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Main Authors: Wang, Yanshuo, Li, Xuesong, Tong, Jinguang, Hong, Jie, Lan, Jun, Wang, Weiqiang, Zhu, Huijia, Chen, Haoxing
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.20034
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author Wang, Yanshuo
Li, Xuesong
Tong, Jinguang
Hong, Jie
Lan, Jun
Wang, Weiqiang
Zhu, Huijia
Chen, Haoxing
author_facet Wang, Yanshuo
Li, Xuesong
Tong, Jinguang
Hong, Jie
Lan, Jun
Wang, Weiqiang
Zhu, Huijia
Chen, Haoxing
contents Continual test-time domain adaptation (CTTA) aims to adjust pre-trained source models to perform well over time across non-stationary target environments. While previous methods have made considerable efforts to optimize the adaptation process, a crucial question remains: can the model adapt to continually-changing environments with preserved plasticity over a long time? The plasticity refers to the model's capability to adjust predictions in response to non-stationary environments continually. In this work, we explore plasticity, this essential but often overlooked aspect of continual adaptation to facilitate more sustained adaptation in the long run. First, we observe that most CTTA methods experience a steady and consistent decline in plasticity during the long-timescale continual adaptation phase. Moreover, we find that the loss of plasticity is strongly associated with the change in label flip. Based on this correlation, we propose a simple yet effective policy, Adaptive Shrink-Restore (ASR), towards preserving the model's plasticity. In particular, ASR does the weight re-initialization by the adaptive intervals. The adaptive interval is determined based on the change in label flipping. Our method is validated on extensive CTTA benchmarks, achieving excellent performance.
format Preprint
id arxiv_https___arxiv_org_abs_2412_20034
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Maintain Plasticity in Long-timescale Continual Test-time Adaptation
Wang, Yanshuo
Li, Xuesong
Tong, Jinguang
Hong, Jie
Lan, Jun
Wang, Weiqiang
Zhu, Huijia
Chen, Haoxing
Computer Vision and Pattern Recognition
Continual test-time domain adaptation (CTTA) aims to adjust pre-trained source models to perform well over time across non-stationary target environments. While previous methods have made considerable efforts to optimize the adaptation process, a crucial question remains: can the model adapt to continually-changing environments with preserved plasticity over a long time? The plasticity refers to the model's capability to adjust predictions in response to non-stationary environments continually. In this work, we explore plasticity, this essential but often overlooked aspect of continual adaptation to facilitate more sustained adaptation in the long run. First, we observe that most CTTA methods experience a steady and consistent decline in plasticity during the long-timescale continual adaptation phase. Moreover, we find that the loss of plasticity is strongly associated with the change in label flip. Based on this correlation, we propose a simple yet effective policy, Adaptive Shrink-Restore (ASR), towards preserving the model's plasticity. In particular, ASR does the weight re-initialization by the adaptive intervals. The adaptive interval is determined based on the change in label flipping. Our method is validated on extensive CTTA benchmarks, achieving excellent performance.
title Maintain Plasticity in Long-timescale Continual Test-time Adaptation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.20034