CVMar 23, 2023

Patch-Mix Transformer for Unsupervised Domain Adaptation: A Game Perspective

arXiv:2303.13434v2119 citationsh-index: 14
AI Analysis

This work addresses domain adaptation challenges in computer vision, offering a novel method that improves over state-of-the-art approaches, though it is incremental in applying game theory to existing UDA frameworks.

The paper tackles the problem of unsupervised domain adaptation (UDA) with large domain gaps by proposing PMTrans, a vision transformer-based model that uses a game-theoretical approach to bridge domains via an intermediate distribution, achieving significant performance gains such as +17.7% on DomainNet.

Endeavors have been recently made to leverage the vision transformer (ViT) for the challenging unsupervised domain adaptation (UDA) task. They typically adopt the cross-attention in ViT for direct domain alignment. However, as the performance of cross-attention highly relies on the quality of pseudo labels for targeted samples, it becomes less effective when the domain gap becomes large. We solve this problem from a game theory's perspective with the proposed model dubbed as PMTrans, which bridges source and target domains with an intermediate domain. Specifically, we propose a novel ViT-based module called PatchMix that effectively builds up the intermediate domain, i.e., probability distribution, by learning to sample patches from both domains based on the game-theoretical models. This way, it learns to mix the patches from the source and target domains to maximize the cross entropy (CE), while exploiting two semi-supervised mixup losses in the feature and label spaces to minimize it. As such, we interpret the process of UDA as a min-max CE game with three players, including the feature extractor, classifier, and PatchMix, to find the Nash Equilibria. Moreover, we leverage attention maps from ViT to re-weight the label of each patch by its importance, making it possible to obtain more domain-discriminative feature representations. We conduct extensive experiments on four benchmark datasets, and the results show that PMTrans significantly surpasses the ViT-based and CNN-based SoTA methods by +3.6% on Office-Home, +1.4% on Office-31, and +17.7% on DomainNet, respectively.

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