Abstract

BackgroundFor the functional control of prosthetic hand, it is insufficient to obtain only the motion pattern information. As far as practicality is concerned, the control of the prosthetic hand force is indispensable. The application value of prosthetic hand will be greatly improved if the stable grip of prosthetic hand can be achieved. To address this problem, in this study, a bio-signal control method for grasping control of a prosthetic hand is proposed to improve patient’s sense of using prosthetic hand and the thus improving the quality of life.MethodsA MYO gesture control armband is used to collect the surface electromyographic (sEMG) signals from the upper limb. The overlapping sliding window scheme are applied for data segmentation and the correlated features are extracted from each segmented data. Principal component analysis (PCA) methods are then deployed for dimension reduction. Deep neural network is used to generate sEMG-force regression model for force prediction at different levels. The predicted force values are input to a fuzzy controller for the grasping control of a prosthetic hand. A vibration feedback device is used to feed grasping force value back to patient’s arm to improve patient’s sense of using prosthetic hand and realize accurate grasping. To test the effectiveness of the scheme, 15 able-bodied subjects participated in the experiments.ResultsThe classification results indicated that 8-channel sEMG applying all four time-domain features, with PCA reduction from 32 to 8 dimensions results in the highest classification accuracy. Based on the experimental results from 15 participants, the average recognition rate is over 95%. On the other hand, from the statistical results of standard deviation, the between-subject variations ranges from 3.58 to 1.25%, proving that the robustness and stability of the proposed approach.ConclusionsThe method proposed hereto control grasping power through the patient’s own sEMG signal, which achieves a high recognition rate to improve the success rate of grip and increases the sense of operation and also brings the gospel for upper extremity amputation patients.

Highlights

  • For the functional control of prosthetic hand, it is insufficient to obtain only the motion pattern information

  • We propose a new control method for grasping control of a prosthetic hand based on Principal component analysis (PCA) and deep neural network (DNN)

  • Eight surface electromyographic (sEMG) features are selected as input and one force feature is selected as output of DNN

Read more

Summary

Introduction

For the functional control of prosthetic hand, it is insufficient to obtain only the motion pattern information. The application value of prosthetic hand will be greatly improved if the stable grip of prosthetic hand can be achieved To address this problem, in this study, a bio-signal control method for grasping control of a prosthetic hand is proposed to improve patient’s sense of using prosthetic hand and the improving the quality of life. About 80% of the upper limb amputees are reported to use some types of prostheses [2]. The body-powered (BP) prostheses can be open or closed through a harness and cable system worn on the shoulder. They are simple to use, robust, and inexpensive. The other type of active prostheses is electrically powered ones

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call