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Improving representation-based classification for robust face recognition

机译:改进基于表示的分类以实现可靠的人脸识别

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摘要

The sparse representation classification (SRC) method proposed by Wright et al. is considered as the breakthrough of face recognition because of its good performance. Nevertheless it still cannot perfectly address the face recognition problem. The main reason for this is that variation of poses, facial expressions, and illuminations of the facial image can be rather severe and the number of available facial images are fewer than the dimensions of the facial image, so a certain linear combination of all the training samples is not able to fully represent the test sample. In this study, we proposed a novel framework to improve the representation-based classification (RBC). The framework first ran the sparse representation algorithm and determined the unavoidable deviation between the test sample and optimal linear combination of all the training samples in order to represent it. It then exploited the deviation and all the training samples to resolve the linear combination coefficients. Finally, the classification rule, the training samples, and the renewed linear combination coefficients were used to classify the test sample. Generally, the proposed framework can work for most RBC methods. From the viewpoint of regression analysis, the proposed framework has a solid theoretical soundness. Because it can, to an extent, identify the bias effect of the RBC method, it enables RBC to obtain more robust face recognition results. The experimental results on a variety of face databases demonstrated that the proposed framework can improve the collaborative representation classification, SRC, and improve the nearest neighbor classifier.
机译:Wright等人提出的稀疏表示分类(SRC)方法。由于其良好的性能,被认为是面部识别的突破。然而,它仍然不能完美地解决面部识别问题。其主要原因是面部图像的姿势,面部表情和照明变化可能相当严重,并且可用面部图像的数量少于面部图像的尺寸,因此所有训练的某种线性组合样品不能完全代表测试样品。在这项研究中,我们提出了一个新颖的框架来改进基于表示的分类(RBC)。该框架首先运行稀疏表示算法,并确定测试样本与所有训练样本的最佳线性组合之间不可避免的偏差,以便对其进行表示。然后,利用偏差和所有训练样本来解决线性组合系数。最后,使用分类规则,训练样本和更新后的线性组合系数对测试样本进行分类。通常,建议的框架可以适用于大多数RBC方法。从回归分析的角度来看,所提出的框架具有扎实的理论基础。因为它可以在一定程度上识别RBC方法的偏见效果,所以它使RBC可以获得更可靠的人脸识别结果。在各种人脸数据库上的实验结果表明,该框架可以改善协作表示分类SRC,并改善最近邻分类器。

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