Sparse Representation Classifier Embedding Subspace Mapping and Support Vector for Facial Expression Recognition

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Abstract

With the development of integration and innovation of Internet and industry, facial expression recognition (FER) technology is widely applied in wireless communication and mobile edge computing. The sparse representation-based classification is a hot topic in computer vision and pattern recognition. It is one type of commonly used image classification algorithms for FER in recent years. To improve the accuracy of FER system, this study proposed a sparse representation classifier embedding subspace mapping and support vector (SRC-SM-SV). Based on the traditional sparse representation model, SRC-SM-SV maps the training samples into a subspace and extracts rich and discriminative features by using the structural information and label information of the training samples. SRC-SM-SV integrates the support vector machine to enhance the classification performance of sparse representation coding. The solution of SRC-SM-SV uses an alternate iteration method, which makes the optimization process of the algorithm simple and efficient. Experiments on JAFFE and CK+ datasets prove the effectiveness of SRC-SM-SV in FER.

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APA

Lu, S., Xue, L., & Gu, X. (2021). Sparse Representation Classifier Embedding Subspace Mapping and Support Vector for Facial Expression Recognition. Wireless Communications and Mobile Computing, 2021. https://doi.org/10.1155/2021/9340147

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