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Recognizing motor imagery using dynamic cascade feed-forward neural networks

机译:使用动态级联前馈神经网络识别运动图像

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Recognition of Motor Imagery (MI) using a dynamic cascade feed-forward neural network (CFNN) is presented. MI is the mental simulation of a motor act that includes preparation for movement and mental operations of motor representations implicitly or explicitly. The ability of an individual to control his EEG through imaginary motor tasks enables him to control devices through a Brain Machine Interface (BMI). A BMI design using the CFNN is used to discriminate EEG signals acquired during MI for four states namely, relax, forward, left and right. EEG is recorded at the C3 and C4 locations using noninvasive scalp electrodes placed over the motor cortex. The proposed CFNN is tested with data collected from 10 subjects. Average recognition accuracy of 93.3% validates the proposed four-state BMI design using MI and CFNN.
机译:提出了使用动态级联前馈神经网络(CFNN)的运动图像(MI)的识别。 MI是对运动行为的心理模拟,包括隐式或显式地为运动表示的运动和心理操作做准备。个人通过虚构的运动任务控制脑电图的能力使他能够通过脑机接口(BMI)来控制设备。使用CFNN的BMI设计用于区分MI期间针对四个状态(即放松,向前,向左和向右)获取的EEG信号。使用放置在运动皮层上方的无创头皮电极在C3和C4位置记录EEG。所提出的CFNN已使用从10个主题中收集的数据进行了测试。 93.3%的平均识别准确度验证了使用MI和CFNN提出的四态BMI设计。

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