Learning transferable and discriminative features for unsupervised domain adaptation
Yuntao Du, Ruiting Zhang, Xiaowen Zhang, Yirong Yao, Hengyang Lu,, Chongjun Wang

TL;DR
This paper introduces TFDF, a novel unsupervised domain adaptation method that enhances feature transferability and discriminability by combining distribution alignment with MMCD and discriminative learning strategies.
Contribution
It proposes a new approach that uses MMCD for better distribution alignment and combines local and global discriminative learning within a unified framework.
Findings
Outperforms existing methods on five real-world datasets.
Effectively captures second-order statistical information.
Improves domain-invariant feature learning.
Abstract
Although achieving remarkable progress, it is very difficult to induce a supervised classifier without any labeled data. Unsupervised domain adaptation is able to overcome this challenge by transferring knowledge from a labeled source domain to an unlabeled target domain. Transferability and discriminability are two key criteria for characterizing the superiority of feature representations to enable successful domain adaptation. In this paper, a novel method called \textit{learning TransFerable and Discriminative Features for unsupervised domain adaptation} (TFDF) is proposed to optimize these two objectives simultaneously. On the one hand, distribution alignment is performed to reduce domain discrepancy and learn more transferable representations. Instead of adopting \textit{Maximum Mean Discrepancy} (MMD) which only captures the first-order statistical information to measure…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning
