Recent unsupervised domain adaptation methods have utilized vicinal space between the source and target domains. However, the equilibrium collapse of labels, a problem where the source labels are dominant over the target labels in the predictions of vicinal instances, has never been addressed. In this paper, we propose an instance-wise minimax strategy that minimizes the entropy of high uncertainty instances in the vicinal space to tackle the stated problem. We divide the vicinal space into two subspaces through the solution of the minimax problem: contrastive space and consensus space. In the contrastive space, inter-domain discrepancy is mitigated by constraining instances to have contrastive views and labels, and the consensus space reduces the confusion between intra-domain categories. The effectiveness of our method is demonstrated on public benchmarks, including Office-31, Office-Home, and VisDA-C, achieving state-of-the-art performances. We further show that our method outperforms the current state-of-the-art methods on PACS, which indicates that our instance-wise approach works well for multi-source domain adaptation as well. Code is available at https://github.com/NaJaeMin92/CoVi.
翻译:最近未经监督的域适应方法利用了源与目标区域之间的盘点空间。然而,标签的平衡崩溃问题从未得到解决,即源标签在昆虫事件预测中主要凌驾于目标标签之上,但标签的平衡崩溃问题一直没有得到解决。在本文件中,我们建议了一种实例式的迷你法战略,以最大限度地减少盘点空间中高度不确定性的环球,从而解决所述问题。我们通过解决微缩问题,将盘点空间分为两个子空间:对比空间和共识空间。在对比空间中,由于限制使用对比式观点和标签以及共识空间,使源标签在目标标签上占主导地位,从而缓解了差异。我们的方法的有效性体现在公共基准上,包括办公室-31、办公室-Home和VisDA-C, 实现最先进的性表现。我们进一步表明,我们的方法超过了目前PACS的状态-艺术方法,这表明我们的实例性方法在多源域适应方面做得很好。 http-ja-JA/MI/MI/MIFF。 http://A-NA/MIGU/MR/MQ。