Active motor babbling for sensorimotor learning

R. Saegusa, G. Metta, G. Sandini, S. Sakka
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引用次数: 79

Abstract

For a complex autonomous robotic system such as a humanoid robot, motor-babbling-based sensorimotor learning is considered an effective method to develop an internal model of the self-body and the environment autonomously. In this paper, we propose a method of sensorimotor learning and evaluate it performance in active learning. The proposed model is characterized by a function we call the “confidence”, and is a measure of the reliability of state prediction and control. The confidence for the state can be a good measure to bias the next exploration strategy of data sampling, and to direct its attention to areas in the state domain less reliably predicted and controlled. We consider the confidence function to be a first step toward an active behavior design for autonomous environment adaptation. The approach was experimentally validated using the humanoid robot James.
感觉运动学习的主动运动牙牙学语
对于像类人机器人这样的复杂自主机器人系统,基于运动牙牙学的感觉运动学习被认为是一种有效的方法,可以自主地建立自我和环境的内部模型。本文提出了一种感觉运动学习方法,并对其在主动学习中的表现进行了评价。该模型的特征是一个我们称之为“置信度”的函数,它是对状态预测和控制可靠性的度量。对状态的置信度可以很好地衡量数据采样的下一个探索策略,并将其注意力引导到状态域中预测和控制不可靠的区域。我们认为置信度函数是自主环境适应主动行为设计的第一步。采用仿人机器人James对该方法进行了实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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