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Hauptverfasser: Chen, Yunmei, Ding, Chi, Ye, Xiaojing
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2603.07831
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author Chen, Yunmei
Ding, Chi
Ye, Xiaojing
author_facet Chen, Yunmei
Ding, Chi
Ye, Xiaojing
contents We develop a novel transfer learning framework to tackle the challenge of limited training data in image reconstruction problems. The proposed framework consists of two training steps, both of which are formed as bi-level optimizations. In the first step, we train a powerful universal feature-extractor that is capable of learning important knowledge from large, heterogeneous data sets in various domains. In the second step, we train a task-specific domain-adapter for a new target domain or task with only a limited amount of data available for training. Then the composition of the adapter and the universal feature-extractor effectively explores feature which serve as an important component of image regularization for the new domains, and this leads to high-quality reconstruction despite the data limitation issue. We apply this framework to reconstruct under-sampled MR images with limited data by using a collection of diverse data samples from different domains, such as images of other anatomies, measurements of various sampling ratios, and even different image modalities, including natural images. Experimental results demonstrate a promising transfer learning capability of the proposed method.
format Preprint
id arxiv_https___arxiv_org_abs_2603_07831
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Transferable Optimization Network for Cross-Domain Image Reconstruction
Chen, Yunmei
Ding, Chi
Ye, Xiaojing
Computer Vision and Pattern Recognition
Machine Learning
Optimization and Control
68Q25, 68U10, 90C26
We develop a novel transfer learning framework to tackle the challenge of limited training data in image reconstruction problems. The proposed framework consists of two training steps, both of which are formed as bi-level optimizations. In the first step, we train a powerful universal feature-extractor that is capable of learning important knowledge from large, heterogeneous data sets in various domains. In the second step, we train a task-specific domain-adapter for a new target domain or task with only a limited amount of data available for training. Then the composition of the adapter and the universal feature-extractor effectively explores feature which serve as an important component of image regularization for the new domains, and this leads to high-quality reconstruction despite the data limitation issue. We apply this framework to reconstruct under-sampled MR images with limited data by using a collection of diverse data samples from different domains, such as images of other anatomies, measurements of various sampling ratios, and even different image modalities, including natural images. Experimental results demonstrate a promising transfer learning capability of the proposed method.
title Transferable Optimization Network for Cross-Domain Image Reconstruction
topic Computer Vision and Pattern Recognition
Machine Learning
Optimization and Control
68Q25, 68U10, 90C26
url https://arxiv.org/abs/2603.07831