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Learning hand-eye coordination for robotic grasping with deep learning and large-scale data collection

机译:通过深度学习和大规模数据收集来学习手眼协调以进行机器人抓取

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We describe a learning-based approach to hand-eye coordination for robotic grasping from monocular images. To learn hand-eye coordination for grasping, we trained a large convolutional neural network to predict the probability that task-space motion of the gripper will result in successful grasps, using only monocular camera images independent of camera calibration or the current robot pose. This requires the network to observe the spatial relationship between the gripper and objects in the scene, thus learning hand-eye coordination. We then use this network to servo the gripper in real time to achieve successful grasps. We describe two large-scale experiments that we conducted on two separate robotic platforms. In the first experiment, about 800,000 grasp attempts were collected over the course of two months, using between 6 and 14 robotic manipulators at any given time, with differences in camera placement and gripper wear and tear. In the second experiment, we used a different robotic platform and 8 robots to collect a dataset consisting of over 900,000 grasp attempts. The second robotic platform was used to test transfer between robots, and the degree to which data from a different set of robots can be used to aid learning. Our experimental results demonstrate that our approach achieves effective real-time control, can successfully grasp novel objects, and corrects mistakes by continuous servoing. Our transfer experiment also illustrates that data from different robots can be combined to learn more reliable and effective grasping.
机译:我们描述了一种基于学习的手眼协调方法,用于从单眼图像中抓取机器人。为了学习手眼协调的能力,我们训练了一个大型的卷积神经网络来预测抓手的任务空间运动将成功抓握的可能性,仅使用独立于摄像机校准或当前机器人姿势的单目摄像机图像。这要求网络观察场景中抓取器与物体之间的空间关系,从而学习手眼协调性。然后,我们使用该网络对抓具进行实时伺服,以实现成功的抓取。我们描述了我们在两个独立的机器人平台上进行的两个大型实验。在第一个实验中,在两个月的过程中,在任何给定时间使用6到14个机器人操纵器,收集了大约80万次抓取尝试,相机放置和抓爪的磨损有所不同。在第二个实验中,我们使用了不同的机器人平台和8个机器人来收集由900,000次抓取尝试组成的数据集。第二个机器人平台用于测试机器人之间的传输,以及来自不同机器人集的数据可用于帮助学习的程度。我们的实验结果表明,我们的方法可以实现有效的实时控制,可以成功地抓住新颖的物体,并通过连续伺服来纠正错误。我们的传输实验还表明,可以组合来自不同机器人的数据,以学习更可靠,更有效的掌握方法。

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