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Grasping virtual fish: A step towards robotic deep learning from demonstration in virtual reality

机译:抓住虚拟鱼:从虚拟现实中的示范中迈向机器人深度学习的一步

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We present an approach to robotic deep learning from demonstration in virtual reality, which combines a deep 3D convolutional neural network, for grasp detection from 3D point clouds, with domain randomization to generate a large training data set. The use of virtual reality (VR) enables robot learning from demonstration in a virtual environment. In this environment, a human user can easily and intuitively demonstrate examples of how to grasp an object, such as a fish. From a few dozen of these demonstrations, we use domain randomization to generate a large synthetic training data set consisting of 76 000 example grasps of fish. After training the network using this data set, the network is able to guide a gripper to grasp virtual fish with good success rates. Our domain randomization approach is a step towards an efficient way to perform robotic deep learning from demonstration in virtual reality.
机译:我们提出了一种从虚拟现实中的示范中的机器人深度学习的方法,它结合了深度3D卷积神经网络,用于从3D点云进行掌握检测,具有域随机化来生成大型训练数据集。虚拟现实(VR)的使用使机器人能够从虚拟环境中的演示中学习。在这种环境中,人类用户可以容易地直观地展示如何抓住物体的例子,例如鱼类。从几次这些演示中,我们使用域随机化来生成由76 000例掌握鱼的大型合成训练数据集。使用此数据集培训网络后,网络能够指导夹具以掌握具有良好成功率的虚拟鱼。我们的域随机化方法是迈向在虚拟现实中示范中执行机器人深度学习的有效方法的一步。

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