Unsupervised Domain Adaptation (UDA), a branch of transfer learning where labels for target samples are unavailable, has been widely researched and developed in recent years with the help of adversarially trained models. Although existing UDA algorithms are able to guide neural networks to extract transferable and discriminative features, classifiers are merely trained under the supervision of labeled source data. Given the inevitable discrepancy between source and target domains, the classifiers can hardly be aware of the target classification boundaries. In this paper, Shuffle Augmentation of Features (SAF), a novel UDA framework, is proposed to address the problem by providing the classifier with supervisory signals from target feature representations. SAF learns from the target samples, adaptively distills class-aware target features, and implicitly guides the classifier to find comprehensive class borders. Demonstrated by extensive experiments, the SAF module can be integrated into any existing adversarial UDA models to achieve performance improvements.
翻译:无人监督的域适应(UDA)是转让学习的一个分支,没有目标样品标签,近年来,在经过对抗性训练的模式的帮助下,进行了广泛的研究和开发,尽管现有的UDA算法能够指导神经网络提取可转移和歧视性特征,但分类者只是在标签源数据的监督下接受培训。鉴于源与目标域之间不可避免的差异,分类者几乎无法了解目标分类界限。本文提议采用新的UDA框架,即功能增减(SAF),通过向分类者提供目标特征表显示的监督信号来解决这一问题。苏丹武装部队从目标样本中学习了适应性蒸馏类目标特征,并隐含地指导分类者寻找全面的分类边界。通过广泛的实验,苏丹武装部队模块可以纳入现有的对抗性UDA模型,以实现绩效改进。