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COLA: Context-aware Language-driven Test-time Adaptation

IEEE Transactions on Image Processing (IEEE TIP), 2025
22 September 2025
Aiming Zhang
Tianyuan Yu
Liang Bai
Jun Tang
Yanming Guo
Yirun Ruan
Yun Zhou
Zhihe Lu
    TTAVLM
ArXiv (abs)PDFHTMLGithub
Main:12 Pages
9 Figures
Bibliography:2 Pages
Abstract

Test-time adaptation (TTA) has gained increasing popularity due to its efficacy in addressing ``distribution shift'' issue while simultaneously protecting data privacy.However, most prior methods assume that a paired source domain model and target domain sharing the same label space coexist, heavily limiting their applicability.In this paper, we investigate a more general source model capable of adaptation to multiple target domains without needing shared labels.This is achieved by using a pre-trained vision-language model (VLM), \egno, CLIP, that can recognize images through matching with class descriptions.While the zero-shot performance of VLMs is impressive, they struggle to effectively capture the distinctive attributes of a target domain.To that end, we propose a novel method -- Context-aware Language-driven TTA (COLA).The proposed method incorporates a lightweight context-aware module that consists of three key components: a task-aware adapter, a context-aware unit, and a residual connection unit for exploring task-specific knowledge, domain-specific knowledge from the VLM and prior knowledge of the VLM, respectively.It is worth noting that the context-aware module can be seamlessly integrated into a frozen VLM, ensuring both minimal effort and parameter efficiency.Additionally, we introduce a Class-Balanced Pseudo-labeling (CBPL) strategy to mitigate the adverse effects caused by class imbalance.We demonstrate the effectiveness of our method not only in TTA scenarios but also in class generalisation tasks.The source code is available atthis https URL.

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