Neural mechanisms for training autonomous robots

G. Wyeth
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引用次数: 8

Abstract

Minimalist neural mechanisms are suitable tools for programming and training autonomous robots. This paper explores the limitations of hand-crafted minimalist robot control mechanisms based on a neural paradigm, and then shows that these mechanisms are well suited to robot training using well understood neural learning mechanisms. Training a robot is more powerful than other methods more commonly used for robot learning (such as reinforcement learning and genetic techniques). A trained robot is told more than whether it was wrong or right for a particular action or sequence (reinforcement learning), the robot is also told what it should have done (supervised learning). Robots can hence develop appropriate behaviour much more rapidly. The neural mechanisms and training techniques have been developed on a kinematically realistic simulator. The mechanisms have been ported from simulated vehicles to a real vision guided robot: CORGI. Results from the simulation and CORGI are presented.
训练自主机器人的神经机制
极简神经机制是编程和训练自主机器人的合适工具。本文探讨了基于神经范式的手工制作的极简机器人控制机制的局限性,然后表明这些机制非常适合使用良好理解的神经学习机制进行机器人训练。训练机器人比其他更常用的机器人学习方法(如强化学习和遗传技术)更强大。一个训练有素的机器人不仅被告知它对某一特定动作或序列是错还是对(强化学习),还被告知它应该做什么(监督学习)。因此,机器人可以更快地发展出适当的行为。在运动逼真模拟器上研究了神经机制和训练技术。这些机制已经从模拟车辆移植到一个真实的视觉引导机器人:CORGI。给出了仿真和CORGI的结果。
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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