Robotic motion generation methods using machine learning have been studied in recent years. Bilateral control-based imitation learning can imitate human motions using force information. By means of this method, variable speed motion generation that considers physical phenomena such as the inertial force and friction can be achieved. However, the previous study only focused on a simple reciprocating motion. To learn the complex relationship between the force and speed more accurately, it is necessary to learn multiple actions using many joints. In this paper, we propose a variable speed motion generation method for multiple motions. We considered four types of neural network models for the motion generation and determined the best model for multiple motions at variable speeds. Subsequently, we used the best model to evaluate the reproducibility of the task completion time for the input completion time command. The results revealed that the proposed method could change the task completion time according to the specified completion time command in multiple motions.
翻译:近年来已经研究了使用机器学习的机器人运动生成方法。 双边控制模拟学习可以使用武力信息模仿人类运动。 通过这种方法,可以实现变速动作生成,考虑惯性力量和摩擦等物理现象。 但是,上一份研究只侧重于简单的对等动作。 要更准确地了解力量和速度之间的复杂关系,就必须用许多关节来学习多种动作。 在本文件中,我们提出了多种动作的变速动作生成方法。 我们考虑了四类运动生成神经网络模型,并确定了以变速进行多种动作的最佳模式。 随后,我们用最佳模型评估了输入完成时间命令任务完成时间的再复制。 结果表明,拟议方法可以改变任务完成时间,使其与多个动作的指定完成时间命令相一致。