Title :
Surface EMG signal analysis based on the empirical mode decomposition for human-robot interaction
Author :
Ruiz-Olaya, Andres F. ; Lopez-Delis, Alberto
Author_Institution :
Bioeng. Group, Antonio Narino Univ., Colombia
Abstract :
Surface Electromyography (SEMG) is the electrical manifestation of the neuromuscular activation associated with a contracting muscle. SEMG directly reflects the human motion intention; thus, they can be used as input information for human-robot interaction. Taking into account that SEMG signals are complex physiological signals, being nonlinear, non-stationary and non-periodic, myoelectric classification methods must take into account such characteristics to be more effective. Recently, a novel technique for analysis of nonlinear and non-stationary signals was successfully applied to several kinds of investigations including seismological and biological signals. This technique, named Hilbert-Huang Transform (HHT) is formed by two complementary tools, which are called empirical mode decomposition (EMD) and Hilbert spectrum (HS). This work proposes a novel EMD-based myoelectric pattern recognition technique to be applied in human-robot interaction. The process of feature extraction is performed by two steps, firstly, the EMD decomposes the input SEMG signal into a set of functions designated as Intrinsic Mode Function (IMF); and secondly, it is calculated for each resulting IMF the RMS (Root Mean Square) and the coefficients of a four-order autoregressive model. The process of classification based on a linear classifier (Linear Discriminant Analysis). Using a database of EMG signals, the proposed method was applied to classify human upper-limb motion via EMG signals. The database includes 8 recorded SEMG channels from forearm in the execution of 7 movements. The error of classification was 3.3%. Obtained results suggest that the proposed myoelectric pattern recognition technique may be applied in Human-Robot Interaction (HRI) to control external systems such an upper limb motor neuroprosthesis.
Keywords :
Hilbert transforms; autoregressive processes; biomechanics; electromyography; feature extraction; human-robot interaction; mean square error methods; medical signal processing; neurophysiology; prosthetics; EMD-based myoelectric pattern recognition technique; Hilbert spectrum; Hilbert-Huang Transform; Intrinsic Mode Function; Linear Discriminant Analysis; RMS; Root Mean Square; SEMG channels; biological signal; classification error; complex physiological signal; empirical mode decomposition; external system control; feature extraction; four-order autoregressive model; human motion intention; human upper-limb motion; human-robot interaction; input SEMG signal; input information; linear classifier; muscle contraction; myoelectric classification method; neuromuscular activation; nonlinear signal; nonperiodic signal; nonstationary signal; seismological signal; surface EMG signal analysis; upper limb motor neuroprosthesis; Electromyography; Empirical mode decomposition; Feature extraction; Frequency-domain analysis; Muscles; Pattern recognition; detection of movement intention; empirical mode decomposition (EMD); myoelectric pattern recognition; surface electromyography;
Conference_Titel :
Image, Signal Processing, and Artificial Vision (STSIVA), 2013 XVIII Symposium of
Conference_Location :
Bogota
Print_ISBN :
978-1-4799-1120-2
DOI :
10.1109/STSIVA.2013.6644943