Cargando…

A New Method for Training CycleGAN to Enhance Images of Cold Seeps in the Qiongdongnan Sea

Clear underwater images can help researchers detect cold seeps, gas hydrates, and biological resources. However, the quality of these images suffers from nonuniform lighting, a limited range of visibility, and unwanted signals. CycleGAN has been broadly studied in regard to underwater image enhancem...

Descripción completa

Detalles Bibliográficos
Autores principales: Li, Yuanheng, Yang, Shengxiong, Gong, Yuehua, Cao, Jingya, Hu, Guang, Deng, Yutian, Tian, Dongmei, Zhou, Junming
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9919589/
https://www.ncbi.nlm.nih.gov/pubmed/36772779
http://dx.doi.org/10.3390/s23031741
_version_ 1784886860035653632
author Li, Yuanheng
Yang, Shengxiong
Gong, Yuehua
Cao, Jingya
Hu, Guang
Deng, Yutian
Tian, Dongmei
Zhou, Junming
author_facet Li, Yuanheng
Yang, Shengxiong
Gong, Yuehua
Cao, Jingya
Hu, Guang
Deng, Yutian
Tian, Dongmei
Zhou, Junming
author_sort Li, Yuanheng
collection PubMed
description Clear underwater images can help researchers detect cold seeps, gas hydrates, and biological resources. However, the quality of these images suffers from nonuniform lighting, a limited range of visibility, and unwanted signals. CycleGAN has been broadly studied in regard to underwater image enhancement, but it is difficult to apply the model for the further detection of Haima cold seeps in the South China Sea because the model can be difficult to train if the dataset used is not appropriate. In this article, we devise a new method of building a dataset using MSRCR and choose the best images based on the widely used UIQM scheme to build the dataset. The experimental results show that a good CycleGAN could be trained with the dataset using the proposed method. The model has good potential for applications in detecting the Haima cold seeps and can be applied to other cold seeps, such as the cold seeps in the North Sea. We conclude that the method used for building the dataset can be applied to train CycleGAN when enhancing images from cold seeps.
format Online
Article
Text
id pubmed-9919589
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-99195892023-02-12 A New Method for Training CycleGAN to Enhance Images of Cold Seeps in the Qiongdongnan Sea Li, Yuanheng Yang, Shengxiong Gong, Yuehua Cao, Jingya Hu, Guang Deng, Yutian Tian, Dongmei Zhou, Junming Sensors (Basel) Article Clear underwater images can help researchers detect cold seeps, gas hydrates, and biological resources. However, the quality of these images suffers from nonuniform lighting, a limited range of visibility, and unwanted signals. CycleGAN has been broadly studied in regard to underwater image enhancement, but it is difficult to apply the model for the further detection of Haima cold seeps in the South China Sea because the model can be difficult to train if the dataset used is not appropriate. In this article, we devise a new method of building a dataset using MSRCR and choose the best images based on the widely used UIQM scheme to build the dataset. The experimental results show that a good CycleGAN could be trained with the dataset using the proposed method. The model has good potential for applications in detecting the Haima cold seeps and can be applied to other cold seeps, such as the cold seeps in the North Sea. We conclude that the method used for building the dataset can be applied to train CycleGAN when enhancing images from cold seeps. MDPI 2023-02-03 /pmc/articles/PMC9919589/ /pubmed/36772779 http://dx.doi.org/10.3390/s23031741 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
Li, Yuanheng
Yang, Shengxiong
Gong, Yuehua
Cao, Jingya
Hu, Guang
Deng, Yutian
Tian, Dongmei
Zhou, Junming
A New Method for Training CycleGAN to Enhance Images of Cold Seeps in the Qiongdongnan Sea
title A New Method for Training CycleGAN to Enhance Images of Cold Seeps in the Qiongdongnan Sea
title_full A New Method for Training CycleGAN to Enhance Images of Cold Seeps in the Qiongdongnan Sea
title_fullStr A New Method for Training CycleGAN to Enhance Images of Cold Seeps in the Qiongdongnan Sea
title_full_unstemmed A New Method for Training CycleGAN to Enhance Images of Cold Seeps in the Qiongdongnan Sea
title_short A New Method for Training CycleGAN to Enhance Images of Cold Seeps in the Qiongdongnan Sea
title_sort new method for training cyclegan to enhance images of cold seeps in the qiongdongnan sea
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9919589/
https://www.ncbi.nlm.nih.gov/pubmed/36772779
http://dx.doi.org/10.3390/s23031741
work_keys_str_mv AT liyuanheng anewmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT yangshengxiong anewmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT gongyuehua anewmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT caojingya anewmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT huguang anewmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT dengyutian anewmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT tiandongmei anewmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT zhoujunming anewmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT liyuanheng newmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT yangshengxiong newmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT gongyuehua newmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT caojingya newmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT huguang newmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT dengyutian newmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT tiandongmei newmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea
AT zhoujunming newmethodfortrainingcyclegantoenhanceimagesofcoldseepsintheqiongdongnansea