Abstract

Surface electromyogram (sEMG) signals are easy to record and offer valuable motion information, such as symmetric and periodic motion in human gait. Due to these characteristics, sEMG is widely used in human-computer interaction, clinical diagnosis and rehabilitation medicine, sports medicine and other fields. This paper aims to improve the estimation accuracy and real-time performance, in the case of the knee joint angle in the lower limb, using a sEMG signal, in a proposed estimation algorithm of the continuous motion, based on the principal component analysis (PCA) and the regularized extreme learning machine (RELM). First, the sEMG signals, collected during the lower limb motion, are preprocessed, while feature samples are extracted from the acquired and preconditioned sEMG signals. Next, the feature samples dimensions are reduced by the PCA, as well as the knee joint angle system is measured by the three-dimensional motion capture system, are followed by the normalization of the feature variable value. The normalized sEMG feature is used as the input layer, in the RELM model, while the joint angle is used as the output layer. After training, the RELM model estimates the knee joint angle of the lower limbs, while it uses the root mean square error (RMSE), Pearson correlation coefficient and model training time as key performance indicators (KPIs), to be further discussed. The RELM, the traditional BP neural network and the support vector machine (SVM) estimation results are compared. The conclusions prove that the RELM method, not only has ensured the validity of results, but also has greatly reduced the learning train time. The presented work is a valuable point of reference for further study of the motion estimation in lower limb.

Highlights

  • The surface electromyogram signal is a physiological signal, formed by the superposition of a potential difference, generated by muscle contraction or relaxation on the skin [1,2,3]

  • Considering the requirements for effectiveness, accuracy and real-time continuous motion estimation, in terms of control, such as intelligent prosthesis and rehabilitation robot, this paper proposes a motion joint estimation method, based on surface electromyogram (sEMG) information and principal component analysis (PCA)-regularized extreme learning machine (RELM), taking the knee joint angle estimation as an example

  • The root mean square error (RMSE) indicates the square root of the deviation, between the (KPIs)

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Summary

Introduction

The surface electromyogram (sEMG) signal is a physiological signal, formed by the superposition of a potential difference, generated by muscle contraction or relaxation on the skin [1,2,3]. It is widely used in human-computer interaction, medical rehabilitation and other fields, because it can reflect the active strength of muscles, it is easy to acquire and offers valuable information [4,5,6,7,8]. The use of sEMG signals to estimate the continuous motion of human body has attracted high research interest.

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