High energy spectrogram with integrated prior knowledge for EMG-based locomotion classification

Med Eng Phys. 2015 May;37(5):518-24. doi: 10.1016/j.medengphy.2015.03.001. Epub 2015 Apr 7.

Abstract

Electromyogram (EMG) signal representation is crucial in classification applications specific to locomotion and transitions. For a given signal, classification can be performed using discriminant functions or if-else rule sets, using learning algorithms derived from training examples. In the present work, a spectrogram based approach was developed to classify (EMG) signals for locomotion mode. Spectrograms for each muscle were calculated and summed to develop a histogram. If-else rules were used to classify test data based on a matching score. Prior knowledge of locomotion type reduced class space to exclusive locomotion modes. The EMG data were collected from seven leg muscles in a sample of able-bodied subjects while walking over ground (W), ascending stairs (SA) and the transition between (W-SA). Three muscles with least discriminating power were removed from the original data set to examine the effect on classification accuracy. Initial classification error was <20% across all modes, using leave one out cross validation. Use of prior knowledge reduced the average classification error to <11%. Removing three EMG channels decreased the classification accuracy by 10.8%, 24.3%, and 8.1% for W, W-SA, and SA respectively, and reduced computation time by 42.8%. This approach may be useful in the control of multi-mode assistive devices.

Keywords: Electromyography; Gait cycle; Locomotion; Myoelectric control; Spectrogram; Time-frequency.

Publication types

  • Research Support, U.S. Gov't, Non-P.H.S.

MeSH terms

  • Accelerometry / methods*
  • Algorithms*
  • Electromyography / methods*
  • Female
  • Humans
  • Leg / physiology
  • Locomotion / physiology*
  • Male
  • Muscle, Skeletal / physiology
  • Signal Processing, Computer-Assisted
  • Time Factors
  • Young Adult