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Local Ridge Regression For Face Recognition

机译:局部岭回归用于人脸识别

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Ridge regression (RR) for classification is a regularized least square method to model the linear dependency between covariate variables and labels. By applying appropriate techniques to encode the multivariate labels in face recognition as the vertices of the regular simplex which can separate points with highest degree of symmetry, RR maps the face images into a face subspace where the images from each individual will locate near their individual targets. However, as a holistic method, RR operates directly on a whole face region represented as a vector and thus cannot effectively recognize the faces with illumination variations and partial occlusions. In this paper, we present a novel algorithm, termed as local ridge regression (LRR). Different from RR, LRR emphasizes on each local face region matching rather than the whole. As a result, LRR can not only enhance the robustness to the local variations by utilizing the spatial and geometrical information of facial components, but also avoid the dimensionality reduction in the holistic RR as a preprocessing. Furthermore, an efficient cross-validation algorithm is adopted to select the regularization parameters in each local region. Experiments on two standard face databases demonstrate that the proposed algorithm significantly outperforms RR and the two popular linear face recognition techniques (Eigenface and Fisherface). Although we concentrate on RR in this paper, following the proposed line of the research, many current multi-category classifiers can also be applied in face recognition through combining the characteristics of face images and may obtain better recognition accuracies.
机译:用于分类的Ridge回归(RR)是一种正则化最小二乘法,用于对协变量和标签之间的线性相关性进行建模。通过应用适当的技术将人脸识别中的多变量标签编码为可以分离具有最高对称度的点的常规单纯形的顶点,RR将人脸图像映射到人脸子空间中,每个人的图像都将位于这些人的单个目标附近。然而,作为整体方法,RR直接在表示为矢量的整个面部区域上操作,因此不能有效地识别具有照明变化和部分遮挡的面部。在本文中,我们提出了一种新颖的算法,称为局部山脊回归(LRR)。与RR不同,LRR强调每个局部面部区域的匹配而不是整体。结果,LRR不仅可以通过利用面部成分的空间和几何信息来增强对局部变化的鲁棒性,而且还可以避免将整体RR的尺寸减小作为预处理。此外,采用有效的交叉验证算法在每个局部区域中选择正则化参数。在两个标准人脸数据库上进行的实验表明,该算法明显优于RR和两种流行的线性人脸识别技术(Eigenface和Fisherface)。尽管我们在本文中专注于RR,但按照研究的建议路线,结合现有人脸图像的特征,许多当前的多类别分类器也可以应用于人脸识别,并且可以获得更好的识别精度。

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