Functional Separation of Myoelectric Signal of Human Arm Movements Using Time Series Analysis

시계열 해석을 이용한 팔운동 근전신호의 기능분리

  • 홍성우 (건국대 공대 전기공학과) ;
  • 남문현 (건국대 공대 전기공학과)
  • Published : 1992.09.01

Abstract

In this paper, two general methods using time-series analysis in the functional separation of the myoelectric signal of human arm movements are developed. Autocorrelation, covariance method and sequential least squares algorithm were used to determine the model parameters and the order of signal model to describe six arm movement patterns` the forearm flexion and extension, the wrist pronation and supination, rotation-in and rotation-out. The confidence interval to classify the functions of arm movement was defined by the mean and standard deviation of total squared error. With the error signals of autoregressive(AR) model, the result showed that the highest success rate was obtained in the case of 4th order, and success rate was decreased with increase of order. Autocorrelation was the method of choice for better success rate. This technique might be applied to biomedical and rehabilitation engineering.

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