LAND USE / LAND COVER ANALYSIS: A COMPARATIVE STUDY OF MAXIMUM LIKELIHOOD AND MINIMUM DISTANCE METHOD

IMAGE CLASSIFICATION TOOL FOR LAND USE / LAND COVER ANALYSIS: A COMPARATIVE STUDY OF MAXIMUM LIKELIHOOD AND MINIMUM DISTANCE METHOD IMAGE CLASSIFICATION TOOL FOR LAND USE / LAND COVER ANALYSIS: A COMPARATIVE STUDY OF MAXIMUM LIKELIHOOD AND MINIMUM DISTANCE METHOD Manisha B. Patil 1, Chitra G. Desai 2 and * Bhavana N. Umrikar 3 1 Department

More information

Classification of High Spatial Resolution Remote Sensing Images Based on Decision Fusion

Classification of High Spatial Resolution Remote Sensing Images Based on Decision Fusion Journal of Advances in Information Technology Vol. 8, No. 1, February 2017 Classification of High Spatial Resolution Remote Sensing Images Based on Decision Fusion Guizhou Wang Institute of Remote Sensing

More information

Monitoring Vegetation Growth of Spectrally Landsat Satellite Imagery ETM+ 7 & TM 5 for Western Region of Iraq by Using Remote Sensing Techniques.

Monitoring Vegetation Growth of Spectrally Landsat Satellite Imagery ETM+ 7 & TM 5 for Western Region of Iraq by Using Remote Sensing Techniques. Monitoring Vegetation Growth of Spectrally Landsat Satellite Imagery ETM+ 7 & TM 5 for Western Region of Iraq by Using Remote Sensing Techniques. Fouad K. Mashee, Ahmed A. Zaeen & Gheidaa S. Hadi Remote

More information

NR402 GIS Applications in Natural Resources. Lesson 9: Scale and Accuracy

NR402 GIS Applications in Natural Resources. Lesson 9: Scale and Accuracy NR402 GIS Applications in Natural Resources Lesson 9: Scale and Accuracy 1 Map scale Map scale specifies the amount of reduction between the real world and the map The map scale specifies how much the

More information

DAMAGE DETECTION OF THE 2008 SICHUAN, CHINA EARTHQUAKE FROM ALOS OPTICAL IMAGES

DAMAGE DETECTION OF THE 2008 SICHUAN, CHINA EARTHQUAKE FROM ALOS OPTICAL IMAGES DAMAGE DETECTION OF THE 2008 SICHUAN, CHINA EARTHQUAKE FROM ALOS OPTICAL IMAGES Wen Liu, Fumio Yamazaki Department of Urban Environment Systems, Graduate School of Engineering, Chiba University, 1-33,

More information

Spatial Process VS. Non-spatial Process. Landscape Process

Spatial Process VS. Non-spatial Process. Landscape Process Spatial Process VS. Non-spatial Process A process is non-spatial if it is NOT a function of spatial pattern = A process is spatial if it is a function of spatial pattern Landscape Process If there is no

More information

Fundamentals of Remote Sensing

Fundamentals of Remote Sensing Division of Spatial Information Science Graduate School Life and Environment Sciences University of Tsukuba Fundamentals of Remote Sensing Prof. Dr. Yuji Murayama Surantha Dassanayake 10/6/2010 1 Fundamentals

More information

Generation and analysis of Digital Elevation Model (DEM) using Worldview-2 stereo-pair images of Gurgaon district: A geospatial approach

Generation and analysis of Digital Elevation Model (DEM) using Worldview-2 stereo-pair images of Gurgaon district: A geospatial approach 186 Generation and analysis of Digital Elevation Model (DEM) using Worldview-2 stereo-pair images of Gurgaon district: A geospatial approach Arsad Khan 1, Sultan Singh 2 and Kaptan Singh 2 1 Department

More information

Arctic Tundra land cover and biomass change on the Central Yamal peninsula, Russia

