Given the laborious difficulty of moving heavy bags of physical currency in the cash center of the bank, there is a large demand for training and deploying safe autonomous systems capable of conducting such tasks in a collaborative workspace. However, the deformable properties of the bag along with the large quantity of rigid-body coins contained within it, significantly increases the challenges of bag detection, grasping and manipulation by a robotic gripper and arm. In this paper, we apply deep reinforcement learning and machine learning techniques to the task of controlling a collaborative robot to automate the unloading of coin bags from a trolley. To accomplish the task-specific process of gripping flexible materials like coin bags where the center of the mass changes during manipulation, a special gripper was implemented in simulation and designed in physical hardware. Leveraging a depth camera and object detection using deep learning, a bag detection and pose estimation has been done for choosing the optimal point of grasping. An intelligent approach based on deep reinforcement learning has been introduced to propose the best configuration of the robot end-effector to maximize successful grasping. A boosted motion planning is utilized to increase the speed of motion planning during robot operation. Real-world trials with the proposed pipeline have demonstrated success rates over 96\% in a real-world setting.
翻译:鉴于在银行现金中心移动重货币重袋的难度很大,因此需要大量培训和部署能够在一个协作工作空间执行这类任务的安全自主系统,然而,袋的变形特性加上内装大量硬体硬币,大大增加了袋的探测、抓取和由机器人握手和手臂操纵的挑战。在本文件中,我们运用了深度强化学习和机器学习技术来控制一个协作机器人的任务,将硬币袋从推车中卸出来自动化。为了完成控制硬币袋等灵活材料的具体任务过程,如硬币袋在操作过程中的大规模变化中心,在模拟中安装了一个特殊的控制器,并设计了硬件。利用深层学习、检测和显示估计的深度相机和物体探测方法,以选择最佳的捕捉点。在深层强化学习的基础上,我们采用了智能方法,以提出机器人最终作用的最佳配置,以最大限度地成功捕捉。在实际操作过程中,正在利用加速的动作规划,以提高运动速度。