2023 IEEE-RAS 22nd International Conference on Humanoid Robots (Humanoids)
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Veranstaltungszeitraum:
12-Dez-2023 - 14-Dez-2023
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Veranstaltungsort:
Austin, Vereinigte Staaten von Amerika
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Umfang:
8
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Verlag:
IEEE, Piscataway
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Keywords:
Human-Robot retargeting; Imitation Learning; Deep Learning
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Abstract:
This paper introduces a novel deep-learning approach for human-to-robot motion retargeting, enabling robots to mimic human poses accurately. Contrary to prior deep-learning-based works, our method does not require paired human-to-robot data, which facilitates its translation to new robots. First, we construct a shared latent space between humans and robots via adaptive contrastive learning that takes advantage of a proposed cross-domain similarity metric between the human and robot poses. Additionally, we propose a consistency term to build a common latent space that captures the similarity of the poses with precision while allowing direct robot motion control from the latent space. For instance, we can generate in-between motion through simple linear interpolation between two projected human poses. We conduct a comprehensive evaluation of robot control from diverse modalities (i.e., texts, RGB videos, and key poses), which facilitates robot control for non-expert users. Our model outperforms existing works regarding human-to-robot retargeting in terms of efficiency and precision. Finally, we implemented our method in a real robot with self-collision avoidance through a whole-body controller to showcase the effectiveness of our approach.
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Projekttitel:
PErsonalized Robotics as SErvice Oriented applications: H2020-MSCA-ITN-2019 (European Commission)