Arctic Tundra land cover and biomass change on the Central Yamal peninsula, Russia Arctic Tundra land cover and biomass change on the Central Yamal peninsula, Russia ArcticBiomass Workshop, 20-23 Ocrobertember 2015, Svalbard Kumpula, T.*, Verdonen, M*., Macias-Fauria, M***, Skarin A.****

More information

SUPPORTING INFORMATION. Ecological restoration and its effects on the

SUPPORTING INFORMATION. Ecological restoration and its effects on the SUPPORTING INFORMATION Ecological restoration and its effects on the regional climate: the case in the source region of the Yellow River, China Zhouyuan Li, Xuehua Liu,* Tianlin Niu, De Kejia, Qingping

More information

1. Introduction. S.S. Patil 1, Sachidananda 1, U.B. Angadi 2, and D.K. Prabhuraj 3

1. Introduction. S.S. Patil 1, Sachidananda 1, U.B. Angadi 2, and D.K. Prabhuraj 3 Cloud Publications International Journal of Advanced Remote Sensing and GIS 2014, Volume 3, Issue 1, pp. 525-531, Article ID Tech-249 ISSN 2320-0243 Research Article Open Access Machine Learning Technique

More information

III. Publication III. c 2004 Authors

III. Publication III. c 2004 Authors III Publication III J-P. Kärnä, J. Pulliainen, K. Luojus, N. Patrikainen, M. Hallikainen, S. Metsämäki, and M. Huttunen. 2004. Mapping of snow covered area using combined SAR and optical data. In: Proceedings

More information

USING GIS CARTOGRAPHIC MODELING TO ANALYSIS SPATIAL DISTRIBUTION OF LANDSLIDE SENSITIVE AREAS IN YANGMINGSHAN NATIONAL PARK, TAIWAN

USING GIS CARTOGRAPHIC MODELING TO ANALYSIS SPATIAL DISTRIBUTION OF LANDSLIDE SENSITIVE AREAS IN YANGMINGSHAN NATIONAL PARK, TAIWAN CO-145 USING GIS CARTOGRAPHIC MODELING TO ANALYSIS SPATIAL DISTRIBUTION OF LANDSLIDE SENSITIVE AREAS IN YANGMINGSHAN NATIONAL PARK, TAIWAN DING Y.C. Chinese Culture University., TAIPEI, TAIWAN, PROVINCE

More information

AN INVESTIGATION OF AUTOMATIC CHANGE DETECTION FOR TOPOGRAPHIC MAP UPDATING

AN INVESTIGATION OF AUTOMATIC CHANGE DETECTION FOR TOPOGRAPHIC MAP UPDATING AN INVESTIGATION OF AUTOMATIC CHANGE DETECTION FOR TOPOGRAPHIC MAP UPDATING Patricia Duncan 1 & Julian Smit 2 1 The Chief Directorate: National Geospatial Information, Department of Rural Development and

More information

ACCURACY ASSESSMENT OF ASTER GLOBAL DEM OVER TURKEY

ACCURACY ASSESSMENT OF ASTER GLOBAL DEM OVER TURKEY ACCURACY ASSESSMENT OF ASTER GLOBAL DEM OVER TURKEY E. Sertel a a ITU, Civil Engineering Faculty, Geomatic Engineering Department, 34469 Maslak Istanbul, Turkey sertele@itu.edu.tr Commission IV, WG IV/6

More information

Spanish national plan for land observation: new collaborative production system in Europe

Spanish national plan for land observation: new collaborative production system in Europe ADVANCE UNEDITED VERSION UNITED NATIONS E/CONF.103/5/Add.1 Economic and Social Affairs 9 July 2013 Tenth United Nations Regional Cartographic Conference for the Americas New York, 19-23, August 2013 Item

More information

1. Introduction. Jai Kumar, Paras Talwar and Krishna A.P. Department of Remote Sensing, Birla Institute of Technology, Ranchi, Jharkhand, India

