Abstract

Electromyography (EMG) signals can be used for clinical diagnosis and biomedical applications. It is very important to reduce noise and to acquire accurate signals for the usage of the EMG signals in biomedical engineering. Since EMG signal noise has the time-varying and random characteristics, the present study proposes an adaptive Kalman filter (AKF) denoising method based on an autoregressive (AR) model. The AR model is built by applying the EMG signal, and the relevant parameters are integrated to find the state space model required to optimally estimate AKF, eliminate the noise in the EMG signal, and restore the damaged EMG signal. To be specific, AR autoregressive dynamic modeling and repair for distorted signals are affected by noise, and AKF adaptively can filter time-varying noise. The denoising method based on the self-learning mechanism of AKF exhibits certain capabilities to achieve signal tracking and adaptive filtering. It is capable of adaptively regulating the model parameters in the absence of any prior statistical knowledge regarding the signal and noise, which is aimed at achieving a stable denoising effect. By comparatively analyzing the denoising effects exerted by different methods, the EMG signal denoising method based on the AR-AKF model is demonstrated to exhibit obvious advantages.

Highlights

  • Surface electromyography refers to a weak bioelectric signal recorded by surface electromyography pick-up electrodes, which is capable of reflecting information associated with muscle and bone activity [1]

  • To verify the effectiveness of the denoising model proposed here, in the experiment, the standard Surface electromyography (sEMG) signal is added with a signal-tonoise ratio (SNR) of 5 dB, 10 dB, 15 dB, 20 dB, 25 dB, and 30 dB band-limited Gaussian white noise, and the root mean square error (RMSE) and Mean Absolute Percentage Error (MAPE) are introduced, and SNR is presented as an evaluation index

  • A denoising method is developed in this study by employing the AR-adaptive Kalman filter (AKF) model based on the characteristics of the EMG signal

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Summary

Introduction

Surface electromyography (sEMG) refers to a weak bioelectric signal recorded by surface electromyography pick-up electrodes, which is capable of reflecting information associated with muscle and bone activity [1]. With the AR model, the signal affected by noise can be restored This method is capable of learning and tracking, as well as regulating model parameters by complying with the adaptive criteria in the absence of any prior statistical knowledge regarding the signal and noise, as an attempt to achieve a stable denoising effect. This method exhibits better applicability, which is suitable for other similar bioelectric signals

AR-AKF Model
Experiment Analysis
Conclusion
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