Maximum Likelihood Deconvolution of Beamformed Images with Signal-Dependent Speckle Fluctuations from Gaussian Random Fields: With Application to Ocean Acoustic Waveguide Remote Sensing (OAWRS)

Wide area acoustic remote sensing often involves the use of coherent receiver arrays to determine the spatial distribution of sources and scatterers at any instant. The resulting acoustic intensity images are typically corrupted by signal-dependent noise from Gaussian random field fluctuations arisi...

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Main Authors: Ankita D. Jain, Nicholas C. Makris
Format: Article
Language:English
Published: MDPI AG 2016-08-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/8/9/694
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spelling doaj-a185cbfb9e974c64b5940313970d40532020-11-24T23:10:05ZengMDPI AGRemote Sensing2072-42922016-08-018969410.3390/rs8090694rs8090694Maximum Likelihood Deconvolution of Beamformed Images with Signal-Dependent Speckle Fluctuations from Gaussian Random Fields: With Application to Ocean Acoustic Waveguide Remote Sensing (OAWRS)Ankita D. Jain0Nicholas C. Makris1Department of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, MA 02139, USADepartment of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, MA 02139, USAWide area acoustic remote sensing often involves the use of coherent receiver arrays to determine the spatial distribution of sources and scatterers at any instant. The resulting acoustic intensity images are typically corrupted by signal-dependent noise from Gaussian random field fluctuations arising from the central limit theorem and have a spatial resolution that depends on the incident direction, sensing array aperture and wavelength. Here, we use the maximum likelihood method to deconvolve the intensity distribution measured on a coherent line array assuming a discrete angular distribution of incident plane waves. Instantaneous wide area population density images of fish aggregations measured with Ocean Acoustic Waveguide Remote Sensing (OAWRS) are deconvolved to illustrate the effectiveness of this approach in improving angular resolution over conventional planewave beamforming.http://www.mdpi.com/2072-4292/8/9/694acoustic remote sensingmaximum likelihooddeconvolutionOAWRSsignal-dependent noiseplanewave beamforming
collection DOAJ
language English
format Article
sources DOAJ
author Ankita D. Jain
Nicholas C. Makris
spellingShingle Ankita D. Jain
Nicholas C. Makris
Maximum Likelihood Deconvolution of Beamformed Images with Signal-Dependent Speckle Fluctuations from Gaussian Random Fields: With Application to Ocean Acoustic Waveguide Remote Sensing (OAWRS)
Remote Sensing
acoustic remote sensing
maximum likelihood
deconvolution
OAWRS
signal-dependent noise
planewave beamforming
author_facet Ankita D. Jain
Nicholas C. Makris
author_sort Ankita D. Jain
title Maximum Likelihood Deconvolution of Beamformed Images with Signal-Dependent Speckle Fluctuations from Gaussian Random Fields: With Application to Ocean Acoustic Waveguide Remote Sensing (OAWRS)
title_short Maximum Likelihood Deconvolution of Beamformed Images with Signal-Dependent Speckle Fluctuations from Gaussian Random Fields: With Application to Ocean Acoustic Waveguide Remote Sensing (OAWRS)
title_full Maximum Likelihood Deconvolution of Beamformed Images with Signal-Dependent Speckle Fluctuations from Gaussian Random Fields: With Application to Ocean Acoustic Waveguide Remote Sensing (OAWRS)
title_fullStr Maximum Likelihood Deconvolution of Beamformed Images with Signal-Dependent Speckle Fluctuations from Gaussian Random Fields: With Application to Ocean Acoustic Waveguide Remote Sensing (OAWRS)
title_full_unstemmed Maximum Likelihood Deconvolution of Beamformed Images with Signal-Dependent Speckle Fluctuations from Gaussian Random Fields: With Application to Ocean Acoustic Waveguide Remote Sensing (OAWRS)
title_sort maximum likelihood deconvolution of beamformed images with signal-dependent speckle fluctuations from gaussian random fields: with application to ocean acoustic waveguide remote sensing (oawrs)
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2016-08-01
description Wide area acoustic remote sensing often involves the use of coherent receiver arrays to determine the spatial distribution of sources and scatterers at any instant. The resulting acoustic intensity images are typically corrupted by signal-dependent noise from Gaussian random field fluctuations arising from the central limit theorem and have a spatial resolution that depends on the incident direction, sensing array aperture and wavelength. Here, we use the maximum likelihood method to deconvolve the intensity distribution measured on a coherent line array assuming a discrete angular distribution of incident plane waves. Instantaneous wide area population density images of fish aggregations measured with Ocean Acoustic Waveguide Remote Sensing (OAWRS) are deconvolved to illustrate the effectiveness of this approach in improving angular resolution over conventional planewave beamforming.
topic acoustic remote sensing
maximum likelihood
deconvolution
OAWRS
signal-dependent noise
planewave beamforming
url http://www.mdpi.com/2072-4292/8/9/694
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