Learning to Generate the Unknowns as a Remedy to the Open-Set Domain Shift

Mahsa Baktash, Tianle Chen, M. Salzmann
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引用次数: 4

Abstract

In many situations, the data one has access to at test time follows a different distribution from the training data. Over the years, this problem has been tackled by closed-set domain adaptation techniques. Recently, open-set domain adaptation has emerged to address the more realistic scenario where additional unknown classes are present in the target data. In this setting, existing techniques focus on the challenging task of isolating the unknown target samples, so as to avoid the negative transfer resulting from aligning the source feature distributions with the broader target one that encompasses the additional unknown classes. Here, we propose a simpler and more effective solution consisting of complementing the source data distribution and making it comparable to the target one by enabling the model to generate source samples corresponding to the unknown target classes. We formulate this as a general module that can be incorporated into any existing closed-set approach and show that this strategy allows us to outperform the state of the art on open-set domain adaptation benchmark datasets.
学习生成未知数作为开集域移位的补救措施
在许多情况下,测试时访问的数据遵循与训练数据不同的分布。多年来,这一问题一直被闭集域自适应技术所解决。最近,开放集域自适应已经出现,以解决目标数据中存在额外未知类的更现实的场景。在这种情况下,现有的技术专注于隔离未知目标样本的挑战性任务,以避免将源特征分布与包含额外未知类的更广泛的目标特征分布对齐所导致的负迁移。在这里,我们提出了一种更简单有效的解决方案,通过使模型能够生成与未知目标类对应的源样本,来补充源数据分布并使其与目标数据分布相当。我们将其表述为一个通用模块,可以合并到任何现有的闭集方法中,并表明该策略使我们能够在开集域自适应基准数据集上超越目前的技术水平。
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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