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2005 IEEE 7th Workshop on Multimedia Signal Processing

DOI: 10.1109/mmsp.2005.248572

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Automatic Key Posture Selection for Human Behavior Analysis

Proceedings article published in 2005 by Duan-Yu Chen, Hong-Yuan Mark Liao, Hsiao-Rang Tyan, Chia-Wen Lin ORCID
This paper is available in a repository.
This paper is available in a repository.

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Abstract

電機工程學系 ; A novel human posture analysis framework that can perform automatic key posture selection and template matching for human behavior analysis is proposed. The entropy measurement, which is commonly adopted as an important feature to describe the degree of disorder in thermodynamics, is used as an underlying feature for identifying key postures. First, we use cumulative entropy change as an indicator to select an appropriate set of key postures from a human behavior video sequence and then conduct a cross entropy check to remove redundant key postures. With the key postures detected and stored as human posture templates, the degree of similarity between a query posture and a database template is evaluated using a modified Hausdorff distance measure. The experiment results show that the proposed system is highly efficient and powerful