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Image Classification by Selective Regularized Subspace Learning

机译:通过选择性正则子空间学习进行图像分类

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摘要

Feature learning is an intensively studied research topic in image classification. Although existing methods like sparse coding, locality-constrained linear coding, fisher vector encoding, etc., have shown their effectiveness in image representation, most of them overlook a phenomenon called thesmall sample size problem, where the number of training samples is relatively smaller than the dimensionality of the features, which may limit the predictive power of the classifier. Subspace learning is a strategy to mitigate this problem by reducing the dimensionality of the features. However, most conventional subspace learning methods attempt to learn a global subspace to discriminate all the classes, which proves to be difficult and ineffective in multi-class classification task. To this end, we propose to learn a local subspace for each sample instead of learning a global subspace for all samples. Our key observation is that, in multi-class image classification, the label of each testing sample is only confused by a few classes which have very similar visual appearance to it. Thus, in this work, we propose a coarse-to-fine strategy, which first picks out such classes, and then conducts a local subspace learning to discriminate them. As the subspace learning method is regularized and conducted within some selected classes, we term it selective regularized subspace learning (SRSL), and we term our classification pipeline selective regularized subspace learning based multi-class image classification (SRSL_MIC). Experimental results on four representative datasets (Caltech-101, Indoor-67, ORL Faces and AR Faces) demonstrate the effectiveness of the proposed method.
机译:特征学习是图像分类中一个深入研究的课题。尽管现有的稀疏编码,局域约束线性编码,费舍尔矢量编码等方法已显示出它们在图像表示中的有效性,但大多数方法都忽略了一种称为小样本量问题的现象,其中训练样本的数量相对小于特征的维数,这可能会限制分类器的预测能力。子空间学习是通过减少特征的维数来缓解此问题的策略。然而,大多数常规子空间学习方法试图学习全局子空间以区分所有类别,这被证明在多类别分类任务中是困难且无效的。为此,我们建议为每个样本学习一个局部子空间,而不是为所有样本学习一个全局子空间。我们的主要观察结果是,在多类别图像分类中,每个测试样品的标签仅被与视觉外观非常相似的几类混淆。因此,在这项工作中,我们提出了一种从粗到细的策略,该策略首先挑选出此类,然后进行局部子空间学习以区分它们。由于子空间学习方法是在某些选定的类别中进行规范化和进行的,因此我们将其称为选择性正则化子空间学习(SRSL),并将其称为基于分类流水线的选择性正则化子空间学习的多类图像分类(SRSL_MIC)。在四个代表性数据集(Caltech-101,Indoor-67,ORL Faces和AR Faces)上的实验结果证明了该方法的有效性。

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