1. Introduction. Jai Kumar, Paras Talwar and Krishna A.P. Department of Remote Sensing, Birla Institute of Technology, Ranchi, Jharkhand, India Cloud Publications International Journal of Advanced Remote Sensing and GIS 2015, Volume 4, Issue 1, pp. 1026-1032, Article ID Tech-393 ISSN 2320-0243 Research Article Open Access Forest Canopy Density

More information

UNCERTAINTY EVALUATION OF MILITARY TERRAIN ANALYSIS RESULTS BY SIMULATION AND VISUALIZATION

UNCERTAINTY EVALUATION OF MILITARY TERRAIN ANALYSIS RESULTS BY SIMULATION AND VISUALIZATION Geoinformatics 2004 Proc. 12th Int. Conf. on Geoinformatics Geospatial Information Research: Bridging the Pacific and Atlantic University of Gävle, Sweden, 7-9 June 2004 UNCERTAINTY EVALUATION OF MILITARY

More information

Land cover classification methods. Ned Horning

Land cover classification methods. Ned Horning Land cover classification methods Ned Horning Version: 1.0 Creation Date: 2004-01-01 Revision Date: 2004-01-01 License: This document is licensed under a Creative Commons Attribution-Share Alike 3.0 Unported

More information

A Method to Improve the Accuracy of Remote Sensing Data Classification by Exploiting the Multi-Scale Properties in the Scene

A Method to Improve the Accuracy of Remote Sensing Data Classification by Exploiting the Multi-Scale Properties in the Scene Proceedings of the 8th International Symposium on Spatial Accuracy Assessment in Natural Resources and Environmental Sciences Shanghai, P. R. China, June 25-27, 2008, pp. 183-188 A Method to Improve the

More information

Rating of soil heterogeneity using by satellite images

Rating of soil heterogeneity using by satellite images Rating of soil heterogeneity using by satellite images JAROSLAV NOVAK, VOJTECH LUKAS, JAN KREN Department of Agrosystems and Bioclimatology Mendel University in Brno Zemedelska 1, 613 00 Brno CZECH REPUBLIC

More information

Land cover classification methods

Land cover classification methods Land cover classification methods This document provides an overview of land cover classification using remotely sensed data. We will describe different options for conducting land cover classification

More information

Land Cover Classification Over Penang Island, Malaysia Using SPOT Data

Land Cover Classification Over Penang Island, Malaysia Using SPOT Data Land Cover Classification Over Penang Island, Malaysia Using SPOT Data School of Physics, Universiti Sains Malaysia, 11800 Penang, Malaysia. Tel: +604-6533663, Fax: +604-6579150 E-mail: hslim@usm.my, mjafri@usm.my,

More information

Principals and Elements of Image Interpretation

Principals and Elements of Image Interpretation Principals and Elements of Image Interpretation 1 Fundamentals of Photographic Interpretation Observation and inference depend on interpreter s training, experience, bias, natural visual and analytical

More information

Evaluating Wildlife Habitats

Evaluating Wildlife Habitats Lesson C5 4 Evaluating Wildlife Habitats Unit C. Animal Wildlife Management Problem Area 5. Game Animals Management Lesson 4. Evaluating Wildlife Habitats New Mexico Content Standard: Pathway Strand: Natural

More information

Pan-Arctic, Regional and Local Land Cover Products

Pan-Arctic, Regional and Local Land Cover Products Pan-Arctic, Regional and Local Land Cover Products Marcel Urban (1), Stefan Pöcking (1), Sören Hese (1) & Christiane Schmullius (1) (1) Friedrich-Schiller University Jena, Department of Earth Observation,

More information

Overview on Land Cover and Land Use Monitoring in Russia

Overview on Land Cover and Land Use Monitoring in Russia Russian Academy of Sciences Space Research Institute Overview on Land Cover and Land Use Monitoring in Russia Sergey Bartalev Joint NASA LCLUC Science Team Meeting and GOFC-GOLD/NERIN, NEESPI Workshop

More information

PROANA A USEFUL SOFTWARE FOR TERRAIN ANALYSIS AND GEOENVIRONMENTAL APPLICATIONS STUDY CASE ON THE GEODYNAMIC EVOLUTION OF ARGOLIS PENINSULA, GREECE.

