A Novel Method for Body Shape Analysis in E-MTM

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Body shape analysis module is an important part in the e- Measure to Made. In this article, we discuss the body shape analysis approach based on fuzzy particle swarm optimization clustering algorithm.First we extract parameters features of the body shapes in body shape database which obtained from 3D scanner. Then fuzzy particle swarm optimization clustering algorithm is implemented to classify these body shapes and the clustering results are obtained.The results show it’s a effective method.

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1482-1486

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January 2010

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© 2010 Trans Tech Publications Ltd. All Rights Reserved

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