具有鲁棒伪标签损失的球面空间域自适应

Xiang Gu, Jian Sun, Zongben Xu
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引用次数: 97

摘要

对抗域自适应(DA)是一种通过对抗训练学习域不变特征的有效方法。本文提出了一种完全定义在球形特征空间中的对抗数据处理方法,其中定义了用于标签预测的球形分类器和用于识别领域标签的球形域判别器。为了鲁棒地利用伪标签,我们开发了一种鲁棒球形特征空间中的伪标签损失算法,该算法通过正确标记的后验概率对目标数据估计标签的重要性进行加权,该方法由球形特征空间中的高斯均匀混合模型建模。大量的实验表明,我们的方法达到了最先进的结果,也证实了球形分类器、球形鉴别器和球形鲁棒伪标签损失的有效性。
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Spherical Space Domain Adaptation With Robust Pseudo-Label Loss
Adversarial domain adaptation (DA) has been an effective approach for learning domain-invariant features by adversarial training. In this paper, we propose a novel adversarial DA approach completely defined in spherical feature space, in which we define spherical classifier for label prediction and spherical domain discriminator for discriminating domain labels. To utilize pseudo-label robustly, we develop a robust pseudo-label loss in the spherical feature space, which weights the importance of estimated labels of target data by posterior probability of correct labeling, modeled by Gaussian-uniform mixture model in spherical feature space. Extensive experiments show that our method achieves state-of-the-art results, and also confirm effectiveness of spherical classifier, spherical discriminator and spherical robust pseudo-label loss.
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