基于深度学习的自主机械手分拣应用

Hoang-Dung Bui, Hai V. Nguyen, Hung M. La, Shuai Li
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引用次数: 4

摘要

近年来,机器人操纵和抓取机构受到了广泛的关注,并在工业上得到了广泛的应用。本文提出了一种用于物体分拣的自主机器人抓取系统的开发。RGB-D数据被机器人用于执行目标检测、姿态估计、轨迹生成和目标分类任务。该方法还可以处理用户选择的特定对象的抓取。利用训练好的卷积神经网络进行目标检测,确定待抓取目标对应的点云簇。从选定的点云数据中,抓取生成器算法输出潜在抓取。抓取过滤器然后对这些潜在的抓取进行评分,得分最高的抓取将被选择在真正的机器人上执行。运动规划器将生成无碰撞轨迹来执行选择的抓取。在AUBO机器人上的实验表明了该方法在自主对象排序方面的潜力,具有鲁棒性和快速排序性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning-Based Autonomous Robot Manipulator for Sorting Application
Robot manipulation and grasping mechanisms have received considerable attention in the recent past, leading to development of wide-range of industrial applications. This paper proposes the development of an autonomous robotic grasping system for object sorting application. RGB-D data is used by the robot for performing object detection, pose estimation, trajectory generation and object sorting tasks. The proposed approach can also handle grasping on certain objects chosen by users. Trained convolutional neural networks are used to perform object detection and determine the corresponding point cloud cluster of the object to be grasped. From the selected point cloud data, a grasp generator algorithm outputs potential grasps. A grasp filter then scores these potential grasps, and the highest-scored grasp will be chosen to execute on a real robot. A motion planner will generate collision-free trajectories to execute the chosen grasp. The experiments on AUBO robotic manipulator show the potentials of the proposed approach in the context of autonomous object sorting with robust and fast sorting performance.
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