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Main Authors: Xi, Shufan, Liu, Zexian, Chang, Junlin, Wu, Hongyu, Wang, Xiaogang, Hao, Aimin
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2503.23702
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author Xi, Shufan
Liu, Zexian
Chang, Junlin
Wu, Hongyu
Wang, Xiaogang
Hao, Aimin
author_facet Xi, Shufan
Liu, Zexian
Chang, Junlin
Wu, Hongyu
Wang, Xiaogang
Hao, Aimin
contents 3D intraoral scan mesh is widely used in digital dentistry diagnosis, segmenting 3D intraoral scan mesh is a critical preliminary task. Numerous approaches have been devised for precise tooth segmentation. Currently, the deep learning-based methods are capable of the high accuracy segmentation of crown. However, the segmentation accuracy at the junction between the crown and the gum is still below average. Existing down-sampling methods are unable to effectively preserve the geometric details at the junction. To address these problems, we propose CrossTooth, a boundary-preserving segmentation method that combines 3D mesh selective downsampling to retain more vertices at the tooth-gingiva area, along with cross-modal discriminative boundary features extracted from multi-view rendered images, enhancing the geometric representation of the segmentation network. Using a point network as a backbone and incorporating image complementary features, CrossTooth significantly improves segmentation accuracy, as demonstrated by experiments on a public intraoral scan dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2503_23702
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle 3D Dental Model Segmentation with Geometrical Boundary Preserving
Xi, Shufan
Liu, Zexian
Chang, Junlin
Wu, Hongyu
Wang, Xiaogang
Hao, Aimin
Computer Vision and Pattern Recognition
3D intraoral scan mesh is widely used in digital dentistry diagnosis, segmenting 3D intraoral scan mesh is a critical preliminary task. Numerous approaches have been devised for precise tooth segmentation. Currently, the deep learning-based methods are capable of the high accuracy segmentation of crown. However, the segmentation accuracy at the junction between the crown and the gum is still below average. Existing down-sampling methods are unable to effectively preserve the geometric details at the junction. To address these problems, we propose CrossTooth, a boundary-preserving segmentation method that combines 3D mesh selective downsampling to retain more vertices at the tooth-gingiva area, along with cross-modal discriminative boundary features extracted from multi-view rendered images, enhancing the geometric representation of the segmentation network. Using a point network as a backbone and incorporating image complementary features, CrossTooth significantly improves segmentation accuracy, as demonstrated by experiments on a public intraoral scan dataset.
title 3D Dental Model Segmentation with Geometrical Boundary Preserving
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.23702