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A Convolutional Neural Network with Spatial Location Integration for Nearshore Water Depth Inversion

Nearshore water depth plays a crucial role in scientific research, navigation management, coastal zone protection, and coastal disaster mitigation. This study aims to address the challenge of insufficient feature extraction from remote sensing data in nearshore water depth inversion. To achieve this...

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Autores principales: He, Chunlong, Jiang, Qigang, Tao, Guofang, Zhang, Zhenchao
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10610799/
https://www.ncbi.nlm.nih.gov/pubmed/37896586
http://dx.doi.org/10.3390/s23208493
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author He, Chunlong
Jiang, Qigang
Tao, Guofang
Zhang, Zhenchao
author_facet He, Chunlong
Jiang, Qigang
Tao, Guofang
Zhang, Zhenchao
author_sort He, Chunlong
collection PubMed
description Nearshore water depth plays a crucial role in scientific research, navigation management, coastal zone protection, and coastal disaster mitigation. This study aims to address the challenge of insufficient feature extraction from remote sensing data in nearshore water depth inversion. To achieve this, a convolutional neural network with spatial location integration (CNN-SLI) is proposed. The CNN-SLI is designed to extract deep features from remote sensing data by considering the spatial dimension. In this approach, the spatial location information of pixels is utilized as two additional channels, which are concatenated with the input feature image. The resulting concatenated image data are then used as the input for the convolutional neural network. Using GF-6 remote sensing images and measured water depth data from electronic nautical charts, a nearshore water depth inversion experiment was conducted in the waters near Nanshan Port. The results of the proposed method were compared with those of the Lyzenga, MLP, and CNN models. The CNN-SLI model demonstrated outstanding performance in water depth inversion, with impressive metrics: an RMSE of 1.34 m, MAE of 0.94 m, and R(2) of 0.97. It outperformed all other models in terms of overall inversion accuracy and regression fit. Regardless of the water depth intervals, CNN-SLI consistently achieved the lowest RMSE and MAE values, indicating excellent performance in both shallow and deep waters. Comparative analysis with Kriging confirmed that the CNN-SLI model best matched the interpolated water depth, further establishing its superiority over the Lyzenga, MLP, and CNN models. Notably, in this study area, the CNN-SLI model exhibited significant performance advantages when trained with at least 250 samples, resulting in optimal inversion results. Accuracy evaluation on an independent dataset shows that the CNN-SLI model has better generalization ability than the Lyzenga, MLP, and CNN models under different conditions. These results demonstrate the superiority of CNN-SLI for nearshore water depth inversion and highlight the importance of integrating spatial location information into convolutional neural networks for improved performance.
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spelling pubmed-106107992023-10-28 A Convolutional Neural Network with Spatial Location Integration for Nearshore Water Depth Inversion He, Chunlong Jiang, Qigang Tao, Guofang Zhang, Zhenchao Sensors (Basel) Article Nearshore water depth plays a crucial role in scientific research, navigation management, coastal zone protection, and coastal disaster mitigation. This study aims to address the challenge of insufficient feature extraction from remote sensing data in nearshore water depth inversion. To achieve this, a convolutional neural network with spatial location integration (CNN-SLI) is proposed. The CNN-SLI is designed to extract deep features from remote sensing data by considering the spatial dimension. In this approach, the spatial location information of pixels is utilized as two additional channels, which are concatenated with the input feature image. The resulting concatenated image data are then used as the input for the convolutional neural network. Using GF-6 remote sensing images and measured water depth data from electronic nautical charts, a nearshore water depth inversion experiment was conducted in the waters near Nanshan Port. The results of the proposed method were compared with those of the Lyzenga, MLP, and CNN models. The CNN-SLI model demonstrated outstanding performance in water depth inversion, with impressive metrics: an RMSE of 1.34 m, MAE of 0.94 m, and R(2) of 0.97. It outperformed all other models in terms of overall inversion accuracy and regression fit. Regardless of the water depth intervals, CNN-SLI consistently achieved the lowest RMSE and MAE values, indicating excellent performance in both shallow and deep waters. Comparative analysis with Kriging confirmed that the CNN-SLI model best matched the interpolated water depth, further establishing its superiority over the Lyzenga, MLP, and CNN models. Notably, in this study area, the CNN-SLI model exhibited significant performance advantages when trained with at least 250 samples, resulting in optimal inversion results. Accuracy evaluation on an independent dataset shows that the CNN-SLI model has better generalization ability than the Lyzenga, MLP, and CNN models under different conditions. These results demonstrate the superiority of CNN-SLI for nearshore water depth inversion and highlight the importance of integrating spatial location information into convolutional neural networks for improved performance. MDPI 2023-10-16 /pmc/articles/PMC10610799/ /pubmed/37896586 http://dx.doi.org/10.3390/s23208493 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
He, Chunlong
Jiang, Qigang
Tao, Guofang
Zhang, Zhenchao
A Convolutional Neural Network with Spatial Location Integration for Nearshore Water Depth Inversion
title A Convolutional Neural Network with Spatial Location Integration for Nearshore Water Depth Inversion
title_full A Convolutional Neural Network with Spatial Location Integration for Nearshore Water Depth Inversion
title_fullStr A Convolutional Neural Network with Spatial Location Integration for Nearshore Water Depth Inversion
title_full_unstemmed A Convolutional Neural Network with Spatial Location Integration for Nearshore Water Depth Inversion
title_short A Convolutional Neural Network with Spatial Location Integration for Nearshore Water Depth Inversion
title_sort convolutional neural network with spatial location integration for nearshore water depth inversion
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10610799/
https://www.ncbi.nlm.nih.gov/pubmed/37896586
http://dx.doi.org/10.3390/s23208493
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