Saved in:
Bibliographic Details
Main Authors: Wang, Yaxiong, Zhang, Zhenqiang, Cheng, Lechao, Zhong, Zhun, Guo, Dan, Wang, Meng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.00513
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909630469242880
author Wang, Yaxiong
Zhang, Zhenqiang
Cheng, Lechao
Zhong, Zhun
Guo, Dan
Wang, Meng
author_facet Wang, Yaxiong
Zhang, Zhenqiang
Cheng, Lechao
Zhong, Zhun
Guo, Dan
Wang, Meng
contents Test-time adaption (TTA) has witnessed important progress in recent years, the prevailing methods typically first encode the image and the text and design strategies to model the association between them. Meanwhile, the image encoder is usually frozen due to the absence of explicit supervision in TTA scenarios. We identify a critical limitation in this paradigm: While test-time images often exhibit distribution shifts from training data, existing methods persistently freeze the image encoder due to the absence of explicit supervision during adaptation. This practice overlooks the image encoder's crucial role in bridging distribution shift between training and test. To address this challenge, we propose SSAM (Self-Supervised Association Modeling), a new TTA framework that enables dynamic encoder refinement through dual-phase association learning. Our method operates via two synergistic components: 1) Soft Prototype Estimation (SPE), which estimates probabilistic category associations to guide feature space reorganization, and 2) Prototype-anchored Image Reconstruction (PIR), enforcing encoder stability through cluster-conditional image feature reconstruction. Comprehensive experiments across diverse baseline methods and benchmarks demonstrate that SSAM can surpass state-of-the-art TTA baselines by a clear margin while maintaining computational efficiency. The framework's architecture-agnostic design and minimal hyperparameter dependence further enhance its practical applicability.
format Preprint
id arxiv_https___arxiv_org_abs_2506_00513
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SSAM: Self-Supervised Association Modeling for Test-Time Adaption
Wang, Yaxiong
Zhang, Zhenqiang
Cheng, Lechao
Zhong, Zhun
Guo, Dan
Wang, Meng
Computer Vision and Pattern Recognition
Test-time adaption (TTA) has witnessed important progress in recent years, the prevailing methods typically first encode the image and the text and design strategies to model the association between them. Meanwhile, the image encoder is usually frozen due to the absence of explicit supervision in TTA scenarios. We identify a critical limitation in this paradigm: While test-time images often exhibit distribution shifts from training data, existing methods persistently freeze the image encoder due to the absence of explicit supervision during adaptation. This practice overlooks the image encoder's crucial role in bridging distribution shift between training and test. To address this challenge, we propose SSAM (Self-Supervised Association Modeling), a new TTA framework that enables dynamic encoder refinement through dual-phase association learning. Our method operates via two synergistic components: 1) Soft Prototype Estimation (SPE), which estimates probabilistic category associations to guide feature space reorganization, and 2) Prototype-anchored Image Reconstruction (PIR), enforcing encoder stability through cluster-conditional image feature reconstruction. Comprehensive experiments across diverse baseline methods and benchmarks demonstrate that SSAM can surpass state-of-the-art TTA baselines by a clear margin while maintaining computational efficiency. The framework's architecture-agnostic design and minimal hyperparameter dependence further enhance its practical applicability.
title SSAM: Self-Supervised Association Modeling for Test-Time Adaption
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.00513