Illumination invariant feature extraction and mutual-information-based local matching for face recognition under illumination variation and occlusion

Pattern Recognition(2011)

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摘要
An efficient method for face recognition which is robust under illumination variations is proposed. The proposed method achieves the illumination invariants based on the illumination-reflection model employing local matching for best classification. Different filters have been tested to achieve the reflectance part of the image, which is illumination invariant, and maximum filter is suggested as the best method for this purpose. A set of adaptively weighted classifiers vote on different sub-images of each input image and a decision is made based on their votes. Image entropy and mutual information are used as weight factors. The proposed method does not need any prior information about the face shape or illumination and can be applied on each image separately. Unlike most available methods, our method does not need multiple images in training stage to get the illumination invariants. Support vector machines and k-nearest neighbors methods are used as classifier. Several experiments are performed on Yale B, Extended Yale B and CMU-PIE databases. Recognition results show that the proposed method is suitable for efficient face recognition under illumination variations.
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关键词
illumination invariants,image entropy,illumination invariant feature extraction,variant illumination,k-nearest neighbors method,local matching,input image,partial occlusion,face recognition,efficient method,available method,best method,illumination invariant,mutual-information-based local matching,illumination variation,reflectance illumination model,feature extraction,support vector machine,mutual information,k nearest neighbor
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