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Most Information Feature Extraction for Face Recognition

机译:用于面部识别的大多数信息特征提取

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We present a MIFE (Most Information Feature Extraction) approach, which extract as abundant as possible information for the face classification task. In the MIFE approach, a facial image is separated into sub-regions and each sub-region makes individual's contribution for performing face recognition. Specifically, each sub-region is subjected to a sub-region based adaptive gamma (SadaGamma) correction or sub-region based histogram equalization (SHE) in order to account for different illuminations and expressions. Experiment results show that the proposed SadaGamma/SHE correction approach provides an efficient delighting solution for face recognition. MIFE and SadaGamma/SHE correction together achieves lower error ratio in face recognition under different illumination and expression.
机译:我们提出了一种MIFE(大多数信息特征提取)方法,该方法可提取尽可能多的信息用于面部分类任务。在MIFE方法中,将面部图像分为多个子区域,每个子区域为个人进行面部识别做出了贡献。具体地,每个子区域经受基于子区域的自适应伽马(SadaGamma)校正或基于子区域的直方图均衡(SHE),以便考虑不同的照明和表达。实验结果表明,提出的SadaGamma / SHE校正方法为面部识别提供了一种有效的令人愉悦的解决方案。 MIFE和SadaGamma / SHE校正一起可在不同光照和表情下实现较低的人脸识别错误率。

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