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Adaptive Context-Aware Filter Fusion for Face Recognition on Bad Illumination

机译:适应性上下文感知滤波器融合,用于面部识别

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At present, the performance of face recognition system depends much on the variations in illumination. To solve this problem, this paper presents an adaptable face recognition approach that uses filter fusion representation. The key idea is to use context-aware filter fusion to get better image from a bad illumination one. Genetic algorithm is the tool for adaptation for individual context category. These can provide robust face recognition on illumination context-awareness under uneven environments. Gabor wavelet representation can also provide a robust feature for image enhancement. Using these approaches, we have developed a robust face recognition technique that can recognize with a notable success and it has been tested on Inha DB and FERET face images.
机译:目前,人脸识别系统的性能取决于照明的变化。为了解决这个问题,本文介绍了一种适应性的面部识别方法,它使用过滤器融合表示。关键的想法是使用上下文感知滤波器融合来从一个糟糕的照明中获得更好的图像。遗传算法是用于各个上下文类别的适应工具。这些可以在不均匀环境下对照明背景感知提供强大的面部识别。 Gabor小波表示还可以提供用于图像增强的强大功能。使用这些方法,我们开发了一种强大的面部识别技术,可以以显着的成功识别,并且已经在Inha DB和Feret面部图像上进行了测试。

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