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Face recognition under varying lighting conditions: improving the recognition accuracy for local descriptors based on weber-face followed by difference of Gaussians

机译:在不同的照明条件下的面部识别:基于Weber-Face提高本地描述符的识别准确性,然后改善高斯的差异

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摘要

Illumination variation is among the several bottlenecks in a face recognition system because it can greatly affect the appearance of a face image, which causes a reduction in the face matching performance of the system. Using illumination preprocessing methods is an effective approach to overcome this problem. Despite the achievements made, however, each method still has its own demerits. In this paper, an efficient representation method insensitive to varying illumination based on a combination of Weber-face (WF) and the difference of Gaussians (DoG) methods is proposed for human face recognition using local descriptors. After processing by our method, the obtained image will preserve more facial features and edge information while shading effects are eliminated. To demonstrate the potential of the proposed method, two systems using nearest-neighbor and support vector machine classifiers were implemented. Experimental results for the CMU-PIE and extended Yale B face databases showed that our method could effectively eliminate the effect of uneven illumination and achieved better recognition accuracies in comparison to other state-of-the-art methods (DoG, gradient face, histogram equalization, and WF).
机译:照明变化是面部识别系统中的几个瓶颈之一,因为它可以极大地影响面部图像的外观,这导致系统的面部匹配性能降低。使用照明预处理方法是克服这个问题的有效方法。然而,尽管取得了成就,但每种方法都有自己的缺点。在本文中,提出了一种基于Weber-Face(WF)组合的不同照明的有效的表示方法,以及使用本地描述符的人脸识别的人脸识别。通过我们的方法处理后,所获得的图像将在消除着色效果时保持更多面部特征和边缘信息。为了证明所提出的方法的潜力,实现了使用最近邻和支持向量机分类器的两个系统。 CMU-PIE和延伸的耶鲁B面数据库的实验结果表明,我们的方法可以有效地消除不均匀照明的影响,并与其他最先进的方法(狗,梯度面,直方图均衡相比,实现了更好的识别精度。和wf)。

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