A Self-Paced Category-Aware Approach for Unsupervised Adaptation Networks

Wenzhen Huang, Peipei Yang, Kaiqi Huang
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引用次数: 2

Abstract

The success of deep neural networks usually relies on a large number of labeled training samples, which unfortunately are not easy to obtain in practice. Unsupervised domain adaptation focuses on the problem where there is no labeled data in the target domain. In this paper, we propose a novel deep unsupervised domain adaptation method that learns transferable features. Different from most existing methods, it attempts to learn a better domain-invariant feature representation by performing a category-wise adaptation to match the conditional distributions of samples with respect to each category. A self-paced learning strategy is used to bring the awareness of label information gradually, which makes the category-wise adaptation feasible even if the labels are unavailable in target domain. Then, we give detailed theoretical analysis to explain how the better performance is obtained. The experimental results show that our method outperforms the current state of the arts on standard domain adaptation datasets.
无监督自适应网络的自定步分类感知方法
深度神经网络的成功通常依赖于大量的标记训练样本,不幸的是,这些样本在实践中并不容易获得。无监督域自适应主要研究目标域中没有标记数据的问题。本文提出了一种学习可转移特征的深度无监督域自适应方法。与大多数现有方法不同,它试图通过执行分类自适应来匹配样本相对于每个类别的条件分布来学习更好的域不变特征表示。采用自进度学习策略,逐步提高标签信息的感知能力,使分类自适应在目标域不可用标签的情况下也是可行的。然后,对如何获得更好的性能进行了详细的理论分析。实验结果表明,该方法在标准领域自适应数据集上的性能优于目前的研究水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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