Silhouette-Edge-Based Descriptor for Human Action Representation and Recognition

Extraction and representation of postures and/or gestures from human activities in videos have been a focus of research in this area of action recognition. With various applications cropping up from different fields, this paper seeks to improve the performance of these action recognition machines by...

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Bibliographic Details
Published inJournal of Information and Communication Convergence Engineering, 11(2) Vol. 11; no. 2; pp. 124 - 131
Main Authors Odoyo, Wilfred O., Choi, Jae-Ho, Moon, In-Kyu, Cho, Beom-Joon
Format Journal Article
LanguageEnglish
Published 한국정보통신학회 30.06.2013
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ISSN2234-8255
2234-8883
DOI10.6109/jicce.2013.11.2.124

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Summary:Extraction and representation of postures and/or gestures from human activities in videos have been a focus of research in this area of action recognition. With various applications cropping up from different fields, this paper seeks to improve the performance of these action recognition machines by proposing a shape-based silhouette-edge descriptor for the human body. Information entropy, a method to measure the randomness of a sequence of symbols, is used to aid the selection of vital key postures from video frames. Morphological operations are applied to extract and stack edges to uniquely represent different actions shape-wise. To classify an action from a new input video, a Hausdorff distance measure is applied between the gallery representations and the query images formed from the proposed procedure. The method is tested on known public databases for its validation. An effective method of human action annotation and description has been effectively achieved. KCI Citation Count: 0
Bibliography:G704-SER000003196.2013.11.2.006
ISSN:2234-8255
2234-8883
DOI:10.6109/jicce.2013.11.2.124