论文标题

然后重建解析:学习无监督域适应的紧凑特征

Disentanglement Then Reconstruction: Learning Compact Features for Unsupervised Domain Adaptation

论文作者

Zhou, Lihua, Ye, Mao, Li, Xinpeng, Zhu, Ce, Liu, Yiguang, Li, Xue

论文摘要

域适应性的最新作品始终学习域不变特征,以通过对抗方法来减轻源和目标域之间的差距。类别信息不充分使用,导致学习域不变特征的歧视性不足。我们提出了一种基于原型构建的新域适应方法,该方法喜欢捕获数据群集中心。具体而言,它由两个部分组成:解开和重建。首先,域特异性功能和域不变特征与原始特征分开。同时,估计了两个域的域原型和类原型。然后,通过重建分离的域不变特征和特定域特定功能的原始功能来训练重建器。通过该重建器,我们可以相应地使用类原型和域原型为原始特征构建原型。最后,特征提取网络被迫提取接近这些原型的特征。我们的贡献在于重建器的技术用途以获取原始的特征原型,该原型有助于学习紧凑而判别的特征。据我们所知,这个想法是第一次提出的。几个公共数据集的实验结果证实了我们方法的最新性能。

Recent works in domain adaptation always learn domain invariant features to mitigate the gap between the source and target domains by adversarial methods. The category information are not sufficiently used which causes the learned domain invariant features are not enough discriminative. We propose a new domain adaptation method based on prototype construction which likes capturing data cluster centers. Specifically, it consists of two parts: disentanglement and reconstruction. First, the domain specific features and domain invariant features are disentangled from the original features. At the same time, the domain prototypes and class prototypes of both domains are estimated. Then, a reconstructor is trained by reconstructing the original features from the disentangled domain invariant features and domain specific features. By this reconstructor, we can construct prototypes for the original features using class prototypes and domain prototypes correspondingly. In the end, the feature extraction network is forced to extract features close to these prototypes. Our contribution lies in the technical use of the reconstructor to obtain the original feature prototypes which helps to learn compact and discriminant features. As far as we know, this idea is proposed for the first time. Experiment results on several public datasets confirm the state-of-the-art performance of our method.

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