Complexity (Jan 2020)

sEMG-MMG State-Space Model for the Continuous Estimation of Multijoint Angle

  • Xugang Xi,
  • Chen Yang,
  • Seyed M. Miran,
  • Yun-Bo Zhao,
  • Shuliang Lin,
  • Zhizeng Luo

DOI
https://doi.org/10.1155/2020/4503271
Journal volume & issue
Vol. 2020

Abstract

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Continuous joint angle estimation plays an important role in motion intention recognition and rehabilitation training. In this study, a surface electromyography- (sEMG-) mechanomyography (MMG) state-space model is proposed to estimate continuous multijoint movements from sEMG and MMG signals accurately. The model combines forward dynamics with a Hill-based muscle model that estimates joint torque only in a nonfeedback form, making the extended model capable of predicting the multijoint motion directly. The sEMG and MMG features, including the Wilson amplitude and permutation entropy, are then extracted to construct a measurement equation to reduce system error and external disturbances. Using the proposed model, a closed-loop prediction-correction approach, unscented particle filtering, is used to estimate the joint angle from sEMG and MMG signals. Comprehensive experiments are conducted on the human elbow and shoulder joint, and remarkable improvements are demonstrated compared with conventional methods.