Lecture 5. Symbolization and Classification MAP DESIGN: PART I. A picture is worth a thousand words

Similar documents
Lecture 2. A Review: Geographic Information Systems & ArcGIS Basics

GED 554 IT & GIS. Lecture 6 Exercise 5. May 10, 2013

A Review: Geographic Information Systems & ArcGIS Basics

Intro to GIS Summer 2012 Data Visualization

Chapter 7: Making Maps with GIS. 7.1 The Parts of a Map 7.2 Choosing a Map Type 7.3 Designing the Map

Physical Geography Lab Activity #15

CHAPTER 9 DATA DISPLAY AND CARTOGRAPHY

Geog183: Cartographic Design and Geovisualization Winter Quarter 2017 Lecture 6: Map types and Data types

What is a map? A simple representation of the real world Two types of maps

The Choropleth Map Slide #2: Choropleth mapping enumeration units

Representation of Geographic Data

Different Displays of Thematic Maps:

Geography 281 Map Making with GIS Project Four: Comparing Classification Methods

GEOREFERENCING, PROJECTIONS Part I. PRESENTING DATA Part II

Basic principles of cartographic design. Makram Murad-al-shaikh M.S. Cartography Esri education delivery team

Lab 7: Cell, Neighborhood, and Zonal Statistics

Outline. Geographic Information Analysis & Spatial Data. Spatial Analysis is a Key Term. Lecture #1

Making Maps With GIS. Making Maps With GIS

Theory, Concepts and Terminology

What should you consider concerning colors in maps in order to illustrate qualitative data, and quantitative data, respectively? Exemplify.

Raster Spatial Analysis Specific Theory

Appropriate Selection of Cartographic Symbols in a GIS Environment

Introducing GIS analysis

Dr.Weerakaset Suanpaga (D.Eng RS&GIS)

from

Overview. GIS Data Output Methods

ENV208/ENV508 Applied GIS. Week 2: Making maps, data visualisation, and GIS output

Analyzing Nepal earthquake epicenters

Outline. ArcGIS? ArcMap? I Understanding ArcMap. ArcMap GIS & GWR GEOGRAPHICALLY WEIGHTED REGRESSION. (Brief) Overview of ArcMap

Tutorial 8 Raster Data Analysis

Quality and Coverage of Data Sources

Designing GIS Databases to Support Mapping and Map Production Charlie Frye, ESRI Redlands Aileen Buckley, ESRI Redlands

Geographers Perspectives on the World

An Information Model for Maps: Towards Cartographic Production from GIS Databases

MAP SCALE, ELEMENTS & USE

Introduction to Cartography Part I

Outline Anatomy of ArcGIS Metadata Data Types Vector Raster Conversion Adding Data Navigation Symbolization Methods Layer Files Editing Help Files

Lecture Notes 2: Variables and graphics

1. Origins of Geography

Designing Better Maps

Lecture 5. Representing Spatial Phenomena. GIS Coordinates Multiple Map Layers. Maps and GIS. Why Use Maps? Putting Maps in GIS

Slide #1: Slide #2: Slide #3: Slide #4: Slide #5: Cartographic Basics Slide #6: Cartographic Basics Slide #13: Scale & Generalization

APC Part I Workshop. Mapping and Cartography. 14 November 2014

CentropeSTATISTICS Working Interactively with Cross-Border Statistic Data Clemens Beyer, Walter Pozarek, Manfred Schrenk

Ø Set of mutually exclusive categories. Ø Classify or categorize subject. Ø No meaningful order to categorization.

Maps and Data Types in GIS

Map Makeovers: How to Make Your Map Great!

Map image from the Atlas of Oregon (2nd. Ed.), Copyright 2001 University of Oregon Press

Spatial Representation

Intro to GIS In Review

Information Cartography

Geographic Data Science - Lecture IV

Agenda. Introduction Exercise 1 Map Types. Part 1 ArcGIS Information and Organization Part 2 Purpose, Audience & Constraints.

