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Continual Segmentation under Joint Nonstationarity

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Evolving data streams induce joint nonstationarity in continual semantic segmentation, where semantic classes, input distributions, and supervision availability change simultaneously over time. This setting reflects practical structured prediction systems, yet remains largely unexplored in prior continual learning work, which typically studies these factors in isolation. We formalize continual segmentation under coupled class, domain, and label shifts and investigate learning in heterogeneous dense prediction environments with limited annotations and abundant unlabeled data. To address instability and overfitting arising from few-shot supervision under distribution drift, we introduce gradient-adaptive stabilization, a parameter-wise regularization mechanism implemented via gradient-scaled stochastic perturbations that promotes a principled stability-plasticity tradeoff. We further leverage unlabeled data through semi-supervised learning and introduce prototype anchored supervision that validates pseudo-labels via joint confidence and prototype consistency. Together, these mechanisms enable learning under joint nonstationarity in continual segmentation. Extensive empirical evaluation across class-incremental, domain-incremental, and few-shot regimes demonstrates consistent improvements over prior methods in heterogeneous structured prediction settings. Our results expose fundamental failure modes of existing continual segmentation approaches and provide insight into learning robust dense predictors in dynamically evolving environments.

Prashant Pandey, Himanshu Kumar, Devineni Sri Venkatraya Chowdary, Brejesh Lall• 2026

Related benchmarks

TaskDatasetResultRank
Continual SegmentationMed JASCL Disjoint
Total Drop (%)45.9
28
Semantic segmentationMed JASCL-Disjoint Session 1: AMOS
Dice Score46
28
Semantic segmentationMed JASCL-Disjoint Session 2: BCV
Dice Score39.8
28
Semantic segmentationMed JASCL-Disjoint Session 0: TS
Dice Score73.6
28
Continual Semantic SegmentationMed Semi-Supervised-JASCL
Session 0 Dice Score73.6
9
Semantic segmentationNatural-JASCL Semi-Supervised (Session 1)
mIoU27.84
9
Semantic segmentationNatural-JASCL Semi-Supervised (Session 2)
mIoU27.69
9
Semantic segmentationSemi-Supervised Natural-JASCL (Session 3)
mIoU25.47
9
Semantic segmentationNatural-JASCL Semi-Supervised (Session 0)
mIoU47.76
9
Continual Semantic SegmentationNatural-JASCL BDD, IDD
mIoU (Session 0)66
6
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