Analytic learning in multi-modal continual test-time adaptation
Test-Time Adaptation (TTA) aims to help pre-trained model bridge the gap between source and target datasets using only the pre-trained model and unlabelled test data. A key objective of TTA is to address domain shifts in test data caused by corruption, such as weather changes, noise, or sensor malfu...
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sg-ntu-dr.10356-1821822025-01-17T15:47:30Z Analytic learning in multi-modal continual test-time adaptation Zhang, Yufei Lin Zhiping School of Electrical and Electronic Engineering EZPLin@ntu.edu.sg Computer and Information Science Test-time adaptation Multi-modality Continual learning Test-Time Adaptation (TTA) aims to help pre-trained model bridge the gap between source and target datasets using only the pre-trained model and unlabelled test data. A key objective of TTA is to address domain shifts in test data caused by corruption, such as weather changes, noise, or sensor malfunctions. Multi-Modal Continual Test-Time Adaptation (MM-CTTA), an extension of TTA with better real-world applications, further allows pre-trained models to handle multi-modal inputs and adapt to continuously-changing target domains. MM-CTTA typically faces challenges including error accumulation, catastrophic forgetting, and reliability bias, with few existing approaches effectively addressing these issues in multi-modal corruption scenarios. This dissertation proposes a novel approach named Multi-modality Dynamic Analytic Adapter (MDAA), for MM-CTTA tasks. In MDAA, we introduce analytic learning into TTA for the first time by using the Analytic Classifiers (ACs) to prevent the forgetting issues. Additionally, we develop Dynamic Selection Mechanism (DSM) and Soft Pseudo-label Strategy (SPS), which enable MDAA to select and integrate reliable information from different modalities in a dynamical way, mitigating influence from error accumulation and reliability bias. Moreover, we proposed two new experiment settings to evaluate models' performance under extreme TTA cases. Extensive experiments demonstrate that MDAA can solve the challenges well in two settings, outperforms other state-of-the-art methods by 6.22% and 6.84% respectively. Master's degree 2025-01-14T05:25:14Z 2025-01-14T05:25:14Z 2024 Thesis-Master by Coursework Zhang, Y. (2024). Analytic learning in multi-modal continual test-time adaptation. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/182182 https://hdl.handle.net/10356/182182 en application/pdf Nanyang Technological University |
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Computer and Information Science Test-time adaptation Multi-modality Continual learning Zhang, Yufei Analytic learning in multi-modal continual test-time adaptation |
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Test-Time Adaptation (TTA) aims to help pre-trained model bridge the gap between source and target datasets using only the pre-trained model and unlabelled test data. A key objective of TTA is to address domain shifts in test data caused by corruption, such as weather changes, noise, or sensor malfunctions. Multi-Modal Continual Test-Time Adaptation (MM-CTTA), an extension of TTA with better real-world applications, further allows pre-trained models to handle multi-modal inputs and adapt to continuously-changing target domains. MM-CTTA typically faces challenges including error accumulation, catastrophic forgetting, and reliability bias, with few existing approaches effectively addressing these issues in multi-modal corruption scenarios. This dissertation proposes a novel approach named Multi-modality Dynamic Analytic Adapter (MDAA), for MM-CTTA tasks. In MDAA, we introduce analytic learning into TTA for the first time by using the Analytic Classifiers (ACs) to prevent the forgetting issues. Additionally, we develop Dynamic Selection Mechanism (DSM) and Soft Pseudo-label Strategy (SPS), which enable MDAA to select and integrate reliable information from different modalities in a dynamical way, mitigating influence from error accumulation and reliability bias. Moreover, we proposed two new experiment settings to evaluate models' performance under extreme TTA cases. Extensive experiments demonstrate that MDAA can solve the challenges well in two settings, outperforms other state-of-the-art methods by 6.22% and 6.84% respectively. |
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Lin Zhiping |
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Lin Zhiping Zhang, Yufei |
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Thesis-Master by Coursework |
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Zhang, Yufei |
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Zhang, Yufei |
title |
Analytic learning in multi-modal continual test-time adaptation |
title_short |
Analytic learning in multi-modal continual test-time adaptation |
title_full |
Analytic learning in multi-modal continual test-time adaptation |
title_fullStr |
Analytic learning in multi-modal continual test-time adaptation |
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Analytic learning in multi-modal continual test-time adaptation |
title_sort |
analytic learning in multi-modal continual test-time adaptation |
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Nanyang Technological University |
publishDate |
2025 |
url |
https://hdl.handle.net/10356/182182 |
_version_ |
1821833183900991488 |