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Tracking Stolen Bikes through Everyday Mobile Phones and Participatory Sensing Ted Tsung-Te Lai Chun-Yi Lin Ya-Yunn Su Hao-Hua Chu National Taiwan University 1
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Bikes are everywhere 2 Cyclists face many problems…
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Safety (CyberBike, HotMobile10) 3
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Route quality (BikeStatic, CHI10) 4
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Fitness (BikeNet, SenSys07) 5 Sensors: -Heart rate -GPS -Accelerometer …etc
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Bike Theft (BikeTrack) 6
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Bike Theft Survey (208 students) 1 out of 1.8 person has bike stolen experience 1 out of 3.7 stolen bikes was recovered Mostly found on campus “Is it possible to use participatory sensing to recover stolen bikes?” 7
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1.Motivation 2.BikeTrack System design 3.Evaluation and preliminary results 4.Future work 5.Conclusion Outline 8
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BikeTrack overview 9 BluetoothBikeUsers use phone to scan Bluetooth Log BluetoothID/Location/Timestamp Server for bike location query data
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Spec: 20-meter radio range 1.5-month lifetime 16 USD/tag Customization: Only broadcast beacon ID Why Bluetooth? Available on almost every phone Bluetooth beacon tag 10
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Bluetooth tag mounting on a bike 11
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Phone implementation Android 2.1 Scan Bluetooth ID every 20secs in background When a Bluetooth ID is found, it logs Auto-upload data during network availability Bluetooth IDLocationTimestamp 12
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Server implementation Linux + Apache + MySQL Web interface to query bike location on google map 13 Bike locations
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1.Motivation 2.BikeTrack system design 3.Evaluation and preliminary results 4.Future work 5.Conclusion Outline 14
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User study Two-week during summer 11 CS grad students Dataset: 3700 bluetooth/location/times entries – 3500 self-detection; 200 detection of other users Constraint: 15 CS department layout
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1.How well does participatory sensing work in tracking bikes? 2.Is it possible to locate stolen bike on campus? 3.Is it possible to reduce battery consumption based on user behaviors ? Evaluation and preliminary results 16
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Avg. Bluetooth detections/day All bikes were detected Avg. detection rate: 5.1 times/day 17
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1.How well does participatory sensing work in tracking bikes? 2.Is it possible to locate stolen bike on campus? 3.Is it possible to reduce battery consumption based on user behaviors ? Evaluation and preliminary results 18
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Bike location distribution in Taipei 19
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Bike location distribution at NTU 20
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1.How well does participatory sensing work in tracking bikes? 2.Is it possible to locate stolen bike on campus? 3.Is it possible to reduce phone battery consumption based on user behaviors ? Evaluation and preliminary results 21
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Avg. user detection pattern during a day 22 Detection happened at noon, dinner, end of a day Detection pattern varies with users Future optimization (currently scan/20 seconds)
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1.Motivation 2.BikeTrack System design 3.Evaluation and preliminary results 4.Future work 5.Conclusion Outline 23
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Formulating deployment strategy 24 How to incorporate user spatial-temporal model to reduce phone overhead? How to incentivize participation?
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1.Motivation 2.System design 3.Evaluation and preliminary results 4.Future work 5.Conclusion Outline 25
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BikeTrack - A low cost participatory sensing system for bike tracking Preliminary result shows that BikeTrack is a promising system to locate bikes Conclusion 26
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Questions & Answers BikeTrack: Tracking Stolen Bikes through Everyday Mobile Phones and Participatory Sensing Ted Tsung-te Lai Chun,Yi Lin, Ya-Yunn Su, Hao-Hua Chu National Taiwan University 27
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