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Generalize then Adapt: Source-Free Domain Adaptive Semantic Segmentation

About

Unsupervised domain adaptation (DA) has gained substantial interest in semantic segmentation. However, almost all prior arts assume concurrent access to both labeled source and unlabeled target, making them unsuitable for scenarios demanding source-free adaptation. In this work, we enable source-free DA by partitioning the task into two: a) source-only domain generalization and b) source-free target adaptation. Towards the former, we provide theoretical insights to develop a multi-head framework trained with a virtually extended multi-source dataset, aiming to balance generalization and specificity. Towards the latter, we utilize the multi-head framework to extract reliable target pseudo-labels for self-training. Additionally, we introduce a novel conditional prior-enforcing auto-encoder that discourages spatial irregularities, thereby enhancing the pseudo-label quality. Experiments on the standard GTA5-to-Cityscapes and SYNTHIA-to-Cityscapes benchmarks show our superiority even against the non-source-free prior-arts. Further, we show our compatibility with online adaptation enabling deployment in a sequentially changing environment.

Jogendra Nath Kundu, Akshay Kulkarni, Amit Singh, Varun Jampani, R. Venkatesh Babu• 2021

Related benchmarks

TaskDatasetResultRank
Semantic segmentationGTA5 → Cityscapes (val)
mIoU53.4
533
Semantic segmentationSYNTHIA to Cityscapes (val)
Rider IoU29.3
435
Semantic segmentationGTA5 to Cityscapes (test)
mIoU43.5
151
Semantic segmentationSynthia to Cityscapes (test)--
138
Semantic segmentationGTA5 to Cityscapes 1.0 (val)
Road IoU91.7
98
Surgical Instrument SegmentationEndovis17 to Endovis18 1.0 (target)
Scissor IoU67.9
14
Semantic segmentationSynPASS-to-DensePASS (S-to-D) target 1.0 (test)
mIoU36
11
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