PROANA A USEFUL SOFTWARE FOR TERRAIN ANALYSIS AND GEOENVIRONMENTAL APPLICATIONS STUDY CASE ON THE GEODYNAMIC EVOLUTION OF ARGOLIS PENINSULA, GREECE. PROANA A USEFUL SOFTWARE FOR TERRAIN ANALYSIS AND GEOENVIRONMENTAL APPLICATIONS STUDY CASE ON THE GEODYNAMIC EVOLUTION OF ARGOLIS PENINSULA, GREECE. Spyridoula Vassilopoulou * Institute of Cartography

More information

8 Vedlegg 8.1 English summary

8 Vedlegg 8.1 English summary 8 Vedlegg 8.1 English summary Paper presented at 28th International Symposium on Remote Sensing of Environment. The Use of Satellite Data for Mapping and Monitoring of Biological Diversity Ivar J. Jansen

More information

Overview of Remote Sensing in Natural Resources Mapping

Overview of Remote Sensing in Natural Resources Mapping Overview of Remote Sensing in Natural Resources Mapping What is remote sensing? Why remote sensing? Examples of remote sensing in natural resources mapping Class goals What is Remote Sensing A remote sensing

More information

DEPENDENCE OF URBAN TEMPERATURE ELEVATION ON LAND COVER TYPES. Ping CHEN, Soo Chin LIEW and Leong Keong KWOH

DEPENDENCE OF URBAN TEMPERATURE ELEVATION ON LAND COVER TYPES. Ping CHEN, Soo Chin LIEW and Leong Keong KWOH DEPENDENCE OF URBAN TEMPERATURE ELEVATION ON LAND COVER TYPES Ping CHEN, Soo Chin LIEW and Leong Keong KWOH Centre for Remote Imaging, Sensing and Processing, National University of Singapore, Lower Kent

More information

BGD. Biogeosciences Discussions

BGD. Biogeosciences Discussions Biogeosciences Discuss., www.biogeosciences-discuss.net/8/c1604/2011/ Author(s) 2011. This work is distributed under the Creative Commons Attribute 3.0 License. Biogeosciences Discussions comment on Analysis

More information

o 3000 Hannover, Fed. Rep. of Germany

o 3000 Hannover, Fed. Rep. of Germany 1. Abstract The use of SPOT and CIR aerial photography for urban planning P. Lohmann, G. Altrogge Institute for Photogrammetry and Engineering Surveys University of Hannover, Nienburger Strasse 1 o 3000

More information

A Case Study of Using Remote Sensing Data and GIS for Land Management; Catalca Region

A Case Study of Using Remote Sensing Data and GIS for Land Management; Catalca Region A Case Study of Using Remote Sensing Data and GIS for Land Management; Catalca Region Dr. Nebiye MUSAOGLU, Dr. Sinasi KAYA, Dr. Dursun Z. SEKER and Dr. Cigdem GOKSEL, Turkey Key words: Satellite data,

More information

1 Introduction: 2 Data Processing:

1 Introduction: 2 Data Processing: Darren Janzen University of Northern British Columbia Student Number 230001222 Major: Forestry Minor: GIS/Remote Sensing Produced for: Geography 413 (Advanced GIS) Fall Semester Creation Date: November

More information

Abstract. TECHNOFAME- A Journal of Multidisciplinary Advance Research. Vol.2 No. 2, (2013) Received: Feb.2013; Accepted Oct.

