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Dexterous hand gestures recognition based on low-density sEMG signals for upper-limb forearm amputees
Mayor, John Jairo Villarejo; Costa, Regina Mamede; Frizera Neto, Anselmo; Bastos, Teodiano Freire.
Afiliação
  • Mayor, John Jairo Villarejo; Federal University of Espírito Santo. Postgraduate Program in Electrical Engineering, Technological Center. Vitória. BR
  • Costa, Regina Mamede; Federal University of Espírito Santo. Postgraduate Program in Electrical Engineering, Technological Center. Vitória. BR
  • Frizera Neto, Anselmo; Federal University of Espírito Santo. Postgraduate Program in Electrical Engineering, Technological Center. Vitória. BR
  • Bastos, Teodiano Freire; Federal University of Espírito Santo. Postgraduate Program in Electrical Engineering, Technological Center. Vitória. BR
Res. Biomed. Eng. (Online) ; 33(3): 202-217, Sept. 2017. tab, graf
Artigo em Inglês | LILACS | ID: biblio-896183
Biblioteca responsável: BR1178.1
ABSTRACT
Abstract Introduction Intuitive prosthesis control is one of the most important challenges in order to reduce the user effort in learning how to use an artificial hand. This work presents the development of a novel method for pattern recognition of sEMG signals able to discriminate, in a very accurate way, dexterous hand and fingers movements using a reduced number of electrodes, which implies more confidence and usability for amputees. Methods The system was evaluated for ten forearm amputees and the results were compared with the performance of able-bodied subjects. Multiple sEMG features based on fractal analysis (detrended fluctuation analysis and Higuchi's fractal dimension) combined with traditional magnitude-based features were analyzed. Genetic algorithms and sequential forward selection were used to select the best set of features. Support vector machine (SVM), K-nearest neighbors (KNN) and linear discriminant analysis (LDA) were analyzed to classify individual finger flexion, hand gestures and different grasps using four electrodes, performing contractions in a natural way to accomplish these tasks. Statistical significance was computed for all the methods using different set of features, for both groups of subjects (able-bodied and amputees). Results The results showed average accuracy up to 99.2% for able-bodied subjects and 98.94% for amputees using SVM, followed very closely by KNN. However, KNN also produces a good performance, as it has a lower computational complexity, which implies an advantage for real-time applications. Conclusion The results show that the method proposed is promising for accurately controlling dexterous prosthetic hands, providing more functionality and better acceptance for amputees.


Texto completo: Disponível Coleções: Bases de dados internacionais Base de dados: LILACS Idioma: Inglês Revista: Res. Biomed. Eng. (Online) Assunto da revista: Engenharia Biom‚dica Ano de publicação: 2017 Tipo de documento: Artigo / Documento de projeto País de afiliação: Brasil Instituição/País de afiliação: Federal University of Espírito Santo/BR

Texto completo: Disponível Coleções: Bases de dados internacionais Base de dados: LILACS Idioma: Inglês Revista: Res. Biomed. Eng. (Online) Assunto da revista: Engenharia Biom‚dica Ano de publicação: 2017 Tipo de documento: Artigo / Documento de projeto País de afiliação: Brasil Instituição/País de afiliação: Federal University of Espírito Santo/BR
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