We propose a novel framework for computing the medial axis transform of 3D shapes while preserving their medial features via restricted power diagram (RPD). Medial features, including external features such as the sharp edges and corners of the input mesh surface and internal features such as the seams and junctions of medial axis, are important shape descriptors both topologically and geometrically. However, existing medial axis approximation methods fail to capture and preserve them due to the fundamentally under-sampling in the vicinity of medial features, and the difficulty to build their correct connections. In this paper we use the RPD of medial spheres and its affiliated structures to help solve these challenges. The dual structure of RPD provides the connectivity of medial spheres. The surface restricted power cell (RPC) of each medial sphere provides the tangential surface regions that these spheres have contact with. The connected components (CC) of surface RPC give us the classification of each sphere, to be on a medial sheet, a seam, or a junction. They allow us to detect insufficient sphere sampling around medial features and develop necessary conditions to preserve them. Using this RPD-based framework, we are able to construct high quality medial meshes with features preserved. Compared with existing sampling-based or voxel-based methods, our method is the first one that can preserve not only external features but also internal features of medial axes.
翻译:我们提出一个新的框架,用于计算3D形状的介质轴变形,同时通过限制电图(RPD)保存其介质特征。介质特征,包括输入网状表面的尖边缘和角等外部特征,以及介质轴的接缝和交叉点等内部特征,都是重要的形状描述器。然而,现有的介质轴近距离方法未能捕捉和保存这些特征,原因是介质特征附近基本上没有采集和保存,而且难以建立正确的连接。在本文中,我们使用介质球及其附属结构的RPD来帮助应对这些挑战。RPD的双层结构提供了介质球面表面的连接性。每个介质轴的表面限制电细胞(RPC)提供了这些区域与表层接触的红度区域。由于介质特征基本上没有被采集和保存,因此无法在介质表上进行分类,只能以介质为主,但又能让我们在介质上检测不足的场面取样,并开发必要的条件来保护这些介质球体的连接。使用这种高压方法来维护我们现有的外部特征。