Abstract. TECHNOFAME- A Journal of Multidisciplinary Advance Research. Vol.2 No. 2, (2013) Received: Feb.2013; Accepted Oct. Vol.2 No. 2, 83-87 (2013) Received: Feb.2013; Accepted Oct. 2013 Landuse Pattern Analysis Using Remote Sensing: A Case Study of Morar Block, of Gwalior District, M.P. Subhash Thakur 1 Akhilesh Singh 2

More information

USING MERIS FOR MOUNTAIN VEGETATION MAPPING AND MONITORING IN SWEDEN

USING MERIS FOR MOUNTAIN VEGETATION MAPPING AND MONITORING IN SWEDEN USING MERIS FOR MOUNTAIN VEGETATION MAPPING AND MONITORING IN SWEDEN Heather Reese 1, Mats Nilsson 1, Håkan Olsson 1 1 Department of Forest Resource Management, Swedish University of Agricultural Sciences,

More information

Coastal Landuse Change Detection Using Remote Sensing Technique: Case Study in Banten Bay, West Java Island, Indonesia

Coastal Landuse Change Detection Using Remote Sensing Technique: Case Study in Banten Bay, West Java Island, Indonesia Kasetsart J. (Nat. Sci.) 39 : 159-164 (2005) Coastal Landuse Change Detection Using Remote Sensing Technique: Case Study in Banten Bay, West Java Island, Indonesia Puvadol Doydee ABSTRACT Various forms

More information

Supplementary material: Methodological annex

Supplementary material: Methodological annex 1 Supplementary material: Methodological annex Correcting the spatial representation bias: the grid sample approach Our land-use time series used non-ideal data sources, which differed in spatial and thematic

More information

VISUALIZATION URBAN SPATIAL GROWTH OF DESERT CITIES FROM SATELLITE IMAGERY: A PRELIMINARY STUDY

VISUALIZATION URBAN SPATIAL GROWTH OF DESERT CITIES FROM SATELLITE IMAGERY: A PRELIMINARY STUDY CO-439 VISUALIZATION URBAN SPATIAL GROWTH OF DESERT CITIES FROM SATELLITE IMAGERY: A PRELIMINARY STUDY YANG X. Florida State University, TALLAHASSEE, FLORIDA, UNITED STATES ABSTRACT Desert cities, particularly

More information

FOREST CHANGE DETECTION BY MEANS OF REMOTE SENSING TECHNIQUES FROM THE EU PROJECT CORINE LAND COVER

FOREST CHANGE DETECTION BY MEANS OF REMOTE SENSING TECHNIQUES FROM THE EU PROJECT CORINE LAND COVER FORESTRY IDEAS, 2010, vol. 16, 1 (39) FOREST CHANGE DETECTION BY MEANS OF REMOTE SENSING TECHNIQUES FROM THE EU PROJECT CORINE LAND COVER Youlin Tepeliev and Radka Koleva* University of Forestry, Faculty

More information

Lecture Topics. 1. Vegetation Indices 2. Global NDVI data sets 3. Analysis of temporal NDVI trends

Lecture Topics. 1. Vegetation Indices 2. Global NDVI data sets 3. Analysis of temporal NDVI trends Lecture Topics 1. Vegetation Indices 2. Global NDVI data sets 3. Analysis of temporal NDVI trends Why use NDVI? Normalize external effects of sun angle, viewing angle, and atmospheric effects Normalize

More information

A Basic Introduction to Geographic Information Systems (GIS) ~~~~~~~~~~

A Basic Introduction to Geographic Information Systems (GIS) ~~~~~~~~~~ A Basic Introduction to Geographic Information Systems (GIS) ~~~~~~~~~~ Rev. Ronald J. Wasowski, C.S.C. Associate Professor of Environmental Science University of Portland Portland, Oregon 3 September

More information

Application and impacts of the GlobeLand30 land cover dataset on the Beijing Climate Center Climate Model

Application and impacts of the GlobeLand30 land cover dataset on the Beijing Climate Center Climate Model IOP Conference Series: Earth and Environmental Science PAPER OPEN ACCESS Application and impacts of the GlobeLand30 land cover dataset on the Beijing Climate Center Climate Model To cite this article:

