A VGGNet-Based Method for Refined Bathymetry from Satellite Altimetry to Reduce Errors

Only approximately 20% of the global seafloor topography has been finely modeled. The rest either lacks data or its data are not accurate enough to meet practical requirements. On the one hand, the satellite altimeter has the advantages of large-scale and real-time observation. Therefore, it is wide...

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Published in:Remote Sensing
Main Authors: Xiaolun Chen, Xiaowen Luo, Ziyin Wu, Xiaoming Qin, Jihong Shang, Bin Li, Mingwei Wang, Hongyang Wan
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2022
Subjects:
Online Access:https://doi.org/10.3390/rs14235939
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spelling ftmdpi:oai:mdpi.com:/2072-4292/14/23/5939/ 2023-08-20T04:09:58+02:00 A VGGNet-Based Method for Refined Bathymetry from Satellite Altimetry to Reduce Errors Xiaolun Chen Xiaowen Luo Ziyin Wu Xiaoming Qin Jihong Shang Bin Li Mingwei Wang Hongyang Wan agris 2022-11-24 application/pdf https://doi.org/10.3390/rs14235939 EN eng Multidisciplinary Digital Publishing Institute Satellite Missions for Earth and Planetary Exploration https://dx.doi.org/10.3390/rs14235939 https://creativecommons.org/licenses/by/4.0/ Remote Sensing; Volume 14; Issue 23; Pages: 5939 seafloor topography inversion bathymetry multibeam sonar satellite altimetry VGGNet Text 2022 ftmdpi https://doi.org/10.3390/rs14235939 2023-08-01T07:29:09Z Only approximately 20% of the global seafloor topography has been finely modeled. The rest either lacks data or its data are not accurate enough to meet practical requirements. On the one hand, the satellite altimeter has the advantages of large-scale and real-time observation. Therefore, it is widely used to measure bathymetry, the core of seafloor topography. However, there is often room to improve its precision. Multibeam sonar bathymetry is more precise but generally limited to a smaller coverage, so it is in a complementary relationship with the satellite-derived bathymetry. To combine the advantages of satellite altimetry-derived and multibeam sonar-derived bathymetry, we apply deep learning to perform multibeam sonar-based bathymetry correction for satellite altimetry bathymetry data. Specifically, we modify a pretrained VGGNet neural network model to train on three sets of bathymetry data from the West Pacific, Southern Ocean, and East Pacific. Experiments show that the correlation of bathymetry data before and after correction can reach a high level, with the performance of R2 being as high as 0.81, and the normalized root-mean-square deviation (NRMSE) improved by over 19% compared with previous research. We then explore the relationship between R2 and water depth and conclude that it varies at different depths. Thus, the terrain specificity is a factor that affects the precision of the correction. Finally, we apply the difference in water depth before and after the correction for evaluation and find that our method can improve by more than 17% compared with previous research. The results show that the VGGNet model can perform better correction to the bathymetry data. Hence, we provide a novel method for accurate modeling of the seafloor topography. Text Southern Ocean MDPI Open Access Publishing Southern Ocean Pacific Remote Sensing 14 23 5939
institution Open Polar
collection MDPI Open Access Publishing
op_collection_id ftmdpi
language English
topic seafloor topography inversion
bathymetry
multibeam sonar
satellite altimetry
VGGNet
spellingShingle seafloor topography inversion
bathymetry
multibeam sonar
satellite altimetry
VGGNet
Xiaolun Chen
Xiaowen Luo
Ziyin Wu
Xiaoming Qin
Jihong Shang
Bin Li
Mingwei Wang
Hongyang Wan
A VGGNet-Based Method for Refined Bathymetry from Satellite Altimetry to Reduce Errors
topic_facet seafloor topography inversion
bathymetry
multibeam sonar
satellite altimetry
VGGNet
description Only approximately 20% of the global seafloor topography has been finely modeled. The rest either lacks data or its data are not accurate enough to meet practical requirements. On the one hand, the satellite altimeter has the advantages of large-scale and real-time observation. Therefore, it is widely used to measure bathymetry, the core of seafloor topography. However, there is often room to improve its precision. Multibeam sonar bathymetry is more precise but generally limited to a smaller coverage, so it is in a complementary relationship with the satellite-derived bathymetry. To combine the advantages of satellite altimetry-derived and multibeam sonar-derived bathymetry, we apply deep learning to perform multibeam sonar-based bathymetry correction for satellite altimetry bathymetry data. Specifically, we modify a pretrained VGGNet neural network model to train on three sets of bathymetry data from the West Pacific, Southern Ocean, and East Pacific. Experiments show that the correlation of bathymetry data before and after correction can reach a high level, with the performance of R2 being as high as 0.81, and the normalized root-mean-square deviation (NRMSE) improved by over 19% compared with previous research. We then explore the relationship between R2 and water depth and conclude that it varies at different depths. Thus, the terrain specificity is a factor that affects the precision of the correction. Finally, we apply the difference in water depth before and after the correction for evaluation and find that our method can improve by more than 17% compared with previous research. The results show that the VGGNet model can perform better correction to the bathymetry data. Hence, we provide a novel method for accurate modeling of the seafloor topography.
format Text
author Xiaolun Chen
Xiaowen Luo
Ziyin Wu
Xiaoming Qin
Jihong Shang
Bin Li
Mingwei Wang
Hongyang Wan
author_facet Xiaolun Chen
Xiaowen Luo
Ziyin Wu
Xiaoming Qin
Jihong Shang
Bin Li
Mingwei Wang
Hongyang Wan
author_sort Xiaolun Chen
title A VGGNet-Based Method for Refined Bathymetry from Satellite Altimetry to Reduce Errors
title_short A VGGNet-Based Method for Refined Bathymetry from Satellite Altimetry to Reduce Errors
title_full A VGGNet-Based Method for Refined Bathymetry from Satellite Altimetry to Reduce Errors
title_fullStr A VGGNet-Based Method for Refined Bathymetry from Satellite Altimetry to Reduce Errors
title_full_unstemmed A VGGNet-Based Method for Refined Bathymetry from Satellite Altimetry to Reduce Errors
title_sort vggnet-based method for refined bathymetry from satellite altimetry to reduce errors
publisher Multidisciplinary Digital Publishing Institute
publishDate 2022
url https://doi.org/10.3390/rs14235939
op_coverage agris
geographic Southern Ocean
Pacific
geographic_facet Southern Ocean
Pacific
genre Southern Ocean
genre_facet Southern Ocean
op_source Remote Sensing; Volume 14; Issue 23; Pages: 5939
op_relation Satellite Missions for Earth and Planetary Exploration
https://dx.doi.org/10.3390/rs14235939
op_rights https://creativecommons.org/licenses/by/4.0/
op_doi https://doi.org/10.3390/rs14235939
container_title Remote Sensing
container_volume 14
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