Surface ElectroMyoGraphy (sEMG) is a fundamental tool in medicine, rehabilitation, and prostethics but also made appearance on the consumer world with devices such as the Thalmic lab's MYO. Current state of the art transfers the whole sEMG signal but encounter problems when this signal has to be transferred wirelessly in real-time. To overcome limitations of the current state of the art we propose compressed sensing (CS) as a technique to reduce the size of sEMG data. This work demonstrates the advantage of using a priori knowledge on the sEMG signal by rakeness-based design of a CS acquisition system. Our CS system was shaped on the general purpose data from Physionet and tested on data acquired for a simple hand movement recognition task. Results show that it is possible to significantly reduce the size of transmitted sEMG data while being able to reconstruct good quality signals and recognize hand movemenents.

Compressed sensing based on rakeness for surface ElectroMyoGraphy / Mangia, Mauro; Paleari, Marco; Ariano, Paolo; Rovatti, Riccardo; Setti, Gianluca. - STAMPA. - (2014), pp. 6981698.204-6981698.207. (Intervento presentato al convegno 10th IEEE Biomedical Circuits and Systems Conference, BioCAS 2014 tenutosi a EPFL, che nel 2014) [10.1109/BioCAS.2014.6981698].

Compressed sensing based on rakeness for surface ElectroMyoGraphy

MANGIA, MAURO;ROVATTI, RICCARDO;
2014

Abstract

Surface ElectroMyoGraphy (sEMG) is a fundamental tool in medicine, rehabilitation, and prostethics but also made appearance on the consumer world with devices such as the Thalmic lab's MYO. Current state of the art transfers the whole sEMG signal but encounter problems when this signal has to be transferred wirelessly in real-time. To overcome limitations of the current state of the art we propose compressed sensing (CS) as a technique to reduce the size of sEMG data. This work demonstrates the advantage of using a priori knowledge on the sEMG signal by rakeness-based design of a CS acquisition system. Our CS system was shaped on the general purpose data from Physionet and tested on data acquired for a simple hand movement recognition task. Results show that it is possible to significantly reduce the size of transmitted sEMG data while being able to reconstruct good quality signals and recognize hand movemenents.
2014
IEEE 2014 Biomedical Circuits and Systems Conference, BioCAS 2014 - Proceedings
204
207
Compressed sensing based on rakeness for surface ElectroMyoGraphy / Mangia, Mauro; Paleari, Marco; Ariano, Paolo; Rovatti, Riccardo; Setti, Gianluca. - STAMPA. - (2014), pp. 6981698.204-6981698.207. (Intervento presentato al convegno 10th IEEE Biomedical Circuits and Systems Conference, BioCAS 2014 tenutosi a EPFL, che nel 2014) [10.1109/BioCAS.2014.6981698].
Mangia, Mauro; Paleari, Marco; Ariano, Paolo; Rovatti, Riccardo; Setti, Gianluca
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/562420
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