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Main Authors: Weiming, Qu, Tianlin, Liu, Xihong, Wu, Dingsheng, Luo
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2302.13346
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author Weiming, Qu
Tianlin, Liu
Xihong, Wu
Dingsheng, Luo
author_facet Weiming, Qu
Tianlin, Liu
Xihong, Wu
Dingsheng, Luo
contents Forward and inverse kinematics models are fundamental to robot arms, serving as the basis for the robot arm's operational tasks. However, in model learning of robot arms, especially in the presence of redundant degrees of freedom, inverse model learning is more challenging than forward model learning due to the non-convex problem caused by multiple solutions. In this paper, we propose a framework for autonomous learning of the robot arm inverse model based on embodied self-supervised learning (EMSSL) with sampling and training coordination. We investigate batch inference and parallel computation strategies for data sampling in order to accelerate model learning and propose two approaches for fast adaptation of the robot arm model. A series of experiments demonstrate the effectiveness of the method we proposed. The related code will be available soon.
format Preprint
id arxiv_https___arxiv_org_abs_2302_13346
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Embodied Self-Supervised Learning (EMSSL) with Sampling and Training Coordination for Robot Arm Inverse Kinematics Model Learning
Weiming, Qu
Tianlin, Liu
Xihong, Wu
Dingsheng, Luo
Robotics
Forward and inverse kinematics models are fundamental to robot arms, serving as the basis for the robot arm's operational tasks. However, in model learning of robot arms, especially in the presence of redundant degrees of freedom, inverse model learning is more challenging than forward model learning due to the non-convex problem caused by multiple solutions. In this paper, we propose a framework for autonomous learning of the robot arm inverse model based on embodied self-supervised learning (EMSSL) with sampling and training coordination. We investigate batch inference and parallel computation strategies for data sampling in order to accelerate model learning and propose two approaches for fast adaptation of the robot arm model. A series of experiments demonstrate the effectiveness of the method we proposed. The related code will be available soon.
title Embodied Self-Supervised Learning (EMSSL) with Sampling and Training Coordination for Robot Arm Inverse Kinematics Model Learning
topic Robotics
url https://arxiv.org/abs/2302.13346