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Classification of Motor Imagery Waves using Hybrid-Convolutional Neural Network

机译:使用混合卷积神经网络进行电动机图像波的分类

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Brain Computer Interfaces augments, alters, or replaces a lost biological function. Recently, classification methods using CNN were proposed to achieve higher accuracy levels. Nonetheless, they use a single convolution for classification while the best scale differs from subject to subject. This paper proposes a different architecture of Deep learning that takes 'n' different uncorrelated features of same signal parallelly into non-shareable convolution input layers in the same network to predict kinetic motion of patients. That is referred to as 1-D Hybrid-Convolutional Neural Network. The general motivation towards this being accurate feature extraction when minimal dataset is available. This approach is performed over three features namely Power, Frequency Spectrum components and Power Spectral Density of a same segment of a signal. A detailed analysis on more than 1500 EEG recordings from 109 healthy subjects and a comparative edge to this study was performed using previous algorithms and the relative strength highlighted.
机译:脑电脑接口增强,改变或取代丢失的生物学功能。最近,提出了使用CNN的分类方法来实现更高的精度水平。尽管如此,它们使用单​​一卷积进行分类,而最佳规模与受试者的影响不同。本文提出了不同的深度学习架构,其将与同一信号的不同信号相同的不相关特征并行于同一网络中的不可共享的卷积输入层,以预测患者的动力学运动。这被称为1-D混合卷积神经网络。当最小的数据集可用时,对此进行准确的特征提取的一般动机。该方法在三个特征上进行,即信号的相同段的功率,频谱分量和功率谱密度。使用先前的算法进行了来自109个健康受试者的超过1500名EEG录音和该研究的比较边缘的详细分析,并突出显示相对强度。

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