Abstract:Due to various applications in the areas of pattern recognition, image processing, computer vision, cognitive science etc., face recognition has drawn much attention in recent years. This paper presents an uptodate survey on the history and stateoftheart face recognition research, systematically classifying face recognition methods into several categories. Furthermore, this paper expatiates on the evolution of the recent algorithms which are used to deal with the illumination variation problem and the pose variation problem. In addition, several major issues for further exploration are also pointed out at the end of this paper.
李武军,王崇骏,张炜,陈世福. 人脸识别研究综述*[J]. 模式识别与人工智能, 2006, 19(1): 58-66.
LI WuJun, WANG ChongJun, ZHANG Wei, CHEN ShiFu. A Survey of Face Recognition. , 2006, 19(1): 58-66.
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