Skip to main navigation Skip to main content
  • E-Submission

JKSPE : Journal of the Korean Society for Precision Engineering

OPEN ACCESS
ABOUT
BROWSE ARTICLES
EDITORIAL POLICIES
FOR CONTRIBUTORS
REGULAR

로봇 의수 설계 및 근전도 기반의 손동작 인식

Design of Prosthetic Robot Hand and Electromyography-Based Hand Motion Recognition

Journal of the Korean Society for Precision Engineering 2020;37(5):339-345.
Published online: May 1, 2020

1 금오공과대학교 기계설계공학과

1 Department of Mechanical Design Engineering, Kumoh National Institute of Technology

#E-mail: jwsohn@kumoh.ac.kr, TEL: +82-54-478-7378
• Received: October 15, 2019   • Revised: January 29, 2020   • Accepted: February 10, 2020

Copyright © The Korean Society for Precision Engineering

This is an Open-Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/3.0) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

  • 7 Views
  • 0 Download
  • 2 Crossref
  • 2 Scopus
prev next

Citations

Citations to this article as recorded by  Crossref logo
  • Development of a Caterpillar-Type Walker for the Elderly People
    Yeon-Kyun Lee, Chang-Min Yang, Sol Kim, Ji-Yong Jung, Jung-Ja Kim
    Applied Sciences.2021; 12(1): 383.     CrossRef
  • Remote Control of Mobile Robot Using Electromyogram-based Hand Gesture Recognition
    Daun Lee, Jung Woo Sohn
    Transactions of the Korean Society for Noise and Vibration Engineering.2020; 30(5): 497.     CrossRef

Download Citation

Download a citation file in RIS format that can be imported by all major citation management software, including EndNote, ProCite, RefWorks, and Reference Manager.

Format:

Include:

Design of Prosthetic Robot Hand and Electromyography-Based Hand Motion Recognition
J. Korean Soc. Precis. Eng.. 2020;37(5):339-345.   Published online May 1, 2020
Download Citation

Download a citation file in RIS format that can be imported by all major citation management software, including EndNote, ProCite, RefWorks, and Reference Manager.

Format:
Include:
Design of Prosthetic Robot Hand and Electromyography-Based Hand Motion Recognition
J. Korean Soc. Precis. Eng.. 2020;37(5):339-345.   Published online May 1, 2020
Close

Figure

  • 0
  • 1
  • 2
  • 3
  • 4
  • 5
  • 6
  • 7
  • 8
  • 9
  • 10
Design of Prosthetic Robot Hand and Electromyography-Based Hand Motion Recognition
Image Image Image Image Image Image Image Image Image Image Image
Fig. 1 Structural configuration of the prosthetic robot hand
Fig. 2 The proposed finger model
Fig. 3 Simulation results for locus of fingertips
Fig. 4 Process of gesture recognition
Fig. 5 Measured EMG data
Fig. 6 Hand motions and corresponding EMG feature vectors
Fig. 7 Classification accuracy according to number of hidden neurons
Fig. 8 Classification accuracy for three hand motions with ten hidden neurons
Fig. 9 Manufactured prosthetic hand
Fig. 10 Experimental setup for real time hand motion realization
Fig. 11 Snapshots of hand motions and realization with prosthetic robot hand
Design of Prosthetic Robot Hand and Electromyography-Based Hand Motion Recognition