MADCrowner:基于模板变形与精修的边缘感知牙冠设计 / MADCrowner: Margin Aware Dental Crown Design with Template Deformation and Refinement
1️⃣ 一句话总结
这篇论文提出了一种名为MADCrowner的智能牙冠设计框架,它通过结合模板变形和边缘分割技术,能够自动生成几何精度高且符合临床要求的个性化牙冠,有效解决了现有自动化方法输出粗糙、过度延伸等问题。
Dental crown restoration is one of the most common treatment modalities for tooth defect, where personalized dental crown design is critical. While computer-aided design (CAD) systems have notably enhanced the efficiency of dental crown design, extensive manual adjustments are still required in the clinic workflow. Recent studies have explored the application of learning-based methods for the automated generation of restorative dental crowns. Nevertheless, these approaches were challenged by inadequate spatial resolution, noisy outputs, and overextension of surface reconstruction. To address these limitations, we propose \totalframework, a margin-aware mesh generation framework comprising CrownDeformR and CrownSegger. Inspired by the clinic manual workflow of dental crown design, we designed CrownDeformR to deform an initial template to the target crown based on anatomical context, which is extracted by a multi-scale intraoral scan encoder. Additionally, we introduced \marginseg, a novel margin segmentation network, to extract the cervical margin of the target tooth. The performance of CrownDeformR improved with the cervical margin as an extra constraint. And it was also utilized as the boundary condition for the tailored postprocessing method, which removed the overextended area of the reconstructed surface. We constructed a large-scale intraoral scan dataset and performed extensive experiments. The proposed method significantly outperformed existing approaches in both geometric accuracy and clinical feasibility.
MADCrowner:基于模板变形与精修的边缘感知牙冠设计 / MADCrowner: Margin Aware Dental Crown Design with Template Deformation and Refinement
这篇论文提出了一种名为MADCrowner的智能牙冠设计框架,它通过结合模板变形和边缘分割技术,能够自动生成几何精度高且符合临床要求的个性化牙冠,有效解决了现有自动化方法输出粗糙、过度延伸等问题。
源自 arXiv: 2603.04771