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Dance Across Shifts: Forward-Facilitation Continual Test-Time Adaptation through Dynamic Style Bridging

About

Continual Test-Time Adaptation (CTTA) aims to empower perception systems to handle dynamic distribution shifts encountered after deployment. Existing methods predominantly follow a backward-alignment paradigm, which rigidly aligns incoming data with supervisory surrogates derived from the source domain. Consequently, they struggle with unreliable supervision and evolving distribution shifts. To overcome these limitations, we introduce a novel forward-facilitation paradigm through a method termed Dynamic Style Bridging. Prior to deployment, we construct a compact knowledge base of generated class exemplars. During test time, to mitigate inherent generative bias and adapt these proxies to incoming data, we propose a multi-level bridging mechanism. This mechanism dynamically injects the proxies with incoming data styles at the input, statistical, and representation levels, while preserving the original semantics of the proxies. These high-fidelity proxies are then used to provide reliable, on-demand supervisory signals, enabling stable adaptation under continual shifts. Extensive experiments across standard CTTA benchmarks demonstrate that our method achieves consistent and substantial improvements over recent state-of-the-art approaches. Code is available at \href{https://github.com/z1358/DAS}.

Zhilin Zhu, Yabin Wang, Zhiheng Ma, Yaguang Song, Yaowei Wang, Xiaopeng Hong• 2026

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-10C Severity Level 5 (test)
Average Error Rate (Severity 5)7
136
Semantic segmentationCityscapes to ACDC (test)
mIoU61.9
85
Online Continual Test-Time AdaptationImageNet-C Severity 5 (test)
Accuracy (Gaussian Noise, ImageNet-C S5)48.9
47
Image ClassificationCIFAR-100-C Severity 5--
26
Online Continual Test-Time AdaptationCIFAR-10-C severity 5 (test)
Gaussian Noise Accuracy (Severity 5)17
24
Semantic segmentationACDC Round 2
mIoU (Fog)71.2
19
Semantic segmentationACDC Round 3
mIoU (Fog)72
19
Continual Test-Time AdaptationCIFAR100C Severity 5 (test)
Accuracy (Gaussian Corruption)43.8
10
ClassificationImageNet-C (mixed domains)
Error Rate (%)44.6
8
Continual Test-Time AdaptationCIFAR100-to-CIFAR100C (test)
Mean Error29.8
7
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