A Mobile Personalized RFID System

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1 A Moble Pesolzed RFID System Ruy-Shug hg Jh-Sheg hg d Jg-Hsg Ruey Detmet of omute Scece d Ifomto Egeeg Ntol Dog Hw Uvesty Hule TAIWAN {schgschg}@ml.dhu.edu.tw d9400@ems.dhu.edu.tw Abstct RFID s d-develog techology fo weless detfcto ltely. Thee e my elted oducts d systems fo vous lctos. Howeve most of them oly del wth logstc mgemet o busess mgemet wthout volvg uses coces fo esolzed sevces. Theefoe t motvtes us to develo moble esolzed RFID system wth evet ocessg model focusg o the chctezto of detfcto fo esolzed sevces. I ths e we show how the oosed system ototye woks s well s demostte system mlemetto fo move DVD etls.. Itoducto Thee e my eseches o system ototyes fo RFID [ 4] ogess. Most of them oly del wth the logstcs mgemet o busess mgemet wthout cosdeg uses coces whch s eseclly eeded fo esolzed sevces. Tht my ot be ww stuto. Fo emle s f s busess s coceed the mode of cosumto fo uses c ot be gsed f the busess s RFID ltfom hs othg to do wth uses. Isted fom use s ot of vew f comy fls to ush the goods ctvely fo uses the mout of cosumto my decese dstclly becuse uses my kow othg t ll bout goods whch they e teested. The foemost motvto of ths esech s how the RFID techology c hel busess eseclly dug the ecoomc deesso t eset. I ths study we e gog to buld ototye of RFID esolzed sevces focusg o wht use elly deses. The ctcl ssues tht we eed to coce bout e how to tegte the estg esouces d wht ovtve sevces we c ovde fo customes. Fo ths eso we develo esolzed RFID system wth lytc model fo esolzed sevces cludg cosume s behvos d bowsg ode to cheve w-w stuto both fo uses d busesses. Thee e two m cotbutos of ths esech. Oe s the semless tegto of esol moble devces wth RFID system fo ubqutous sevces. Tht my ehce the comettve dvtge of busess f customes e stsfed wth the coveet sevces. The othe oe s the develomet of lytc model fo esolzed sevces. Tht my st u lot of cosumto f customes could moe esly get fomto they e teested. The emde of ths e s ogzed s follows. I Secto we descbe the system ototye. I Secto we oose clssfcto method to be used esolzed sevce. A ctul emle of system s the show Secto 4. Flly coclusos e gve the lst secto.. System Pototye I ths secto we would lke to show how ou system woks s well s wht sevces we hve develoed. We use the move DVD etl busess such s the Blockbuste s emle. As dcted fgue d fgue ech membe hs RFID membesh cd to detfy oeself whle ech DVD hs RFID tg. Thee e two system ogms cludg RFID-DVD etl system d MRFID-DVD let Moble RFID-DVD let. RFID-DVD etl system s tegted ltfom fo DVD mgemet. It lso ovdes customes wth fucto of evews fo selected DVD. As log s custome tkes hs/he RFID membesh cd wth select DVD close to the RFID ede tht wll eble RFID-DVD etl system to show the evew o moto scee. The RFID ede could ed multle RFID tems the metme due to ts t-collso blty s show fgue. We mke good use of the oety of t-collso to ecogze whch oe vokes whch bowse evet. The show of evew wll be voked whe oly oe RFID membesh cd d oe DVD tem e sesed togethe t the sme tme. Mewhle the bowse evets o check-out evet log wth esol ID wll be set bck to the mddlewe utomtclly to be used s hstocl dt fo the use

2 such tht the esolzed sevce c become smte s tmes go o. I ddto to the house sevce DVD stoe by RFID-DVD etl system we hve lso mlemeted esol moble devce ogm clled MRFID-DVD let ug o custome s PDA Pesol Dgtl Assstt o smt hoe. The PDA ou evomet s equed wth WF tefce d SDIO RFID ede s show fgue 4. Theefoe custome c use esol PDA to bowse though the DVD fomto o evews by mes of MRFID-DVD let. A custome should log wth sswod d RFID membesh cd t fst befoe usg MRFID-DVD let. Evey bowse evet togethe wth esol ID wll lso be set bck to the mddlewe seve. The esolzed sevce s delveed to the use octvely usg ou esolzed lytc model s show fgue 5. I summy custome could ethe use ts RFID membesh cd though RFID-DVD etl system o multe PDA though MRFID-DVD let to bowse the DVD fomto o demd. Fgue. RFID ede wth t-collso blty Fgue 4. PDA wth SDIO RFID Rede Fgue. System Fmewok Fgue 5. Pesolzed Sevces. Pefeece lssfcto Fgue. RFID membesh cd d RFID DVD I wtchg moves eveyoe hs hs/he lkes d dslkes. How does esolzed system kow wht clet s fvote move gee s? I ths secto we oose RFID evet lytc model to ocess w evets fo clssfcto. The DVD tems e clssfed

