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首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >Optimal Estimation of EMG Standard Deviation (EMG σ ) in Additive Measurement Noise: Model-Based Derivations and Their Implications
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Optimal Estimation of EMG Standard Deviation (EMG σ ) in Additive Measurement Noise: Model-Based Derivations and Their Implications

机译:附加测量噪声中EMG标准偏差(EMGσ)的最佳估计:基于模型的推导及其含义

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Typical electromyogram (EMG) processors estimate EMG signal standard deviation (EMG sigma) via moving average root mean square (RMS) or mean absolute value (MAV) filters, whose outputs are used in force estimation, prosthesis/orthosis control, etc. In the inevitable presence of additive measurement noise, some processors subtract the noise standard deviation from EMG RMS (or MAV). Others compute a root difference of squares (RDS)-subtract the noise variance from the square of EMG RMS (or MAV), all followed by taking the square root. Herein, we model EMG as an amplitude-modulated random process in additive measurement noise. Assuming a Gaussian (or, separately, Laplacian) distribution, we derive analytically that the maximum likelihood estimate of EMG sigma requires RDS processing. Whenever that subtraction would provide a negative-valued result, we show that EMG sigma should be set to zero. Our theoretical models further show that during rest, approximately 50% of EMG sigma estimates are non-zero. This result is problematic when EMG sigma is used for real-time control, explaining the common use of additional thresholding. We tested our model results experimentally using biceps and triceps EMG from 64 subjects. Experimental results closely followed the Gaussian model. We conclude that EMG processors should use RDS processing and not noise standard deviation subtraction.
机译:典型的肌电图(EMG)处理器通过移动平均均方根(RMS)或均值绝对值(MAV)滤波器来估计EMG信号标准差(EMG sigma),其输出用于力估计,假体/矫形器控制等。由于不可避免地会出现附加的测量噪声,因此某些处理器会从EMG RMS(或MAV)中减去噪声标准偏差。其他人计算平方根差(RDS)-从EMG RMS(或MAV)的平方中减去噪声方差,然后均取平方根。在本文中,我们将EMG建模为附加测量噪声中的调幅随机过程。假设高斯(或拉普拉斯)分布,我们通过分析得出,EMG sigma的最大似然估计需要RDS处理。每当该减法提供负值结果时,我们就会表明EMG sigma应设置为零。我们的理论模型进一步表明,在休息期间,大约50%的EMG sigma估计值非零。当将EMG sigma用于实时控制时,此结果是有问题的,这说明了附加阈值的常见用法。我们使用来自64位受试者的二头肌和肱三头肌肌电图通过实验测试了模型结果。实验结果严格遵循高斯模型。我们得出的结论是,EMG处理器应使用RDS处理,而不应使用噪声标准差减法。

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