Locality Features Encoding in Regularized Linear Representation Learning for Face Recognition

Waqas Jadoon, Haixian Zhang
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引用次数: 1

Abstract

Regularized linear regression based representation techniques for face recognition (FR) have attracted a lot of attention in past years. The l1-regularized sparse representation based classification (SRC) method achieves state-of-the-art results in FR. However, recently several studies have shown the role of collaborative representation (CR) that plays a crucial role for the success of SRC in robust classification and not the l1-regularization constraints on representation. In this paper, we propose a novel Robust Locality based Collaborative Representation (RLCR) method using weighted regularized least square regression approach that incorporates the locality structure and feature variance among data elements into linear representation. RLCR is an extension of collaborative representation based classification (CRC) approach, a recently proposed fast alternative to SRC. The performance of CRC method dramatically decreases when the feature dimension is low or the number of training samples per subject is limited. RLCR improves classification performance over that of original CRC formulation. Experimental results on real world face datasets using low dimensional as well as high dimensional linear feature space have demonstrated the effectiveness of the proposed method and is found to be very competitive with the state-of-the-art image classification methods.
正则化线性表示学习在人脸识别中的局部特征编码
近年来,基于正则化线性回归的人脸识别表示技术引起了人们的广泛关注。基于正则化稀疏表示的分类(SRC)方法在FR中取得了最先进的结果。然而,最近的一些研究表明,协作表示(CR)的作用对SRC在鲁棒分类中的成功起着至关重要的作用,而不是对表示的正则化约束。本文采用加权正则化最小二乘回归方法,提出了一种鲁棒的基于局部性的协同表示(RLCR)方法,该方法将局部性结构和数据元素之间的特征方差纳入线性表示。RLCR是基于协作表示的分类(CRC)方法的扩展,是最近提出的一种快速替代SRC的方法。当特征维数较低或每个受试者的训练样本数量有限时,CRC方法的性能会显著下降。与原始CRC公式相比,RLCR提高了分类性能。在真实世界人脸数据集上使用低维和高维线性特征空间的实验结果证明了该方法的有效性,并且发现该方法与最先进的图像分类方法具有很强的竞争力。
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