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Rakeness and beyond in zero-complexity digital compressed sensing: A down-to-bits case study

Authors :
Gianluca Setti
Mauro Mangia Arces
Riccardo Rovatti
Fabio Pareschi
Mangia M.
Pareschi F.
Rovatti R.
Setti G.
Source :
BioCAS
Publication Year :
2016
Publisher :
Institute of Electrical and Electronics Engineers Inc., 2016.

Abstract

Compressed sensing can be seen as a lossy data compression stage processing vectors of digital words that correspond to time windows of the signal to acquire. We here show that if the second-order statistical features of such a signal are known, they may be exploited to obtain extremely high compression ratios by means of an almost zero-complexity hardware that is limited to signed adders and very few other elementary algebraic blocks. Optimization is obtained and demonstrated against non-optimized compressed sensing both by specializing classical rakeness-based design and by employing and even simpler and novel principal-component-based method that in some cases may outperform the former. Simulations are performed taking into account bit-wise operations and yield the true compression ratios that would be produced by the real system entailing only very low-depth fixed-point arithmetic. In the case of real-workd ECGs, good reconstruction with bitwise compression ratios up to 9 is demonstrated.

Details

Language :
English
Database :
OpenAIRE
Journal :
BioCAS
Accession number :
edsair.doi.dedup.....e8c7ca308090eed7decafed8fc362707