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Illumination Robust Face Recognition Using Spatial Expansion Local Histogram Equalization and Locally Linear Regression Classification

机译:使用空间扩展局部直方图均衡化和局部线性回归分类的照明鲁棒人脸识别

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摘要

Robust face recognition under illumination variations is a critical problem in a face recognition system, particularly for face recognition in the wild. In this paper, a face image preprocessing approach, called spatial expansion local histogram equalization (SELHE), is proposed to enhance face images due to illumination variations. First, a face image is divided into several non-overlapped blocks. Then, local histogram equalization with spatial expansion is proposed to enhance the contrast of each local image block. Local linear regression classification will then be used to recognize the enhanced image blocks. Experiments performed on the Yale B and Yale B extended databases have shown that the proposed approach yields promising recognition accuracy.
机译:在光照变化下的鲁棒人脸识别是人脸识别系统中的关键问题,特别是对于野外人脸识别。本文提出了一种人脸图像预处理方法,称为空间扩展局部直方图均衡(SELHE),以增强由于光照变化而引起的人脸图像。首先,将面部图像划分为几个不重叠的块。然后,提出了具有空间扩展的局部直方图均衡化,以增强每个局部图像块的对比度。然后将使用局部线性回归分类来识别增强的图像块。在Yale B和Yale B扩展数据库上进行的实验表明,所提出的方法具有令人满意的识别精度。

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