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Adversarial discriminative sim-to-real transfer of visuo-motor policies

机译:对抗运动策略的从模拟到真实的对抗性区分

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摘要

Various approaches have been proposed to learn visuo-motor policies for real-world robotic applications. One solution is first learning in simulation then transferring to the real world. In the transfer, most existing approaches need real-world images with labels. However, the labeling process is often expensive or even impractical in many robotic applications. In this article, we introduce an adversarial discriminative sim-to-real transfer approach to reduce the amount of labeled real data required. The effectiveness of the approach is demonstrated with modular networks in a table-top object-reaching task where a seven-degree-of-freedom arm is controlled in velocity mode to reach a blue cuboid in clutter through visual observations from a monocular RGB camera. The adversarial transfer approach reduced the labeled real data requirement by 50%. Policies can be transferred to real environments with only 93 labeled and 186 unlabeled real images. The transferred visuo-motor policies are robust to novel (not seen in training) objects in clutter and even a moving target, achieving a 97.8% success rate and 1.8 cm control accuracy. Datasets and code are openly available.
机译:已经提出了各种方法来学习现实世界机器人应用的视觉运动策略。一种解决方案是首先学习仿真,然后转移到现实世界。在传输中,大多数现有方法都需要带有标签的真实图像。但是,在许多机器人应用中,贴标签过程通常很昂贵,甚至不切实际。在本文中,我们介绍了一种对抗性的区分模拟到真实的传输方法,以减少所需的标记真实数据量。该方法的有效性通过模块化网络在桌面物体到达任务中得到了证明,该任务通过单眼RGB摄像机的视觉观察,以速度模式控制了七个自由度的手臂,使其凌乱地到达了蓝色长方体。对抗传输方法使标记的真实数据需求减少了50%。可以将策略转移到只有93个带标签的真实图像和186个无标签的真实图像的真实环境。转移的视觉运动策略对于杂乱甚至是移动目标中的新颖(训练中未见)对象都具有鲁棒性,成功率为97.8%,控制精度为1.8厘米。数据集和代码是公开可用的。

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