CFRP板钻孔自动检测的机器视觉框架

Alejandro Hernández, A. Maghami, Matt Khoshdarregi
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引用次数: 4

摘要

本文提出了一种用于航空航天和汽车工业中平面碳纤维复合材料板钻孔检测的全自动框架。该框架能够自动识别零件并从现有的DXF文件库中提取几何信息。然后,它根据运动平台确定零件的位置和方向,而不需要对零件坐标系进行显式编程。采用视觉伺服和最优运动规划技术,将末端执行器的摄像机自动移动到每个孔,以捕获高分辨率图像。图像处理技术用于确定每个孔的几何误差和分层系数。所有提议的计算机视觉模块都已经在Python和OpenCV中实现,它们都是开源的,因此可以随时获得。实验结果表明,所提出的框架能够高效、自主地检测复合材料板上的钻孔,而最终用户所需的编程最少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Vision Framework for Autonomous Inspection of Drilled Holes in CFRP Panels
This paper presents a fully autonomous framework for the inspection of drilled holes in planar carbon fiber composite panels used in the aerospace and automotive industries. The proposed framework can automatically recognize a part and extract the geometrical information from an existing library of DXF files. It then determines the location and orientation of the part with respect to the motion platform without a need for explicit programming of the part coordinate system. Visual servoing and optimal motion planning techniques are used to autonomously move the end-effector's camera to each hole to capture high resolution images. Image processing techniques are used to determine the geometrical errors and delamination factors for each hole. All of the proposed computer vision modules have been implemented in Python and OpenCV, which are open source and thus readily available to the industry. Experimental results prove that the proposed framework can efficiently and autonomously inspect drilled holes in composite panels with minimal programming required of the end-user.
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