Compressed sensing has recently been actively investigated as a mean of lowering the power consumption of sensing nodes in biomedical signal devices due to its capability to reduce the amount of data to be transmitted for the correct reconstruction of the acquired waveforms. The rakeness-based design of compressed sensing stages exploits the uneven distribution of energy in the sensed signal and has proved to be extremely effective in maximizing the energy savings. Yet, many body-area sensor network architectures include intermediate gateway nodes that receive and reconstruct signals to provide local services before relaying data to a remote server. In this case, the decoder-side power consumption is also an issue. In this paper, with particular reference to ECG signals, we show that rakeness-based design is also capable to reduce resources required at the decoder side for reconstruction. This happens across a variety of reconstruction algorithms that see their running time substantially reduced. Actual savings are then experimentally quantified by measuring the energy requirements of one of the algorithms on a common mobile computing platform.

Compressed sensing has recently been actively investigated as a mean of lowering the power consumption of sensing nodes in biomedical signal devices due to its capability to reduce the amount of data to be transmitted for the correct reconstruction of the acquired waveforms. The rakeness-based design of compressed sensing stages exploits the uneven distribution of energy in the sensed signal and has proved to be extremely effective in maximizing the energy savings. Yet, many bodyarea sensor network architectures include intermediate gateway nodes that receive and reconstruct signals to provide local services before relaying data to a remote server. In this case, the decoderside power consumption is also an issue. In this paper, with particular reference to ECG signals, we show that rakenessbased design is also capable to reduce resources required at the decoder side for reconstruction. This happens across a variety of reconstruction algorithms that see their running time substantially reduced. Actual savings are then experimentally quantified by measuring the energy requirements of one of the algorithms on a common mobile computing platform.

Application of compressed sensing to ECG signals: Decoder-side benefits of the rakeness approach / Mangia, Mauro; Bortolotti, Daniele; Bartolini, Andrea; Pareschi, Fabio; Benini, Luca; Rovatti, Riccardo; Setti, Gianluca. - ELETTRONICO. - (2016), pp. 352-355. (Intervento presentato al convegno 12th IEEE Biomedical Circuits and Systems Conference, BioCAS 2016 tenutosi a Shanghai (China) nel Oct 17-19, 2016) [10.1109/BioCAS.2016.7833804].

Application of compressed sensing to ECG signals: Decoder-side benefits of the rakeness approach

Pareschi Fabio;Setti Gianluca
2016

Abstract

Compressed sensing has recently been actively investigated as a mean of lowering the power consumption of sensing nodes in biomedical signal devices due to its capability to reduce the amount of data to be transmitted for the correct reconstruction of the acquired waveforms. The rakeness-based design of compressed sensing stages exploits the uneven distribution of energy in the sensed signal and has proved to be extremely effective in maximizing the energy savings. Yet, many bodyarea sensor network architectures include intermediate gateway nodes that receive and reconstruct signals to provide local services before relaying data to a remote server. In this case, the decoderside power consumption is also an issue. In this paper, with particular reference to ECG signals, we show that rakenessbased design is also capable to reduce resources required at the decoder side for reconstruction. This happens across a variety of reconstruction algorithms that see their running time substantially reduced. Actual savings are then experimentally quantified by measuring the energy requirements of one of the algorithms on a common mobile computing platform.
2016
Compressed sensing has recently been actively investigated as a mean of lowering the power consumption of sensing nodes in biomedical signal devices due to its capability to reduce the amount of data to be transmitted for the correct reconstruction of the acquired waveforms. The rakeness-based design of compressed sensing stages exploits the uneven distribution of energy in the sensed signal and has proved to be extremely effective in maximizing the energy savings. Yet, many body-area sensor network architectures include intermediate gateway nodes that receive and reconstruct signals to provide local services before relaying data to a remote server. In this case, the decoder-side power consumption is also an issue. In this paper, with particular reference to ECG signals, we show that rakeness-based design is also capable to reduce resources required at the decoder side for reconstruction. This happens across a variety of reconstruction algorithms that see their running time substantially reduced. Actual savings are then experimentally quantified by measuring the energy requirements of one of the algorithms on a common mobile computing platform.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2696727