Support vector machines for face authentication

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摘要

We present an extensive study of the support vector machine (SVM) sensitivity to various processing steps in the context of face authentication. In particular, we evaluate the impact of the representation space and photometric normalisation technique on the SVM performance. Our study supports the hypothesis that the SVM approach is able to extract the relevant discriminatory information from the training data. We believe that this is the main reason for its superior performance over benchmark methods (e.g. the eigenface technique). However, when the representation space already captures and emphasises the discriminatory information content (e.g. the fisherface method), the SVMs cease to be superior to the benchmark techniques. The SVM performance evaluation is carried out on a large face database containing 295 subjects.

论文关键词:Face verification,Support vector machines,Principal component analysis,Linear discriminant analysis

论文评审过程:Received 16 October 2000, Accepted 18 December 2001, Available online 21 February 2002.

论文官网地址:https://doi.org/10.1016/S0262-8856(02)00009-4