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Locating in fingerprint space: wireless indoor localization with little human intervention. Proceedings of the 18th annual international conference on Mobile computing and networking. ACM, 2012. RSSI Fingerprint Automatic Radio Map Generation Presenter: Jongtack Jung
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Localization technique where each location is associated with the RSSI Fingerprint of the location Arbitrary fingerprint from an unknown location is matched with the radio map, and best fitting option is selected 2 RSSI Fingerprint Method?
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Site survey process Training phase a.k.a. calibration Fingerprint A set of RSS values obtained at a location Radio map The map of RSS fingerprints associated with the location MDS (Multi-Dimensional Scaling) A method to map points into given dimensional space where only the dissimilarities among the points are known Stress (MDS term) How well the mapping expresses the dissimilarity matrix 3 Terminology
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PROS All APs can be exploited Including password protected APs Fast execution Best accuracy of all 4 Pros and Cons of RSSI Fingerprint CONS Necessary training period Necessary maintenance EXPENSIVE Training and maintenance require human labor
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The cost of RSSI Fingerprint method can be reduced using automated status update mechanism The concept of automation is adopted Many methods have been attempted to automate the process of site surveying 5 RSSI Fingerprint
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Main Idea Since the geographic distance does not really represent the actual walking distance of two positions, use walking distance to create a map Concept Two position close together in walking distance means similar fingerprint The number of footsteps obtained from accelerometer provides the distance between locations Hybrid of fingerprint and dead reckoning 6 Locating in Fingerprint Space – Innovation!
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7 Overview
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Stress The accuracy of MDS If a distance map can be perfectly resolved in given dimensions, the stress is 0 Given dataset, higher dimension means less stress Draw 3D floor plan Disparity between two locations is given with the number of footsteps The distance between two nodes in the graph is the actual walking distance Footstep recognition The number of footsteps is obtained from accelerometer – only the #steps, not the distance 8 Stress-free Floor Plan
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The distance between fingerprints can also be expressed with disparity map MDS algorithm is tolerant to measurement errors on its own If no user actually passes through a particular pair of fingerprints, the value is calculated with shortest path 9 Fingerprint Space High dimension floor plan (top) and fingerprint space map(bottom)
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With above equation as dissimilarity, two points having the value less than threshold are considered as the same point and merged together. 10 Pre Processing
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Fingerprint space needs to be mapped on stress-free floor plan Floor-level transformation Use simplest linear transformation and shift between the two graphs Room-level transformation Detect rooms with K-cluster method and apply MDS to each room, and then match them 11 Space Transformations MST of fingerprint space map
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The virtual high dimensional data needs to be mapped on actual floor plan Corridor recognition MST betweenness Room Recognition Clustering of nodes Reference Point Mapping Point where values change largely are considered as doors 12 Mapping
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Betweenness Centrality Distribution of all points K-Means Clustering of all points 13 Evaluation Results
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14 Evaluation Results
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15 Fingerprints clusters vs. Floor plan rooms
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The result is not so much impressive, but the values indicate the Fingerprint generation without site survey is possible Fingerprint generation needs to be conveyed with human hands, but the required labor for the system is reduced a lot 16 Notes on High Dimension Fingerprint
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RSSI Fingerprint method’s credibility has been widely accepted to be the best method It shows slightly less accuracy than traditional fingerprint method, but the cost is reduced by much 17 Conclusion
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