30 / 2017-01-12 00:33:26
Pattern-based Grasping Force Estimation from Surface Electromyography
EMG, Artificial neural networks,Prosthetic hand
Final Paper
冰珂 张 / 广东科学技术职业学院
Aiming at maintaining the accuracy of grasping pattern recognition meanwhile evaluating the required force, this paper uses Linear discriminant analysis (LDA) to realize pattern recognition and artificial neural networks to establish the relationship between surface EMG signals and fingertip force in each grasping mode. Once the grasping pattern identified, the program calls the corresponding force model to estimate force value and achieve the combination force decoding and pattern recognition. The experiment shows that the force predicted with an average error of 10% meanwhile the average classification accuracy is about 83.21%.
Important Date
  • Conference Date

    Feb 16

    2017

    to

    Feb 18

    2017

  • Jan 20 2017

    Draft paper submission deadline

  • Jan 30 2017

    Draft Paper Acceptance Notification

  • Feb 10 2017

    Final Paper Deadline

  • Feb 18 2017

    Registration deadline