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Autori principali: Liu, Bin, Tian, Wenyan, Fu, Huangxin, Li, Zizheng, He, Zhifen, Li, Bo
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2512.22800
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author Liu, Bin
Tian, Wenyan
Fu, Huangxin
Li, Zizheng
He, Zhifen
Li, Bo
author_facet Liu, Bin
Tian, Wenyan
Fu, Huangxin
Li, Zizheng
He, Zhifen
Li, Bo
contents 3D reconstruction of medical images is a key technology in medical image analysis and clinical diagnosis, providing structural visualization support for disease assessment and surgical planning. Traditional methods are computationally expensive and prone to structural discontinuities and loss of detail in sparse slices, making it difficult to meet clinical accuracy requirements.To address these challenges, we propose an efficient 3D reconstruction method based on 3D Gaussian and tri-plane representations. This method not only maintains the advantages of Gaussian representation in efficient rendering and geometric representation but also significantly enhances structural continuity and semantic consistency under sparse slicing conditions. Experimental results on multimodal medical datasets such as US and MRI show that our proposed method can generate high-quality, anatomically coherent, and semantically stable medical images under sparse data conditions, while significantly improving reconstruction efficiency. This provides an efficient and reliable new approach for 3D visualization and clinical analysis of medical images.
format Preprint
id arxiv_https___arxiv_org_abs_2512_22800
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Medical Scene Reconstruction and Segmentation based on 3D Gaussian Representation
Liu, Bin
Tian, Wenyan
Fu, Huangxin
Li, Zizheng
He, Zhifen
Li, Bo
Computer Vision and Pattern Recognition
3D reconstruction of medical images is a key technology in medical image analysis and clinical diagnosis, providing structural visualization support for disease assessment and surgical planning. Traditional methods are computationally expensive and prone to structural discontinuities and loss of detail in sparse slices, making it difficult to meet clinical accuracy requirements.To address these challenges, we propose an efficient 3D reconstruction method based on 3D Gaussian and tri-plane representations. This method not only maintains the advantages of Gaussian representation in efficient rendering and geometric representation but also significantly enhances structural continuity and semantic consistency under sparse slicing conditions. Experimental results on multimodal medical datasets such as US and MRI show that our proposed method can generate high-quality, anatomically coherent, and semantically stable medical images under sparse data conditions, while significantly improving reconstruction efficiency. This provides an efficient and reliable new approach for 3D visualization and clinical analysis of medical images.
title Medical Scene Reconstruction and Segmentation based on 3D Gaussian Representation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.22800