首页> 外文会议>IEEE International Conference on Acoustics, Speech, and Signal Processing >MAXIMUM DEPENDENCY AND MINIMUM REDUNDANCY-BASED CHANNEL SELECTION FOR MOTOR IMAGERY OF WALKING EEG SIGNAL DETECTION
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MAXIMUM DEPENDENCY AND MINIMUM REDUNDANCY-BASED CHANNEL SELECTION FOR MOTOR IMAGERY OF WALKING EEG SIGNAL DETECTION

机译:步行EEG信号检测的电动机图像的最大依赖性和基于最小的冗余通道选择

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This paper proposes a novel method to detect motor imagery of walking for the rehabilitation of stroke patients using the laplacian derivatives (LAD) of power averaged across frequency bands as the feature. We propose to select the most correlated channels by jointly considering the mutual information between the LAD power features of the channels and the class labels, and the redundancy between the LAD power features of the channel with that of the selected channels. Experiments are conducted on the EEG data collected for 11 healthy subjects using proposed method and compared with existing methods. The results show that the proposed method yielded an average classification accuracy of 67.19% by selecting as few as 4 LAD channels. An improved result of 71.45% and 73.23% are achieved by selecting 10 and 22 LAD channels, respectively. Comparison results revealed significantly superior performance of our proposed method compared to that obtained using common spatial pattern and filter bank with power features. Most importantly, our proposed method achieves significant better accuracy for poor BCI performers compared to existing methods. Thus, the results demonstrated the potential of using the proposed method for detecting motor imagery of walking for the rehabilitation of stroke patients.
机译:本文提出了一种检测运动图像的新方法,用于使用Laplacian衍生物(LAD)在频带上平均频带作为特征来跨越频带的康复患者的康复恢复。我们建议通过联合考虑信道和类标签的LAD功率特征之间的互信息以及具有所选通道的信道的LAD功率特征之间的冗余来选择最相关的信道。使用所提出的方法对11个健康受试者收集的EEG数据进行实验,并与现有方法进行比较。结果表明,该方法通过选择少至4个渠道,拟议的方法产生了67.19%的平均分类精度。通过分别选择10和22个LAD通道来实现71.45%和73.23%的提高结果。比较结果显示,与使用具有功率特征的公共空间模式和滤波器组的滤波器相比,我们所提出的方法显着优越。最重要的是,与现有方法相比,我们所提出的方法可实现糟糕的BCI表演者的显着更好的准确性。因此,结果表明了使用所提出的方法来检测行走患者康复的运动图像的潜力。

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