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Recurrent convolutional neural network model based on temporal and spatial feature for motor imagery classification

机译:基于时间和空间特征的经常性卷积神经网络模型,用于电动机图像分类

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Brain computer interface (BCI) could be useful in improving the quality of life for paralyzed patients. Motor imagery classification has recently been a center of research interest in the BCI-based rehabilitation. As of current, spatial features and spectral features were often used independently for motor imagery classification. While few studies attempted to combine the information from varying domains including spectral, spatial and temporal feature, the attempts employed simplistic linear models. In this study, a novel feature extraction method for including spatial and temporal information is proposed. The method uses recurrent convolutional neural network (RCNN) which excels in temporal and spatial classification. The method was tested for classifying wrist twisting-related task classification during manipulation of robotic arm via electroencephalography, and the performance of the method was compared to the conventional motor imagery classifiers with common spatial pattern (CSP) filter. The proposed method showed 73.9% accuracy in the classification of three types of tasks, whereas the highest accuracy achieved by conventional models was 59.5%. Overall, the performance of the proposed RCNN model was greater than the conventional models using the CSP as input features. The findings warrant further application of the proposed methods in varying BCI environment.
机译:脑机接口(BCI)可能是改善生活的瘫痪患者生存质量有益。运动想象分类最近一直在基于BCI-康复研究兴趣的中心。当电流的,空间特征和光谱特征被独立地经常用于机动图像分类使用。虽然一些研究试图将信息从不同结构域,包括光谱,空间和时间的特征结合起来,企图采用简单的线性模型。在这项研究中,对于包括空间和时间信息的新的特征提取方法,提出了该方法使用经常卷积神经网络(RCNN)在时间和空间分类,其擅长。该方法用于通过脑电图机器人臂的操纵期间腕扭曲相关的任务分类分级进行测试,并且该方法的性能与用共同空间图案(CSP)滤波器的以往的电动机的图像分类器。该方法表明73.9%的准确率在三类任务的分类,而由传统模式实现最高的精确度为59.5%。总体而言,建议RCNN模型的性能比使用CSP作为输入要素的传统型号的。调查结果保证在不同环境BCI所提出的方法的进一步应用。

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