Authors
Rodrigo N Vasconcelos, André T Cunha Lima, Carlos AD Lentini, José Garcia V Miranda, Luís FF de Mendonça, José M Lopes, Mariana MM Santana, Elaine CB Cambuí, Deorgia TM Souza, Diego P Costa, Soltan G Duverger, Washington S Franca-Rocha
Publication date
2023/7/12
Source
Journal of Marine Science and Engineering
Volume
11
Issue
7
Pages
1406
Publisher
MDPI
Description
Oil spill detection and mapping using deep learning (OSDMDL) is crucial for assessing its impact on coastal and marine ecosystems. A novel approach was employed in this study to evaluate the scientific literature in this field through bibliometric analysis and literature review. The Scopus database was used to evaluate the relevant scientific literature in this field, followed by a bibliometric analysis to extract additional information, such as architecture type, country collaboration, and most cited papers. The findings highlight significant advancements in oil detection at sea, with a strong correlation between technological evolution in detection methods and improved remote sensing data acquisition. Multilayer perceptrons (MLP) emerged as the most prominent neural network architecture in 11 studies, followed by a convolutional neural network (CNN) in 5 studies. U-Net, DeepLabv3+, and fully convolutional network (FCN) were each used in three studies, demonstrating their relative significance too. The analysis provides insights into collaboration, interdisciplinarity, and research methodology and contributes to the development of more effective policies, strategies, and technologies for mitigating the environmental impact of oil spills in OSDMDL.
Total citations
Scholar articles
RN Vasconcelos, ATC Lima, CAD Lentini, JGV Miranda… - Journal of Marine Science and Engineering, 2023