计算机辅助设计
点云
计算机科学
概率逻辑
代表(政治)
边界表示法
算法
编码器
人工智能
边界(拓扑)
理论计算机科学
数学
工程制图
政治
操作系统
工程类
数学分析
法学
政治学
作者
Haoxiang Guo,Shilin Liu,Hao Pan,Yang Liu,Xin Tong,Baining Guo
出处
期刊:Cornell University - arXiv
日期:2022-01-01
被引量:4
标识
DOI:10.48550/arxiv.2205.14573
摘要
We view the reconstruction of CAD models in the boundary representation (B-Rep) as the detection of geometric primitives of different orders, i.e. vertices, edges and surface patches, and the correspondence of primitives, which are holistically modeled as a chain complex, and show that by modeling such comprehensive structures more complete and regularized reconstructions can be achieved. We solve the complex generation problem in two steps. First, we propose a novel neural framework that consists of a sparse CNN encoder for input point cloud processing and a tri-path transformer decoder for generating geometric primitives and their mutual relationships with estimated probabilities. Second, given the probabilistic structure predicted by the neural network, we recover a definite B-Rep chain complex by solving a global optimization maximizing the likelihood under structural validness constraints and applying geometric refinements. Extensive tests on large scale CAD datasets demonstrate that the modeling of B-Rep chain complex structure enables more accurate detection for learning and more constrained reconstruction for optimization, leading to structurally more faithful and complete CAD B-Rep models than previous results.
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