Visualizing Census Data in GIS. Andrew Rowan, Ph.D. Director, NJ Office of GIS

Quiz 1. Quiz Instruc ons. Question 1. Question 2. 2 pts. 3 pts. This is a preview of the published version of the quiz. Started: Jul 3 at 4:29pm

GIS = Geographic Information Systems;

Map Skills Unit. Note taking unit

Acknowledgments xiii Preface xv. GIS Tutorial 1 Introducing GIS and health applications 1. What is GIS? 2

Interactive Statistics Visualisation based on Geovisual Analytics

GIS IN ECOLOGY: ANALYZING RASTER DATA

Version 1.1 GIS Syllabus

2/2/2015 GEOGRAPHY 204: STATISTICAL PROBLEM SOLVING IN GEOGRAPHY MEASURES OF CENTRAL TENDENCY CHAPTER 3: DESCRIPTIVE STATISTICS AND GRAPHICS

Week 8 Cookbook: Review and Reflection

Mapping Earth. How are Earth s surface features measured and modeled?

Different types of maps and how to read them.

Overlay Analysis II: Using Zonal and Extract Tools to Transfer Raster Values in ArcMap

Diamonds on the soles of scholarship?

Map Reading: Grades 4 & 5

Lecture 10 Mapping Quantities: Dot Density Maps

Flooding on the Somerset Levels. ArcGIS Online

Gis Unit TropMed Mahidol U.

Topographic Maps. Take Notes as you view the slides

Working with ArcGIS: Classification

NR402 GIS Applications in Natural Resources

Course Introduction II

Task 1: Start ArcMap and add the county boundary data from your downloaded dataset to the data frame.

Aileen Buckley, Ph.D. and Charlie Frye

MAPS AND THEIR CLASSIFICATION

Moreton Bay and Key Geographic Concepts Worksheet

2.2 Geographic phenomena

ArcGIS Tools for Professional Cartography

Landmarks Paula Owens 5 7 years

Task 1: Open ArcMap and activate the Spatial Analyst extension.

An Instructional Module. FieldScope Unit 1. Introduction to National Geographic Society s FieldScope Program.

DATA 301 Introduction to Data Analytics Geographic Information Systems

Geographic Systems and Analysis

MAP SYMBOL BREWER A NEW APPROACH FOR A CARTOGRAPHIC MAP SYMBOL GENERATOR

A 2h30 crash-course on Scientific visualisation

Orbital Insight Energy: Oil Storage v5.1 Methodologies & Data Documentation

Hydric Rating by Map Unit Harrison County, Mississippi

Chapter 2: Tools for Exploring Univariate Data

ArcGIS ArcMap: Making Professional Quality Thematic Maps Charlie Frye, ESRI Redlands Aileen Buckley, ESRI Redlands

ArcGIS Pro: Essential Workflows STUDENT EDITION

Hydric Rating by Map Unit Harrison County, Mississippi. Web Soil Survey National Cooperative Soil Survey

Visualization Schemes for Spatial Processes

Overview key concepts and terms (based on the textbook Chang 2006 and the practical manual)

APC PART I WORKSHOP MAPPING AND CARTOGRAPHY

Give 4 advantages of using ICT in the collection of data. Give. Give 4 disadvantages in the use of ICT in the collection of data

Statistics for Thematic Cartography

Year 8 standard elaborations Australian Curriculum: Geography

Transcription:

Lecture 5 MAP DESIGN: PART I Symbolization and Classification A picture is worth a thousand words

Outline Symbolization Types of Maps Classifying Features Visualization Considerations

Symbolization Symbolization is the process of assigning colors, markers, sizes, widths, angles, transparency and other properties to features.

Symbolization Visual resources cartographers can use to symbolize information on a map. 3 Types of Symbols: Options for Symbolization: Point Line Polygon

Color Three "dimensions" of color: hue, lightness, and saturation. Hue: Color can be described by its wavelength; red at one end of the visible spectrum, violet on the other. A change in wavelength of visible light is manifested by a change in hue. "Red," "green," and "violet" are all hues. Lightness: Color can also be described by its shade, or its degree of lightness. a.k.a "value," or "brightness. Saturation: A third dimension of color describes how "pure" the color is. If a color is made up of only one hue, it is called "saturated." However, if you imagine mixing together many hues, the result is a desaturated color.

