Sparse Signal Acquisition via Compressed Sensing and Principal Component Analysis

This paper presents a way of acquiring a sparse signal by taking only a limited number of samples; sampling and compression are performed in one step by the analog to information conversion. The signal is recovered with minimal information loss from the reduced data record via compressed sensing rec...

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Bibliographic Details
Published inMeasurement science review Vol. 18; no. 5; pp. 175 - 182
Main Authors Andráš, Imrich, Dolinský, Pavol, Michaeli, Linus, Šaliga, Ján
Format Journal Article
LanguageEnglish
Published Sciendo 01.10.2018
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Summary:This paper presents a way of acquiring a sparse signal by taking only a limited number of samples; sampling and compression are performed in one step by the analog to information conversion. The signal is recovered with minimal information loss from the reduced data record via compressed sensing reconstruction. Several methods of analog to information conversion are described with focus on numerical complexity and implementation in existing embedded devices. Two novel analog to information conversion methods are proposed, distinctive by their computational simplicity - direct subsampling and subsampling with integration. Proposed sensing methods are intended for and evaluated with real water parameter signals measured by a wireless sensor network. Compressed sensing proves to reduce the data transfer rate by >80 % with very little signal processing performed at the sensing side and no appreciable distortion of the reconstructed signal.
ISSN:1335-8871
1335-8871
DOI:10.1515/msr-2018-0025