1 August 2003 Face recognition based on singular-value feature vectors
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Abstract
Automatic human face recognition is a difficult but significant problem. A method for face recognition based on singular-value feature vectors is discussed. Three algorithms of face recognition based on singular-value feature vectors are proposed. These algorithms are face recognition using principal component analysis based on singular-value feature vectors, face recognition by Fisher linear discriminant analysis based on singular-value feature vectors, and face recognition using the discriminant Karhunen Loeve (DKL) transform based on singular-value feature vectors. Experimental results show that face recognition based on singular-value feature vectors is effective.
© (2003) Society of Photo-Optical Instrumentation Engineers (SPIE)
Quan Pan, Quan Pan, Min-Gui Zhang, Min-Gui Zhang, De-Long Zhou, De-Long Zhou, Yong-Mei Cheng, Yong-Mei Cheng, Hong-Cai Zhang, Hong-Cai Zhang, } "Face recognition based on singular-value feature vectors," Optical Engineering 42(8), (1 August 2003). https://doi.org/10.1117/1.1588299 . Submission:
JOURNAL ARTICLE
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