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EOG controlled mobile robot using Radial Basis Function Networks

机译:使用径向基函数网络的EOG控制的移动机器人

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Controlling a mobile robot using human biopotential signals has been a common problem in the field of assistive robotics. Not only it is enough to analyze the biosignal characteristics and interpret motion commands from the raw signal, but also an efficient learning algorithm may help to overcome varying characteristics of the biosignal for the sake of robust control of the mobile robot. In this work, an efficient learning algorithm utilizing Radial Basis Function Networks have been studied and applied to EOG signals in order to control a mobile robot. Obtained results show that RBF network is successful in learning the biosignal characteristics and producing sufficient control signals to control a mobile robot.
机译:使用人类生物电势信号控制移动机器人已经成为辅助机器人领域的普遍问题。不仅足以分析生物信号特征并从原始信号中解释运动命令,而且有效的学习算法还可帮助克服生物信号的各种特征,以实现对移动机器人的鲁棒控制。在这项工作中,已经研究了利用径向基函数网络的有效学习算法,并将其应用于EOG信号以控制移动机器人。所得结果表明,RBF网络可以成功地学习生物信号特征并产生足够的控制信号来控制移动机器人。

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