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基于工业机械臂和视觉系统的机器人研磨工作站。

A Robotic grinding station based on an industrial manipulator and vision system.

机构信息

Department of Marine Electrical Engineering, Dalian Maritime University, Dalian, China.

出版信息

PLoS One. 2021 Mar 24;16(3):e0248993. doi: 10.1371/journal.pone.0248993. eCollection 2021.

Abstract

Due to ever increasing precision and automation demands in robotic grinding, the automatic and robust robotic grinding workstation has become a research hot-spot. This work proposes a grinding workstation constituting of machine vision and an industrial manipulator to solve the difficulty of positioning rough metal cast objects and automatic grinding. Faced with the complex characteristics of industrial environment, such as weak contrast, light nonuniformity and scarcity, a coarse-to-fine two-step localization strategy was used for obtaining the object position. The deep neural network and template matching method were employed for determining the object position precisely in the presence of ambient light. Subsequently, edge extraction and contour fitting techniques were used to measure the position of the contour of the object and to locate the main burr on its surface after eliminating the influence of burr. The grid method was employed for detecting the main burrs, and the offline grinding trajectory of the industrial manipulator was planned with the guidance of the coordinate transformation method. The system greatly improves the automaticity through the entire process of loading, grinding and unloading. It can determine the object position and target the robotic grinding trajectory by the shape of the burr on the surface of an object. The measurements indicate that this system can work stably and efficiently, and the experimental results demonstrate the high accuracy and high efficiency of the proposed method. Meanwhile, it could well overcome the influence of the materials of grinding work pieces, scratch and rust.

摘要

由于机器人磨削的精度和自动化要求不断提高,自动且鲁棒的机器人磨削工作站已成为研究热点。这项工作提出了一种由机器视觉和工业机械手组成的磨削工作站,以解决定位粗糙金属铸件和自动磨削的难题。面对工业环境的复杂特征,如对比度弱、光照不均匀和稀缺等,采用粗到精的两步定位策略来获取物体的位置。在存在环境光的情况下,采用深度神经网络和模板匹配方法来精确确定物体的位置。随后,采用边缘提取和轮廓拟合技术来测量物体轮廓的位置,并在消除毛刺影响后定位其表面的主毛刺。采用网格方法检测主毛刺,并通过坐标变换方法指导离线规划工业机械手的磨削轨迹。该系统通过加载、磨削和卸载的整个过程大大提高了自动化程度。它可以通过物体表面的毛刺形状来确定物体的位置并确定机器人磨削轨迹。测量结果表明,该系统可以稳定高效地工作,实验结果证明了所提出方法的高精度和高效率。同时,它可以很好地克服磨削工件材料、划痕和生锈的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0527/7990196/567827bd3bab/pone.0248993.g001.jpg

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