Super Resolution by Deep Learning Improves Boulder Detection in Side Scan Sonar Backscatter Mosaics
In marine habitat mapping, a demand exists for high-resolution maps of the seafloor both for marine spatial planning and research. One topic of interest is the detection of boulders in side scan sonar backscatter mosaics of continental shelf seas. Boulders are oftentimes numerous, but encompass few...
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Online Access: | https://www.mdpi.com/2072-4292/12/14/2284 |
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doaj-ab9e16de848946929789498bb733ceb32020-11-25T02:35:48ZengMDPI AGRemote Sensing2072-42922020-07-01122284228410.3390/rs12142284Super Resolution by Deep Learning Improves Boulder Detection in Side Scan Sonar Backscatter MosaicsPeter Feldens0Leibniz Institute for Baltic Sea Research Warnemünde, Seestrasse 15, 18119 Warnemünde, GermanyIn marine habitat mapping, a demand exists for high-resolution maps of the seafloor both for marine spatial planning and research. One topic of interest is the detection of boulders in side scan sonar backscatter mosaics of continental shelf seas. Boulders are oftentimes numerous, but encompass few pixels in backscatter mosaics. Therefore, both their automatic and manual detection is difficult. In this study, located in the German Baltic Sea, the use of super resolution by deep learning to improve the manual and automatic detection of boulders in backscatter mosaics is explored. It is found that upscaling of mosaics by a factor of 2 to 0.25 m or 0.125 m resolution increases the performance of small boulder detection and boulder density grids. Upscaling mosaics with 1.0 m pixel resolution by a factor of 4 improved performance, but the results are not sufficient for practical application. It is suggested that mosaics of 0.5 m resolution can be used to create boulder density grids in the Baltic Sea in line with current standards following upscaling.https://www.mdpi.com/2072-4292/12/14/2284habitat mappinghydroacousticsboulder detectionneural networkBaltic Seadeep learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Peter Feldens |
spellingShingle |
Peter Feldens Super Resolution by Deep Learning Improves Boulder Detection in Side Scan Sonar Backscatter Mosaics Remote Sensing habitat mapping hydroacoustics boulder detection neural network Baltic Sea deep learning |
author_facet |
Peter Feldens |
author_sort |
Peter Feldens |
title |
Super Resolution by Deep Learning Improves Boulder Detection in Side Scan Sonar Backscatter Mosaics |
title_short |
Super Resolution by Deep Learning Improves Boulder Detection in Side Scan Sonar Backscatter Mosaics |
title_full |
Super Resolution by Deep Learning Improves Boulder Detection in Side Scan Sonar Backscatter Mosaics |
title_fullStr |
Super Resolution by Deep Learning Improves Boulder Detection in Side Scan Sonar Backscatter Mosaics |
title_full_unstemmed |
Super Resolution by Deep Learning Improves Boulder Detection in Side Scan Sonar Backscatter Mosaics |
title_sort |
super resolution by deep learning improves boulder detection in side scan sonar backscatter mosaics |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2020-07-01 |
description |
In marine habitat mapping, a demand exists for high-resolution maps of the seafloor both for marine spatial planning and research. One topic of interest is the detection of boulders in side scan sonar backscatter mosaics of continental shelf seas. Boulders are oftentimes numerous, but encompass few pixels in backscatter mosaics. Therefore, both their automatic and manual detection is difficult. In this study, located in the German Baltic Sea, the use of super resolution by deep learning to improve the manual and automatic detection of boulders in backscatter mosaics is explored. It is found that upscaling of mosaics by a factor of 2 to 0.25 m or 0.125 m resolution increases the performance of small boulder detection and boulder density grids. Upscaling mosaics with 1.0 m pixel resolution by a factor of 4 improved performance, but the results are not sufficient for practical application. It is suggested that mosaics of 0.5 m resolution can be used to create boulder density grids in the Baltic Sea in line with current standards following upscaling. |
topic |
habitat mapping hydroacoustics boulder detection neural network Baltic Sea deep learning |
url |
https://www.mdpi.com/2072-4292/12/14/2284 |
work_keys_str_mv |
AT peterfeldens superresolutionbydeeplearningimprovesboulderdetectioninsidescansonarbackscattermosaics |
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