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Adversarial sliced Wasserstein domain adaptation networks

机译:对抗切片Wassersein域适配网络

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Domain adaptation has become a resounding success in learning a domain agnostic model that performs well on target dataset by leveraging source dataset which has related data distribution. Most of existing works aim at learning domain-invariant features across different domains, but they ignore the discriminability of learned features although it is import to improve the model's performance. This paper proposes a novel adversarial sliced Wasserstein domain adaptation network (AWDAN) that uses a shared encoder and classifier along with a domain classifier to enhance the discriminability of the domain-invariant features. AWDAN utilizes adversarial learning to learn domain-invariant features in feature space and simultaneously minimizes sliced Wasserstein distance in label space to enforce the generated features to be discriminative that guarantees the transfer performance. Meanwhile, we propose to fix the weights of the pre-trained CNN backbone to guarantee its adaptability. We provide theoretical analysis to demonstrate the efficacy of AWDAN. Experimental results show that the proposed AWDAN significantly outperforms existing domain adaptation methods on three visual domain adaptation tasks. Feature visualizations verify that AWDAN learns both domain-invariant and discriminative features, and can achieve domain agnostic feature learning. (C) 2020 Elsevier B.V. All rights reserved.
机译:域适应在学习域名可靠性模型方面取得了响亮的成功,通过利用具有相关数据分布的源数据集进行源数据集在目标数据集上执行良好。现有的大多数作品目标是在不同域中学习域不变的功能,但它们忽略了学习功能的可判断性,尽管它是导入以提高模型的性能。本文提出了一种新的逆势切片Wasserstein域适应网络(AWDAN),它使用共享编码器和分类器以及域分类器来增强域不变特征的可辨性。 AWDAN利用对冲学习学习特征空间中的域不变的功能,同时最大限度地减少标签空间中的切片WASSERTEIN距离,以强制生成的功能,以保证传输性能的判别。同时,我们建议修复预先训练的CNN骨干的重量,以保证其适应性。我们提供了理论分析,以证明AWDAN的功效。实验结果表明,建议的AWDAN在三个可视域适应任务上显着优于现有的域适应方法。特征可视化验证AWDAN是否了解域不变和歧视特征,并且可以实现域名不可知的特征学习。 (c)2020 Elsevier B.v.保留所有权利。

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