Vision-based Teleoperation of Shadow Dexterous Hand using End-to-End Deep Neural Network

2019 INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA)(2019)

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摘要
In this paper, we present TeachNet, a novel neural network architecture for intuitive and markerless vision-based teleoperation of dexterous robotic hands. Robot joint angles are directly generated from depth images of the human hand that produce visually similar robot hand poses in an end-to-end fashion. The special structure of TeachNet, combined with a consistency loss function, handles the differences in appearance and anatomy between human and robotic hands. A synchronized human-robot training set is generated from an existing dataset of labeled depth images of the human hand and simulated depth images of a robotic hand. The final training set includes 400K pairwise depth images and joint angles of a Shadow C6 robotic hand. The network evaluation results verify the superiority of TeachNet, especially regarding the high-precision condition. Imitation experiments and grasp tasks teleoperated by novice users demonstrate that TeachNet is more reliable and faster than the state-of-the-art vision-based teleoperation method.
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关键词
TeachNet,Shadow dexterous hand,end-to-end deep neural network,intuitive vision-based teleoperation,markerless vision-based teleoperation,dexterous robotic hands,robot joint angles,human hand,visually similar robot hand,consistency loss function,human hands,human-robot training set,labeled depth images,simulated depth images,Shadow C6 robotic hand,pairwise depth images,vision-based teleoperation method
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