Symbolizing Values Nominal: Values are discrete (that is, mutually exclusive) and are classed according to type or quality. For example, a line could represent either a road or river, and a land use polygon could be residential, commercial, or a recreational area. Ordinal: Ordinal values determine position. These measurements show place, such as first, second, and third, but they do not establish magnitude or relative proportions. It is not possible to measure the differences between ordinal data. Ratio: The values from the ratio measurement system are derived relative to a fixed zero point on a linear scale. Mathematical operations can be used on these values with predictable and meaningful results. Examples are age and distance.

Types of Maps The form of your data dictates the form (type) of the map. General Reference Maps Graduated Symbol Maps (Proportional Symbol Maps) Chloropleth Maps Isopleth Maps Area Qualitative Maps Dot Density Maps

General Reference Maps Generalized map Examples: world maps, road maps, atlas maps, etc.

Graduated Symbol Maps (Proportional Symbol Maps) The proportional size of symbols represents the value of the attribute. These maps scale icons (most often circles) according to the data they represent. Proportional symbol maps are not dependent on the size of the spatial unit associated with its attribute.

Chloropleth Maps Numerical data is classified into categories and the categories are shaded. Polygons are often based on politically defined features. This will yield a display that puts visual emphasis on the largest area units of the map. Example: Indicate differences in population.

Isopleth Maps The concentration of an attribute is represented by connecting points of identical values to create lines. Ideal for continuous area data (i.e. data exists at every point) that varies smoothly over space. It does not change abruptly at any point (like tax rates do as you cross into another political zone). Examples: Temperature and Elevation Animated Example: http://nadp.sws.uiuc.edu/amaps2/no3/amaps.html

Area Qualitative Maps Shows the distribution of pre-existing geographic classes (forest types, soils, land-use, vegetation, etc.)

Dot Density Maps Dot maps create a visual impression of density by placing a dot or some other symbol in the approximate location of one or more instances of the variable being mapped. Used to represent themes that vary smoothly over space but are discrete. Examples: livestock farms, utility poles, and population distribution in a region.

Classifying Features Groups attributes into classes to help discern patterns. Make choices about not only how many different classes that the data should be categorized into, but what the value ranges of those classes should be. A slight adjustment of the "breaks" in the value ranges of ordered data, for example, might alter the map significantly and reveal trends that were not detected previously (or are not in fact there). You can define your own classes OR Use one of the standard methods: 3 Frequently Used Standard Methods: Natural Breaks Equal Interval Quantile

Natural Breaks (Jenks Optimization) Default method in ArcGIS (Also called Jenks Optimization classification) Identifies natural groupings of values that are inherent in your data. The features are divided into classes whose boundaries are set where there are relatively big jumps in the data values. This method works well with data that is not evenly distributed and not heavily skewed toward one end of the distribution.

Equal Interval This method is like a ruler: the interval between each class is the same. For example, you might have classes with intervals of 10 percent (1-10%, 11-20%, 21-30%, etc.) This method sets the value ranges in each category equal in size. The entire range of data values (max - min) is divided equally into however many categories have been chosen. This option is useful to highlight changes in the extremes of data values. It is probably best applied to continuously distributed data ranges such as percentages or temperature.

Quantile Each class contains an equal number of values. For example, you might have 100 counties grouped into 5 classes each class would contain 20 counties regardless of the values of the attributes. Misleading Legends: In order to have an equal number of features in each class, features with greatly different values can be placed in a single class. One solution is to manually increase the number of classes this may separate dissimilar values. Because the intervals are generally wider at the extremes, this option is useful to highlight changes in the middle values of the distribution.

Map Visualization Considerations A vital task in creating effective graphics for visually relating ideas is the filtering of vast fields of data into units that are simple enough to be understood quickly and intuitively but detailed enough to convey useful information Effective interpretation of the results of your analysis -- both by you and by others -- depends to a large extent on the design of the onscreen display. A slight alteration of the color scheme or classification method of a map, for example, might produce two different graphics that appear to tell two very different stories -- even though they represent the exact same data.

Next Week Map Design: Part II Map Layouts Graphics Text, Annotation and Labels.