论文标题
通过深层条件适应网络的域适应和图像分类
Domain Adaptation and Image Classification via Deep Conditional Adaptation Network
论文作者
论文摘要
无监督的域适应性旨在将在源域上训练的监督模型推广到未标记的目标域。特征空间的边际分布比对被广泛用于减少源和目标域之间的域差异。但是,它假设源和目标域共享相同的标签分布,从而限制其应用程序范围。在本文中,我们考虑了一个更一般的应用程序方案,其中源和目标域的标签分布不相同。在这种情况下,基于边际分布对准的方法将容易受到负转移的影响。为了解决这个问题,我们提出了一种基于特征空间的条件分布比对,提出了一种新型的无监督域适应方法,深度条件适应网络(DCAN)。要具体而言,我们通过最大程度地减少源和目标域的深度特征的条件分布之间的条件最大平均差异来减少域差异,并通过最大化样本和预测标签之间的相互信息来从目标域中提取判别信息。此外,DCAN可用于解决特殊情况,部分无监督的域适应,其中目标域类别是源域类别的子集。对无监督的域适应性和部分无监督域的适应性的实验表明,DCAN在最先进的方法上实现了优越的分类性能。
Unsupervised domain adaptation aims to generalize the supervised model trained on a source domain to an unlabeled target domain. Marginal distribution alignment of feature spaces is widely used to reduce the domain discrepancy between the source and target domains. However, it assumes that the source and target domains share the same label distribution, which limits their application scope. In this paper, we consider a more general application scenario where the label distributions of the source and target domains are not the same. In this scenario, marginal distribution alignment-based methods will be vulnerable to negative transfer. To address this issue, we propose a novel unsupervised domain adaptation method, Deep Conditional Adaptation Network (DCAN), based on conditional distribution alignment of feature spaces. To be specific, we reduce the domain discrepancy by minimizing the Conditional Maximum Mean Discrepancy between the conditional distributions of deep features on the source and target domains, and extract the discriminant information from target domain by maximizing the mutual information between samples and the prediction labels. In addition, DCAN can be used to address a special scenario, Partial unsupervised domain adaptation, where the target domain category is a subset of the source domain category. Experiments on both unsupervised domain adaptation and Partial unsupervised domain adaptation show that DCAN achieves superior classification performance over state-of-the-art methods.