Sparse Analyzer Tool for Biomedical Signals

The virtual (software) instrument with a statistical analyzer for testing algorithms for biomedical signals’ recovery in compressive sensing (CS) scenario is presented. Various CS reconstruction algorithms are implemented with the aim to be applicable for different types of biomedical signals and di...

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Main Authors: Stefan Vujović, Andjela Draganić, Maja Lakičević Žarić, Irena Orović, Miloš Daković, Marko Beko, Srdjan Stanković
Format: Article
Language:English
Published: MDPI AG 2020-05-01
Series:Sensors
Subjects:
OMP
Online Access:https://www.mdpi.com/1424-8220/20/9/2602
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spelling doaj-6592e4f295cb4424b5221b0c76e34c682020-11-25T02:38:39ZengMDPI AGSensors1424-82202020-05-01202602260210.3390/s20092602Sparse Analyzer Tool for Biomedical SignalsStefan Vujović0Andjela Draganić1Maja Lakičević Žarić2Irena Orović3Miloš Daković4Marko Beko5Srdjan Stanković6Faculty of Electrical Engineering, University of Montenegro, 81000 Podgorica, MontenegroFaculty of Electrical Engineering, University of Montenegro, 81000 Podgorica, MontenegroFaculty of Electrical Engineering, University of Montenegro, 81000 Podgorica, MontenegroFaculty of Electrical Engineering, University of Montenegro, 81000 Podgorica, MontenegroFaculty of Electrical Engineering, University of Montenegro, 81000 Podgorica, MontenegroCOPELABS, Universidade Lusófona de Humanidades e Tecnologias, 1700-097 Lisboa, PortugalFaculty of Electrical Engineering, University of Montenegro, 81000 Podgorica, MontenegroThe virtual (software) instrument with a statistical analyzer for testing algorithms for biomedical signals’ recovery in compressive sensing (CS) scenario is presented. Various CS reconstruction algorithms are implemented with the aim to be applicable for different types of biomedical signals and different applications with under-sampled data. Incomplete sampling/sensing can be considered as a sort of signal damage, where missing data can occur as a result of noise or the incomplete signal acquisition procedure. Many approaches for recovering the missing signal parts have been developed, depending on the signal nature. Here, several approaches and their applications are presented for medical signals and images. The possibility to analyze results using different statistical parameters is provided, with the aim to choose the most suitable approach for a specific application. The instrument provides manifold possibilities such as fitting different parameters for the considered signal and testing the efficiency under different percentages of missing data. The reconstruction accuracy is measured by the mean square error (MSE) between original and reconstructed signal. Computational time is important from the aspect of power requirements, thus enabling the selection of a suitable algorithm. The instrument contains its own signal database, but there is also the possibility to load any external data for analysis.https://www.mdpi.com/1424-8220/20/9/2602biomedical signalscompressive sensingconcentration measuregradient algorithmOMPSIRA
collection DOAJ
language English
format Article
sources DOAJ
author Stefan Vujović
Andjela Draganić
Maja Lakičević Žarić
Irena Orović
Miloš Daković
Marko Beko
Srdjan Stanković
spellingShingle Stefan Vujović
Andjela Draganić
Maja Lakičević Žarić
Irena Orović
Miloš Daković
Marko Beko
Srdjan Stanković
Sparse Analyzer Tool for Biomedical Signals
Sensors
biomedical signals
compressive sensing
concentration measure
gradient algorithm
OMP
SIRA
author_facet Stefan Vujović
Andjela Draganić
Maja Lakičević Žarić
Irena Orović
Miloš Daković
Marko Beko
Srdjan Stanković
author_sort Stefan Vujović
title Sparse Analyzer Tool for Biomedical Signals
title_short Sparse Analyzer Tool for Biomedical Signals
title_full Sparse Analyzer Tool for Biomedical Signals
title_fullStr Sparse Analyzer Tool for Biomedical Signals
title_full_unstemmed Sparse Analyzer Tool for Biomedical Signals
title_sort sparse analyzer tool for biomedical signals
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-05-01
description The virtual (software) instrument with a statistical analyzer for testing algorithms for biomedical signals’ recovery in compressive sensing (CS) scenario is presented. Various CS reconstruction algorithms are implemented with the aim to be applicable for different types of biomedical signals and different applications with under-sampled data. Incomplete sampling/sensing can be considered as a sort of signal damage, where missing data can occur as a result of noise or the incomplete signal acquisition procedure. Many approaches for recovering the missing signal parts have been developed, depending on the signal nature. Here, several approaches and their applications are presented for medical signals and images. The possibility to analyze results using different statistical parameters is provided, with the aim to choose the most suitable approach for a specific application. The instrument provides manifold possibilities such as fitting different parameters for the considered signal and testing the efficiency under different percentages of missing data. The reconstruction accuracy is measured by the mean square error (MSE) between original and reconstructed signal. Computational time is important from the aspect of power requirements, thus enabling the selection of a suitable algorithm. The instrument contains its own signal database, but there is also the possibility to load any external data for analysis.
topic biomedical signals
compressive sensing
concentration measure
gradient algorithm
OMP
SIRA
url https://www.mdpi.com/1424-8220/20/9/2602
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