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Detection technique of muscle activation intervals for sEMG signals based on the Empirical Mode Decomposition

机译:基于经验模式分解的SEMG信号的肌肉激活间隔的检测技术

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The best way to detect the onset and offset time of muscle activation is through visual decision making by clinical experts like physical therapists. Humans can recognize muscle activation trends recorded from surface EMG signals. Current computer-based algorithms are being researched toward yielding similar results by clinical experts. A new algorithm in this paper has the ability, like humans, to recognize a trend from noisy input signals. We propose using the Empirical Mode Decomposition (EMD), because it is effectual to recognize trends which are decomposed by Hilbert transform and synthesized of Intrinsic Mode Functions (IMFs). These synthesized functions represent hidden low-frequency trends according to more iterative processes. Iterations will be stopped at the minimum SD of a resting period of EMG signals. The proposed method is very useful and easy implemented, but there are some limitations. The EMD method is only available on an off-line data and requires relatively high computational performances to find the IMFs. To use the proposed method, it is possible to detect muscle activation intervals of sEMG signals.
机译:检测肌肉激活发作和偏移时间的最佳方法是通过临床专家等视觉决策,如物理治疗师。人类可以识别从表面EMG信号记录的肌肉激活趋势。目前基于计算机的算法正在研究临床专家的类似结果。本文中的一种新算法具有与人类一样的能力,以识别来自噪声输入信号的趋势。我们建议使用经验模式分解(EMD),因为它有效地识别Hilbert变换和合成的内在模式函数(IMF)分解的趋势。这些合成的功能根据更多迭代过程表示隐藏的低频趋势。迭代将在EMG信号休息期的最小SD处停止。所提出的方法非常有用和简单地实现,但存在一些局限性。 EMD方法仅在离线数据上可用,并且需要相对高的计算性能来查找IMF。为了使用所提出的方法,可以检测SEMG信号的肌肉激活间隔。

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