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Multi-Stage Learning of Selective Dual-Arm Grasping Based on Obtaining and Pruning Grasping Points Through the Robot Experience in the Real World

机译:基于获得和修剪掌握点通过现实世界中的机器人体验的基于获得和修剪掌握点的多阶段学习

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Recently, self-supervised approach is common for robot grasping. Although this approach improves success rate, it requires a long time to execute a number of grasp trials, and single-arm grasping is only considered. However, robots can grasp more various objects with two arms, and dual-arm robots such as humanoid robots are expected to execute dual-arm manipulation and overcome the single-arm limitation. In this paper, we introduce dual-arm grasping as another possible strategy and propose a multi-stage learning method for selective dual-arm grasping using Convolutional Neural Networks (CNN) for grasping point prediction and semantic segmentation. In the first stage, the network learns grasping points with the automatic annotation. Although a robot learns both single-arm and dual-arm grasping efficiently with the annotation, the robot may not be able to grasp it because the annotation algorithm is designed by human. Therefore, for the second stage, the robot samples various grasping points with both grasping strategies and learns how to grasp in the real world. In this stage, the robot obtains new possible grasping points and prunes unsuccessful ones for both grasping strategies through the robot experience. In the experiments in the real world, the adapted network achieved high success rate 76.7% in 90 trials. Since the network trained with no adaptation stage resulted in lower success rate 56.7%, this result also shows the network was refined with less than 250 times of grasp sampling. As an application of our method, we demonstrated that our system worked well in warehouse picking task.
机译:最近,自我监督的方法对于机器人掌握是常见的。虽然这种方法提高了成功率,但它需要很长时间才能执行许多掌握试验,并且仅考虑单臂抓握。然而,机器人可以掌握具有两个臂的更多各种物体,并且预计人形机器人等双臂机器人将执行双臂操纵并克服单臂限制。在本文中,我们将双臂掌握作为另一种可能的策略,并提出了一种使用卷积神经网络(CNN)选择性双臂用于掌握点预测和语义分割的多级学习方法。在第一阶段,网络了解掌握自动注释。虽然机器人与注释有效地学习单臂和双臂抓握,但机器人可能无法掌握它,因为被人类的注释算法。因此,对于第二阶段,机器人用抓握策略来示例各种掌握点,并学会如何把握在现实世界中。在这个阶段,机器人通过机器人体验获得新的可能的掌握点,并提出不成功的点,并且通过机器人体验掌握策略。在现实世界的实验中,适应网络在90项试验中实现了高达76.7%的高达率76.7%。由于网络培训没有适应阶段的培训,因此成功率较低56.7%,因此该结果也显示了网络被精制的掌握采样的250倍。作为我们的方法的应用,我们证明我们的系统在仓库采摘任务中工作得很好。

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