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Classification and Transfer Learning of EEG during a Kinesthetic Motor Imagery Task using Deep Convolutional Neural Networks

机译:运动神经影像运动过程中脑电的分类和转移学习,采用深度卷积神经网络

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The reliable classification of Electroencephalography (EEG) signals is a crucial step towards making EEG-controlled non-invasive neuro-exoskeleton rehabilitation a practical reality. EEG signals collected during motor imagery tasks have been proposed to act as a control signal for exoskeleton applications. Here, a Deep Convolutional Neural Network (DCNN) was optimized to classify a two-class kinesthetic motor imagery EEG dataset, leading to an optimized architecture consisting of four convolutional layers and three fully connected layers. Transfer learning, or the leveraging of data from past subjects to classify the intentions of a new subject, is important for rehabilitation as it helps to minimize the number of training sessions required from subjects who lack full motor functionality. The transfer learning training paradigm investigated through this study utilized region criticality trends to reduce the number of new subject training sessions and increase the classification performance when compared against a single-subject non-transfer-learning classifier.
机译:脑电图(EEG)信号的可靠分类是使EEG控制的非侵入性神经外骨骼康复成为现实的关键一步。已经提出在运动成像任务期间收集的EEG信号可用作外骨骼应用的控制信号。在这里,对深度卷积神经网络(DCNN)进行了优化,以对两类运动觉运动图像EEG数据集进行分类,从而得到了由四个卷积层和三个完全连接层组成的优化架构。转移学习或利用过去受试者的数据对新受试者的意图进行分类,对于康复很重要,因为它有助于最大程度地减少缺乏完整运动功能的受试者所需要的培训课程数量。与单科目的非转移学习分类器相比,通过本研究调查的转移学习训练范例利用区域临界趋势来减少新主题培训课程的数量并提高分类性能。

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