Title of article :
Iterative Weighted Non-smooth Non-negative Matrix Factorization for Face Recognition
Author/Authors :
Sabzalian ، B. Faculty of Electrical Engineering and Robotics - Shahrood University of Technology , Abolghasemi ، V. Faculty of Electrical Engineering and Robotics - Shahrood University of Technology
From page :
1698
To page :
1707
Abstract :
Non-negative Matrix Factorization (NMF) is a part-based image representation method. It comes from the intuitive idea that entire face image can be constructed by combining several parts. In this paper, we propose a framework for face recognition by finding localized, part-based representations, denoted “Iterative weighted non-smooth non-negative matrix factorization” (IWNS-NMF). A new cost function is proposed in order to incorporate sparsity which is controlled by a specific parameter and weights of feature coefficients. This method extracts highly localized patterns, which generally improves the capability of face recognition. After extracting patterns by IWNS-NMF, we use principle component analysis to reduce dimension for classification by linear SVM. The Recognition rates on ORL, YALE and JAFFE datasets were 97.5, 93.33 and 87.8%, respectively. Comparisons to the related methods in the literature indicate that the proposed IWNS-NMF method achieves higher face recognition performance than NMF, NS-NMF, Local NMF and SNMF.
Keywords :
Non , negative Matrix Factorization , Face Recognition , Pattern Analysis , Features Extraction , Sparse Representatio
Journal title :
International Journal of Engineering
Record number :
2502713
Link To Document :
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