• DocumentCode
    82465
  • Title

    Movement Error Rate for Evaluation of Machine Learning Methods for sEMG-Based Hand Movement Classification

  • Author

    Gijsberts, Arjan ; Atzori, Manfredo ; Castellini, Claudio ; Muller, Holger ; Caputo, Barbara

  • Author_Institution
    Inst. de Rech. Idiap, Martigny, Switzerland
  • Volume
    22
  • Issue
    4
  • fYear
    2014
  • fDate
    Jul-14
  • Firstpage
    735
  • Lastpage
    744
  • Abstract
    There has been increasing interest in applying learning algorithms to improve the dexterity of myoelectric prostheses. In this work, we present a large-scale benchmark evaluation on the second iteration of the publicly released NinaPro database, which contains surface electromyography data for 6 DOF force activations as well as for 40 discrete hand movements. The evaluation involves a modern kernel method and compares performance of three feature representations and three kernel functions. Both the force regression and movement classification problems can be learned successfully when using a nonlinear kernel function, while the exp- χ2 kernel outperforms the more popular radial basis function kernel in all cases. Furthermore, combining surface electromyography and accelerometry in a multimodal classifier results in significant increases in accuracy as compared to when either modality is used individually. Since window-based classification accuracy should not be considered in isolation to estimate prosthetic controllability, we also provide results in terms of classification mistakes and prediction delay. To this extent, we propose the movement error rate as an alternative to the standard window-based accuracy. This error rate is insensitive to prediction delays and it allows us therefore to quantify mistakes and delays as independent performance characteristics. This type of analysis confirms that the inclusion of accelerometry is superior, as it results in fewer mistakes while at the same time reducing prediction delay.
  • Keywords
    biomechanics; electromyography; iterative methods; learning (artificial intelligence); medical signal processing; prosthetics; regression analysis; signal classification; DOF force activations; EMG-based hand movement classillcation problems; accelerometry; accelerometry inclusion; dexterity; discrete hand movements; exp-χ2 kernel outperforms; force regression; independent performance characteristics; iteration; large-scale benchmark evaluation; machine learning methods; modern kernel method; movement error rate; multimodal classifier; myoelectric prostheses; ninapro database; nonlinear kernel function; radial basis kernel function; standard window-based accuracy; surface electromyography data; time reducing prediction delay; window-based classification accuracy; Accuracy; Delays; Electrodes; Error analysis; Force; Kernel; Thumb; Electromyography; machine learning; prosthetics;
  • fLanguage
    English
  • Journal_Title
    Neural Systems and Rehabilitation Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1534-4320
  • Type

    jour

  • DOI
    10.1109/TNSRE.2014.2303394
  • Filename
    6728705