In this paper, we tackle the problem of one-shot unsupervised domain adaptation (OSUDA) for semantic segmentation where the segmentors only see one unlabeled target image during training. In this case, traditional unsupervised domain adaptation models usually fail since they cannot adapt to the target domain with over-fitting to one (or few) target samples. To address this problem, existing OSUDA methods usually integrate a style-transfer module to perform domain randomization based on the unlabeled target sample, with which multiple domains around the target sample can be explored during training. However, such a style-transfer module relies on an additional set of images as style reference for pre-training and also increases the memory demand for domain adaptation. Here we propose a new OSUDA method that can effectively relieve such computational burden. Specifically, we integrate several style-mixing layers into the segmentor which play the role of style-transfer module to stylize the source images without introducing any learned parameters. Moreover, we propose a patchwise prototypical matching (PPM) method to weighted consider the importance of source pixels during the supervised training to relieve the negative adaptation. Experimental results show that our method achieves new state-of-the-art performance on two commonly used benchmarks for domain adaptive semantic segmentation under the one-shot setting and is more efficient than all comparison approaches.
翻译:在本文中,我们处理单发、不受监督的域别调整(OSUDA)用于语义分解的问题,即区块在培训期间只看到一个未贴标签的目标图像。在这种情况下,传统的未经监督的域别调整模型通常会失败,因为它们不能适应目标域,因为过于适合一个(或几个)目标样本。为了解决这个问题,现有的OSUDA方法通常结合一个样式转让模块,在未贴标签的目标样本的基础上进行域域别随机化,在培训期间可以探索目标样本周围的多个域别。然而,这种样式转让模块依赖一组额外的图像作为培训前的样式参考,同时也增加了对域适应的记忆需求。在这里,我们提出了一个新的无监督域域别调整模型方法,可以有效地减轻这种计算负担。具体地说,我们将几个样式混合层纳入到分区,发挥样式转让模块的作用,在不引入任何已了解的参数的情况下对源图进行源化。此外,我们建议采用一种配对源别匹配(PPPM)方法来加权地考虑源别点的重要性,作为培训前期的样式参考,并增加对域域域域域域内应用的一种比较方法,以显示用于常规性调整性调整性调整的域域域域域域域域内常规性调整结果的模型,以显示,以显示常规性调整性调整性调整性调整结果。