A Face Recognition Method Based on Local Feature Analysis

نویسندگان

  • Feng Jiao
  • Wen Gao
  • Xilin Chen
  • Guoqin Cui
  • Shiguang Shan
چکیده

Elastic Bunch Graph Matching has been proved effective for face recognition. But the recognition procedure needs large computation. Here we present an automatic face recognition method based on local feature analysis. The local features are firstly located by the face structure knowledge and gray level distribution information, rather than searching on the whole image as it does in Elastic Bunch Graph Matching. Thus the whole computation is greatly decreased. Then the features are adjusted using a data structure named Face Bunch Gra ph. The face is represented by Gabor jets of the features and their spatial distances. Several distance metrics are tested and the results are given.

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تاریخ انتشار 2001