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Vector Autoregressive Hierarchical Hidden Markov Models for Extracting Finger Movements Using Multichannel Surface EMG Signals

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  • Nebojša Malešević
  • Dimitrije Marković
  • Gunter Kanitz
  • Marco Controzzi
  • Christian Cipriani
  • Christian Antfolk

Abstract

We present a novel computational technique intended for the robust and adaptable control of a multifunctional prosthetic hand using multichannel surface electromyography. The initial processing of the input data was oriented towards extracting relevant time domain features of the EMG signal. Following the feature calculation, a piecewise modeling of the multidimensional EMG feature dynamics using vector autoregressive models was performed. The next step included the implementation of hierarchical hidden semi-Markov models to capture transitions between piecewise segments of movements and between different movements. Lastly, inversion of the model using an approximate Bayesian inference scheme served as the classifier. The effectiveness of the novel algorithms was assessed versus methods commonly used for real-time classification of EMGs in a prosthesis control application. The obtained results show that using hidden semi-Markov models as the top layer, instead of the hidden Markov models, ranks top in all the relevant metrics among the tested combinations. The choice of the presented methodology for the control of prosthetic hand is also supported by the equal or lower computational complexity required, compared to other algorithms, which enables the implementation on low-power microcontrollers, and the ability to adapt to user preferences of executing individual movements during activities of daily living.

Suggested Citation

  • Nebojša Malešević & Dimitrije Marković & Gunter Kanitz & Marco Controzzi & Christian Cipriani & Christian Antfolk, 2018. "Vector Autoregressive Hierarchical Hidden Markov Models for Extracting Finger Movements Using Multichannel Surface EMG Signals," Complexity, Hindawi, vol. 2018, pages 1-12, February.
  • Handle: RePEc:hin:complx:9728264
    DOI: 10.1155/2018/9728264
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    References listed on IDEAS

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    1. Dong, Ming & He, David, 2007. "Hidden semi-Markov model-based methodology for multi-sensor equipment health diagnosis and prognosis," European Journal of Operational Research, Elsevier, vol. 178(3), pages 858-878, May.
    2. Yang, Minxian, 2000. "Some Properties Of Vector Autoregressive Processes With Markov-Switching Coefficients," Econometric Theory, Cambridge University Press, vol. 16(1), pages 23-43, February.
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    1. Rui Wang & Yanxiao Li & Hui Sun & Youmin Zhang & Yigang Sun, 2018. "Performance Analysis of Switched Control Systems Under Common-source Digital Upsets Modeled by MDHMM," Complexity, Hindawi, vol. 2018, pages 1-12, November.

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