Frequency Analysis of Acoustic Data Using Multiple-Measurement Sparse Bayesian Learning
Passive sonar systems are used to detect the acoustic signals that are radiated from marine objects (e.g., surface ships, submarines, etc.), and an accurate estimation of the frequency components is crucial to the target detection. In this paper, we introduce sparse Bayesian learning (SBL) for the f...
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doaj-7752a96b9804440ea19c7492a737928c2021-09-09T13:56:24ZengMDPI AGSensors1424-82202021-08-01215827582710.3390/s21175827Frequency Analysis of Acoustic Data Using Multiple-Measurement Sparse Bayesian LearningMyoungin Shin0Wooyoung Hong1Keunhwa Lee2Youngmin Choo3Department of Ocean Systems Engineering, Sejong University, Seoul 05006, KoreaDepartment of Ocean Systems Engineering, Sejong University, Seoul 05006, KoreaDepartment of Ocean Systems Engineering, Sejong University, Seoul 05006, KoreaDepartment of Ocean Systems Engineering, Sejong University, Seoul 05006, KoreaPassive sonar systems are used to detect the acoustic signals that are radiated from marine objects (e.g., surface ships, submarines, etc.), and an accurate estimation of the frequency components is crucial to the target detection. In this paper, we introduce sparse Bayesian learning (SBL) for the frequency analysis after the corresponding linear system is established. Many algorithms, such as fast Fourier transform (FFT), estimate signal parameters via rotational invariance techniques (ESPRIT), and multiple signal classification (RMUSIC) has been proposed for frequency detection. However, these algorithms have limitations of low estimation resolution by insufficient signal length (FFT), required knowledge of the signal frequency component number, and performance degradation at low signal to noise ratio (ESPRIT and RMUSIC). The SBL, which reconstructs a sparse solution from the linear system using the Bayesian framework, has an advantage in frequency detection owing to high resolution from the solution sparsity. Furthermore, in order to improve the robustness of the SBL-based frequency analysis, we exploit multiple measurements over time and space domains that share common frequency components. We compare the estimation results from FFT, ESPRIT, RMUSIC, and SBL using synthetic data, which displays the superior performance of the SBL that has lower estimation errors with a higher recovery ratio. We also apply the SBL to the in-situ data with other schemes and the frequency components from the SBL are revealed as the most effective. In particular, the SBL estimation is remarkably enhanced by the multiple measurements from both space and time domains owing to remaining consistent signal frequency components while diminishing random noise frequency components.https://www.mdpi.com/1424-8220/21/17/5827frequency analysissparse Bayesian learningin-situ multiple measurements |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Myoungin Shin Wooyoung Hong Keunhwa Lee Youngmin Choo |
spellingShingle |
Myoungin Shin Wooyoung Hong Keunhwa Lee Youngmin Choo Frequency Analysis of Acoustic Data Using Multiple-Measurement Sparse Bayesian Learning Sensors frequency analysis sparse Bayesian learning in-situ multiple measurements |
author_facet |
Myoungin Shin Wooyoung Hong Keunhwa Lee Youngmin Choo |
author_sort |
Myoungin Shin |
title |
Frequency Analysis of Acoustic Data Using Multiple-Measurement Sparse Bayesian Learning |
title_short |
Frequency Analysis of Acoustic Data Using Multiple-Measurement Sparse Bayesian Learning |
title_full |
Frequency Analysis of Acoustic Data Using Multiple-Measurement Sparse Bayesian Learning |
title_fullStr |
Frequency Analysis of Acoustic Data Using Multiple-Measurement Sparse Bayesian Learning |
title_full_unstemmed |
Frequency Analysis of Acoustic Data Using Multiple-Measurement Sparse Bayesian Learning |
title_sort |
frequency analysis of acoustic data using multiple-measurement sparse bayesian learning |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2021-08-01 |
description |
Passive sonar systems are used to detect the acoustic signals that are radiated from marine objects (e.g., surface ships, submarines, etc.), and an accurate estimation of the frequency components is crucial to the target detection. In this paper, we introduce sparse Bayesian learning (SBL) for the frequency analysis after the corresponding linear system is established. Many algorithms, such as fast Fourier transform (FFT), estimate signal parameters via rotational invariance techniques (ESPRIT), and multiple signal classification (RMUSIC) has been proposed for frequency detection. However, these algorithms have limitations of low estimation resolution by insufficient signal length (FFT), required knowledge of the signal frequency component number, and performance degradation at low signal to noise ratio (ESPRIT and RMUSIC). The SBL, which reconstructs a sparse solution from the linear system using the Bayesian framework, has an advantage in frequency detection owing to high resolution from the solution sparsity. Furthermore, in order to improve the robustness of the SBL-based frequency analysis, we exploit multiple measurements over time and space domains that share common frequency components. We compare the estimation results from FFT, ESPRIT, RMUSIC, and SBL using synthetic data, which displays the superior performance of the SBL that has lower estimation errors with a higher recovery ratio. We also apply the SBL to the in-situ data with other schemes and the frequency components from the SBL are revealed as the most effective. In particular, the SBL estimation is remarkably enhanced by the multiple measurements from both space and time domains owing to remaining consistent signal frequency components while diminishing random noise frequency components. |
topic |
frequency analysis sparse Bayesian learning in-situ multiple measurements |
url |
https://www.mdpi.com/1424-8220/21/17/5827 |
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