3D point cloud analysis for surface quality inspection: A steel parts use case

Michalis Ntoulmperis , Paolo Catti , Silvia Discepolo , Wilhelm van de Kamp , Paolo Castellini , Nikolaos Nikolakis , Kosmas Alexopoulos
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Abstract

A manufacturing process includes inspecting the product to verify it meets its quality standards. Such steps, however, are time-consuming and, depending on the means, prone to errors. If not identified in time, defects occurring at an early step of a manufacturing process may result in significant waste, especially if the product is not easy to re-work. Today, however, the combination of AI with computer vision technologies can enable manufacturers to transform quality inspection by automating the detection of defects. This study discusses the use of products’ 3D shape for inline surface defect detection, facilitating the adoption of proactive control strategies facilitating the reduction of waste. The product's 3D shape, represented by a point cloud is acquired by two fixed laser triangulation sensors orthogonally arranged. The K-means method is adopted for the point cloud data analysis, while Voxel Grid filters are used for downsampling to reduce computational time. The proposed approach has been evaluated in a use case related to the production of steel parts, with the findings supporting that an in-line implementation can facilitate the detection of surface or geometry defects, which, in turn, may facilitate the reduction of waste, by avoiding further processing of the defective product.

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用于表面质量检测的 3D 点云分析:钢铁部件使用案例
生产过程包括检验产品,以确认其是否符合质量标准。然而,这些步骤非常耗时,而且根据手段的不同,容易出错。如果不能及时发现,在制造流程早期出现的缺陷可能会造成严重浪费,尤其是在产品不易返工的情况下。然而,如今,人工智能与计算机视觉技术的结合可以让制造商通过自动检测缺陷来改变质量检测。本研究讨论了如何利用产品的三维形状进行在线表面缺陷检测,从而促进采用有利于减少浪费的主动控制策略。产品的三维形状由正交排列的两个固定激光三角测量传感器采集的点云表示。点云数据分析采用 K-means 方法,而 Voxel Grid 过滤器则用于下采样,以减少计算时间。研究结果表明,在线实施可促进表面或几何缺陷的检测,从而避免对缺陷产品进行进一步加工,减少浪费。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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