NAME

Luo Zhongxuan

Paper Publications

A sparse representation approach for local feature based expression recognition
  • Hits:
  • Indexed by:

    会议论文

  • First Author:

    Jia Q.

  • Co-author:

    Liu Y.,Guo H.,Luo Z.,Wang Y.

  • Date of Publication:

    2011-07-26

  • Included Journals:

    EI、Scopus

  • Document Type:

    A

  • Page Number:

    4788-4792

  • Abstract:

    A novel facial expression recognition method based on sparse representation (SR) is proposed. To enhance the effect of important face region, fisher separation criterion is introduced to calculate the weight of local binary patterns (LBP) patches. Expression recognition technique using the new mathematical theory from sparse representation an compressive sensing is proposed, and the improvements in performance are discussed. Furthermore, a multi-layer sparse representation (MLSR) algorithm is proposed for multi-intensity expression recognition. Experiments showed a better result than conventional sparse representation. More important, MLSR can be generalized to similar classification problems. To verify the efficiency of the proposed methods, a serious of experiments on publicly available databases is performed, including comparisons among SVM, SR, and MLSR. Especially, our method shows better performance against low-resolution images. ? 2011 IEEE.

Pre One:Computing curve intersection by homotopy methods

Next One:Comparative study of C-V active contour model and subdivision for micro algae image segmentation