3D Tooth Mesh Segmentation with Simplified Mesh Cell Representation
- URL: http://arxiv.org/abs/2301.10531v1
- Date: Wed, 25 Jan 2023 11:43:56 GMT
- Title: 3D Tooth Mesh Segmentation with Simplified Mesh Cell Representation
- Authors: Ananya Jana, Hrebesh Molly Subhash, Dimitris N. Metaxas
- Abstract summary: Manual tooth segmentation of 3D tooth meshes is tedious and there is variations among dentists.
We propose a novel segmentation method which utilizes only the barycenter and the normal at the barycenter information of the mesh cell.
We are the first to demonstrate that it is possible to relax the implicit structural constraint and yet achieve superior segmentation performance.
- Score: 42.512602472176184
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Manual tooth segmentation of 3D tooth meshes is tedious and there is
variations among dentists. %Manual tooth annotation of 3D tooth meshes is a
tedious task. Several deep learning based methods have been proposed to perform
automatic tooth mesh segmentation. Many of the proposed tooth mesh segmentation
algorithms summarize the mesh cell as - the cell center or barycenter, the
normal at barycenter, the cell vertices and the normals at the cell vertices.
Summarizing of the mesh cell/triangle in this manner imposes an implicit
structural constraint and makes it difficult to work with multiple resolutions
which is done in many point cloud based deep learning algorithms. We propose a
novel segmentation method which utilizes only the barycenter and the normal at
the barycenter information of the mesh cell and yet achieves competitive
performance. We are the first to demonstrate that it is possible to relax the
implicit structural constraint and yet achieve superior segmentation
performance
Related papers
- CHaRNet: Conditioned Heatmap Regression for Robust Dental Landmark Localization [1.2809296241933283]
We introduce CHaRNet, the first fully end-to-end deep learning framework for tooth landmark detection in 3D Intraoral Scans.
Unlike traditional two-stage that achieves teeth before detecting landmarks, CHaRNet directly operates on the input point cloud.
We evaluate CHaRNet using five point cloud learning algorithms on a clinical dataset of 1,214 annotated 3D models.
arXiv Detail & Related papers (2025-01-22T18:35:57Z) - Differentiable Collision-Supervised Tooth Arrangement Network with a Decoupling Perspective [10.293207903989053]
Existing learning-based methods use hidden teeth features to directly regress teeth motions.
We propose DTAN, a differentiable collision-supervised tooth arrangement network.
We construct three different tooth arrangement datasets and achieve drastically improved performance on accuracy and speed.
arXiv Detail & Related papers (2024-09-18T12:52:54Z) - TSegFormer: 3D Tooth Segmentation in Intraoral Scans with Geometry
Guided Transformer [47.18526074157094]
Optical Intraoral Scanners (IOSs) are widely used in digital dentistry to provide detailed 3D information of dental crowns and the gingiva.
Previous methods are error-prone at complicated boundaries and exhibit unsatisfactory results across patients.
We propose TSegFormer which captures both local and global dependencies among different teeth and the gingiva in the IOS point clouds with a multi-task 3D transformer architecture.
arXiv Detail & Related papers (2023-11-22T08:45:01Z) - An Implicit Parametric Morphable Dental Model [79.29420177904022]
We present the first parametric 3D morphable dental model for both teeth and gum.
It is based on a component-wise representation for each tooth and the gum, together with a learnable latent code for each of such components.
Our reconstruction quality is on par with the most advanced global implicit representations while enabling novel applications.
arXiv Detail & Related papers (2022-11-21T12:23:54Z) - TFormer: 3D Tooth Segmentation in Mesh Scans with Geometry Guided
Transformer [37.47317212620463]
Optical Intra-oral Scanners (IOS) are widely used in digital dentistry, providing 3-Dimensional (3D) and high-resolution geometrical information of dental crowns and the gingiva.
Previous methods are error-prone in complicated tooth-tooth or tooth-gingiva boundaries, and usually exhibit unsatisfactory results across various patients.
We propose a novel method based on 3D transformer architectures that is evaluated with large-scale and high-resolution 3D IOS datasets.
arXiv Detail & Related papers (2022-10-29T15:20:54Z) - CTooth: A Fully Annotated 3D Dataset and Benchmark for Tooth Volume
Segmentation on Cone Beam Computed Tomography Images [19.79983193894742]
3D tooth segmentation is a prerequisite for computer-aided dental diagnosis and treatment.
Deep learning-based segmentation methods produce convincing results, but it requires a large quantity of ground truth for training.
In this paper, we establish a fully annotated cone beam computed tomography dataset CTooth with tooth gold standard.
arXiv Detail & Related papers (2022-06-17T13:48:35Z) - Two-Stream Graph Convolutional Network for Intra-oral Scanner Image
Segmentation [133.02190910009384]
We propose a two-stream graph convolutional network (i.e., TSGCN) to handle inter-view confusion between different raw attributes.
Our TSGCN significantly outperforms state-of-the-art methods in 3D tooth (surface) segmentation.
arXiv Detail & Related papers (2022-04-19T10:41:09Z) - Two-Stage Mesh Deep Learning for Automated Tooth Segmentation and
Landmark Localization on 3D Intraoral Scans [56.55092443401416]
emphiMeshSegNet in the first stage of TS-MDL reached an averaged Dice similarity coefficient (DSC) at 0.953pm0.076$, significantly outperforming the original MeshSegNet.
PointNet-Reg achieved a mean absolute error (MAE) of $0.623pm0.718, mm$ in distances between the prediction and ground truth for $44$ landmarks, which is superior compared with other networks for landmark detection.
arXiv Detail & Related papers (2021-09-24T13:00:26Z) - TSGCNet: Discriminative Geometric Feature Learning with Two-Stream
GraphConvolutional Network for 3D Dental Model Segmentation [141.2690520327948]
We propose a two-stream graph convolutional network (TSGCNet) to learn multi-view information from different geometric attributes.
We evaluate our proposed TSGCNet on a real-patient dataset of dental models acquired by 3D intraoral scanners.
arXiv Detail & Related papers (2020-12-26T08:02:56Z) - Pose-Aware Instance Segmentation Framework from Cone Beam CT Images for
Tooth Segmentation [9.880428545498662]
Individual tooth segmentation from cone beam computed tomography (CBCT) images is essential for an anatomical understanding of orthodontic structures.
The presence of severe metal artifacts in CBCT images hinders the accurate segmentation of each individual tooth.
We propose a neural network for pixel-wise labeling to exploit an instance segmentation framework that is robust to metal artifacts.
arXiv Detail & Related papers (2020-02-06T07:57:34Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.