On-Line Discovery of Hot Motion Paths
We consider an environment of numerous moving objects, equipped with location-sensing devices and capable of communicating with a central coordinator. In this setting, we investigate the problem of maintaining hot motion paths, i.e., routes frequently followed by multiple objects over the recent pas...
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2008
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sg-smu-ink.sis_research-14022016-04-29T09:26:31Z On-Line Discovery of Hot Motion Paths SACHARIDIS, Dimitris Patroumpas, Kostas Terrovitis, Manolis Kantere, Verena Potamias, Michalis MOURATIDIS, Kyriakos Sellis, Timos We consider an environment of numerous moving objects, equipped with location-sensing devices and capable of communicating with a central coordinator. In this setting, we investigate the problem of maintaining hot motion paths, i.e., routes frequently followed by multiple objects over the recent past. Motion paths approximate portions of objects' movement within a tolerance margin that depends on the uncertainty inherent in positional measurements. Discovery of hot motion paths is important to applications requiring classification/profiling based on monitored movement patterns, such as targeted advertising, resource allocation, etc. To achieve this goal, we delegate part of the path extraction process to objects, by assigning to them adaptive lightweight filters that dynamically suppress unnecessary location updates and, thus, help reducing the communication overhead. We demonstrate the benefits of our methods and their efficiency through extensive experiments on synthetic data sets. 2008-03-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/403 info:doi/10.1145/1353343.1353392 https://ink.library.smu.edu.sg/context/sis_research/article/1402/viewcontent/EDBT08_20__20Motion_20Paths.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 Approximation theory Data structures Problem solving Search engines Uncertainty analysis Computer Sciences Databases and Information Systems |
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Approximation theory Data structures Problem solving Search engines Uncertainty analysis Computer Sciences Databases and Information Systems SACHARIDIS, Dimitris Patroumpas, Kostas Terrovitis, Manolis Kantere, Verena Potamias, Michalis MOURATIDIS, Kyriakos Sellis, Timos On-Line Discovery of Hot Motion Paths |
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We consider an environment of numerous moving objects, equipped with location-sensing devices and capable of communicating with a central coordinator. In this setting, we investigate the problem of maintaining hot motion paths, i.e., routes frequently followed by multiple objects over the recent past. Motion paths approximate portions of objects' movement within a tolerance margin that depends on the uncertainty inherent in positional measurements. Discovery of hot motion paths is important to applications requiring classification/profiling based on monitored movement patterns, such as targeted advertising, resource allocation, etc. To achieve this goal, we delegate part of the path extraction process to objects, by assigning to them adaptive lightweight filters that dynamically suppress unnecessary location updates and, thus, help reducing the communication overhead. We demonstrate the benefits of our methods and their efficiency through extensive experiments on synthetic data sets. |
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text |
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SACHARIDIS, Dimitris Patroumpas, Kostas Terrovitis, Manolis Kantere, Verena Potamias, Michalis MOURATIDIS, Kyriakos Sellis, Timos |
author_facet |
SACHARIDIS, Dimitris Patroumpas, Kostas Terrovitis, Manolis Kantere, Verena Potamias, Michalis MOURATIDIS, Kyriakos Sellis, Timos |
author_sort |
SACHARIDIS, Dimitris |
title |
On-Line Discovery of Hot Motion Paths |
title_short |
On-Line Discovery of Hot Motion Paths |
title_full |
On-Line Discovery of Hot Motion Paths |
title_fullStr |
On-Line Discovery of Hot Motion Paths |
title_full_unstemmed |
On-Line Discovery of Hot Motion Paths |
title_sort |
on-line discovery of hot motion paths |
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Institutional Knowledge at Singapore Management University |
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2008 |
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https://ink.library.smu.edu.sg/sis_research/403 https://ink.library.smu.edu.sg/context/sis_research/article/1402/viewcontent/EDBT08_20__20Motion_20Paths.pdf |
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