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Unsupervised Domain Adaptation VIA Cluster Alignment with Maximum Classifier Discrepancy

机译:通过群集对齐与最大分类器差异的无监督域适应

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摘要

One way of addressing the problem of unsupervised domain adaptation (UDA) is to perform adversarial training between two classifiers and their shared feature extractor. The two classifiers are enforced to detect the misaligned regions between the source and target domains, while the feature extractor aligns the features by confusing the classifiers. Although this method yields improvement, it ignores the relationship among target neighbors, which may consequently limit the model performance. In this work, we propose a new alignment strategy based on the "cluster assumption" to ensure the aligned target features preserve their clusters by avoiding overlap with decision boundaries. Furthermore, to make the aligned features more compact, we constrain them to be ro-bust against adversarial perturbation using the different views of the classifiers. Extensive experiments demonstrate the effectiveness of our solution on various datasets.
机译:解决无监督域适应问题(UDA)的一种方法是在两个分类器和其共享特征提取器之间执行对抗性培训。 强制执行两个分类器以检测源和目标域之间的错位区域,而特征提取器通过混淆分类器来对准特征。 虽然这种方法产生改善,但它忽略了目标邻居之间的关系,这可能会限制模型性能。 在这项工作中,我们提出了一种基于“群集假设”的新的对齐策略,以确保对齐的目标特征通过避免与决策边界的重叠重叠来保护其群集。 此外,为了使对齐的特征更加紧凑,我们将它们限制使用不同的分类器的不同视图对抗对抗扰动。 广泛的实验证明了我们对各种数据集的解决方案的有效性。

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