随机定位工业零件的自动拣箱系统

C. Martínez, Remus Boca, Biao Zhang, Heping Chen, S. Nidamarthi
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引用次数: 26

摘要

由于图像处理、机器人运动规划和工具系统等方面的挑战,垃圾箱拾取一直是一个研究课题。然而,许多现有的工作并不适用于大多数现实世界的捡桶问题,因为它们过于简单或不够健壮,无法用于工业用途。本文将视觉系统与机器人系统相结合,开发了一种鲁棒的三维随机拣货系统。视觉系统识别候选零件的位置,然后机器人系统验证其中一个候选零件是否可拾取;如果一个零件被识别为可拾取的,那么机器人将拾取该零件并将其准确地放置在正确的位置。选择了带有IRC5控制器的ABB IRB2400机器人来拾取零件。采用三维视觉系统对零件进行定位。实验结果表明,该系统可以成功地拾取工业环境中随机放置的零件。该系统为需要三维随机拣箱的工业应用提供了一个实用而强大的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated bin picking system for randomly located industrial parts
Bin picking has been a research topic for years because of the challenges in image processing, robot motion planning and tool system. However, much of the existing work is not applicable to most real world bin picking problems because they are too simplistic or not robust enough for industrial use. In this paper, we developed a robust random 3D bin picking system by integrating the vision system with the robotics system. The vision system identifies the location of candidate parts, then the robot system validates if one of the candidate parts is pickable; if a part is identified as pickable, then the robot will pick up this part and place it accurately in the right location. An ABB IRB2400 robot with an IRC5 controller was chosen for picking up the parts. A 3D vision system was used to locate the parts. Experimental results demonstrated that the system can successfully pick up randomly placed parts in an industrial setting. This system provides a practical and robust solution for the industrial applications that require 3D random bin picking.
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