GruMon: Fast and Accurate Group Monitoring for Heterogeneous Urban Spaces
Real-time monitoring of groups and their rich contexts will be a key building block for futuristic, group-aware mobile services. In this paper, we propose GruMon, a fast and accurate group monitoring system for dense and complex urban spaces. GruMon meets the performance criteria of precise group de...
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sg-smu-ink.sis_research-36562019-06-26T12:10:26Z GruMon: Fast and Accurate Group Monitoring for Heterogeneous Urban Spaces SEN, Rijurekha LEE, Youngki JAYARAJAH, Kasthuri BALAN, Rajesh Krishna MISRA, Archan Real-time monitoring of groups and their rich contexts will be a key building block for futuristic, group-aware mobile services. In this paper, we propose GruMon, a fast and accurate group monitoring system for dense and complex urban spaces. GruMon meets the performance criteria of precise group detection at low latencies by overcoming two critical challenges of practical urban spaces, namely (a) the high density of crowds, and (b) the imprecise location information available indoors. Using a host of novel features extracted from commodity smartphone sensors, GruMon can detect over 80% of the groups, with 97% precision, using 10 minutes latency windows, even in venues with limited or no location information. Moreover, in venues where location information is available, GruMon improves the detection latency by up to 20% using semantic information and additional sensors to complement traditional spatio-temporal clustering approaches. We evaluated GruMon on data collected from 258 shopping episodes from 154 real participants, in two large shopping complexes in Korea and Singapore. We also tested GruMon on a large-scale dataset from an international airport (containing ≈37K+ unlabelled location traces per day) and a live deployment at our university, and showed both GruMon's potential performance at scale and various scalability challenges for real-world dense environment deployments. 2014-11-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/2656 info:doi/10.1145/2668332.2668340 https://ink.library.smu.edu.sg/context/sis_research/article/3656/viewcontent/Grumon_pv.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 Clustering Context monitoring Indoor localization Smartphone sensors Social groups Software Engineering |
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Clustering Context monitoring Indoor localization Smartphone sensors Social groups Software Engineering SEN, Rijurekha LEE, Youngki JAYARAJAH, Kasthuri BALAN, Rajesh Krishna MISRA, Archan GruMon: Fast and Accurate Group Monitoring for Heterogeneous Urban Spaces |
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Real-time monitoring of groups and their rich contexts will be a key building block for futuristic, group-aware mobile services. In this paper, we propose GruMon, a fast and accurate group monitoring system for dense and complex urban spaces. GruMon meets the performance criteria of precise group detection at low latencies by overcoming two critical challenges of practical urban spaces, namely (a) the high density of crowds, and (b) the imprecise location information available indoors. Using a host of novel features extracted from commodity smartphone sensors, GruMon can detect over 80% of the groups, with 97% precision, using 10 minutes latency windows, even in venues with limited or no location information. Moreover, in venues where location information is available, GruMon improves the detection latency by up to 20% using semantic information and additional sensors to complement traditional spatio-temporal clustering approaches. We evaluated GruMon on data collected from 258 shopping episodes from 154 real participants, in two large shopping complexes in Korea and Singapore. We also tested GruMon on a large-scale dataset from an international airport (containing ≈37K+ unlabelled location traces per day) and a live deployment at our university, and showed both GruMon's potential performance at scale and various scalability challenges for real-world dense environment deployments. |
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SEN, Rijurekha LEE, Youngki JAYARAJAH, Kasthuri BALAN, Rajesh Krishna MISRA, Archan |
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SEN, Rijurekha LEE, Youngki JAYARAJAH, Kasthuri BALAN, Rajesh Krishna MISRA, Archan |
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SEN, Rijurekha |
title |
GruMon: Fast and Accurate Group Monitoring for Heterogeneous Urban Spaces |
title_short |
GruMon: Fast and Accurate Group Monitoring for Heterogeneous Urban Spaces |
title_full |
GruMon: Fast and Accurate Group Monitoring for Heterogeneous Urban Spaces |
title_fullStr |
GruMon: Fast and Accurate Group Monitoring for Heterogeneous Urban Spaces |
title_full_unstemmed |
GruMon: Fast and Accurate Group Monitoring for Heterogeneous Urban Spaces |
title_sort |
grumon: fast and accurate group monitoring for heterogeneous urban spaces |
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Institutional Knowledge at Singapore Management University |
publishDate |
2014 |
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https://ink.library.smu.edu.sg/sis_research/2656 https://ink.library.smu.edu.sg/context/sis_research/article/3656/viewcontent/Grumon_pv.pdf |
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