Graphical simulation of artificial hand motion with fuzzy EMG pattern recognition

E. Zahedi, H. Farahani

Research output: Chapter in Book/Report/Conference proceedingConference contribution

4 Citations (Scopus)

Abstract

In this paper, a graphical simulator in which a prosthesis is controlled by mean of electromyogram (EMG) processing is described. The integral of absolute value (IAV) of the biceps and triceps EMG are used as features. A fuzzy k-means scheme is used to classify the motion before actuating graphically on the computer monitor a 3 degrees of freedom arm. The main advantages of such an approach over a classical training are: possibility of training the amputees before using a real prosthesis, cost-effectiveness by man-power time saving, more availability of the training set and self-paced learning.

Original languageEnglish
Title of host publicationIEEE/ Engineering in Medicine and Biology Society Annual Conference
PublisherIEEE
Publication statusPublished - 1995
Externally publishedYes
EventProceedings of the 1st 1995 Regional Conference IEEE Engineering in Medicine & Biology Society and 14th Conference of the Biomedical Engineering Society of India - New Delhi, India
Duration: 15 Feb 199518 Feb 1995

Other

OtherProceedings of the 1st 1995 Regional Conference IEEE Engineering in Medicine & Biology Society and 14th Conference of the Biomedical Engineering Society of India
CityNew Delhi, India
Period15/2/9518/2/95

Fingerprint

Pattern recognition
Computer monitors
Cost effectiveness
Simulators
Availability
Processing
Prostheses and Implants

ASJC Scopus subject areas

  • Engineering(all)

Cite this

Zahedi, E., & Farahani, H. (1995). Graphical simulation of artificial hand motion with fuzzy EMG pattern recognition. In IEEE/ Engineering in Medicine and Biology Society Annual Conference IEEE.

Graphical simulation of artificial hand motion with fuzzy EMG pattern recognition. / Zahedi, E.; Farahani, H.

IEEE/ Engineering in Medicine and Biology Society Annual Conference. IEEE, 1995.

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Zahedi, E & Farahani, H 1995, Graphical simulation of artificial hand motion with fuzzy EMG pattern recognition. in IEEE/ Engineering in Medicine and Biology Society Annual Conference. IEEE, Proceedings of the 1st 1995 Regional Conference IEEE Engineering in Medicine & Biology Society and 14th Conference of the Biomedical Engineering Society of India, New Delhi, India, 15/2/95.
Zahedi E, Farahani H. Graphical simulation of artificial hand motion with fuzzy EMG pattern recognition. In IEEE/ Engineering in Medicine and Biology Society Annual Conference. IEEE. 1995
Zahedi, E. ; Farahani, H. / Graphical simulation of artificial hand motion with fuzzy EMG pattern recognition. IEEE/ Engineering in Medicine and Biology Society Annual Conference. IEEE, 1995.
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