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Feature line detection of noisy triangulated CSGbased objects using deep learning

Authors :
Klemens Rother
Martin Denk
Kristin Paetzold
Source :
DFX 2019: Proceedings of the 30th Symposium Design for X, 18-19 September 2019, Jesteburg, Germany.
Publication Year :
2019
Publisher :
The Design Society, 2019.

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.

Details

Database :
OpenAIRE
Journal :
DFX 2019: Proceedings of the 30th Symposium Design for X, 18-19 September 2019, Jesteburg, Germany
Accession number :
edsair.doi...........2fb13309c0e1773d2a85c7bd48fc5624
Full Text :
https://doi.org/10.35199/dfx2019.21