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Application of Convolutional Neural Networks to Four-Class Motor Imagery Classification Problem

机译:卷积神经网络在四类运动图像分类中的应用

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In this paper the use of a novel feature extraction method oriented to convolutional neural networks (CNN) is discussed in order to solve four-class motor imagery classification problem. Analysis of viable CNN architectures and their influence on the obtained accuracy for the given task is argued. Furthermore, selection of optimal feature map image dimension, filter sizes and other CNN parameters used for network training is investigated. Methods for generating 2D feature maps from 1D feature vectors are presented for commonly used feature types. Initial results show that CNN can achieve high classification accuracy of 68% for the four-class motor imagery problem with less complex feature extraction techniques. It is shown that optimal accuracy highly depends on feature map dimensions, filter sizes, epoch count and other tunable factors, therefore various fine-tuning techniques must be employed. Experiments show that simple FFT energy map generation techniques are enough to reach the state of the art classification accuracy for common CNN feature map sizes. This work also confirms that CNNs are able to learn a descriptive set of information needed for optimal electroencephalogram (EEG) signal classification.DOI: http://dx.doi.org/10.5755/j01.itc.46.2.17528
机译:本文讨论了一种面向卷积神经网络(CNN)的新颖特征提取方法,以解决四类运动图像分类问题。讨论了可行的CNN体​​系结构及其对给定任务获得的准确性的影响。此外,研究了用于网络训练的最佳特征图图像尺寸,滤波器大小和其他CNN参数的选择。提出了从1D特征向量生成2D特征图的方法,用于常用特征类型。初步结果表明,对于复杂的四类运动图像问题,CNN使用较少复杂的特征提取技术即可达到68%的高分类精度。结果表明,最佳精度高度依赖于特征图的尺寸,滤波器大小,历元数和其他可调因素,因此必须采用各种微调技术。实验表明,简单的FFT能量图生成技术足以达到常见CNN特征图大小的最新分类精度。这项工作还证实了CNN能够学习最佳脑电图(EEG)信号分类所需的一组描述性信息。DOI:http://dx.doi.org/10.5755/j01.itc.46.2.17528

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