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Did You See Bob?: Human Localization using Mobile Phones Constandache, et. al. Presentation by: Akie Hashimoto, Ashley Chou
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Introduction & Motivation Various research in all aspects of localization technology Tradeoff between energy & location accuracy Indoor localization techniques Logical location identification Escort exands the notion of localization in the social context In large public areas, navigation without precise knowledge of a person’s location can be non-trivial Large & crowded Unfamiliar location “In a human populated public place, can we develop an electronic system that can localize and route a person A to a specified person B?”
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System Overview Walking trail: Unique audio tones Assimilated global view Routes = sequence of
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Design Challenges Noisy Sensors Location & Trail Errors Encounter Detection Trail Graph Density Visual Identification
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Noisy Sensors AccelerometerCompass Double Integration vs. Step Count Method Average bias of 8 degrees (1) Constant direction state: compensate stable readings w/average bias (2) Turning state: use compass reported readings
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Location & Trail Errors DiffusionDrift Cancellation Diffuse fresh location information into system to compensate for drift by… (1) Encounters with the beacon (2) Encounters with users who passed the beacon recently Use diffusion information to correct past trails Correction vector estimates cumulative drift over time Assuming projected path deviates linearly, can amortize correction vector over time
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Encounter Detection Bluetooth too slow for detecting short lived encounters Clients & beacon employed unique audio tones Reliability of tone detection tested in 3 scenarios Transmitter-receiver distance determined via amplitude cutoff (5m threshold)
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Trail Graph Density Phase 1: For every pair of nodes, closest spatial intersection between them retained; all others eliminated Phase 2: Graph pruned again to only keep shortest path between users Efficient
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Visual Identification End-to-end: Identify exactly whom to approach Opportunistically take pictures of mobile phone’s owner Generate fingerprint of user’s appearance Camera-based user identification
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Evaluation Testbed Limitations & Future Work Related Work Personal Comments
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Testbed Accuracy Using markers to show the errors Sensors (36.2m) Beacon (8.5m) Drift Cancellation (6.1m)
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Limitations & Future Work Not energy efficient: sensors and uploading info to the server Switch off sensors More frequent beacons Wrong direction – educated guess Hidden shortest path – give option for direct path Low location accuracy – recompute Phone orientation affect sensors – currently more research on the compass orientation Scalability – better or worse
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Related Work Location estimated based on the overheard signals and on the data collected during a calibration. (Beacons and RF) Using AP and its signal strength Using GPS, Wifi and walking pattern to figure out the location. SLAM robot collecting beacons and landmarks
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Personal Comments Encounter can cause more errors Closer to the beacon does not always correlate to better resolution Encounter itself has maximum of 5m error Black spots Some inside location has no GPS or WiFi. Beacon must cover all area. Second floor? This paper did not address the possibility of escorting one to another floor. Are stairs, escalators, and elevators still a possibility?
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