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  • Turkish Journal of Electrical Engineering and Computer Science
  • Volume:25 Issue:5
  • Adaptive joint block-weighted collaborative representation for facial expression recognition

Adaptive joint block-weighted collaborative representation for facial expression recognition

Authors : Zhe SUN, Zhengping HU, Meng WANG, Shuhuan ZHAO
Pages : 3699-3712
View : 12 | Download : 7
Publication Date : 0000-00-00
Article Type : Research Paper
Abstract :Facial expression recognition insert ignore into journalissuearticles values(FER); plays a significant role in human-computer interactions. Recently, regularized linear representation-based classification has achieved satisfying results in FER. Considering that different blocks in a sample should contribute differently to the representation and classification, we propose an adaptive joint block-weighted collaborative representation-based classification insert ignore into journalissuearticles values(JBW_CRC); method to effectively exploit the similarity and distinctiveness of different blocks. In JBW_CRC, samples are divided into different blocks and each block of the query sample is represented as a feature vector. Each feature vector is coded on its related block dictionary, which considers the similarity among the feature vectors. Additionally, the distinctiveness of different feature vectors is obtained by weighting its distance to other features, which addresses the distinctiveness in the different feature vectors. The proposed method is verified from the aspect of training samples, time complexity, and Gaussian noise variances on benchmark databases and the extensive experiments show that the proposed method is very competitive with some similar pattern classification methods.
Keywords : Facial expression recognition, block weighted collaborative representation, similarity, distinctiveness

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