In this paper, we propose to tackle the problem of reducing discrepancies between multiple domains referred to as multi-source domain adaptation and consider it under the target shift assumption: in all domains we aim to solve a classification problem with the same output classes, but with labels' proportions differing across them. We design a method based on optimal transport, a theory that is gaining momentum to tackle adaptation problems in machine learning due to its efficiency in aligning probability distributions. Our method performs multi-source adaptation and target shift correction simultaneously by learning the class probabilities of the unlabeled target sample and the coupling allowing to align two (or more) probability distributions. Experiments on both synthetic and real-world data related to satellite image segmentation task show the superiority of the proposed method over the state-of-the-art.
翻译:在本文中,我们建议解决减少多源域适应的多个领域之间的差异问题,并在目标转移假设下考虑这一问题:在所有领域,我们的目标是用相同的产出类别解决分类问题,但标签的比例各不相同。我们设计了一种基于最佳运输的方法,这种理论由于机体学习中的适应问题在协调概率分布方面的效率而正在获得动力。我们的方法通过学习未标目标样本的等级概率和允许对两种(或更多的)概率分布进行组合,同时进行多源适应和目标转移修正。关于合成数据和实际世界数据与卫星图像分割任务有关的实验显示,拟议方法优于最新技术。