Real Time Control of Hand Prosthesis Using Surface EMG
Transcription
Real Time Control of Hand Prosthesis Using Surface EMG
Real Time Control of Hand Prosthesis Using Surface EMG Or 2 Dicker , Aviv 1 Peleg , Tal 2 Shnitzer , Oscar 1 Lichtenstein 1 Faculty of Biomedical Engineering, Technion - IIT, Haifa, Israel 2 Faculty of Electrical Engineering, Technion - IIT, Haifa, Israel Introduction Objective -There are 1.8 million, below the elbow amputees. Development of a control mechanism for 3D printed prostheses: • Real Time: Less then 250ms from command to execution. • Reliability: Classification success rate of more then 96%. • Portability: Fully portable. • Variety of gestures: A range of 6 different gestures. • Short setup time: Less then 1 minute of calibration. -Current hand prostheses capabilities range from single action to expensive (>30,000$) multi-action prostheses. -3D blueprints for affordable single action prosthesis are currently available as “open source”. -With today’s technology, affordable multi-action prostheses can be developed for all in need. Methods Algorithm workflow 1. Calibration: 1.A Recording and labeling the EMG signals ,fig.2, using the MYO ,fig.3 Fig.2:Raw data Fig.3:MYO armband Fig.1:Algorithm workflow 1.B Feature extraction in the time domain, using Mean Absolute Value, fig.4. 1.C Pattern recognition using K Nearest Neighbors algorithm (K=3) 2. Real time hand control: 2.A Recording. 2.B Real time classification 2.C Convert classification to servo movements fig.5 Command Mechanical Output duration Servo 1 Fig.4:Data after Feature extraction Servo 2 position Servo 3 pulse width modulation gesture Thumb Index finger Digits 2 2000 1500 500 Index finger Closed Open Closed 3 2000 500 500 fist Closed Closed Closed 4 500 500 500 Thumb up Open Closed Closed Fig.7: Prototype 3. Movement Fig.9:Microcontroller Intel Edison Fig.5:convertion table of classification to servo command to mechanical output 2.D Pre action threshold is used to rectify the classification Fig.6. Fig.8: The six different hand gestures: fist, pinch, point, rest, Frisbee catch, like. Fig.6:Effect of pre action threshold shown in red Results Real Time Reliable Portability Set goal <250 msec >96% Fully portable Variety 6 gestures set up time <1 minute Achievement Fully achieved Fully achieved: 99% No PC needed. Electricity portability was not validated Fully achieved Fully achieved: around 30 sec. Acknowledgments: Mr. Nimrod Peleg Prof. Yoav Medan Mr. Shlomi Dach Mr. Yair Herbst Mr. Oren Forkosh Mr. Vasily Vitchevsky Conclusions -In regard to affordability, current price stands at 345$. Future price is estimated at 180$. -Nearly all the objectives were met, proving the feasibility of our solution. -Further work in regard to price reduction and redesigning the electro-mechanics is needed to reach a complete product. References Mr. Sharon Ishar Mr. Koby Kohai Mr. Gal Pressman Mr. Vasily Vitchevsky Mr. Johanan Erez [1] https://www.myo.com [2] M. B. I. Reaz, M. S. Hussain and F. Mohd-Yasin, Techniques of EMG signal analysis: detection, processing, classification and applications, Biological Procedures Online , 2006 [3] [2] G. Vannozzi , A. M. Sabatini , P. Dario, Improving detection of muscle activation intervalsIEEE Engineering in Medicine , 2002