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Identification of EMG activity with machine learning in patients with amputation of upper limbs for the development of mechanical prostheses

Zuleta, J N ; Ferro, M ; Murillo, C ; Franco-Luna, R A

IOP conference series. Materials Science and Engineering, 2019-05, Vol.519 (1), p.12010 [Periódico revisado por pares]

Bristol: IOP Publishing

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  • Título:
    Identification of EMG activity with machine learning in patients with amputation of upper limbs for the development of mechanical prostheses
  • Autor: Zuleta, J N ; Ferro, M ; Murillo, C ; Franco-Luna, R A
  • Assuntos: Fast Fourier transformations ; Feature extraction ; Fourier transforms ; Machine learning ; Prostheses ; Wavelet transforms
  • É parte de: IOP conference series. Materials Science and Engineering, 2019-05, Vol.519 (1), p.12010
  • Descrição: A study of electromyographic signals (EMG) in subjects with partial hand amputation using machine learning techniques (ML) is presented in this document. The EMG were analyzed for five hand poses. We used the Fast Fourier Transform (FFT), and Wavelet transform as descriptors for the feature extraction, the identification and classification system was implemented based on Vector Support Machines (VSM). Percentages of accuracy greater than 90% were obtained in the cases of close hand, left hand, right hand and relax hand, while open hand obtained an acceptable performance with accuracy percentages lower than 90%.
  • Editor: Bristol: IOP Publishing
  • Idioma: Inglês

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