Real-Time biosignal classification in power-constrained embedded applications is a key step in designing portable e-healtb devices requiring hardware integration along with concurrent signal processing. This paper presents an application based on a novel biomedical System-On-Chip (SoC) for signal acquisition and processing combining a homogeneous multi-core cluster with a versatile bio-potential front-end. The presented implementation acquires raw EMG signals from 3 passive gel-electrodes and classifies 3 hand gestures using a Support Vector Machine (SVM) pattern recognition algorithm. Performance matches state-of-The-Art high-end systems both in terms of recognition accuracy (>85%) and of real-Time execution (gesture recognition time ≪300 ms). The power consumption of the employed biomedical SoC is below 10 mW, outperforming implementations on conunercial MCUs by a factor of 10, ensuring a battery life of up to 160 hours with a common Li-ion 1600 mAh battery.

A sub-10mW real-Time implementation for EMG hand gesture recognition based on a multi-core biomedical SoC / Benatti, Simone; Rovere, Giovanni; Bosser, Jonathan; Montagna, Fabio; Farella, Elisabetta; Glaser, Florian; Schonle, Philipp; Burger, Thomas; Fateh, Schekeb; Huang, Qiuting; Benini, Luca. - ELETTRONICO. - (2017), pp. 7974234.139-7974234.144. (Intervento presentato al convegno 2017 7th IEEE International Workshop on Advances in Sensors and Interfaces (IWASI) tenutosi a Vieste, Italy nel June 15-16, 2017) [10.1109/IWASI.2017.7974234].

A sub-10mW real-Time implementation for EMG hand gesture recognition based on a multi-core biomedical SoC

Benatti, Simone;Montagna, Fabio;Farella, Elisabetta;Benini, Luca
2017

Abstract

Real-Time biosignal classification in power-constrained embedded applications is a key step in designing portable e-healtb devices requiring hardware integration along with concurrent signal processing. This paper presents an application based on a novel biomedical System-On-Chip (SoC) for signal acquisition and processing combining a homogeneous multi-core cluster with a versatile bio-potential front-end. The presented implementation acquires raw EMG signals from 3 passive gel-electrodes and classifies 3 hand gestures using a Support Vector Machine (SVM) pattern recognition algorithm. Performance matches state-of-The-Art high-end systems both in terms of recognition accuracy (>85%) and of real-Time execution (gesture recognition time ≪300 ms). The power consumption of the employed biomedical SoC is below 10 mW, outperforming implementations on conunercial MCUs by a factor of 10, ensuring a battery life of up to 160 hours with a common Li-ion 1600 mAh battery.
2017
Proceedings of the 2017 7th IEEE International Workshop on Advances in Sensors and Interfaces (IWASI)
139
144
A sub-10mW real-Time implementation for EMG hand gesture recognition based on a multi-core biomedical SoC / Benatti, Simone; Rovere, Giovanni; Bosser, Jonathan; Montagna, Fabio; Farella, Elisabetta; Glaser, Florian; Schonle, Philipp; Burger, Thomas; Fateh, Schekeb; Huang, Qiuting; Benini, Luca. - ELETTRONICO. - (2017), pp. 7974234.139-7974234.144. (Intervento presentato al convegno 2017 7th IEEE International Workshop on Advances in Sensors and Interfaces (IWASI) tenutosi a Vieste, Italy nel June 15-16, 2017) [10.1109/IWASI.2017.7974234].
Benatti, Simone; Rovere, Giovanni; Bosser, Jonathan; Montagna, Fabio; Farella, Elisabetta; Glaser, Florian; Schonle, Philipp; Burger, Thomas; Fateh, Schekeb; Huang, Qiuting; Benini, Luca
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/609280
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