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Motor Imagery-based Brain-Computer Interface: Neural Network Approach

机译:基于运动图像的脑机接口:神经网络方法

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A neural network approach has been developed for detecting EEG patterns accompanying the implementation of motor imagery, which are mental equivalents of real movements. The method is based on Local Approximation of Spectral Power using Radial Basis Functions (LASP-RBF) and the original algorithm for interpreting the time sequence of neural network responses. An asynchronous neural interface has been created, the basic element of which is a committee of three neural networks providing the classification of target EEG patterns accompanying the execution of motor imagery by the upper and lower limbs. A comparative evaluation of the classification efficiency of EEG patterns of mental equivalents of real movements was carried out using the developed classifier and traditional classification methods in particular, Random Forest, Linear Discriminant Analysis and Linear Regression methods. It was shown that the classification accuracy using the developed approach is higher (up to 90%) than other classifiers.
机译:已经开发了一种神经网络方法来检测伴随运动图像实现的脑电图模式,这是真实运动的心理等效项。该方法基于使用径向基函数(LASP-RBF)的频谱功率局部逼近和用于解释神经网络响应时间序列的原始算法。已经创建了一个异步神经接口,该接口的基本元素是由三个神经网络组成的委员会,可提供目标脑电图模式的分类,并伴随上下肢运动图像的执行。使用发达的分类器和传统的分类方法,特别是随机森林,线性判别分析和线性回归方法,对真实运动的心理等价形式的脑电图模式的分类效率进行了比较评估。结果表明,所开发方法的分类精度比其他分类器更高(高达90%)。

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