On-machine dimensional inspection: machine vision-based approach

被引:0
|
作者
Abdelali Taatali
Sif Eddine Sadaoui
Mohamed Abderaouf Louar
Brahim Mahiddini
机构
[1] École Militaire Polytechnique,Laboratoire Des Techniques Avancées de Fabrication Et Contrôle
[2] Laboratoire Dynamique Des Systèmes Mécaniques,undefined
[3] École Militaire Polytechnique,undefined
关键词
Dimensional inspection; On-machine inspection; Machine vision; Image processing; Point cloud;
D O I
暂无
中图分类号
学科分类号
摘要
The contemporary industry has witnessed a significant transformative development with the integration of artificial intelligence (AI) in various industrial systems, resulting in an enhanced automation for heightened productivity and efficiency. However, mastering this level of automation can be challenging for some applications, such as manufacturing inspection, which can be delicate while maintaining a precise cadence for an in-line manufacturing scale. In this paper, a systematic machine vision-based approach for on-machine inspection is proposed in order to automate and improve inspection process towards computer numerical control (CNC) machined parts. The approach incorporates remapping algorithm and image processing operations to accurately extract desired features. Subsequently, these features will undergo dimensional inspection based on their generated point clouds. Tests were applied on a sample part using a complementary metal–oxide–semiconductor (CMOS) camera mounted on the spindle of 5-axis CNC machining center. The paper explores numerous aspects related to different stages of the approach and their impact on the resulting inspected features evaluations. It also highlights significant findings regarding critical factors for conducting well-structured experiments at various stages. Promising results have shown the significance of the presented work regarding industrial automation technology, ultimately improving manufacturing efficiency throughout the production line.
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页码:393 / 407
页数:14
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