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Muscular activation intervals detection using gaussian mixture model GMM applied to sEMG signals

机译:使用高斯混合模型GMM应用于SEMG信号的肌肉激活间隔检测

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We propose to apply the Gaussian Mixture Model (GMM) to surface electromyography (sEMG) signals in order to detect the muscular activation (MA) onset, timing off and intervals. First, classical time and frequency features are extracted from the sEMG signals, beside the Teager-Kaiser energy operator (TKEO) is evaluated and added as a new feature which enhances the detection performance. All the obtained features are then used as the input for the GMM to conduct the binary clustering. Finally, a decision theory is applied in order to declare sEMG activation timing of human skeletal museles during movement. Accuracy and precision of the algorithm are assessed by using a set of synthetic simulated sEMG signals and real ones. A comparison with two previously published techniques is conducted: wavelet transform-based method and double threshold-based method. Our experimental results prove that the proposed GMM-based algorithm is able to accurately reveal the MA timing with performance beyond that of the state-of-the-art methods. Moreover, this proposed algorithm is automatic and user-independent.
机译:我们建议将高斯混合模型(GMM)应用于表面电拍摄(SEMG)信号,以检测肌肉激活(MA)发作,定时和间隔。首先,从SEMG信号中提取古典时间和频率特征,在Teager-kaiser能量运算符(TKeo)旁边被评估并添加作为增强检测性能的新功能。然后将所有获得的功能用作GMM进行二进制聚类的输入。最后,应用了决策理论,以便在运动期间宣布人骨骼混音的SEMG激活时序。通过使用一组合成模拟的SEMG信号和真实的算法来评估算法的准确性和精度。进行与两种先前发表的技术的比较:基于小波变换的方法和基于双阈值的方法。我们的实验结果证明,所提出的基于GMM的算法能够准确地揭示MA时机,其性能超出了最先进的方法。此外,这种提出的算法是自动和用户无关的。

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