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Jointly discriminative projection and dictionary learning for domain adaptive collaborative representation-based classification

机译:联合鉴别的投影和域名自适应协作表示的分类分类

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摘要

In recent years, collaborative representation-based classification (CRC) methods have shown impressive performance in many recognition tasks. However, when the training data have different distributions with the testing data, the performance of CRC will be degraded significantly. On the other hand, con-catenating training data from different sources as a single data set will affect the performance of CRC, as the shift exists between the different source domains. To address these problems, in this paper, we propose a Jointly Discriminative projection and Dictionary learning for domain adaptive Collaborative Representation-based Classification method (JD(2)-CRC). As the distributions of different source domains may be dissimilar, the data from all domains are projected into a common feature subspace where the latent shared structures can be found. Then a compact dictionary is learned to represent the projected data well. To find the most suitable projection matrices and dictionary for CRC, we design the objective function of JD(2)-CRC,according to the classification rule of CRC in feature subspace, which minimizes the ratio of within-class reconstruction errors over between-class reconstruction errors. Different to traditional optimization methods, an effective optimization procedure is presented based on gradient descent. Thus, the obtained collaborative representations have a better discriminability and suit the classification rule of CRC well. The experimental results demonstrate that the proposed method can achieve superior performance against other state-of-the-art methods. (C) 2019 Elsevier Ltd. All rights reserved.
机译:近年来,基于协作的分类(CRC)方法在许多识别任务中表现出令人印象深刻的性能。但是,当培训数据具有不同的分布与测试数据时,CRC的性能将显着降低。另一方面,随着单个数据集的不同来源的Con Con Con Con Constenating数据将影响CRC的性能,因为在不同的源极域之间存在偏移。为了解决这些问题,在本文中,我们提出了一个基于域自适应协作表示的分类方法的共同辨别的投影和字典学习(JD(2)-CRC)。由于不同源域的分布可以是不同的,因此将来自所有域的数据投影到可以找到潜在共享结构的通用特征子空间中。然后学习紧凑的字典来表示投影数据。要找到最合适的投影矩阵和CRC字典,我们根据特征子空间中CRC的分类规则设计JD(2)-CRC的目标函数,这最大限度地减少了类之间的类内重建错误的比率重建错误。与传统优化方法不同,基于梯度下降呈现有效的优化过程。因此,所获得的协作表示具有更好的可辨认性并适合CRC井的分类规则。实验结果表明,该方法可以实现对其他最先进的方法的卓越性能。 (c)2019年elestvier有限公司保留所有权利。

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