Domain adaptation for semantic segmentation enables to alleviate the need for large-scale pixel-wise annotations. Recently, self-supervised learning (SSL) with a combination of image-to-image translation shows great effectiveness in adaptive segmentation. The most common practice is to perform SSL along with image translation to well align a single domain (the source or target). However, in this single-domain paradigm, unavoidable visual inconsistency raised by image translation may affect subsequent learning. In this paper, based on the observation that domain adaptation frameworks performed in the source and target domain are almost complementary in terms of image translation and SSL, we propose a novel dual path learning (DPL) framework to alleviate visual inconsistency. Concretely, DPL contains two complementary and interactive single-domain adaptation pipelines aligned in source and target domain respectively. The inference of DPL is extremely simple, only one segmentation model in the target domain is employed. Novel technologies such as dual path image translation and dual path adaptive segmentation are proposed to make two paths promote each other in an interactive manner. Experiments on GTA5$\rightarrow$Cityscapes and SYNTHIA$\rightarrow$Cityscapes scenarios demonstrate the superiority of our DPL model over the state-of-the-art methods. The code and models are available at: \url{https://github.com/royee182/DPL}
翻译:语义分割法的校外调整有助于缓解大规模像素说明的需要。最近,自我监督的学习(SSL)与图像到图像翻译相结合,显示了适应性分割法的极大效果。最常见的做法是执行SSL和图像翻译,以很好地对单一域(源或目标)进行调整。然而,在这种单一域(源或目标)模式中,图像翻译产生的不可避免的视觉不一致可能会影响随后的学习。在本文件中,基于在源和目标域实施的域适应框架在图像翻译和SSLL方面几乎互为补充的观察,我们提出了一个新的双轨学习(DPL)框架,以缓解视觉不一致性。具体地说,DPL包含两种互补和互动的单行域适应管道,分别对源和目标域(源或目标)进行调整。在目标域只使用一个分路模式。建议双轨图图像翻译和双路调分解法等技术,以交互方式促进其他两种路径。GTA5$/right$City 模型和SYLA-Croria-Slimates the Developal-Destrations supleas the Stateal- StateL}