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Main Authors: Li, Linhao, Ye, Yiwen, Chen, Ziyang, Xia, Yong
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.09267
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author Li, Linhao
Ye, Yiwen
Chen, Ziyang
Xia, Yong
author_facet Li, Linhao
Ye, Yiwen
Chen, Ziyang
Xia, Yong
contents 3D medical image segmentation often faces heavy resource and time consumption, limiting its scalability and rapid deployment in clinical environments. Existing efficient segmentation models are typically static and manually designed prior to training, which restricts their adaptability across diverse tasks and makes it difficult to balance performance with resource efficiency. In this paper, we propose PSP-Seg, a progressive pruning framework that enables dynamic and efficient 3D segmentation. PSP-Seg begins with a redundant model and iteratively prunes redundant modules through a combination of block-wise pruning and a functional decoupling loss. We evaluate PSP-Seg on five public datasets, benchmarking it against seven state-of-the-art models and six efficient segmentation models. Results demonstrate that the lightweight variant, PSP-Seg-S, achieves performance on par with nnU-Net while reducing GPU memory usage by 42-45%, training time by 29-48%, and parameter number by 83-87% across all datasets. These findings underscore PSP-Seg's potential as a cost-effective yet high-performing alternative for widespread clinical application.
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id arxiv_https___arxiv_org_abs_2509_09267
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Unified Start, Personalized End: Progressive Pruning for Efficient 3D Medical Image Segmentation
Li, Linhao
Ye, Yiwen
Chen, Ziyang
Xia, Yong
Computer Vision and Pattern Recognition
3D medical image segmentation often faces heavy resource and time consumption, limiting its scalability and rapid deployment in clinical environments. Existing efficient segmentation models are typically static and manually designed prior to training, which restricts their adaptability across diverse tasks and makes it difficult to balance performance with resource efficiency. In this paper, we propose PSP-Seg, a progressive pruning framework that enables dynamic and efficient 3D segmentation. PSP-Seg begins with a redundant model and iteratively prunes redundant modules through a combination of block-wise pruning and a functional decoupling loss. We evaluate PSP-Seg on five public datasets, benchmarking it against seven state-of-the-art models and six efficient segmentation models. Results demonstrate that the lightweight variant, PSP-Seg-S, achieves performance on par with nnU-Net while reducing GPU memory usage by 42-45%, training time by 29-48%, and parameter number by 83-87% across all datasets. These findings underscore PSP-Seg's potential as a cost-effective yet high-performing alternative for widespread clinical application.
title Unified Start, Personalized End: Progressive Pruning for Efficient 3D Medical Image Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.09267