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Instance-Aware Test-Time Segmentation for Continual Domain Shifts

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Continual Test-Time Adaptation (CTTA) enables pre-trained models to adapt to continuously evolving domains. Existing methods have improved robustness but typically rely on fixed or batch-level thresholds, which cannot account for varying difficulty across classes and instances. This limitation is especially problematic in semantic segmentation, where each image requires dense, multi-class predictions. We propose an approach that adaptively adjusts pseudo labels to reflect the confidence distribution within each image and dynamically balances learning toward classes most affected by domain shifts. This fine-grained, class- and instance-aware adaptation produces more reliable supervision and mitigates error accumulation throughout continual adaptation. Extensive experiments across eight CTTA and TTA scenarios, including synthetic-to-real and long-term shifts, show that our method consistently outperforms state-of-the-art techniques, setting a new standard for semantic segmentation under evolving conditions.

Seunghwan Lee, Inyoung Jung, Hojoon Lee, Eunil Park, Sungeun Hong• 2025

Related benchmarks

TaskDatasetResultRank
Semantic segmentationCityscapes
mIoU50.5
578
Semantic segmentationBDD100K
mIoU44.5
78
Semantic segmentationCityscapes-C long-term adaptation (target)
mIoU (Brig.)79.2
40
Semantic segmentationCityscapes to ACDC (test)
mIoU62.9
38
Semantic segmentationDark Zurich
mIoU19.6
38
Semantic segmentationACDC
Overall Mean mIoU39.6
17
Semantic segmentationCityscapes-C
IoU Class 132.7
5
Semantic segmentationSHIFT Daytime → Night (gradual environmental transitions)
mIoU57.6
4
Semantic segmentationSHIFT Clear → Foggy gradual environmental transitions
mIoU45.2
4
Semantic segmentationSHIFT Clear → Rainy (gradual environmental transitions)
mIoU0.489
4
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