人形机器人的运动重定向和机器学习

Sarangi Patel, Tanya Garg, Geet Patel, Roshani, Bhaskar Chaudhury, T. Maiti
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引用次数: 0

摘要

对人体运动的准确跟踪和训练可以实现高效的仿人机器人操作。机器学习可以为训练这些动作铺平道路,因为它利用算法和统计模型来预测依赖模式和推理的新动作。我们提出了一个模型,该模型探索了机器学习算法的使用,作为改进人形机器人操作的第一步。该系统主要由两部分组成:一是建立了运动跟踪实验装置,实现了对人体运动的准确捕捉;其次,开发一种机器学习模型来训练机器人,特别是手腕运动,通过音乐进行给定的刺激。我们描述了在实施过程中涉及的实验挑战,如实验的设置、机器学习模型的相关特征提取和微调参数的选择。我们的初步结果是令人鼓舞的,因此支持了我们的假设,即人形机器人的训练可以通过使用机器学习来改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Motion Retargeting and Machine Learning for Humanoid Robotics
Accurate tracking and training of human movements can lead to efficient humanoid robot manipulation. Machine learning can pave the way for training these movements as it makes use of algorithms and statistical models to predict new movements relying on patterns and inference. We propose a model that explores the use of machine learning algorithms as a first step to improve humanoid robot manipulation. The implementation consists of two parts, firstly a motion tracking experimental setup that has been developed to accurately capture the movements of human body. Secondly, the development of a machine learning model to train the robot, especially wrist movements, for a given stimuli via music. We described the experimental challenges involved during the implementation such as setting up the experiment, extraction of relevant features for machine learning model and selection of fine-tuning parameters. Our initial results are encouraging thus supporting our hypothesis that the training of humanoid robot can be improved by using machine learning.
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