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
翻译:3D牙藻的人工牙齿切片是乏味的,牙医之间也存在差异。% 3D牙牙 ⁇ 的人工牙笔记是一个无聊的任务。一些基于深层次学习的方法已经建议进行自动牙网分割。许多拟议的牙网分割算法将网状细胞归纳为 - 细胞中心或中枢、正常的甘蓝中心、细胞脊椎和细胞脊椎的正常情况。以这种方式对网状细胞/三角进行总结,会给结构带来隐含的制约,并使得难以与许多基于云层的深层次学习算法中完成的多项决议合作。我们提出了一个新的分割方法,该方法仅使用网状细胞中枢和正常情况,但能取得竞争性的性能。我们首先证明,可以放松隐性的结构制约,但能优异。