In this paper, a novel learning-based network, named DeepDT, is proposed to reconstruct the surface from Delaunay triangulation of point cloud. DeepDT learns to predict inside/outside labels of Delaunay tetrahedrons directly from a point cloud and corresponding Delaunay triangulation. The local geometry features are first extracted from the input point cloud and aggregated into a graph deriving from the Delaunay triangulation. Then a graph filtering is applied on the aggregated features in order to add structural regularization to the label prediction of tetrahedrons. Due to the complicated spatial relations between tetrahedrons and the triangles, it is impossible to directly generate ground truth labels of tetrahedrons from ground truth surface. Therefore, we propose a multilabel supervision strategy which votes for the label of a tetrahedron with labels of sampling locations inside it. The proposed DeepDT can maintain abundant geometry details without generating overly complex surfaces , especially for inner surfaces of open scenes. Meanwhile, the generalization ability and time consumption of the proposed method is acceptable and competitive compared with the state-of-the-art methods. Experiments demonstrate the superior performance of the proposed DeepDT.
翻译:在本文中,一个叫DeepDT的基于学习的新网络,建议从点云的三角三角图中重建地表。深海DT学会直接从点云和相应的Delaunay三角图中预测Delaunay四面形的内/外标签。本地几何特征首先从输入点云中提取,并汇总成从Delaunay三角图中得出的图表。然后,在综合特征上应用一个图形过滤器,以便在四面形的标签预测中增加结构正规化。由于四面形和三角体之间的复杂的空间关系,不可能直接从地面真相表面产生四面四面形体的地面真实标签。因此,我们提议了一个多标签监督战略,对四面四面形体的标签进行投票。提议的DeepDDT可以在不产生过于复杂的表面的情况下,特别是在公开场的内表面,保持大量的几面。同时,拟议方法的普及能力和时间消耗率是可接受的,而且具有竞争力的,与状态测试相比。