Local contrast enhancement and adaptive feature extraction for illumination-invariant face recognition

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摘要

Recognizing human faces in various lighting conditions is quite a difficult problem. The problem becomes more difficult when face images are taken in extremely high dynamic range scenes. Most of the automatic face recognition systems assume that images are taken under well-controlled illumination. The face segmentation as well as recognition becomes much simpler under such a constrained condition. However, illumination control is not feasible when a surveillance system is installed in any location at will. Without compensating for uneven illumination, it is impossible to get a satisfactory recognition rate. In this paper, we propose an integrated system that first compensates uneven illumination through local contrast enhancement. Then the enhanced images are fed into a robust face recognition system which adaptively selects the most important features among all candidate features and performs classification by support vector machines (SVMs). The dimension of feature space as well as the selected types of features is customized for each hyperplane. Three face image databases, namely Yale, Yale Group B, and Extended Yale Group B, are used to evaluate performance. The experimental result shows that the proposed recognition system give superior results compared to recently published literatures.

论文关键词:Face recognition,Local contrast enhancement,Adaptive feature selection,Support vector machines

论文评审过程:Received 5 January 2009, Revised 13 October 2009, Accepted 14 November 2009, Available online 24 November 2009.

论文官网地址:https://doi.org/10.1016/j.patcog.2009.11.016