Frontiers of Data and Computing ›› 2026, Vol. 8 ›› Issue (3): 110-121.

doi: 10.11871/jfdc.issn.2096-742X.2026.03.010

• Technology and Application • Previous Articles     Next Articles

A Test-Time Training Based Cross-Domain Image Deblurring Method

CHU Jingchun1(),YANG Guangjun1,WANG Wenbin1,GAO Siyuan1,GAO Manda1,ZHANG Sen2,HE Yong2,*()   

  1. 1 CHN Energy New Energy Technology Research Institute Co., Ltd, Beijing 102209, China
    2 New Laboratory of Pattern Recognition, Institute of Automation Chinese Academy of Sciences, Beijing 100190, China
  • Received:2025-10-16 Online:2026-06-20 Published:2026-06-18
  • Contact: HE Yong E-mail:20065237@ceic.com;yong.he@ia.ac.cn

Abstract:

[Purpose] This study aims to address the problem of cross-domain image deblurring by proposing a novel test-time training method. [Methods] A defocus blur generation network (DBGN) is constructed by simulating the formation process of defocus blur, which is embedded at the end of the deblurring model to create an auxiliary task. During the training phase, the DBGN serves as an additional auxiliary loss to optimize the deblurring model and enhance deblurring accuracy. In the testing phase, the DBGN is utilized to perform a re-blurring task, acting as an auxiliary module to assist the primary deblurring model in updating parameters to adapt to out-of-distribution cross-domain data. [Results] The proposed method is tested on blurred images captured in inspection scenarios, validating its practical performance for cross-domain image deblurring in real-world settings. [Conclusions] Extensive experiments on multiple public defocus blur datasets and comparisons with current state-of-the-art methods demonstrate the effectiveness of the proposed approach.

Key words: image processing, image deblurring, test-time training