From Mesh Completion to AI Designed Crown
Golriz Hosseinimanesh, Farnoosh Ghadiri, Francois Guibault, Farida, Cheriet, Julia Keren

TL;DR
This paper introduces Dental Mesh Completion (DMC), an end-to-end deep learning method that generates dental crown meshes from point cloud data, simplifying crown design with high accuracy and efficiency.
Contribution
The paper presents a novel deep learning framework combining point cloud feature extraction, transformers, and differentiable mesh reconstruction for crown design.
Findings
Achieves an average Chamfer Distance of 0.062
Outperforms graph-based CNN methods in crown mesh generation
Demonstrates effectiveness on a specialized dental dataset
Abstract
Designing a dental crown is a time-consuming and labor intensive process. Our goal is to simplify crown design and minimize the tediousness of making manual adjustments while still ensuring the highest level of accuracy and consistency. To this end, we present a new end- to-end deep learning approach, coined Dental Mesh Completion (DMC), to generate a crown mesh conditioned on a point cloud context. The dental context includes the tooth prepared to receive a crown and its surroundings, namely the two adjacent teeth and the three closest teeth in the opposing jaw. We formulate crown generation in terms of completing this point cloud context. A feature extractor first converts the input point cloud into a set of feature vectors that represent local regions in the point cloud. The set of feature vectors is then fed into a transformer to predict a new set of feature vectors for the missing…
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Taxonomy
Topics3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques · Advanced Numerical Analysis Techniques
MethodsSparse Evolutionary Training
