Conference Paper/Proceeding/Abstract 517 views 23 downloads
A Hybrid Learning-Driven Computer Vision Framework for Reverse Engineering via Enhanced 3D Shape Reconstruction
Proceedings of the Future Technologies Conference (FTC) 2022, Volume: 2, Pages: 848 - 861
Swansea University Authors: Andrew Rees, Steffen Scholz
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DOI (Published version): 10.1007/978-3-031-18458-1_58
Abstract
Reverse engineering (RE) has played a key role in producing low demands parts, especially with the recent advent of robust additive manufacturing (AM) techniques. The synergetic interaction of both cutting-edge RE and AM techniques significantly enhance part re-producing and minimize the product dev...
Published in: | Proceedings of the Future Technologies Conference (FTC) 2022 |
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ISBN: | 9783031184574 9783031184581 |
ISSN: | 2367-3370 2367-3389 |
Published: |
Cham
Springer International Publishing
2022
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Online Access: |
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URI: | https://cronfa.swan.ac.uk/Record/cronfa62064 |
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Abstract: |
Reverse engineering (RE) has played a key role in producing low demands parts, especially with the recent advent of robust additive manufacturing (AM) techniques. The synergetic interaction of both cutting-edge RE and AM techniques significantly enhance part re-producing and minimize the product development cycle time, even if there is no blueprint for the desired product. Recently, computer vision algorithms have enhanced the RE process and strengthen its capabilities to reconstruct challenging shapes. Nevertheless, the large body of the reported literature is restricted to estimate the 3D shape of the scanned part from a single/multiple 2D/3D image based on predefined classes using supervised learning. The ability to reconstruct intricate geometrical features of real mechanical parts and complex shapes has not been fully realized yet. In this context, this paper reports on a hybrid learning technique-based conceptual computer vision framework to enhance RE process for reproducing of low demand products. The hybrid learning proposed herein is a supervised and unsupervised learning technique using a dual deep learning models to enrich the computer vision technique with the ability to reconstruct 3D complex features using a single 3D depth image. |
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Keywords: |
Computer Vision, Machine Learning, Deep Learning, Hybrid learning, 3D Reconstruction, Production, Additive Manufacturing (AM), Reverse Engineering (RE) |
College: |
Faculty of Science and Engineering |
Start Page: |
848 |
End Page: |
861 |