增强可转移性和可区别性的特定领域条件拼图自适应

Qi He, Zhaoquan Yuan, Xiao Wu, Jun-Yan He
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引用次数: 3

摘要

无监督域自适应(Unsupervised Domain Adaptation, UDA)的目的是将知识从一个标签丰富的源域转移到一个没有标签的目标域。现有的方法倾向于减少源域和目标域之间的分布差异或分配伪目标标签来实现自训练策略。然而,由于传统方法缺乏可移植性或可辨别性,导致其在目标域上的泛化能力有限。为了解决这一问题,提出了一种新的无监督域自适应框架,称为域特定条件拼图自适应网络(DCJAN),该框架同时鼓励网络提取可转移和判别特征。为了提高识别能力,提出了一种条件拼图模块,通过重构相应洗牌图像的类感知特征来重构原始图像的类感知特征。此外,为了提高可转移性,提出了一种针对特定领域的拼图自适应方法,该方法利用拼图的先验知识来减少不匹配。它对每个领域的条件拼图模块进行训练,并更新共享特征提取器,使特定领域的条件拼图模块不仅在对应的领域上表现良好,而且在其他领域上也表现良好。为了保证条件拼图的安全训练,提出了一种一致的训练策略。在广泛使用的Office-31、Office-Home、VisDA-2017和DomainNet数据集上进行的实验表明,所提出的方法的有效性优于最先进的方法。
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Domain-Specific Conditional Jigsaw Adaptation for Enhancing transferability and Discriminability
Unsupervised Domain Adaptation (UDA) aims to transfer knowledge from a label-rich source domain to a target domain where the label is unavailable. Existing approaches tend to reduce the distribution discrepancy between the source and target domains or assign the pseudo target labels to implement a self-training strategy. However, the transferability or discriminability lackage of the traditional methods results in the limited ability to generalize on the target domain. To remedy this issue, a novel unsupervised domain adaptation framework called Domain-specific Conditional Jigsaw Adaptation Network (DCJAN) is proposed for UDA, which simultaneously encourages the network to extract transferable and discriminative features. To improve the discriminability, a conditional jigsaw module is presented to reconstruct class-aware features of the original images by reconstructing that of corresponding shuffled images. Moreover, in order to enhance the transferability, a domain-specific jigsaw adaptation is proposed to deal with the domain gaps, which utilizes the prior knowledge of jigsaw puzzles to reduce mismatching. It trains conditional jigsaw modules for each domain and updates the shared feature extractor to make the domain-specific conditional jigsaw modules could perform well not only on the corresponding domain but also on the other domain. A consistent conditioning strategy is proposed to ensure the safe training of conditional jigsaw. Experiments conducted on the widely-used Office-31, Office-Home, VisDA-2017, and DomainNet datasets demonstrate the effectiveness of the proposed approach, which outperforms the state-of-the-art methods.
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