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Design and analysis of an adaptive compressive sensing architecture for epileptic seizure detection

机译:癫痫癫痫发作检测自适应压缩传感架构的设计与分析

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Epileptic detection techniques rely heavily on the Electroencephalography (EEG) as a representative signal carrying valuable information pertaining to the current brain state. In this work, we investigate the stability of time domain EEG features while varying the channel conditions. We identify the feature sets that would provide the most robust EEG classification accuracy. Moreover, an embedded Compressive Sensing (CS)-based EEG encoding system whose complexity is adapted to the channel condition is proposed. We also propose a framework called Classification Accuracy-Compression Ratio-Signal to Noise Ratio (CA-CR-SNR) that adapts compression ratio according to the channel condition. Simulation results show that selecting appropriate EEG feature combinations can relatively overcome the impact of bad channel conditions; however, this simple solution is still inadequate. The proposed adaptive algorithm reconfigures the compression ratio based on a channel feedback signal to further improve the classification accuracy.
机译:癫痫检测技术严重依赖于脑电图(EEG)作为携带与当前脑状态有关的有价值信息的代表性信号。在这项工作中,我们调查时域EEG功能的稳定性,同时改变信道条件。我们确定将提供最强大的EEG分类精度的功能集。此外,提出了一种基于嵌入式压缩感测(CS)的复杂性适应信道条件的EEG编码系统。我们还提出了一种称为分类精度压缩比 - 信号的框架到噪声比(CA-CR-SNR),根据通道条件适应压缩比。仿真结果表明,选择适当的EEG特征组合可以相对克服不良信道条件的影响;但是,这种简单的解决方案仍然不足。所提出的自适应算法基于信道反馈信号重新配置压缩比以进一步提高分类精度。

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