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Deep Imitation Learning for Complex Manipulation Tasks from Virtual Reality Teleoperation

机译:虚拟现实遥操作的复杂操纵任务深度模仿学习

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Imitation learning is a powerful paradigm for robot skill acquisition. However, obtaining demonstrations suitable for learning a policy that maps from raw pixels to actions can be challenging. In this paper we describe how consumergrade Virtual Reality headsets and hand tracking hardware can be used to naturally teleoperate robots to perform complex tasks. We also describe how imitation learning can learn deep neural network policies (mapping from pixels to actions) that can acquire the demonstrated skills. Our experiments showcase the effectiveness of our approach for learning visuomotor skills.
机译:仿制学习是机器人技能获取的强大范例。但是,获取适合学习从原始像素映射到动作的政策的示范可能是具有挑战性的。在本文中,我们描述了消费者虚拟现实耳机和手动跟踪硬件如何用于自然优步机器人来执行复杂的任务。我们还描述了模仿学习如何学习深度神经网络策略(从像素映射到动作),可以获取所展示的技能。我们的实验展示了我们学习Visuomotor技能的方法的有效性。

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