3 to clsses dvce deoted by whee. I ddto ech custome hs ttbute vecto eeseted by A I whee A I... Accodg to the Byes theoem [ 4] we c obt eq.: I A I eq. A I stds fo the obblty of the efeece fo clss. The multlctve ule Accodg to the Nve Byes ssumto [5 6] ech ttbute s codtolly deedet tht s k k fo ll gve deedet of s codtolly Theefoe we c obt eq AI I eq. we cll s the lkelhood obblty. We c utlze dffeet obblty model to clculte the lkelhood obblty tems of vous ttbutes. I ths e we use mult-vte Beoull model [9 0] o Guss dstbuto fo dscete o cotuous ttbutes esectvely s dcted eq.4 d eq.5. Fo dscete ttbutes {0} 4 whee Fo cotuous ttbutes 5 } {0 ] [ d e d f σ μ π σ whee < < e f σ μ π σ d μs the me σs the stdd devto. Fo stce thee s use U loggg wth ttbute vecto A ge t bt o whee ge t bt o me the ttbute of ge uchse tmes d the umbe of bowses d use s occuto esectvely. The system wll wok out A octvely fo vous tyes of DVD deoted by by mes of Eq.4 o Eq.5. Tkg ge s emle f t s boole wth vlue to be ethe dult o ot we c ly Eq.4 to clculte ge. Othewse f t s cotuous vlue such s ge ge we c use Eq.5 to clculte ge. Flly detemto of use s efeece fo DVD c be detemed by usg Eq.. I summy we use ths oosed model to edct wht tye of DVD the custome my be teested wth hgh obblty. Theefte the selected DVD fomto wll be fowded to the use s PDA fte ccumultg eough tg dt. 4. System Imlemetto Fgue 6 shows the ovell tems ou system cludg mddlewe & dtbse seve PDA wth SDIO RFID ede RFID membesh cd RFID DVD d RFID ede. Regdg RFID-DVD system ogm fucto wll ot be vlble tll the dmstto logs wth the RFID cd successfully s show fgue 7 whee use ID s the RFID tg ID. The dmstto c ctvte the fucto of evews fo customes s show fgue 8. All tems wth RFID tg wll be sesed s log s they e close to the ede. Howeve the system oly ccets oe

4 membesh cd log wth oe DVD tem t the sme tme fo lyg the evew. Smulteous eseces e hdled fst-come-fst-seved me to fcltte the dmsso cotol. The dmsso cotol c lso clude othe fuctos such s evetg mo fom ccessg dult DVD moves. Flly ech bowse evet o check-out evet log wth esol ID wll be set bck to the mddlewe utomtclly ode to ccumulte the tg dt set. Fgue 8. Pevews of DVD Fgue 6. Ovell system tems Fgue 9. Oe membe cd d oe DVD tem e cceted t the sme oly ou system. Fgue 7. Log As show fgues 9 d 0 f custome tkes oe membesh cd d oe DVD close to the ede the system wll ly the evews utomtclly. The RFID-DVD etl system lso ovdes DVD stoe wth the fuctos of check-out d DVD etu. The custome ust tkes hs/he membesh cd d ll the DVD tems he/she selects ltogethe e the ede the system wll del wth the check-out o etu ocess utomtclly. Fgue 0. Plyg evews of DVD. As fo MRFID-DVD let ogm the use eeds to log wth hs/he RFID membesh cd t fst s show fgues d. The the custome c tke y DVD tem close to the SDIO ede s show fgue 4 the MRFID-DVD let wll sese the tem d ly the evew utomtclly o PDA s show fgues 5 d 6.

5 Fgue. heck-out d estoto. Afte log successfully the use c eceve the esolzed fomto bout teestg DVD fomto fom the mddlewe seve s fgue 7. The use lso c clck o the teestg tem to show the evews o PDA. I ddto use could lso equest to dsly hs/he etl lst fom MRFID-DVD let s dcted fgue 8. Fgue. Log successfully Fgue 4. Bowse DVD wth PDA Fgue. Log 5. oclusos I ths esech we buld ototye of RFID esolzed sevces focusg o wht use elly deses. We lso develo esolzed RFID-DVD etl system wth lytc model fo esolzed sevces cludg cosume s behvos d bowsg ode to cheve w-w stuto both fo uses d busesses. I cocluso ototye of semless tegto of esol moble devces wth RFID system fo ubqutous sevces s show. It my ehce the comettve dvtge of busess f customes e stsfed wth ths kd of coveet sevces. Fgue 5. Sese DVD tem

6 Refeeces [] [] [] [4] [5] [6] Fgue 6. Ply evews o PDA [7] [8] [9] [0] [] Fgue 7. Pesolzed fomto [] [] [4] Fgue 8. Retl lst EPglobl Ic. htt:// Rede Mgemet.0 htt:// d_stdd_dec_5_006.df Bll Glove Hmshu Bhtt RFID Essetls O REILLY 006. EPglobl Avlble: htt:// Pedo Domgos Pzz Mchel O the otmlty of the smle Byes clssfe ude zeo-oe loss Mche Leg vol Zegchg Q Nve Byes lssfcto Gve Pobblty Estmto Tees The 5th Itetol ofeece o Mche Leg d Alctos IMLA 06 Oldo Flod USA Decembe Dvd Luckhm The Powe of Evets Addso Wesley 00. Wllm M. Bolstd Itoducto to Byes Sttstcs Wley 004. Kl-Mchel Schede O Wod Fequecy Ifomto d Negtve Evdece Nve Byes Tet lssfcto Advces Ntul Lguge Pocessg Vol Rymod hog Lu Bee Theg A Hybd Nve Byes Aoch fo Ifomto Flteg d IEEE ofeece o Idustl Electocs d Alctos IIEA 008 X h Jue Ohbyug Kwo Sugchul ho Alyg ssoctve theoy to eed weess fo esolzed emde system Eet Systems wth Alctos Vol. 4 Issue Roy D. Ytes Dvd J. Goodm Pobblty d Stochstc Pocesses Wley & Sos J. Sus Mlto Jesse. Aold Itoducto to Pobblty d Sttstcs: Pcles d Alctos fo Egeeg d the omutg Sceces 4th Ed New Yok: McGw-Hll Wllm M. Bolstd Itoducto to Byes Sttstcs Wley & Sos

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