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Hauptverfasser: Zhang, Ying, Guo, Shuai, Sun, Chenxi, Zhu, Yuchen, Xiang, Jinhai
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2505.04938
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author Zhang, Ying
Guo, Shuai
Sun, Chenxi
Zhu, Yuchen
Xiang, Jinhai
author_facet Zhang, Ying
Guo, Shuai
Sun, Chenxi
Zhu, Yuchen
Xiang, Jinhai
contents In recent years, deformable medical image registration techniques have made significant progress. However, existing models still lack efficiency in parallel extraction of coarse and fine-grained features. To address this, we construct a new pyramid registration network based on feature and deformation field (FF-PNet). For coarse-grained feature extraction, we design a Residual Feature Fusion Module (RFFM), for fine-grained image deformation, we propose a Residual Deformation Field Fusion Module (RDFFM). Through the parallel operation of these two modules, the model can effectively handle complex image deformations. It is worth emphasizing that the encoding stage of FF-PNet only employs traditional convolutional neural networks without any attention mechanisms or multilayer perceptrons, yet it still achieves remarkable improvements in registration accuracy, fully demonstrating the superior feature decoding capabilities of RFFM and RDFFM. We conducted extensive experiments on the LPBA and OASIS datasets. The results show our network consistently outperforms popular methods in metrics like the Dice Similarity Coefficient.
format Preprint
id arxiv_https___arxiv_org_abs_2505_04938
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle FF-PNet: A Pyramid Network Based on Feature and Field for Brain Image Registration
Zhang, Ying
Guo, Shuai
Sun, Chenxi
Zhu, Yuchen
Xiang, Jinhai
Computer Vision and Pattern Recognition
Information Retrieval
In recent years, deformable medical image registration techniques have made significant progress. However, existing models still lack efficiency in parallel extraction of coarse and fine-grained features. To address this, we construct a new pyramid registration network based on feature and deformation field (FF-PNet). For coarse-grained feature extraction, we design a Residual Feature Fusion Module (RFFM), for fine-grained image deformation, we propose a Residual Deformation Field Fusion Module (RDFFM). Through the parallel operation of these two modules, the model can effectively handle complex image deformations. It is worth emphasizing that the encoding stage of FF-PNet only employs traditional convolutional neural networks without any attention mechanisms or multilayer perceptrons, yet it still achieves remarkable improvements in registration accuracy, fully demonstrating the superior feature decoding capabilities of RFFM and RDFFM. We conducted extensive experiments on the LPBA and OASIS datasets. The results show our network consistently outperforms popular methods in metrics like the Dice Similarity Coefficient.
title FF-PNet: A Pyramid Network Based on Feature and Field for Brain Image Registration
topic Computer Vision and Pattern Recognition
Information Retrieval
url https://arxiv.org/abs/2505.04938