Abstract

In this paper a method for selecting features for Human Activity Recognition from sensors is presented. Using a large feature set that contains features that may describe the activities to recognize, Best First Search and Genetic Algorithms are employed to select the feature subset that maximizes the accuracy of a Hidden Markov Model generated from the subset. A comparative of the proposed techniques is presented to demonstrate their performance building Hidden Markov Models to classify different human activities using video sensors.

Details

Title
Recognizing Human Activities from Sensors Using Hidden Markov Models Constructed by Feature Selection Techniques
Author
Cilla, Rodrigo; Patricio, Miguel A; García, Jesús; Berlanga, Antonio; Molina, Jose M
Pages
282-300
Publication year
2009
Publication date
2009
Publisher
MDPI AG
e-ISSN
19994893
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1525990285
Copyright
Copyright MDPI AG 2009