边界表示法
计算机科学
点云
多边形网格
代表(政治)
边界(拓扑)
特征(语言学)
计算机辅助设计
卷积神经网络
实体造型
点(几何)
数据结构
面子(社会学概念)
分割
参数统计
理论计算机科学
几何造型
参数化模型
人工智能
计算机图形学(图像)
工程制图
几何学
数学
社会科学
哲学
法学
数学分析
语言学
社会学
工程类
政治学
程序设计语言
统计
政治
作者
Joseph G. Lambourne,Karl D. D. Willis,Pradeep Kumar Jayaraman,Aditya Sanghi,Peter C. Meltzer,Hooman Shayani
标识
DOI:10.1109/cvpr46437.2021.01258
摘要
Boundary representation (B-rep) models are the standard way 3D shapes are described in Computer-Aided Design (CAD) applications. They combine lightweight parametric curves and surfaces with topological information which connects the geometric entities to describe manifolds. In this paper we introduce BRepNet, a neural network architecture designed to operate directly on B-rep data structures, avoiding the need to approximate the model as meshes or point clouds. BRepNet defines convolutional kernels with respect to oriented coedges in the data structure. In the neighborhood of each coedge, a small collection of faces, edges and coedges can be identified and patterns in the feature vectors from these entities detected by specific learnable parameters. In addition, to encourage further deep learning research with B-reps, we publish the Fusion 360 Gallery segmentation dataset. A collection of over 35,000 B-rep models annotated with information about the modeling operations which created each face. We demonstrate that BRepNet can segment these models with higher accuracy than methods working on meshes, and point clouds.
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