An Evolutionary CAD model-based Pose Measurement Method for Industrial Parts based on Monocular Vision

Yucheng Zhu, Yang Zhou, Wei Song
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Abstract

We propose a 6-DOF pose measurement method for industrial parts with complex shape based on monocular vision. According to the CAD file information, the 3D model of an industrial part is established. Then, an offline template library is obtained by the 3D model under different observation views, to reduce the actual online measurement time. The similarity function between the image and the template is established by a Canny-based improved Chamfer distance matching algorithm. The Chamfer distance image is divided into four layers by using the direction angles of the edge gradient, to improve the sensitivity of the matching function. Genetic algorithm (GA) is used to search for the optimal matching result, which combined with the hill-climbing method to make the searching process converge quickly. The experimental results show that our proposed method can measure the targets with known complex shapes in a 3D working environment, with the position error is within 2mm and the rotation error is within 2°. For dynamic parts, our proposed method can achieve fast matching, and the matching is applicable to different dynamic target parts, the model matching is only related to the shape of the part.
基于单目视觉的工业零件位姿进化CAD模型测量方法
提出了一种基于单目视觉的复杂形状工业零件六自由度位姿测量方法。根据CAD文件信息,建立工业零件的三维模型。然后,利用三维模型在不同观测视图下获得离线模板库,减少实际在线测量时间。利用基于canny的改进Chamfer距离匹配算法建立图像与模板之间的相似度函数。利用边缘梯度的方向角将倒角距离图像划分为四层,提高了匹配函数的灵敏度。采用遗传算法(GA)搜索最优匹配结果,并结合爬坡法使搜索过程快速收敛。实验结果表明,该方法可以在三维工作环境下测量已知复杂形状的目标,位置误差在2mm以内,旋转误差在2°以内。对于动态零件,我们提出的方法可以实现快速匹配,并且匹配适用于不同的动态目标零件,模型匹配只与零件的形状有关。
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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