基于视觉的混合检测在机械臂取放中的应用

Muhammad Umar Anjum, U. S. Khan, W. S. Qureshi, Ameer Hamza, Wajih Ahmed Khan
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引用次数: 1

摘要

使用协作机器人拾取和放置在工业中是一个常见的应用。在网络物理系统中,具有视觉传感功能的智能协作机器人可以减少获取场景中物体位置决策的不确定性。本文使用UR5协作机器人作为协作机器人,利用单目腕相机自动检测桌面上的物体。提出了一种改进的统计方法和减小误差的方法,利用相机坐标系中检测到的物体,建立了估计物体位置(相对于机械手坐标系的距离)的数学关系。首先,利用模拟世界坐标与图像坐标的对应关系建立关系。其次是通过捕获多个图像并逐渐向目标中心移动来减少误差的方法。采用统计方法,目标定位精度达到99.785%。由于夹持器仍然能够拾取物体,因此误差减少到2mm。我们提出的方法可用于精确接近物体的位置,并可有效地用于使用机器人机械手的拾取和放置应用。水果分类已被用作一个示例应用程序,但提出的方法是通用的,可以应用于任何对象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision-Based Hybrid Detection For Pick And Place Application In Robotic Manipulators
Pick and place using cobots is a common application in industry. In a cyber-physical system, a smarter cobot with vision sensing can decrease the uncertainty in decision-making for acquiring the position of objects in a scene. In this paper, a UR5 cobot is used as a cobot to automatically detect objects on a tabletop utilizing a monocular wrist camera. An improved statistical method and error reduction approach is designed by formulation of a mathematical relation for estimating the position of the object (w.r.t to the manipulator coordinate system) using the object detected in the camera coordinate system. Firstly, correspondence between simulated world coordinates and image coordinates is used to make a relation. This is followed by an error reduction approach by capturing multiple images and gradually moving towards the target centre. The object location accuracy of 99.785% was achieved using the statistical method. The error is reduced up to 2mm which is compensated since the gripper is still able to pick up the object. Our proposed method can be used to accurately approach an object's location and can be used effectively in pick-and-place applications using robotic manipulators. Fruit sorting has been used as a sample application however the proposed method is generic and can be applied to any object.
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