Blind deconvolution in multipath environments and extensions to remote source localization
In the ocean, the acoustic signal from a remote source recorded by an underwater hydrophone array is commonly distorted by multipath propagation. Blind deconvolution is the task of determining the source signal and the impulse response from array-recorded sounds when the source signal and the enviro...
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ftumdeepblue:oai:deepblue.lib.umich.edu:2027.42/102443 2023-05-15T15:19:22+02:00 Blind deconvolution in multipath environments and extensions to remote source localization Hossein Abadi, Shima Dowling, David R. Wakefield, Gregory H. Grosh, Karl Johnsen, Eric Thode, Aaron M. 2013 application/pdf https://hdl.handle.net/2027.42/102443 en_US eng https://hdl.handle.net/2027.42/102443 Acoustics Source Localization Array Signal Processing Underwater Acoustics Blind Deconvolution Mechanical Engineering Engineering Thesis 2013 ftumdeepblue 2021-08-02T13:08:22Z In the ocean, the acoustic signal from a remote source recorded by an underwater hydrophone array is commonly distorted by multipath propagation. Blind deconvolution is the task of determining the source signal and the impulse response from array-recorded sounds when the source signal and the environment’s impulse response are both unknown. Synthetic time reversal (STR) is a passive blind deconvolution technique that accomplishes two remote sensing tasks. 1) It can be used to estimate the original source signal and the source-to-array impulse responses, and 2) it can be used to localize the remote source when some information is available about the acoustic environment. The performance of STR for both tasks is considered in this thesis. For the first task, simulations and underwater experiments (CAPEx09) have shown STR to be successful for 1.5-4 kHz broadcast signal. Here STR is successful when the signal-to-noise ratio is high enough, and the receiving array has sufficient aperture and element density so that conventional delay-and-sum beamforming can be used to distinguish ray-path-arrival directions. Also, an unconventional beamforming technique (frequency-difference beamforming) that manufactures frequency differences from the recorded signals has been developed. It allows STR to be successful with sparse array measurements where conventional beamforming fails. Broadband simulations and experimental data from the focused acoustic field experiment (FAF06) have been used to determine the performance of STR when combined with frequency-difference beamforming. For the source localization task, the STR-estimated impulse responses may be combined with ray-based back-propagation simulations and the environmental characteristics at the array into a computationally efficient scheme that localizes the remote sound source. These localization results from STR are less ambiguous than those obtained from conventional matched field processing in the same bandwidth. However, when the frequency of the recorded signals is sufficiently low and close to modal cutoff frequencies, STR-based source localization may fail because of dispersion in the environment. For such cases, an extension of mode-based STR has been developed for sound source ranging with a vertical array in a dispersive underwater sound channel using bowhead whale calls recorded with a 12-element vertical array (Arctic 2010). PHD Mechanical Engineering University of Michigan, Horace H. Rackham School of Graduate Studies http://deepblue.lib.umich.edu/bitstream/2027.42/102443/1/shimah_1.pdf Thesis Arctic bowhead whale University of Michigan: Deep Blue Arctic |
institution |
Open Polar |
collection |
University of Michigan: Deep Blue |
op_collection_id |
ftumdeepblue |
language |
English |
topic |
Acoustics Source Localization Array Signal Processing Underwater Acoustics Blind Deconvolution Mechanical Engineering Engineering |
spellingShingle |
Acoustics Source Localization Array Signal Processing Underwater Acoustics Blind Deconvolution Mechanical Engineering Engineering Hossein Abadi, Shima Blind deconvolution in multipath environments and extensions to remote source localization |
topic_facet |
Acoustics Source Localization Array Signal Processing Underwater Acoustics Blind Deconvolution Mechanical Engineering Engineering |
description |
In the ocean, the acoustic signal from a remote source recorded by an underwater hydrophone array is commonly distorted by multipath propagation. Blind deconvolution is the task of determining the source signal and the impulse response from array-recorded sounds when the source signal and the environment’s impulse response are both unknown. Synthetic time reversal (STR) is a passive blind deconvolution technique that accomplishes two remote sensing tasks. 1) It can be used to estimate the original source signal and the source-to-array impulse responses, and 2) it can be used to localize the remote source when some information is available about the acoustic environment. The performance of STR for both tasks is considered in this thesis. For the first task, simulations and underwater experiments (CAPEx09) have shown STR to be successful for 1.5-4 kHz broadcast signal. Here STR is successful when the signal-to-noise ratio is high enough, and the receiving array has sufficient aperture and element density so that conventional delay-and-sum beamforming can be used to distinguish ray-path-arrival directions. Also, an unconventional beamforming technique (frequency-difference beamforming) that manufactures frequency differences from the recorded signals has been developed. It allows STR to be successful with sparse array measurements where conventional beamforming fails. Broadband simulations and experimental data from the focused acoustic field experiment (FAF06) have been used to determine the performance of STR when combined with frequency-difference beamforming. For the source localization task, the STR-estimated impulse responses may be combined with ray-based back-propagation simulations and the environmental characteristics at the array into a computationally efficient scheme that localizes the remote sound source. These localization results from STR are less ambiguous than those obtained from conventional matched field processing in the same bandwidth. However, when the frequency of the recorded signals is sufficiently low and close to modal cutoff frequencies, STR-based source localization may fail because of dispersion in the environment. For such cases, an extension of mode-based STR has been developed for sound source ranging with a vertical array in a dispersive underwater sound channel using bowhead whale calls recorded with a 12-element vertical array (Arctic 2010). PHD Mechanical Engineering University of Michigan, Horace H. Rackham School of Graduate Studies http://deepblue.lib.umich.edu/bitstream/2027.42/102443/1/shimah_1.pdf |
author2 |
Dowling, David R. Wakefield, Gregory H. Grosh, Karl Johnsen, Eric Thode, Aaron M. |
format |
Thesis |
author |
Hossein Abadi, Shima |
author_facet |
Hossein Abadi, Shima |
author_sort |
Hossein Abadi, Shima |
title |
Blind deconvolution in multipath environments and extensions to remote source localization |
title_short |
Blind deconvolution in multipath environments and extensions to remote source localization |
title_full |
Blind deconvolution in multipath environments and extensions to remote source localization |
title_fullStr |
Blind deconvolution in multipath environments and extensions to remote source localization |
title_full_unstemmed |
Blind deconvolution in multipath environments and extensions to remote source localization |
title_sort |
blind deconvolution in multipath environments and extensions to remote source localization |
publishDate |
2013 |
url |
https://hdl.handle.net/2027.42/102443 |
geographic |
Arctic |
geographic_facet |
Arctic |
genre |
Arctic bowhead whale |
genre_facet |
Arctic bowhead whale |
op_relation |
https://hdl.handle.net/2027.42/102443 |
_version_ |
1766349561618497536 |