More information

Preparation of LULC map from GE images for GIS based Urban Hydrological Modeling

Preparation of LULC map from GE images for GIS based Urban Hydrological Modeling International Conference on Modeling Tools for Sustainable Water Resources Management Department of Civil Engineering, Indian Institute of Technology Hyderabad: 28-29 December 2014 Abstract Preparation

More information

EO Information Services. Assessing Vulnerability in the metropolitan area of Rio de Janeiro (Floods & Landslides) Project

EO Information Services. Assessing Vulnerability in the metropolitan area of Rio de Janeiro (Floods & Landslides) Project EO Information Services in support of Assessing Vulnerability in the metropolitan area of Rio de Janeiro (Floods & Landslides) Project Ricardo Armas, Critical Software SA Haris Kontoes, ISARS NOA World

More information

Temporal and spatial approaches for land cover classification.

Temporal and spatial approaches for land cover classification. Temporal and spatial approaches for land cover classification. Ryabukhin Sergey sergeyryabukhin@gmail.com Abstract. This paper describes solution for Time Series Land Cover Classification Challenge (TiSeLaC).

More information

UNCERTAINTY AND ERRORS IN GIS

UNCERTAINTY AND ERRORS IN GIS Christos G. Karydas,, Dr. xkarydas@agro.auth.gr http://users.auth.gr/xkarydas Lab of Remote Sensing and GIS Director: Prof. N. Silleos School of Agriculture Aristotle University of Thessaloniki, GR 1 UNCERTAINTY

More information

Impacts of sensor noise on land cover classifications: sensitivity analysis using simulated noise

Impacts of sensor noise on land cover classifications: sensitivity analysis using simulated noise Impacts of sensor noise on land cover classifications: sensitivity analysis using simulated noise Scott Mitchell 1 and Tarmo Remmel 2 1 Geomatics & Landscape Ecology Research Lab, Carleton University,

More information

LANDSAF SNOW COVER MAPPING USING MSG/SEVIRI DATA

LANDSAF SNOW COVER MAPPING USING MSG/SEVIRI DATA LANDSAF SNOW COVER MAPPING USING MSG/SEVIRI DATA Niilo Siljamo and Otto Hyvärinen Finnish Meteorological Institute, Erik Palménin aukio 1, P.O.Box 503, FI-00101 Helsinki, Finland Abstract Land Surface

More information

ISO Land Cover for Agricultural Regions of Canada, Circa 2000 Data Product Specification. Revision: A

ISO Land Cover for Agricultural Regions of Canada, Circa 2000 Data Product Specification. Revision: A ISO 19131 Land Cover for Agricultural Regions of Canada, Circa 2000 Data Product Specification Revision: A Data specification: Land Cover for Agricultural Regions, circa 2000 Table of Contents 1. OVERVIEW...

More information

INFLUENCE OF SNOW COVER RECESSION ON AN ALPINE ECOLOGICAL SYSTEM *)

INFLUENCE OF SNOW COVER RECESSION ON AN ALPINE ECOLOGICAL SYSTEM *) INFLUENCE OF SNOW COVER RECESSION ON AN ALPINE ECOLOGICAL SYSTEM *) Markus Keller and Klaus Seidel Institut fuer Kommunikationstechnik der ETHZ CH 8092 Zuerich, Switzerland ABSTRACT In a worldwide UNESCO-program

More information

Sampling The World. presented by: Tim Haithcoat University of Missouri Columbia

Sampling The World. presented by: Tim Haithcoat University of Missouri Columbia Sampling The World presented by: Tim Haithcoat University of Missouri Columbia Compiled with materials from: Charles Parson, Bemidji State University and Timothy Nyerges, University of Washington Introduction

More information

Proceedings Combining Water Indices for Water and Background Threshold in Landsat Image

Proceedings Combining Water Indices for Water and Background Threshold in Landsat Image Proceedings Combining Water Indices for Water and Background Threshold in Landsat Image Tri Dev Acharya 1, Anoj Subedi 2, In Tae Yang 1 and Dong Ha Lee 1, * 1 Department of Civil Engineering, Kangwon National

