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The fusion of original and symmetric virtual images for image preprocessing in face recognition and collaborative representation based classification

机译:基于面部识别的图像预处理的原始和对称虚拟映像的融合与基于协作表示的分类

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摘要

Various poses, facial expressions and illuminations are the biggest challenges in the fields of face recognition. To overcome these challenges, we propose a simple yet novel method in this paper by using the approximately symmetrical virtual face. Firstly, based on the symmetrical characteristics of faces, we present the method to generate the virtual faces for all samples in detail. Secondly, the collaborative representation based classification method is performed on both of the original set and virtual set individually. In this way, two kinds of representation residuals of every class can be obtained. Thirdly, an adaptive weighted fusion approach is presented and utilized to integrate those two kinds of representation residuals for face recognition. Lastly, we can obtain the label of the test sample by assigning it to the class with the minimum fused residual. Several experiments are conducted which show that the proposed method not only can greatly improve the classification accuracy, but also can effectively reduce the negative influence of various poses, illuminations, and facial expressions.
机译:各种姿势,面部表情和照明是人脸识别领域的最大挑战。为了克服这些挑战,我们通过使用近似对称的虚拟脸提出了一种简单但新的方法。首先,基于面的对称特性,我们介绍了详细生成所有样本的虚拟面。其次,基于协作表示的分类方法在单独单独的组件和虚拟集上执行。以这种方式,可以获得每个类的两种表示残差。第三,呈现自适应加权融合方法并利用以将这两种表示残差集成为面部识别。最后,我们可以通过将其分配给课程的最小熔断残差来获取测试样本的标签。进行了几个实验,表明该方法不仅可以大大提高分类准确性,而且还可以有效地降低各种姿势,照明和面部表情的负面影响。

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