Clancy E A, Hogan N
Department of Electrical Engineering and Computer Science, Massachusetts Institute of Technology, Cambridge 02139, USA.
IEEE Trans Biomed Eng. 1999 Jun;46(6):730-9. doi: 10.1109/10.764949.
When the surface electromyogram (EMG) generated from constant-force, constant-angle, nonfatiguing contractions is modeled as a random process, its density is typically assumed to be Gaussian. This assumption leads to root-mean-square (RMS) processing as the maximum likelihood estimator of the EMG amplitude (where EMG amplitude is defined as the standard deviation of the random process). Contrary to this theoretical formulation, experimental work has found the signal-to-noise-ratio [(SNR), defined as the mean of the amplitude estimate divided by its standard deviation] using mean-absolute-value (MAV) processing to be superior to RMS. This paper reviews RMS processing with the Gaussian model and then derives the expected (inferior) SNR performance of MAV processing with the Gaussian model. Next, a new model for the surface EMG signal, using a Laplacian density, is presented. It is shown that the MAV processor is the maximum likelihood estimator of the EMG amplitude for the Laplacian model. SNR performance based on a Laplacian model is predicted to be inferior to that of the Gaussian model by approximately 32%. Thus, minor variations in the probability distribution of the EMG may result in large decrements in SNR performance. Lastly, experimental data from constant-force, constant-angle, nonfatiguing contractions were examined. The experimentally observed densities fell in between the theoretic Gaussian and Laplacian densities. On average, the Gaussian density best fit the experimental data, although results varied with subject. For amplitude estimation, MAV processing had a slightly higher SNR than RMS processing.
当将恒力、恒角度、非疲劳性收缩产生的表面肌电图(EMG)建模为随机过程时,通常假定其密度为高斯分布。这一假设导致均方根(RMS)处理成为EMG幅度的最大似然估计量(其中EMG幅度定义为随机过程的标准差)。与这一理论公式相反,实验研究发现,使用均值绝对值(MAV)处理得到的信噪比[(SNR),定义为幅度估计值的均值除以其标准差]优于RMS。本文回顾了高斯模型下的RMS处理,然后推导了高斯模型下MAV处理的预期(较差)SNR性能。接下来,提出了一种使用拉普拉斯密度的表面EMG信号新模型。结果表明,对于拉普拉斯模型,MAV处理器是EMG幅度的最大似然估计量。基于拉普拉斯模型的SNR性能预计比高斯模型低约32%。因此,EMG概率分布的微小变化可能导致SNR性能大幅下降。最后,对恒力、恒角度、非疲劳性收缩的实验数据进行了检验。实验观察到的密度介于理论高斯密度和拉普拉斯密度之间。平均而言,高斯密度最符合实验数据,不过结果因受试者而异。对于幅度估计,MAV处理的SNR略高于RMS处理。