论文标题
通过生成学习进行公平的跨域改编
Towards Fair Cross-Domain Adaptation via Generative Learning
论文作者
论文摘要
域的适应性(DA)目标是适应经过标记良好的源域训练的模型到不同分布中的未标记的目标域。现有DA通常假设标签良好的源域是按等级平衡的,这意味着每个源类的大小相对相似。但是,在现实世界中,由于数据收集和注释的难度,源域中某些类别的样品可能很少,这导致在这些少数类别的目标域上的性能下降。为了进行公平的跨域适应并提高这些少数族裔类别的性能,我们为公平的跨域分类开发了一种新颖的生成型跨域适应性(GFCA)算法。具体而言,探索了生成功能增强以合成几个源源类别的有效培训数据,而有效的跨域对准旨在使知识从源中进行调整以促进目标学习。两个大型跨域视觉数据集的实验结果证明了我们提出的方法在改善少量射击和总体分类精度与最先进的DA方法相比的有效性。
Domain Adaptation (DA) targets at adapting a model trained over the well-labeled source domain to the unlabeled target domain lying in different distributions. Existing DA normally assumes the well-labeled source domain is class-wise balanced, which means the size per source class is relatively similar. However, in real-world applications, labeled samples for some categories in the source domain could be extremely few due to the difficulty of data collection and annotation, which leads to decreasing performance over target domain on those few-shot categories. To perform fair cross-domain adaptation and boost the performance on these minority categories, we develop a novel Generative Few-shot Cross-domain Adaptation (GFCA) algorithm for fair cross-domain classification. Specifically, generative feature augmentation is explored to synthesize effective training data for few-shot source classes, while effective cross-domain alignment aims to adapt knowledge from source to facilitate the target learning. Experimental results on two large cross-domain visual datasets demonstrate the effectiveness of our proposed method on improving both few-shot and overall classification accuracy comparing with the state-of-the-art DA approaches.