Event Detection Using "Variable Module Graphs" for Home Care Applications

<p/> <p>Technology has reached new heights making sound and video capture devices ubiquitous and affordable. We propose a paradigm to exploit this technology for home care applications especially for surveillance and complex event detection. Complex vision tasks such as event detection i...

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Main Authors: Sethi Amit, Rahurkar Mandar, Huang Thomas S
Format: Article
Language:English
Published: SpringerOpen 2007-01-01
Series:EURASIP Journal on Advances in Signal Processing
Online Access:http://asp.eurasipjournals.com/content/2007/074243
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spelling doaj-90839682f5cb471e9829507909dff26c2020-11-25T00:39:45ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61721687-61802007-01-0120071074243Event Detection Using "Variable Module Graphs" for Home Care ApplicationsSethi AmitRahurkar MandarHuang Thomas S<p/> <p>Technology has reached new heights making sound and video capture devices ubiquitous and affordable. We propose a paradigm to exploit this technology for home care applications especially for surveillance and complex event detection. Complex vision tasks such as event detection in a surveillance video can be divided into subtasks such as human detection, tracking, recognition, and trajectory analysis. The video can be thought of as being composed of various features. These features can be roughly arranged in a hierarchy from low-level features to high-level features. Low-level features include edges and blobs, and high-level features include objects and events. Loosely, the low-level feature extraction is based on signal/image processing techniques, while the high-level feature extraction is based on machine learning techniques. Traditionally, vision systems extract features in a feed-forward manner on the hierarchy, that is, certain modules extract low-level features and other modules make use of these low-level features to extract high-level features. Along with others in the research community, we have worked on this design approach. In this paper, we elaborate on recently introduced V/M graph. We present our work on using this paradigm for developing applications for home care applications. Primary objective is surveillance of location for subject tracking as well as detecting irregular or anomalous behavior. This is done automatically with minimal human involvement, where the system has been trained to raise an alarm when anomalous behavior is detected.</p> http://asp.eurasipjournals.com/content/2007/074243
collection DOAJ
language English
format Article
sources DOAJ
author Sethi Amit
Rahurkar Mandar
Huang Thomas S
spellingShingle Sethi Amit
Rahurkar Mandar
Huang Thomas S
Event Detection Using "Variable Module Graphs" for Home Care Applications
EURASIP Journal on Advances in Signal Processing
author_facet Sethi Amit
Rahurkar Mandar
Huang Thomas S
author_sort Sethi Amit
title Event Detection Using "Variable Module Graphs" for Home Care Applications
title_short Event Detection Using "Variable Module Graphs" for Home Care Applications
title_full Event Detection Using "Variable Module Graphs" for Home Care Applications
title_fullStr Event Detection Using "Variable Module Graphs" for Home Care Applications
title_full_unstemmed Event Detection Using "Variable Module Graphs" for Home Care Applications
title_sort event detection using "variable module graphs" for home care applications
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6172
1687-6180
publishDate 2007-01-01
description <p/> <p>Technology has reached new heights making sound and video capture devices ubiquitous and affordable. We propose a paradigm to exploit this technology for home care applications especially for surveillance and complex event detection. Complex vision tasks such as event detection in a surveillance video can be divided into subtasks such as human detection, tracking, recognition, and trajectory analysis. The video can be thought of as being composed of various features. These features can be roughly arranged in a hierarchy from low-level features to high-level features. Low-level features include edges and blobs, and high-level features include objects and events. Loosely, the low-level feature extraction is based on signal/image processing techniques, while the high-level feature extraction is based on machine learning techniques. Traditionally, vision systems extract features in a feed-forward manner on the hierarchy, that is, certain modules extract low-level features and other modules make use of these low-level features to extract high-level features. Along with others in the research community, we have worked on this design approach. In this paper, we elaborate on recently introduced V/M graph. We present our work on using this paradigm for developing applications for home care applications. Primary objective is surveillance of location for subject tracking as well as detecting irregular or anomalous behavior. This is done automatically with minimal human involvement, where the system has been trained to raise an alarm when anomalous behavior is detected.</p>
url http://asp.eurasipjournals.com/content/2007/074243
work_keys_str_mv AT sethiamit eventdetectionusingvariablemodulegraphsforhomecareapplications
AT rahurkarmandar eventdetectionusingvariablemodulegraphsforhomecareapplications
AT huangthomass eventdetectionusingvariablemodulegraphsforhomecareapplications
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