4.4 Article

Zeroing for HW-efficient compressed sensing architectures targeting data compression in wireless sensor networks

Journal

MICROPROCESSORS AND MICROSYSTEMS
Volume 48, Issue -, Pages 69-79

Publisher

ELSEVIER
DOI: 10.1016/j.micpro.2016.09.007

Keywords

Compressed sensing; Rakeness; Zeroing; Low-power; Wireless sensors networks; Non volatile memories; Wearable biomedical monitors

Funding

  1. ICYSoC RTD project [20NA21 150939]
  2. Nano-Tera.ch
  3. Swiss Confederation financing

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The design of ultra-low cost wireless body sensor networks for wearable biomedical monitors has been made possible by today technology scaling. In these systems, a typically multi-channel biosignal sensor takes care of the operations of acquisition, data compression and final output transmission or storage. Furthermore, since these sensors are usually battery powered, the achievement of minimal energy operation is a fundamental issue. To this aim, several aspects must be considered, ranging from signal processing to architectural optimization. In this paper we consider the recently proposed rakeness-based compressed sensing (CS) paradigm along with its zeroing companion. With respect to a standard CS base sensor, the first approach allows us to further increase compression rate without sensible signal quality degradation by exploiting localization of input signal energy. The latter paradigm is here formalized and applied to further reduce the energy consumption of the sensing node. The application of both rakeness and zeroing allows for trading off energy from the compression stage to the trahsmission or storage one. Different cases are taken into account, by considering a realistic model of an ultra-low-power multicore DSP system. (C) 2016 Elsevier B.V. All rights reserved.

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