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Domain class consistency based transfer learning for image classification across domains

机译:基于域类一致性的域图像分类的转移学习

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摘要

Abstract Distribution mismatch between the modeling data and the query data is a known domain adaptation issue in machine learning. To this end, in this paper, we propose a l 2,1-norm based discriminative robust kernel transfer learning (DKTL) method for high-level recognition tasks. The key idea is to realize robust domain transfer by simultaneously integrating domain-class-consistency (DCC) metric based discriminative subspace learning, kernel learning in reproduced kernel Hilbert space, and representation learning between source and target domain. The DCC metric includes two properties: domain-consistency used to measure the between-domain distribution discrepancy and class-consistency used to measure the within-domain class separability. The essential objective of the proposed transfer learning method is to maximize the DCC metric, which is equivalently to minimize the domain-class-inconsistency (DCIC), such that domain distribution mismatch and class inseparability are well formulated and unified simultaneously. The merits of the proposed method include (1) the robust sparse coding selects a few valuable source data with noises (outliers) removed during knowledge transfer, and (2) the proposed DCC metric can pursue more discriminative subspaces of different domains. As a result, the maximum class-separability is also well guaranteed. Extensive experiments on a number of visual datasets demonstrate the superiority of the proposed method over other state-of-the-art domain adaptation and tran
机译:<![cdata [ Abstract 建模数据和查询数据之间的分发不匹配是机器学习中的已知域适应问题。为此,在本文中,我们提出了一个 l 2,1 -norm基于鉴别的鲁棒内核转移学习(DKTL)用于高级识别任务的方法。关键的想法是通过同时集成域 - 类 - 一致性(DCC)基于基于鉴别的歧视子空间学习,在再现内核希尔伯特空间中的内核学习,以及源代码学习和目标域名。 DCC度量标准包括两个属性:域 - 一致性用于测量域分布差异和类 - 一致性用于测量内部-Domain类可分离性。所提出的转移学习方法的基本目的是最大化DCC度量,这等效地最小化域 - 类 - 不一致(DCIC),使得域分布不匹配和类别不可分割性同时配制和统一。所提出的方法的优点包括(1)强大的稀疏编码选择了在知识转移期间删除的噪声(异常值)的一些有价值的源数据,并且(2)所提出的DCC度量可以追求不同域的更多辨别子空间。因此,最大的类别可分离性也很好地保证。关于许多视觉数据集的广泛实验证明了在其他最先进的域适应和TRAN上的提出方法的优势

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