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首页> 外文期刊>Biomedical signal processing and control >Detection of muscle artifact epochs using entropy based M-DDTW technique in EEG signals
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Detection of muscle artifact epochs using entropy based M-DDTW technique in EEG signals

机译:脑电图中熵基于基于M-DDTW技术的肌肉工件纪元检测

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摘要

The exclusion of artifacts plays an indispensable role in the processing of Electroencephalographic (EEG) recordings. This work highlights one such inescapable artifactual event known as muscle artifacts (MA) and its detection methodology. These are high-frequency signals that are recurrently present in EEG and generally recorded via Electromyogram. The paper presents an entropy based Manhattan derivative dynamic time warping (M-DDTW) technique for MA epoch detection. Manhattan (City block) and Canberra distance have been proposed as the distance to be optimized by using them with dynamic time warping (DTW) and derivative dynamic time warping (DDTW) technique. The study reduces the computational time and improves the performance by utilizing entropy for reference generation and identifies the optimal threshold value for each technique. The results for the optimal threshold have been validated on the real EEG dataset. It was observed that the proposed entropy based M-DDTW technique exhibits the highest performance of 90 % and an accuracy of 95 % at an optimal threshold surpassing state of the art techniques. The testing of qualitative performance and time consumption has been done using traditional mode decomposition methods. The proposed Entropy based M-DDTW technique along with EEMD showed a noteworthy performance compared to other techniques. Overall the combination of entropy with time warping based local distance variation appears to be an adequate solution for muscle artifact detection.
机译:排除工件在脑电图(脑电图)录像的处理中起不可或缺的作用。这项工作突出了称为肌肉工件(MA)及其检测方法的一种如此不可避免的艺术事件。这些是在脑电图中常用的高频信号,并且通常通过电灰度记录。本文提出了一种基于熵的曼哈顿衍生动态时间翘曲(M-DDTW)技术,用于MA Enoch检测。已经提出了曼哈顿(城市街区)和堪培拉距离作为通过使用动态时间翘曲(DTW)和衍生动态时间翘曲(DDTW)技术来优化的距离。该研究减少了计算时间并通过利用熵用于参考生成来提高性能,并识别每个技术的最佳阈值。最佳阈值的结果已在真实的EEG数据集上验证。观察到,所提出的基于熵的M-DDTW技术在最佳阈值超越现有技术的最佳阈值状态下表现出90%的最高性能和95%的精度。使用传统模式分解方法完成了定性性能和时间消耗的测试。与其他技术相比,所提出的基于熵的M-DDTW技术以及EEMD表现出了值得注意的表现。总体而言,熵基于翘曲的局部距离变化的组合似乎是肌肉伪影检测的适当解决方案。

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