Iterative Weighted Non-smooth Non-negative Matrix Factorization for Face Recognition
(ندگان)پدیدآور
Sabzalian, B.Abolghasemi, V.نوع مدرک
Textزبان مدرک
Englishچکیده
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.
کلید واژگان
Non-negative Matrix FactorizationFace recognition
Pattern Analysis
features extraction
Sparse representation
شماره نشریه
10تاریخ نشر
2018-10-011397-07-09
ناشر
Materials and Energy Research Centerسازمان پدید آورنده
Faculty of Electrical Engineering and Robotics, Shahrood University of Technology, Shahrood, IranFaculty of Electrical Engineering and Robotics, Shahrood University of Technology, Shahrood, Iran
شاپا
1025-24951735-9244




