IEEE Trans Neural Netw Learn Syst. 2016 Nov;27(11):2160-2173. doi: 10.1109/TNNLS.2015.2464090. Epub 2015 Aug 31.
In this paper, we aim at learning robust and discriminative subspaces from noisy data. Subspace learning is widely used in extracting discriminative features for classification. However, when data are contaminated with severe noise, the performance of most existing subspace learning methods would be limited. Recent advances in low-rank modeling provide effective solutions for removing noise or outliers contained in sample sets, which motivates us to take advantage of low-rank constraints in order to exploit robust and discriminative subspace for classification. In particular, we present a discriminative subspace learning method called the supervised regularization-based robust subspace (SRRS) approach, by incorporating the low-rank constraint. SRRS seeks low-rank representations from the noisy data, and learns a discriminative subspace from the recovered clean data jointly. A supervised regularization function is designed to make use of the class label information, and therefore to enhance the discriminability of subspace. Our approach is formulated as a constrained rank-minimization problem. We design an inexact augmented Lagrange multiplier optimization algorithm to solve it. Unlike the existing sparse representation and low-rank learning methods, our approach learns a low-dimensional subspace from recovered data, and explicitly incorporates the supervised information. Our approach and some baselines are evaluated on the COIL-100, ALOI, Extended YaleB, FERET, AR, and KinFace databases. The experimental results demonstrate the effectiveness of our approach, especially when the data contain considerable noise or variations.
在本文中,我们旨在从噪声数据中学习鲁棒且具有判别力的子空间。子空间学习广泛用于提取分类的判别特征。然而,当数据受到严重噪声污染时,大多数现有子空间学习方法的性能将受到限制。最近在低秩建模方面的进展为去除样本集中包含的噪声或异常值提供了有效的解决方案,这促使我们利用低秩约束来挖掘用于分类的鲁棒且具有判别力的子空间。具体来说,我们提出了一种称为基于监督正则化的鲁棒子空间(SRRS)方法的判别子空间学习方法,该方法结合了低秩约束。SRRS 从噪声数据中寻求低秩表示,并从恢复的干净数据中共同学习判别子空间。设计了一个监督正则化函数来利用类标签信息,从而增强子空间的判别能力。我们的方法被表述为一个约束秩最小化问题。我们设计了一种不精确的增广拉格朗日乘子优化算法来解决它。与现有的稀疏表示和低秩学习方法不同,我们的方法从恢复的数据中学习低维子空间,并显式地包含监督信息。我们的方法和一些基线在 COIL-100、ALOI、Extended YaleB、FERET、AR 和 KinFace 数据库上进行了评估。实验结果表明了我们方法的有效性,尤其是在数据包含相当大的噪声或变化时。