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An adaptive robotic grasping with a 2-finger gripper based on deep learning network

机译:基于深度学习网络的2指抓取器自适应机器人抓取

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摘要

In this paper, an adaptive and versatile robotic grasping system is presented that is able to manipulate manufactured objects in production factories with a 2-finger gripper. A pick and place scenario based on deep learning framework is implemented and is achieved based on the following main steps: detection of the manufactured objects in the global scene observed by a first RGB-D camera using a first deep learning network, estimation of the object pose using 2D bounding box coordinates and depth information, motion of the arm above the object in an approach pose using Kinematics and Dynamics Library (KDL), recognition of the object’s face using a second deep learning network and information coming from a second RGB-D camera setup on the arm wrist, decision on the optimal grasping mode (opening or closing the fingers), execution of the grasping action. The developed system is validated practically by experiments in real world settings using a mobile manipulator platform consisting of 6 DoF robot arm with a 2-finger gripper setup on a mobile robot equipped by two RGB-D cameras.
机译:在本文中,提出了一种自适应且用途广泛的机器人抓取系统,该系统能够使用2指抓取器在生产工厂中操纵制造的对象。基于深度学习框架的拾放场景是基于以下主要步骤实现的:通过使用第一深度学习网络的第一台RGB-D摄像机检测全局场景中的制造对象,对对象进行估计使用2D边界框坐标和深度信息进行姿势,使用运动学和动力学库(KDL)在进场姿势中手臂在对象上方的运动,使用第二个深度学习网络对对象的脸部进行识别以及来自第二个RGB-D的信息手臂腕部上的摄像头设置,最佳抓握模式(打开或关闭手指)的决定,抓握动作的执行。所开发的系统实际上通过在真实环境中的实验进行验证,使用的移动机械手平台由6个DoF机械臂和2个手指抓爪装置设置在配备有两个RGB-D摄像机的移动机器人上。

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