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Volume 30 Issue 4
Sep.  2013
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Pose robust face recognition based on CASPCM model

  • Corresponding author: YOU Zhi-sheng, zsyou@mail.sc.cninfo.net
  • Received Date: 2005-05-23
    Accepted Date: 2005-07-21
  • CASPCM model is proposed to make up the disadvantages of ASPCM model while dealing with faces with large angles.The training samples are grouped according to their distances to model centers and a local ASPCM model is constructed for each group.Synthesis result of CASPCM model is obtained by averaging results of the local ASPCM models with appropriate weights.Gradient-descent algorithm is used to iteratively improve estimate of the head pose.Accuracy and generalization are used to gauge analysis and synthesis abilities of the model.Experimental results show that the two abilities of CASPCM model are both superior to ASPCM model;recognition ratio of CASPCM model is 7% higher than ASPCM model.
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    沈阳化工大学材料科学与工程学院 沈阳 110142

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Pose robust face recognition based on CASPCM model

    Corresponding author: YOU Zhi-sheng, zsyou@mail.sc.cninfo.net
  • 1. Institute of Image & Graphic, College of Computer Science, Sichuan University, Chengdu 610064, China

Abstract: CASPCM model is proposed to make up the disadvantages of ASPCM model while dealing with faces with large angles.The training samples are grouped according to their distances to model centers and a local ASPCM model is constructed for each group.Synthesis result of CASPCM model is obtained by averaging results of the local ASPCM models with appropriate weights.Gradient-descent algorithm is used to iteratively improve estimate of the head pose.Accuracy and generalization are used to gauge analysis and synthesis abilities of the model.Experimental results show that the two abilities of CASPCM model are both superior to ASPCM model;recognition ratio of CASPCM model is 7% higher than ASPCM model.

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