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Teacher-Student Competition for Unsupervised Domain Adaptation

机译:老师 - 学生竞赛无监督域适应

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With the supervision from source domain only in class-level, existing unsupervised domain adaptation (UDA) methods mainly learn the domain-invariant representations from a shared feature extractor, which causes the source-bias problem. This paper proposes an unsupervised domain adaptation approach with Teacher-Student Competition (TSC). In particular, a student network is introduced to learn the target-specific feature space, and we design a novel competition mechanism to select more credible pseudo-labels for the training of student network. We introduce a teacher network with the structure of existing conventional UDA method, and both teacher and student networks compete to provide target pseudo-labels to constrain every target sample's training in student network. Extensive experiments demonstrate that our proposed TSC framework significantly outperforms the state-of-the-art domain adaptation methods on Office-31 and ImageCLEF-DA benchmarks.
机译:随着Source域仅在类级别中的监督,现有无监督域适应(UDA)方法主要学习来自共享特征提取器的域不变表示,这会导致源极偏置问题。 本文提出了一种无监督的域名适应方法,与师生竞争(TSC)。 特别是,引入学生网络以了解目标特定的特征空间,我们设计一种新颖的竞争机制,为学生网络培训选择更可靠的伪标签。 我们将教师网络与现有的传统UDA方法的结构介绍,教师和学生网络都竞争提供目标伪标签,以限制学生网络中的每个目标样本的培训。 广泛的实验表明,我们所提出的TSC框架在Office-31和ImageClef-DA基准上显着优于最先进的域适应方法。

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