Oil spill classification based on satellite image using deep learning techniques

Main Article Content

Abubakar Salihu Abba
https://orcid.org/0009-0001-7537-1549
Noorfa Haszlinna Mustaffa
https://orcid.org/0000-0002-1896-4591
Siti Zaiton Mohd Hashim
https://orcid.org/0000-0001-5122-7166
Razana Alwee
https://orcid.org/0009-0009-8115-4565

Abstract

 An oil spill is a leakage of pipelines, vessels, oil rigs, or tankers that leads to the release of petroleum products into the marine environment or on land that happened naturally or due to human action, which resulted in severe damages and financial loss. Satellite imagery is one of the powerful tools currently utilized for capturing and getting vital information from the Earth's surface. But the complexity and the vast amount of data make it challenging and time-consuming for humans to process. However, with the advancement of deep learning techniques, the processes are now computerized for finding vital information using real-time satellite images. This paper applied three deep-learning algorithms for satellite image classification, including ResNet50, VGG19, and InceptionV4; They were trained and tested on an open-source satellite image dataset to analyze the algorithms' efficiency and performance and correlated the classification accuracy, precisions, recall, and f1-score. The result shows that InceptionV4 gives the best classification accuracy of 97% for cloudy, desert, green areas, and water, followed by VGG19 with approximately 96% and ResNet50 with 93%. The findings proved that the InceptionV4 algorithm is suitable for classifying oil spills and no spill with satellite images on a validated dataset.

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Oil spill classification based on satellite image using deep learning techniques. Baghdad Sci.J [Internet]. 2024 Feb. 25 [cited 2024 Nov. 19];21(2(SI):0684. Available from: https://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/9767
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How to Cite

1.
Oil spill classification based on satellite image using deep learning techniques. Baghdad Sci.J [Internet]. 2024 Feb. 25 [cited 2024 Nov. 19];21(2(SI):0684. Available from: https://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/9767

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