Generative Alignment of Posterior Probabilities for Source-free Domain Adaptation

S. Chhabra, Hemanth Venkateswara, Baoxin Li
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引用次数: 2

Abstract

Existing domain adaptation literature comprises multiple techniques that align the labeled source and unlabeled target domains at different stages, and predict the target labels. In a source-free domain adaptation setting, the source data is not available for alignment. We present a source-free generative paradigm that captures the relations between the source categories and enforces them onto the unlabeled target data, thereby circumventing the need for source data without introducing any new hyper-parameters. The adaptation is performed through the adversarial alignment of the posterior probabilities of the source and target categories. The proposed approach demonstrates competitive performance against other source-free domain adaptation techniques and can also be used for source-present settings.
无源域自适应的后验概率生成对齐
现有的领域适应文献包括多种技术,它们在不同阶段对标记的源和未标记的目标领域进行对齐,并预测目标标签。在无源域自适应设置中,源数据不可用于对齐。我们提出了一个无源的生成范式,它捕获源类别之间的关系,并将它们强制到未标记的目标数据上,从而在不引入任何新的超参数的情况下避免了对源数据的需求。自适应是通过源和目标类别的后验概率的对抗性对齐来执行的。所提出的方法展示了与其他无源域自适应技术相比具有竞争力的性能,也可用于源当前设置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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