A VGGNet-Based Method for Refined Bathymetry from Satellite Altimetry to Reduce Errors
-
Published:2022-11-24
Issue:23
Volume:14
Page:5939
-
ISSN:2072-4292
-
Container-title:Remote Sensing
-
language:en
-
Short-container-title:Remote Sensing
Author:
Chen Xiaolun,Luo Xiaowen,Wu Ziyin,Qin Xiaoming,Shang Jihong,Li Bin,Wang Mingwei,Wan Hongyang
Abstract
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.
Funder
National Natural Science Foundation of China
National Key Research and Development Program of China
Open Fund of the East China Coastal Field Scientific Observation and Research Station of the Ministry of Natural Resources
Deep Blue Project of Shanghai Jiao Tong University
Tumen River estuary, Central-level public wel-fare research institutes
Zhejiang Provincial Project
Subject
General Earth and Planetary Sciences
Reference47 articles.
1. Detection of changes in ridge-crest morphology using repeated multibeam sonar surveys;J. Geophys. Res. Solid Earth,1992
2. Wu, Y. (2001). A Study on Multi-Beam Sounding System Seafloor Tracking & Data Processing Techniques. [Ph.D. Thesis, Harbin Engineering University].
3. Accounting for uncertainty in volumes of seabed change measured with repeat multibeam sonar surveys;Cont. Shelf Res.,2015
4. Multibeam Echosounder Versus Side Scan Object Detection: A Comparative Analysis;Hydrograph,2006
5. Ji, X. (2017). Classification of Seabed Sediment and Terrain Complexity Based on Multibeam Data. [Master’s Thesis, First Institute of Oceanography, Ministry of Natural Resources].
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献