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Face Recognition under Lighting Variation Conditions Using Tan-Triggs Method and Local Intensity Area Descriptor

机译:使用Tan-Triggs方法和局部强度区域描述符在照明变化条件下的面部识别

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Lighting variation is a specific and difficult case of face recognition. A good combination of an illumination preprocessing method and a local descriptor, face recognition system can considerably improve prediction performance. Recently, a new descriptor, named local intensity area descriptor (LIAD), has been introduced for face recognition in ideal and noise conditions. It has been proven to be insensitive to ideal and noise images and has low histogram dimensionality. However, it is not robust against illumination changes. To overcome this problem, in this paper, we propose an approach using an illumination normalization method developed by authors Tan and Triggs to normalize face images before encoding the processed images based on LIAD. The recognition was performed by a nearest-neighbor classifier with chi-square statistic as the dissimilarity measurement. Experimental results, conducted on FERET database, confirmed that our proposed approach performs better than traditional LIAD method and local binary patterns, local directional pattern, local phase quantization, and local ternary patterns using the same approach with respect to illumination variation.
机译:照明变异是人脸识别的具体且困难的情况。照明预处理方法和局部描述符的良好组合,面部识别系统可以显着提高预测性能。最近,已经引入了一个名为局部强度区域描述符(LIAD)的新描述符,以便在理想和噪声条件下进行面部识别。已被证明对理想和噪音图像不敏感,直方图维度低。然而,它对照明变化并不稳健。为了克服这个问题,在本文中,我们提出了一种使用作者TAN和Triggs开发的照明归一化方法的方法,以在基于LIAD编码处理的图像之前正常化面部图像。识别由最近邻的分类器进行,其中具有Chi-Square统计作为不相似性测量。在Feret数据库上进行的实验结果证实,我们所提出的方法比传统的LiAD方法和局部二进制模式,局部方向图案,局部相位量化和使用相同方法的局部三元图案相对于照明变化更好。

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