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Discriminative Group Collaborative Competitive Representation for Visual Classification

机译:视觉分类的区分组协作竞争表示

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In pattern recognition, the representation-based classification (RBC) has attracted much attention recently. As a representative one of RBC, collaborative representation-based classification (CRC) and its variants have achieved promising classification performance in many visual classification tasks. However, most of the CRC methods cannot directly consider the class discrimination information of data that is very important for classification. To fully use the class discrimination information, we propose a novel discriminative group collaborative competitive representation-based classification method (DGCCR) in this paper. In the designed DGCCR model, the discriminative competitive relationships of classes, the discriminative decorrelations among classes and the weighted class-specific group constraints are simultaneously taken into account for strengthening the power of pattern discrimination. Experiments on three visual classification data sets demonstrate that the proposed DGCCR out-performs state-of-the-art RBC methods.
机译:在模式识别中,基于表示的分类(RBC)最近引起了很多关注。作为RBC的代表之一,基于协作表示的分类(CRC)及其变体在许多视觉分类任务中均实现了有希望的分类性能。但是,大多数CRC方法无法直接考虑对于分类非常重要的数据的类别区分信息。为了充分利用类别歧视信息,本文提出了一种新颖的基于群体协同竞争代表的判别分类方法(DGCCR)。在设计的DGCCR模型中,同时考虑了类别的区分竞争关系,类别之间的区分去相关以及加权的特定于类别的组约束,以增强模式识别的能力。在三个视觉分类数据集上进行的实验表明,提出的DGCCR优于最新的RBC方法。

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