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Main Authors: He, Zhihui, Wang, Chengyuan, Yang, Shidong, Chen, Li, Zhou, Yanheng, Wang, Shuo
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.11937
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author He, Zhihui
Wang, Chengyuan
Yang, Shidong
Chen, Li
Zhou, Yanheng
Wang, Shuo
author_facet He, Zhihui
Wang, Chengyuan
Yang, Shidong
Chen, Li
Zhou, Yanheng
Wang, Shuo
contents Tooth arrangement is an essential step in the digital orthodontic planning process. Existing learning-based methods use hidden teeth features to directly regress teeth motions, which couples target pose perception and motion regression. It could lead to poor perceptions of three-dimensional transformation. They also ignore the possible overlaps or gaps between teeth of predicted dentition, which is generally unacceptable. Therefore, we propose DTAN, a differentiable collision-supervised tooth arrangement network, decoupling predicting tasks and feature modeling. DTAN decouples the tooth arrangement task by first predicting the hidden features of the final teeth poses and then using them to assist in regressing the motions between the beginning and target teeth. To learn the hidden features better, DTAN also decouples the teeth-hidden features into geometric and positional features, which are further supervised by feature consistency constraints. Furthermore, we propose a novel differentiable collision loss function for point cloud data to constrain the related gestures between teeth, which can be easily extended to other 3D point cloud tasks. We propose an arch-width guided tooth arrangement network, named C-DTAN, to make the results controllable. We construct three different tooth arrangement datasets and achieve drastically improved performance on accuracy and speed compared with existing methods.
format Preprint
id arxiv_https___arxiv_org_abs_2409_11937
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Differentiable Collision-Supervised Tooth Arrangement Network with a Decoupling Perspective
He, Zhihui
Wang, Chengyuan
Yang, Shidong
Chen, Li
Zhou, Yanheng
Wang, Shuo
Computer Vision and Pattern Recognition
Tooth arrangement is an essential step in the digital orthodontic planning process. Existing learning-based methods use hidden teeth features to directly regress teeth motions, which couples target pose perception and motion regression. It could lead to poor perceptions of three-dimensional transformation. They also ignore the possible overlaps or gaps between teeth of predicted dentition, which is generally unacceptable. Therefore, we propose DTAN, a differentiable collision-supervised tooth arrangement network, decoupling predicting tasks and feature modeling. DTAN decouples the tooth arrangement task by first predicting the hidden features of the final teeth poses and then using them to assist in regressing the motions between the beginning and target teeth. To learn the hidden features better, DTAN also decouples the teeth-hidden features into geometric and positional features, which are further supervised by feature consistency constraints. Furthermore, we propose a novel differentiable collision loss function for point cloud data to constrain the related gestures between teeth, which can be easily extended to other 3D point cloud tasks. We propose an arch-width guided tooth arrangement network, named C-DTAN, to make the results controllable. We construct three different tooth arrangement datasets and achieve drastically improved performance on accuracy and speed compared with existing methods.
title Differentiable Collision-Supervised Tooth Arrangement Network with a Decoupling Perspective
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2409.11937