Abstract

High accuracy and a real-time system are priorities in the development of a prosthetic hand. This study aimed to develop and evaluate a real-time embedded time-domain feature extraction and machine learning on a system on chip (SoC) Raspberry platform using a multi-thread algorithm to operate a prosthetic hand device. The contribution of this study is that the implementation of the multi-thread in the pattern recognition improves the accuracy and decreases the computation time in the SoC. In this study, ten healthy volunteers were involved. The EMG signal was collected by using two dry electrodes placed on the wrist flexor and wrist extensor muscles. To reduce the complexity, four time-domain features were applied to extract the EMG signal. Furthermore, these features were used as the input of the machine learning. The machine learning evaluated in this study were k-nearest neighbor (k-NN), Naive Bayes (NB), decision tree (DT), and support vector machine (SVM). In the SoC implementation, the data acquisition, feature extraction, machine learning, and motor control process were implemented using a multi-thread algorithm. After the evaluation, the result showed that the pairing of the MAV feature and machine learning DT resulted in higher accuracy among other combinations (98.41%) with a computation time of ~1 ms. The implementation of the multi-thread algorithm in the pattern recognition system resulted in significant impact on the time processing.

Highlights

  • This study aims to develop and evaluate an embedded time-domain feature and machine learning on a system on chip (SoC) based on a Raspberry platform using a multi-thread algorithm to control the prosthetic hand device to recognize four motions (grasp, relax, wrist flexion, and wrist extension)

  • The prosthetic hand functioned by using an EMG signal

  • This study developed and evaluated an embedded time-domain feature and machine learning on a system on chip (SoC) based on a Raspberry platform using a multi-thread algorithm to control a prosthetic hand device

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Summary

Introduction

Prosthetic hands are needed for people who have amputations on the hand (amputee) due to work accidents, congenital defects, and certain diseases. The need for prosthetic hands is still high, especially in developing countries and countries with war conflict [1,2]. Prosthetic hands are used cosmetically and have a functional role to help the amputee with daily life activities [3,4]. The development of prosthetic hands has been carried out by previous studies both in the laboratory and at industrial levels

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