Controlling a Humanoid Robot Arm for Grasping and Manipulating a Moving Object in the Presence of Obstacles without Cameras

Ali Chaabaani, M. Bellamine, M. Gasmi
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Abstract

—Many of researchers working on robotic grasping tasks assume a stationary or fixed object, others have focused on dynamic moving objects using cameras to record images of the moving object and then they treated their images to estimate the position to grasp it. This method is quite difficult, requiring a lot of computing, image processing… Hence, it should be sought more simple handling method. Moreover, the majorities of robotic arms available for humanoid applications are complex to control and yet expensive. In this paper, we are going to detail the requirements to manipulating a 7-DoF WAM robotic arm equipped with the Barrett hand to grasp and handle any moving objects in the 3-D environment in the presence of obstacles and without using the cameras. We used the OpenRAVE simulation environment. We use an extension of RRT-JT algorithm that interleaves exploration using a Rapidly-exploring Random Tree with exploitation using Jacobian-based gradient descent to control the 7-DoF WAM robotic arm to avoid the obstacles, track a moving object, and grasp planning. We present results in which a moving mug is tracked, stably grasped with a maximum rate of success in a reasonable time and picked up by the Barret hand to a desired position.
在无摄像头的情况下控制人形机械臂抓取和操纵运动物体
-许多从事机器人抓取任务的研究人员假设一个静止或固定的物体,其他人则专注于动态移动物体,使用相机记录移动物体的图像,然后他们处理图像来估计要抓取它的位置。该方法难度较大,需要大量的计算和图像处理,因此需要寻求更简单的处理方法。此外,大多数用于类人应用的机械臂控制起来很复杂,而且价格昂贵。在本文中,我们将详细介绍操作配备Barrett手的7 dof WAM机械臂的要求,以便在存在障碍物的3-D环境中不使用相机的情况下抓取和处理任何移动物体。我们使用了OpenRAVE仿真环境。我们使用RRT-JT算法的扩展,将快速探索随机树的探索与基于雅可比的梯度下降的利用相交叉,以控制7自由度WAM机械臂避开障碍物,跟踪移动物体,并进行抓取规划。我们现在的结果是,一个移动的杯子被跟踪,稳定地抓住与最大的成功率在一个合理的时间和巴雷特手拿起一个理想的位置。
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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