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Weighted Mixed-Norm Regularized Regression for Robust Face Identification

机译:加权混合范数正则回归用于稳健的人脸识别

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Face identification (FI) via regression-based classification has been extensively studied during the recent years. Most vector-based methods achieve appealing performance in handing the noncontiguous pixelwise noises, while some matrix-based regression methods show great potential in dealing with contiguous imagewise noises. However, there is a lack of consideration of the mixture noises case, where both contiguous and noncontiguous noises are jointly contained. In this paper, we propose a weighted mixed-norm regression (WMNR) method to cope with the mixture image corruption. WMNR reveals certain essential characteristics of FI problems and bridges the vector- and matrix-based methods. Particularly, WMNR provides two advantages for both theoretical analysis and practical implementation. First, it generalizes possible distributions of the residuals into a unified feature weighted loss function. Second, it constrains the residual image as low-rank structure that can be quantified with general nonconvex functions and a weight factor. Moreover, a new reweighted alternating direction method of multipliers algorithm is derived for the proposed WMNR model. The algorithm exhibits great computational efficiency since it divides the original optimization problem into certain subproblems with analytical solution or can be implemented in a parallel manner. Extensive experiments on several public face databases demonstrate the advantages of WMNR over the state-of-the-art regression-based approaches. More specifically, the WMNR achieves an appealing tradeoff between identification accuracy and computational efficiency. Compared with the pure vector-based methods, our approach achieves more than 10 performance improvement and saves more than 70 of runtime, especially in severe corruption scenarios. Compared with the pure matrix-based methods, although it requires slightly more computation time, the performance benefits are even larger; up to 20 improvement can be obtained.
机译:近年来,已经通过基于回归的分类对人脸识别(FI)进行了广泛的研究。大多数基于矢量的方法在处理不连续的像素级噪声方面都具有吸引人的性能,而某些基于矩阵的回归方法在处理连续的图像级噪声方面显示出巨大的潜力。但是,没有考虑混合噪声的情况,在混合噪声的情况下,连续噪声和非连续噪声都被同时包含。在本文中,我们提出了加权混合范数回归(WMNR)方法来应对混合图像的损坏。 WMNR揭示了FI问题的某些基本特征,并桥接了基于矢量和矩阵的方法。特别是,WMNR为理论分析和实际实施提供了两个优势。首先,它将残差的可能分布概括为统一的特征加权损失函数。其次,它将残差图像限制为低阶结构,可以使用一般的非凸函数和权重因子对其进行量化。此外,针对所提出的WMNR模型,推导了一种新的乘数算法的加权加权交替方向方法。该算法具有很好的计算效率,因为它可以将原始的优化问题分解为带有解析解的某些子问题,或者可以并行实现。在几个公开的人脸数据库上进行的大量实验证明,WMNR优于基于回归的最新技术。更具体地说,WMNR在标识准确度和计算效率之间实现了吸引人的折衷。与基于纯矢量的方法相比,我们的方法可实现10多个性能改进,并节省70多个运行时,尤其是在严重损坏的情况下。与基于纯矩阵的方法相比,尽管它需要稍长的计算时间,但性能优势更大。最多可获得20个改进。

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