A novel approach to extracting useful information from noisy TFDs using 2D local entropy measures

Abstract The paper proposes a novel approach for extraction of useful information and blind source separation of signal components from noisy data in the time-frequency domain. The method is based on the local Rényi entropy calculated inside adaptive, data-driven 2D regions, the sizes of which are c...

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Main Authors: Ana Vranković, Jonatan Lerga, Nicoletta Saulig
Format: Article
Language:English
Published: SpringerOpen 2020-04-01
Series:EURASIP Journal on Advances in Signal Processing
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13634-020-00679-2
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spelling doaj-09ab78d7fdb24eddb5855f5de0e867bf2020-11-25T03:14:11ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61802020-04-012020111910.1186/s13634-020-00679-2A novel approach to extracting useful information from noisy TFDs using 2D local entropy measuresAna Vranković0Jonatan Lerga1Nicoletta Saulig2University of Rijeka, Faculty of Engineering, Department of Computer EngineeringUniversity of Rijeka, Faculty of Engineering, Department of Computer EngineeringJuraj Dobrila University of Pula, Department of Technical StudiesAbstract The paper proposes a novel approach for extraction of useful information and blind source separation of signal components from noisy data in the time-frequency domain. The method is based on the local Rényi entropy calculated inside adaptive, data-driven 2D regions, the sizes of which are calculated utilizing the improved, relative intersection of confidence intervals (RICI) algorithm. One of the advantages of the proposed technique is that it does not require any prior knowledge on the signal, its components, or noise, but rather the processing is performed on the noisy signal mixtures. Also, it is shown that the method is robust to the selection of time-frequency distributions (TFDs). It has been tested for different signal-to-noise-ratios (SNRs), both for synthetic and real-life data. When compared to fixed TFD thresholding, adaptive TFD thresholding based on RICI rule and the 1D entropy-based approach, the proposed adaptive method significantly increases classification accuracy (by up to 11.53%) and F1 score (by up to 7.91%). Hence, this adaptive, data-driven, entropy-based technique is an efficient tool for extracting useful information from noisy data in the time-frequency domain.http://link.springer.com/article/10.1186/s13634-020-00679-2Rényi entropyTime-frequency distributionsRelative intersection of confidence intervalsAdaptive thresholding
collection DOAJ
language English
format Article
sources DOAJ
author Ana Vranković
Jonatan Lerga
Nicoletta Saulig
spellingShingle Ana Vranković
Jonatan Lerga
Nicoletta Saulig
A novel approach to extracting useful information from noisy TFDs using 2D local entropy measures
EURASIP Journal on Advances in Signal Processing
Rényi entropy
Time-frequency distributions
Relative intersection of confidence intervals
Adaptive thresholding
author_facet Ana Vranković
Jonatan Lerga
Nicoletta Saulig
author_sort Ana Vranković
title A novel approach to extracting useful information from noisy TFDs using 2D local entropy measures
title_short A novel approach to extracting useful information from noisy TFDs using 2D local entropy measures
title_full A novel approach to extracting useful information from noisy TFDs using 2D local entropy measures
title_fullStr A novel approach to extracting useful information from noisy TFDs using 2D local entropy measures
title_full_unstemmed A novel approach to extracting useful information from noisy TFDs using 2D local entropy measures
title_sort novel approach to extracting useful information from noisy tfds using 2d local entropy measures
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6180
publishDate 2020-04-01
description Abstract The paper proposes a novel approach for extraction of useful information and blind source separation of signal components from noisy data in the time-frequency domain. The method is based on the local Rényi entropy calculated inside adaptive, data-driven 2D regions, the sizes of which are calculated utilizing the improved, relative intersection of confidence intervals (RICI) algorithm. One of the advantages of the proposed technique is that it does not require any prior knowledge on the signal, its components, or noise, but rather the processing is performed on the noisy signal mixtures. Also, it is shown that the method is robust to the selection of time-frequency distributions (TFDs). It has been tested for different signal-to-noise-ratios (SNRs), both for synthetic and real-life data. When compared to fixed TFD thresholding, adaptive TFD thresholding based on RICI rule and the 1D entropy-based approach, the proposed adaptive method significantly increases classification accuracy (by up to 11.53%) and F1 score (by up to 7.91%). Hence, this adaptive, data-driven, entropy-based technique is an efficient tool for extracting useful information from noisy data in the time-frequency domain.
topic Rényi entropy
Time-frequency distributions
Relative intersection of confidence intervals
Adaptive thresholding
url http://link.springer.com/article/10.1186/s13634-020-00679-2
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