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Main Authors: Bahety, Arpit, Mandikal, Priyanka, Abbatematteo, Ben, Martín-Martín, Roberto
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.03666
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author Bahety, Arpit
Mandikal, Priyanka
Abbatematteo, Ben
Martín-Martín, Roberto
author_facet Bahety, Arpit
Mandikal, Priyanka
Abbatematteo, Ben
Martín-Martín, Roberto
contents Bimanual manipulation is a longstanding challenge in robotics due to the large number of degrees of freedom and the strict spatial and temporal synchronization required to generate meaningful behavior. Humans learn bimanual manipulation skills by watching other humans and by refining their abilities through play. In this work, we aim to enable robots to learn bimanual manipulation behaviors from human video demonstrations and fine-tune them through interaction. Inspired by seminal work in psychology and biomechanics, we propose modeling the interaction between two hands as a serial kinematic linkage -- as a screw motion, in particular, that we use to define a new action space for bimanual manipulation: screw actions. We introduce ScrewMimic, a framework that leverages this novel action representation to facilitate learning from human demonstration and self-supervised policy fine-tuning. Our experiments demonstrate that ScrewMimic is able to learn several complex bimanual behaviors from a single human video demonstration, and that it outperforms baselines that interpret demonstrations and fine-tune directly in the original space of motion of both arms. For more information and video results, https://robin-lab.cs.utexas.edu/ScrewMimic/
format Preprint
id arxiv_https___arxiv_org_abs_2405_03666
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ScrewMimic: Bimanual Imitation from Human Videos with Screw Space Projection
Bahety, Arpit
Mandikal, Priyanka
Abbatematteo, Ben
Martín-Martín, Roberto
Robotics
Artificial Intelligence
Bimanual manipulation is a longstanding challenge in robotics due to the large number of degrees of freedom and the strict spatial and temporal synchronization required to generate meaningful behavior. Humans learn bimanual manipulation skills by watching other humans and by refining their abilities through play. In this work, we aim to enable robots to learn bimanual manipulation behaviors from human video demonstrations and fine-tune them through interaction. Inspired by seminal work in psychology and biomechanics, we propose modeling the interaction between two hands as a serial kinematic linkage -- as a screw motion, in particular, that we use to define a new action space for bimanual manipulation: screw actions. We introduce ScrewMimic, a framework that leverages this novel action representation to facilitate learning from human demonstration and self-supervised policy fine-tuning. Our experiments demonstrate that ScrewMimic is able to learn several complex bimanual behaviors from a single human video demonstration, and that it outperforms baselines that interpret demonstrations and fine-tune directly in the original space of motion of both arms. For more information and video results, https://robin-lab.cs.utexas.edu/ScrewMimic/
title ScrewMimic: Bimanual Imitation from Human Videos with Screw Space Projection
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2405.03666