Unsupervised Activity Discovery and Characterization for Sensor-Rich Environments
This thesis presents an unsupervised method for discovering and analyzing the different kinds of activities in an active environment. Drawing from natural language processing, a novel representation of activities as bags of event n-grams is introduced, where the global structural information of acti...
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ndltd-GATECH-oai-smartech.gatech.edu-1853-141312013-01-07T20:16:32ZUnsupervised Activity Discovery and Characterization for Sensor-Rich EnvironmentsHamid, Muhammad RaffayComputational perceptionMachine learningAnomalous activity detectionComputational learning theoryMachine learningThis thesis presents an unsupervised method for discovering and analyzing the different kinds of activities in an active environment. Drawing from natural language processing, a novel representation of activities as bags of event n-grams is introduced, where the global structural information of activities using their local event statistics is analyzed. It is demonstrated how maximal cliques in an undirected edge-weighted graph of activities, can be used in an unsupervised manner, to discover the different activity-classes. Taking on some work done in computer networks and bio-informatics, it is shown how to characterize these discovered activity-classes from a wholestic as well as a by-parts view-point. A definition of anomalous activities is formulated along with a way to detect them based on the difference of an activity instance from each of the discovered activity-classes. Finally, an information theoretic method to explain the detected anomalies in a human-interpretable form is presented. Results over extensive data-sets, collected from multiple active environments are presented, to show the competence and generalizability of the proposed framework.Georgia Institute of Technology2007-03-27T18:27:41Z2007-03-27T18:27:41Z2005-11-28Thesis767333 bytesapplication/pdfhttp://hdl.handle.net/1853/14131en_US |
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Computational perception Machine learning Anomalous activity detection Computational learning theory Machine learning |
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Computational perception Machine learning Anomalous activity detection Computational learning theory Machine learning Hamid, Muhammad Raffay Unsupervised Activity Discovery and Characterization for Sensor-Rich Environments |
description |
This thesis presents an unsupervised method for discovering and analyzing the different
kinds of activities in an active environment. Drawing from natural language processing, a
novel representation of activities as bags of event n-grams is introduced, where the global
structural information of activities using their local event statistics is analyzed. It is demonstrated how maximal cliques in an undirected edge-weighted graph of activities, can be used in an unsupervised manner, to discover the different activity-classes. Taking on some work done in computer networks and bio-informatics, it is shown how to characterize these discovered activity-classes from a wholestic as well as a by-parts view-point. A definition of anomalous activities is formulated along with a way to detect them based on the difference of an activity instance from each of the discovered activity-classes. Finally, an information theoretic method to explain the detected anomalies in a human-interpretable form is presented. Results over extensive data-sets, collected from multiple active environments are
presented, to show the competence and generalizability of the proposed framework. |
author |
Hamid, Muhammad Raffay |
author_facet |
Hamid, Muhammad Raffay |
author_sort |
Hamid, Muhammad Raffay |
title |
Unsupervised Activity Discovery and Characterization for Sensor-Rich Environments |
title_short |
Unsupervised Activity Discovery and Characterization for Sensor-Rich Environments |
title_full |
Unsupervised Activity Discovery and Characterization for Sensor-Rich Environments |
title_fullStr |
Unsupervised Activity Discovery and Characterization for Sensor-Rich Environments |
title_full_unstemmed |
Unsupervised Activity Discovery and Characterization for Sensor-Rich Environments |
title_sort |
unsupervised activity discovery and characterization for sensor-rich environments |
publisher |
Georgia Institute of Technology |
publishDate |
2007 |
url |
http://hdl.handle.net/1853/14131 |
work_keys_str_mv |
AT hamidmuhammadraffay unsupervisedactivitydiscoveryandcharacterizationforsensorrichenvironments |
_version_ |
1716474595459989504 |