More information

GIS AND REMOTE SENSING FOR WATER RESOURCE MANAGEMENT

GIS AND REMOTE SENSING FOR WATER RESOURCE MANAGEMENT GIS AND REMOTE SENSING FOR WATER RESOURCE MANAGEMENT G. GHIANNI, G. ADDEO, P. TANO CO.T.IR. Extension and experimental station for irrigation technique - Vasto (Ch) Italy. E-mail : ghianni@cotir.it, addeo@cotir.it,

More information

ANALYSIS AND VALIDATION OF A METHODOLOGY TO EVALUATE LAND COVER CHANGE IN THE MEDITERRANEAN BASIN USING MULTITEMPORAL MODIS DATA

ANALYSIS AND VALIDATION OF A METHODOLOGY TO EVALUATE LAND COVER CHANGE IN THE MEDITERRANEAN BASIN USING MULTITEMPORAL MODIS DATA PRESENT ENVIRONMENT AND SUSTAINABLE DEVELOPMENT, NR. 4, 2010 ANALYSIS AND VALIDATION OF A METHODOLOGY TO EVALUATE LAND COVER CHANGE IN THE MEDITERRANEAN BASIN USING MULTITEMPORAL MODIS DATA Mara Pilloni

More information

Scientific registration n : 2180 Symposium n : 35 Presentation : poster MULDERS M.A.

Scientific registration n : 2180 Symposium n : 35 Presentation : poster MULDERS M.A. Scientific registration n : 2180 Symposium n : 35 Presentation : poster GIS and Remote sensing as tools to map soils in Zoundwéogo (Burkina Faso) SIG et télédétection, aides à la cartographie des sols

More information

FOREST FIRE HAZARD MODEL DEFINITION FOR LOCAL LAND USE (TUSCANY REGION)

FOREST FIRE HAZARD MODEL DEFINITION FOR LOCAL LAND USE (TUSCANY REGION) FOREST FIRE HAZARD MODEL DEFINITION FOR LOCAL LAND USE (TUSCANY REGION) C. Conese 3, L. Bonora 1, M. Romani 1, E. Checcacci 1 and E. Tesi 2 1 National Research Council - Institute of Biometeorology (CNR-

More information

Methods review for the Global Land Cover 2000 initiative Presentation made by Frédéric Achard on November 30 th 2000

Methods review for the Global Land Cover 2000 initiative Presentation made by Frédéric Achard on November 30 th 2000 Methods review for the Global Land Cover 2000 initiative Presentation made by Frédéric Achard on November 30 th 2000 1. Contents Objectives Specifications of the GLC-2000 exercise Strategy for the analysis

More information

APPENDIX. Normalized Difference Vegetation Index (NDVI) from MODIS data

APPENDIX. Normalized Difference Vegetation Index (NDVI) from MODIS data APPENDIX Land-use/land-cover composition of Apulia region Overall, more than 82% of Apulia contains agro-ecosystems (Figure ). The northern and somewhat the central part of the region include arable lands

More information

Fundamentals of Photographic Interpretation

Fundamentals of Photographic Interpretation Principals and Elements of Image Interpretation Fundamentals of Photographic Interpretation Observation and inference depend on interpreter s training, experience, bias, natural visual and analytical abilities.

More information

Classification of Agricultural Crops and Quality Assessment Using Multispectral and Multitemporal Images

Classification of Agricultural Crops and Quality Assessment Using Multispectral and Multitemporal Images Classification of Agricultural Crops and Quality Assessment Using Multispectral and Multitemporal Images Bo Ranneby and Jun Yu Research Report Centre of Biostochastics Swedish University of Report 2003:7

More information

RESEARCH METHODOLOGY

RESEARCH METHODOLOGY III. RESEARCH METHODOLOGY 3.1 Time and Location This research has been conducted in period March until October 2010. Location of research is over Sumatra terrain. Figure 3.1 show the area of interest of

More information