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Hauptverfasser: Zhang, Chong, Sheng, Jiapeng, Li, Tingguang, Zhang, He, Zhou, Cheng, Zhu, Qingxu, Zhao, Rui, Zhang, Yizheng, Han, Lei
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2402.13473
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author Zhang, Chong
Sheng, Jiapeng
Li, Tingguang
Zhang, He
Zhou, Cheng
Zhu, Qingxu
Zhao, Rui
Zhang, Yizheng
Han, Lei
author_facet Zhang, Chong
Sheng, Jiapeng
Li, Tingguang
Zhang, He
Zhou, Cheng
Zhu, Qingxu
Zhao, Rui
Zhang, Yizheng
Han, Lei
contents Learning highly dynamic behaviors for robots has been a longstanding challenge. Traditional approaches have demonstrated robust locomotion, but the exhibited behaviors lack diversity and agility. They employ approximate models, which lead to compromises in performance. Data-driven approaches have been shown to reproduce agile behaviors of animals, but typically have not been able to learn highly dynamic behaviors. In this paper, we propose a learning-based approach to enable robots to learn highly dynamic behaviors from animal motion data. The learned controller is deployed on a quadrupedal robot and the results show that the controller is able to reproduce highly dynamic behaviors including sprinting, jumping and sharp turning. Various behaviors can be activated through human interaction using a stick with markers attached to it. Based on the motion pattern of the stick, the robot exhibits walking, running, sitting and jumping, much like the way humans interact with a pet.
format Preprint
id arxiv_https___arxiv_org_abs_2402_13473
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Learning Highly Dynamic Behaviors for Quadrupedal Robots
Zhang, Chong
Sheng, Jiapeng
Li, Tingguang
Zhang, He
Zhou, Cheng
Zhu, Qingxu
Zhao, Rui
Zhang, Yizheng
Han, Lei
Robotics
Learning highly dynamic behaviors for robots has been a longstanding challenge. Traditional approaches have demonstrated robust locomotion, but the exhibited behaviors lack diversity and agility. They employ approximate models, which lead to compromises in performance. Data-driven approaches have been shown to reproduce agile behaviors of animals, but typically have not been able to learn highly dynamic behaviors. In this paper, we propose a learning-based approach to enable robots to learn highly dynamic behaviors from animal motion data. The learned controller is deployed on a quadrupedal robot and the results show that the controller is able to reproduce highly dynamic behaviors including sprinting, jumping and sharp turning. Various behaviors can be activated through human interaction using a stick with markers attached to it. Based on the motion pattern of the stick, the robot exhibits walking, running, sitting and jumping, much like the way humans interact with a pet.
title Learning Highly Dynamic Behaviors for Quadrupedal Robots
topic Robotics
url https://arxiv.org/abs/2402.13473