Enhancing Water Depth Estimation from Satellite Images Using Online Machine Learning: A Case Study Using Baidu Easy-DL with Acoustic Bathymetry and Sentinel-2 Data

Author:

Wu Zhongqiang12ORCID,Wu Shulei1,Yang Haixia3,Mao Zhihua2ORCID,Shen Wei45

Affiliation:

1. School of Information Science and Technology, Hainan Normal University, Haikou 571158, China

2. States Key Laboratory of Satellite Ocean Environment Dynamics, Second Institute of Oceanography, State Oceanic Administration, Hangzhou 310012, China

3. China Siwei Surveying and Mapping Technology Co., Ltd., Beijing 100048, China

4. School of Marine Science, Shanghai Ocean University, Shanghai 201306, China

5. Marine Surveying and Mapping Engineering and Technology Research Center, Shanghai 201306, China

Abstract

Water depth estimation is paramount in various domains, including navigation, environmental monitoring, and resource management. Traditional depth measurement methods, such as bathymetry, can often be expensive and time-consuming, especially in remote or inaccessible areas. This study delves into the application of machine learning techniques, specifically focusing on the Baidu Easy DL model for water depth estimation leveraging satellite imagery. Utilizing Sentinel-2 satellite data over Rushikonda Beach in India and processing it into remote sensing reflectance using ACOLITE software, this research compares the performance of several machine learning algorithms, including the Stumpf model, Log-Linear model, and the Baidu Easy DL model, for accurate depth estimation. The results indicate that the Easy-DL model outperforms traditional methods, particularly excelling in the 0–11 m depth range. This study showcases the substantial potential of machine learning in remote sensing, offering robust water depth estimates, even in complex coastal environments. Furthermore, it underscores the critical role of comprehensive training datasets and ensemble learning techniques in enhancing accuracy. This research opens avenues for the further exploration of machine learning applications in remote sensing and highlights the promising prospects of online model APIs when streamlining remote sensing data processing.

Funder

Hainan Natural Science Foundation of China

National Natural Science Foundation of China

2023 Hainan Province “South China Sea New Star” Science and Technology Innovation Talent Platform Project

Teaching Reform Research Project, Hainan Normal University

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference24 articles.

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4. Discrimination Between Dry and Water Ices by Full Polarimetric Radar: Implications for China’s First Martian Exploration;Liu;IEEE Trans. Geosci. Remote Sens.,2022

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