Feature line detection of noisy triangulated CSGbased objects using deep learning

M. Denk, K. Paetzold, K. Rother
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引用次数: 5

Abstract

Feature lines such as sharp edges are the main characteristic lines of a surface. These lines are suitable as a basis for surface reconstruction and reverse engineering [1]. A supervised deep learning approach based on graph convolutional networks on estimating local feature lines will be introduced in the following. We test this deep learning architecture on two provided data sets of which one covers sharp feature lines and the other arbitrary feature lines based on unnoisy meshed constructive solid geometry [CSG]. Furthermore. we use a data balancing strategy by classifying different feature line types. We then compare the selected architecture with classical machine learning models. Finally. we show the detection of these lines on noisy and deformed meshes.
基于深度学习的噪声三角化csg目标特征线检测
特征线,如锐边,是一个表面的主要特征线。这些线条适合作为曲面重构和逆向工程的基础[1]。下面将介绍一种基于图卷积网络的有监督深度学习方法,用于估计局部特征线。我们在两个提供的数据集上测试了这种深度学习架构,其中一个数据集覆盖了尖锐特征线,另一个数据集覆盖了基于无噪声网格构造立体几何的任意特征线[CSG]。此外。我们通过分类不同的特征线类型来使用数据平衡策略。然后,我们将选择的架构与经典机器学习模型进行比较。最后。我们展示了在有噪声和变形的网格上检测这些线。
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