CAD Model Segmentation Via Deep Learning
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Titre | CAD Model Segmentation Via Deep Learning |
Type de publication | Journal Article |
Year of Publication | 2021 |
Auteurs | Van Biesbroeck A, Shang F, Bassir D |
Journal | INTERNATIONAL JOURNAL OF COMPUTATIONAL METHODS |
Volume | 18 |
Pagination | 2041005 |
Date Published | APR |
Type of Article | Article |
ISSN | 0219-8762 |
Mots-clés | CAD models, convolutional neural networks, Deep learning, segmentation, Surface mesh |
Résumé | Computer aided design (CAD) models are widely employed in the current computer aided engineering or finite element analysis (FEA) systems that necessitate an optimal meshing as a function of their geometry. To this effect, the sub-mapping method is advantageous, as it segments the CAD model into different sub-parts, with the aim mesh them independently. Many of the existing 3D shape segmentation methods in literature are not suited to CAD models. Therefore, we propose a novel approach for the segmentation of CAD models by harnessing deep learning technologies. First, we refined the model and extracted local geometric features from its shape. Subsequently, we devised a convolutional neural network (CNN)-inspired neural network trained with a custom dataset. Experimental results demonstrate the robustness of our approach and its potential to adapt to augmented datasets in future. |
DOI | 10.1142/S0219876220410054 |