基于深度学习的加工特征识别三维CAD模型的图表示

Weijuan Cao, T. Robinson, Yang Hua, F. Boussuge, Andrew R. Colligan, Wanbin Pan
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引用次数: 20

摘要

本文研究了深度学习方法在CAD模型加工特征识别中的应用。主要有四方面贡献:1。提出了一种自动生成大型三维CAD模型数据集的方法,其中每个模型包含多个带有人脸标签的加工特征。2. 提出了一种简洁、信息丰富的三维CAD模型图形表示方法。这被证明适用于图神经网络。3.图表示与体素在训练深度神经网络分割3D CAD模型方面的性能进行了比较。4. 实验还评估了基于图的深度学习在交互特征识别中的有效性。结果表明,所提出的图表示比体素更有效地表示了3D CAD模型的深度学习。图神经网络可以识别模型上的单个特征,也可以识别复杂的相互作用的特征。
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Graph Representation of 3D CAD Models for Machining Feature Recognition With Deep Learning
In this paper, the application of deep learning methods to the task of machining feature recognition in CAD models is studied. Four contributions are made: 1. An automatic method to generate large datasets of 3D CAD models is proposed, where each model contains multiple machining features with face labels. 2. A concise and informative graph representation for 3D CAD models is presented. This is shown to be applicable to graph neural networks. 3. The graph representation is compared with voxels on their performance of training deep neural networks to segment 3D CAD models. 4. Experiments are also conducted to evaluate the effectiveness of graph-based deep learning for interacting feature recognition. Results show that the proposed graph representation is a more efficient representation of 3D CAD models than voxels for deep learning. It is also shown that graph neural networks can be used to recognize individual features on the model and also identify complex interacting features.
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