Tracking people across ultra populated indoor spaces by matching unreliable Wi-Fi signals with disconnected video feeds

Tracking in dense indoor environments where several thousands of people move around is an extremely challenging problem. In this paper, we present a system — DenseTrack for tracking people in such environments. DenseTrack leverages data from the sensing modalities that are already present in these e...

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Main Authors: TRUONG, Quang Hai, JAISINGHANI, Dheryta, JAIN, Shubham, SINHA, Arunesh, KO, Jeong Gil, BALAN, Rajesh Krishna
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Language:English
Published: Institutional Knowledge at Singapore Management University 2024
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Online Access:https://ink.library.smu.edu.sg/sis_research/8479
https://ink.library.smu.edu.sg/context/sis_research/article/9482/viewcontent/TrackingPeople_av.pdf
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spelling sg-smu-ink.sis_research-94822024-01-04T09:11:17Z Tracking people across ultra populated indoor spaces by matching unreliable Wi-Fi signals with disconnected video feeds TRUONG, Quang Hai JAISINGHANI, Dheryta JAIN, Shubham SINHA, Arunesh KO, Jeong Gil BALAN, Rajesh Krishna Tracking in dense indoor environments where several thousands of people move around is an extremely challenging problem. In this paper, we present a system — DenseTrack for tracking people in such environments. DenseTrack leverages data from the sensing modalities that are already present in these environments — Wi-Fi (from enterprise network deployments) and Video (from surveillance cameras). We combine Wi-Fi information with video data to overcome the individual errors induced by these modalities. More precisely, the locations derived from video are used to overcome the localization errors inherent in using Wi-Fi signals where precise Wi-Fi MAC IDs are used to locate the same devices across different levels and locations inside a building. Typically, localization in dense environments is a computationally expensive process when done with just video data; hence hard to scale. DenseTrack combines Wi-Fi and video data to improve the accuracy of tracking people that are represented by video objects from non-overlapping video feeds. DenseTrack is a scalable and device-agnostic solution as it does not require any app installation on user smartphones or modifications to the Wi-Fi system. At the core of DenseTrack, is our algorithm — inCremental Association of Independent Variables under Uncertainty (CAIVU). CAIVU is inspired by the multi-armed bandits model and is designed to handle various complex features of practical real-world environments. CAIVU matches the devices reported by an off-the-shelf Wi-Fi system using connectivity information to specific video blobs obtained through a computationally efficient analysis of video data. By exploiting data from heterogeneous sources, DenseTrack offers an effective real-time solution for individual tracking in heavily populated indoor environments. We emphasize that no other previous system targeted nor was validated in such dense indoor environments. We tested DenseTrack extensively using both simulated data, as well as two real-world validations using data from an extremely dense convention center and a moderately dense university environment. Our simulation results show that DenseTrack achieves an average video-to-Wi-Fi matching accuracy of up to 90% in dense environments with a matching latency of 60 s on the simulator. When tested in a real-world extremely dense environment with over 500,000 people moving between different non-overlapping camera feeds, DenseTrack achieved an average match accuracy of 83% to within a 2-people distance with an average latency of 48 s. 2024-01-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8479 info:doi/10.1016/j.pmcj.2023.101860 https://ink.library.smu.edu.sg/context/sis_research/article/9482/viewcontent/TrackingPeople_av.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Dense environments Indoor tracking Mobile sensing Wireless Graphics and Human Computer Interfaces Numerical Analysis and Scientific Computing
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Dense environments
Indoor tracking
Mobile sensing
Wireless
Graphics and Human Computer Interfaces
Numerical Analysis and Scientific Computing
spellingShingle Dense environments
Indoor tracking
Mobile sensing
Wireless
Graphics and Human Computer Interfaces
Numerical Analysis and Scientific Computing
TRUONG, Quang Hai
JAISINGHANI, Dheryta
JAIN, Shubham
SINHA, Arunesh
KO, Jeong Gil
BALAN, Rajesh Krishna
Tracking people across ultra populated indoor spaces by matching unreliable Wi-Fi signals with disconnected video feeds
description Tracking in dense indoor environments where several thousands of people move around is an extremely challenging problem. In this paper, we present a system — DenseTrack for tracking people in such environments. DenseTrack leverages data from the sensing modalities that are already present in these environments — Wi-Fi (from enterprise network deployments) and Video (from surveillance cameras). We combine Wi-Fi information with video data to overcome the individual errors induced by these modalities. More precisely, the locations derived from video are used to overcome the localization errors inherent in using Wi-Fi signals where precise Wi-Fi MAC IDs are used to locate the same devices across different levels and locations inside a building. Typically, localization in dense environments is a computationally expensive process when done with just video data; hence hard to scale. DenseTrack combines Wi-Fi and video data to improve the accuracy of tracking people that are represented by video objects from non-overlapping video feeds. DenseTrack is a scalable and device-agnostic solution as it does not require any app installation on user smartphones or modifications to the Wi-Fi system. At the core of DenseTrack, is our algorithm — inCremental Association of Independent Variables under Uncertainty (CAIVU). CAIVU is inspired by the multi-armed bandits model and is designed to handle various complex features of practical real-world environments. CAIVU matches the devices reported by an off-the-shelf Wi-Fi system using connectivity information to specific video blobs obtained through a computationally efficient analysis of video data. By exploiting data from heterogeneous sources, DenseTrack offers an effective real-time solution for individual tracking in heavily populated indoor environments. We emphasize that no other previous system targeted nor was validated in such dense indoor environments. We tested DenseTrack extensively using both simulated data, as well as two real-world validations using data from an extremely dense convention center and a moderately dense university environment. Our simulation results show that DenseTrack achieves an average video-to-Wi-Fi matching accuracy of up to 90% in dense environments with a matching latency of 60 s on the simulator. When tested in a real-world extremely dense environment with over 500,000 people moving between different non-overlapping camera feeds, DenseTrack achieved an average match accuracy of 83% to within a 2-people distance with an average latency of 48 s.
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author TRUONG, Quang Hai
JAISINGHANI, Dheryta
JAIN, Shubham
SINHA, Arunesh
KO, Jeong Gil
BALAN, Rajesh Krishna
author_facet TRUONG, Quang Hai
JAISINGHANI, Dheryta
JAIN, Shubham
SINHA, Arunesh
KO, Jeong Gil
BALAN, Rajesh Krishna
author_sort TRUONG, Quang Hai
title Tracking people across ultra populated indoor spaces by matching unreliable Wi-Fi signals with disconnected video feeds
title_short Tracking people across ultra populated indoor spaces by matching unreliable Wi-Fi signals with disconnected video feeds
title_full Tracking people across ultra populated indoor spaces by matching unreliable Wi-Fi signals with disconnected video feeds
title_fullStr Tracking people across ultra populated indoor spaces by matching unreliable Wi-Fi signals with disconnected video feeds
title_full_unstemmed Tracking people across ultra populated indoor spaces by matching unreliable Wi-Fi signals with disconnected video feeds
title_sort tracking people across ultra populated indoor spaces by matching unreliable wi-fi signals with disconnected video feeds
publisher Institutional Knowledge at Singapore Management University
publishDate 2024
url https://ink.library.smu.edu.sg/sis_research/8479
https://ink.library.smu.edu.sg/context/sis_research/article/9482/viewcontent/TrackingPeople_av.pdf
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