Novel Learning of Bathymetry from Landsat 9 Imagery Using Machine Learning, Feature Extraction and Meta-Heuristic Optimization in a Shallow Turbid Lagoon
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Published:2024-05-11
Issue:5
Volume:14
Page:130
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ISSN:2076-3263
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Container-title:Geosciences
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language:en
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Short-container-title:Geosciences
Author:
Tran Hang Thi Thuy1, Nguyen Quang Hao23ORCID, Pham Ty Huu4, Ngo Giang Thi Huong1, Pham Nho Tran Dinh5, Pham Tung Gia6ORCID, Tran Chau Thi Minh4, Ha Thang Nam1
Affiliation:
1. Faculty of Fisheries, University of Agriculture and Forestry, Hue University, 102 Phung Hung Street, Hue City 530000, Vietnam 2. Laboratory of Environmental Sciences and Climate Change, Institute for Computational Science and Artificial Intelligence, Van Lang University, Ho Chi Minh City 70000, Vietnam 3. Faculty of Environment, School of Technology, Van Lang University, Ho Chi Minh City 70000, Vietnam 4. Faculty of Land Resources and Agricultural Environment, University of Agriculture and Forestry, Hue University, 102 Phung Hung Street, Hue City 530000, Vietnam 5. Research Institute for Marine Fisheries, Hai Phong City 180000, Vietnam 6. International School, Hue University, Hue City 530000, Vietnam
Abstract
Bathymetry data is indispensable for a variety of aquatic field studies and benthic resource inventories. Determining water depth can be accomplished through an echo sounding system or remote estimation utilizing space-borne and air-borne data across diverse environments, such as lakes, rivers, seas, or lagoons. Despite being a common option for bathymetry mapping, the use of satellite imagery faces challenges due to the complex inherent optical properties of water bodies (e.g., turbid water), satellite spatial resolution limitations, and constraints in the performance of retrieval models. This study focuses on advancing the remote sensing based method by harnessing the non-linear learning capabilities of the machine learning (ML) model, employing advanced feature selection through a meta-heuristic algorithm, and using image extraction techniques (i.e., band ratio, gray scale morphological operation, and morphological multi-scale decomposition). Herein, we validate the predictive capabilities of six ML models: Random Forest (RF), Support Vector Machine (SVM), CatBoost (CB), Extreme Gradient Boost (XGB), Light Gradient Boosting Machine (LGBM), and KTBoost (KTB) models, both with and without the application of meta-heuristic optimization (i.e., Dragon Fly, Particle Swarm Optimization, and Grey Wolf Optimization), to accurately ascertain water depth. This is achieved using a diverse input dataset derived from multi-spectral Landsat 9 imagery captured on a cloud-free day (19 September 2023) in a shallow, turbid lagoon. Our findings indicate the superior performance of LGBM coupled with Particle Swamp Optimization (R2 = 0.908, RMSE = 0.31 m), affirming the consistency and reliability of the feature extraction and selection-based framework, while offering novel insights into the expansion of bathymetric mapping in complex aquatic environments.
Reference68 articles.
1. The Use of Bathymetric Data in Society and Science: A Review from the Baltic Sea;Hell;AMBIO,2012 2. Duplančić Leder, T., Baučić, M., Leder, N., and Gilić, F. (2023). Optical Satellite-Derived Bathymetry: An Overview and WoS and Scopus Bibliometric Analysis. Remote Sens., 15. 3. Exploring Modern Bathymetry: A Comprehensive Review of Data Acquisition Devices, Model Accuracy, and Interpolation Techniques for Enhanced Underwater Mapping;Li;Front. Mar. Sci.,2023 4. Mohammadloo, T.H., Snellen, M., and Simons, D.G. (2020). Assessing the Performance of the Multi-Beam Echo-Sounder Bathymetric Uncertainty Prediction Model. Appl. Sci., 10. 5. Ni, H., Wang, W., Ren, Q., Lu, L., Wu, J., and Ma, L. (2019, January 27–31). Comparison of Single-Beam and Multibeam Sonar Systems for Sediment Characterization: Results from Shallow Water Experiment. Proceedings of the OCEANS 2019 MTS/IEEE SEATTLE, Seattle, WA, USA.
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