杂乱多类物体的机器人自主抓取策略和系统

IF 2.5 3区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Xuan Zheng, Shuaiming Yuan, Pengzhan Chen
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引用次数: 0

摘要

随着机器人抓取环境的日益复杂,对机械手的抓取策略提出了更高的要求。然而,抓取杂乱无章的多类物体是一项具有挑战性的任务,因为物体之间是堆叠和相互遮挡的,机器人往往很难找到合适的抓取位置。深度强化学习与 DQN 算法已被用于研究操控杂乱多类物体的推抓策略。然而,该算法存在学习时间长、成功率低的问题。为了解决这个问题,我们采用了两个全卷积网络(FCN)将颜色和深度图映射到动作:推和抓。这两个网络是通过改进的软演员批评算法训练的,该算法包括自动熵正则化、正则化目标函数和剪切双 Q 学习。推和抓的协同作用是通过密集的奖励反馈学习到的。模拟实验表明,学习过程收敛迅速且稳定,抓取成功率高达 83.3%。当场景中出现机器人从未抓取过的新物体时,我们进一步证明了模型的泛化能力和良好性能。最后,我们利用模拟训练的模型进行了实际实验,以测试机器人在人工布置的场景中的抓取性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robotic Autonomous Grasping Strategy and System for Cluttered Multi-class Objects

With the increasing complexity of the robot grasping environment, it puts forward higher requirements on the grasping strategy of manipulators. However, grasping cluttered multi-class objects is a challenging task because the objects are stacked and occluded from each other, and it is often difficult for robots to find a suitable grasping position. Deep reinforcement learning with DQN algorithm has been used to study the pushing and grasping strategy to manipulate cluttered multi-class objects. However, there exists long learning time and low success rate. To solve this problem, we adopt two fully convolutional networks (FCN) to map the color and depth maps to actions: pushing and grasping. These two networks are trained by an improved soft actor-critic algorithm that includes auto entropy regularization, regularized objective function and clipped double Q learning. Pushing and grasping synergies has been learned with the dense reward feedback. The simulation experiment demonstrate that the learning process converges quickly and stable with a grasp success rate up to 83.3%. We further demonstrate the generalization ability and well performance of our models when novel objects appear in the scenes that the robot has never grasped before. Finally, real-world experiments with trained models from simulations are conducted to test the grasping performance on manually arranged scenes.

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来源期刊
International Journal of Control Automation and Systems
International Journal of Control Automation and Systems 工程技术-自动化与控制系统
CiteScore
5.80
自引率
21.90%
发文量
343
审稿时长
8.7 months
期刊介绍: International Journal of Control, Automation and Systems is a joint publication of the Institute of Control, Robotics and Systems (ICROS) and the Korean Institute of Electrical Engineers (KIEE). The journal covers three closly-related research areas including control, automation, and systems. The technical areas include Control Theory Control Applications Robotics and Automation Intelligent and Information Systems The Journal addresses research areas focused on control, automation, and systems in electrical, mechanical, aerospace, chemical, and industrial engineering in order to create a strong synergy effect throughout the interdisciplinary research areas.
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