Weighted average integration of sparse representation and collaborative representation for robust face recognition

被引:0
作者
Zeng S. [1 ]
Xiong Y. [1 ]
机构
[1] Huizhou University, Guangdong
来源
Comput. Vis. Media | / 4卷 / 357-365期
基金
中国国家自然科学基金;
关键词
collaborative representation; face recognition; image classification; sparse representation;
D O I
10.1007/s41095-016-0061-5
中图分类号
学科分类号
摘要
Sparse representation is a significant method to perform image classification for face recognition. Sparsity of the image representation is the key factor for robust image classification. As an improvement to sparse representation-based classification, collaborative representation is a newer method for robust image classification. Training samples of all classes collaboratively contribute together to represent one single test sample. The ways of representing a test sample in sparse representation and collaborative representation are very different, so we propose a novel method to integrate both sparse and collaborative representations to provide improved results for robust face recognition. The method first computes a weighted average of the representation coefficients obtained from two conventional algorithms, and then uses it for classification. Experiments on several benchmark face databases show that our algorithm outperforms both sparse and collaborative representation-based classification algorithms, providing at least a 10% improvement in recognition accuracy. © 2016, The Author(s).
引用
收藏
页码:357 / 365
页数:8
相关论文
共 39 条
  • [1] Brunelli R., Poggio T., Face recognition: Features versus templates, IEEE Transactions on Pattern Analysis and Machine Intelligence, 15, 10, pp. 1042-1052, (1993)
  • [2] Wright J., Yang A.Y., Ganesh A., Sastry S.S., Ma Y., Robust face recognition via sparse representation, IEEE Transactions on Pattern Analysis and Machine Intelligence, 31, 2, pp. 210-227, (2009)
  • [3] Xu Y., Zhang D., Yang J., Yang J.-Y., An approach for directly extracting features from matrix data and its application in face recognition, Neurocomputing, 71, 10-12, pp. 1857-1865, (2008)
  • [4] Turk M., Pentland A., Eigenfaces for recognition, Journal of Cognitive Neuroscience, 3, 1, pp. 71-86, (1991)
  • [5] Park S.W., Savvides M., A multifactor extension of linear discriminant analysis for face recognition under varying pose and illumination, EURASIP Journal on Advances in Signal Processing, 2010, (2010)
  • [6] Lu J., Plataniotis K.N., Venetsanopoulos A.N., Face recognition using LDA-based algorithms, IEEE Transactions on Neural Networks, 14, 1, pp. 195-200, (2003)
  • [7] Debruyne M., Verdonck T., Robust kernel principal component analysis and classification, Advances in Data Analysis and Classification, 4, 2, pp. 151-167, (2010)
  • [8] Muller K.-R., Mika S., Ratsch G., Tsuda K., Scholkopf B., An introduction to kernel-based learning algorithms, IEEE Transactions on Neural Networks, 12, 2, pp. 181-201, (2001)
  • [9] Yang J., Wright J., Huang T.S., Ma Y., Image super-resolution via sparse representation, IEEE Transactions on Image Processing, 19, 11, pp. 2861-2873, (2010)
  • [10] Xu Y., Zhang D., Yang J., Yang J.-Y., A two-phase test sample sparse representation method for use with face recognition, IEEE Transactions on Circuits and Systems for Video Technology, 21, 9, pp. 1255-1262, (2011)