Cross-Domain Semantic Segmentation via Domain-Invariant Interactive Relation Transfer

2020 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR)(2020)

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摘要
Exploiting photo-realistic synthetic data to train semantic segmentation models has received increasing attention over the past years. However, the domain mismatch between synthetic and real images will cause a significant performance drop when the model trained with synthetic images is directly applied to real-world scenarios. In this paper, we propose a new domain adaptation approach, called Pivot Interaction Transfer (PIT). Our method mainly focuses on constructing pivot information that is common knowledge shared across domains as a bridge to promote the adaptation of semantic segmentation model from synthetic domains to real-world domains. Specifically, we first infer the image-level category information about the target images, which is then utilized to facilitate pixel-level transfer for semantic segmentation, with the assumption that the interactive relation between the image-level category information and the pixel-level semantic information is invariant across domains. To this end, we propose a novel multi-level region expansion mechanism that aligns both the image-level and pixel-level information. Comprehensive experiments on the adaptation from both GTAV and SYNTHIA to Cityscapes clearly demonstrate the superiority of our method.
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关键词
pivot interaction transfer,multilevel region expansion mechanism,domain-invariant interactive relation transfer,domain mismatch,photo-realistic synthetic data,cross-domain semantic segmentation,pixel-level information,pixel-level semantic information,pixel-level transfer,target images,image-level category information,real-world domains,synthetic domains,semantic segmentation model,pivot information,domain adaptation approach,significant performance drop
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