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Inference of Human Postures by Classification of 3D Human Body Shape
Nice, France October 17-October 17
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/AMFG.2003.1240827IEEE International Workshop on Analys ...
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Isaac Cohen, University of Southern California
Hongxia Li, University of Southern California
In this paper we describe an approach for inferring the body posture using a 3D visual-hull constructed from a set of silhouettes. We introduce an appearance-based, view-independent, 3D shape description for classifying and identifying human posture using a support vector machine. The proposed global shape description is invariant to rotation, scale and translation and varies continuously with 3D shape variations. This shape representation is used for training a support vector machine allowing the characterization of human body postures from the computed visual hull. The main advantage of the shape description is its ability to capture human shape variation allowing the identification of body postures across multiple people. The proposed method is illustrated on a set of video streams of body postures captured by four synchronous cameras.
Citation:
Isaac Cohen, Hongxia Li, "Inference of Human Postures by Classification of 3D Human Body Shape," amfg, pp.74, IEEE International Workshop on Analysis and Modeling of Faces and Gestures, 2003
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