Lighting enhancement of underwater image using coronavirus herd immunity optimizer
Recently, the technology of Underwater computer vision has played a vital role by improving the quality of underwater images owing to its significance in different applications in marines, such as military, resource development, biological research, and underwater environmental assessments. Moreover...
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my.uniten.dspace-367552025-03-03T15:44:26Z Lighting enhancement of underwater image using coronavirus herd immunity optimizer Alyasseri Z.A.A. Ghalib R. Jamil N. Mohammed H.J. Ali N. Ali N.S. Al-Wesabi F.N. Assiri M. 57862594800 58654292500 36682671900 57202657688 54985243500 56693765600 57211901842 57219344932 Computer vision Deep learning Energy efficiency Environmental technology Image enhancement Image reconstruction Military applications Military photography Quality control Restoration Biological research CHIO Coronaviruses Herd immunities Metahurstic algorithm Military resources Optimizers Resource development Underwater computer vision Underwater image enhancements Coronavirus Recently, the technology of Underwater computer vision has played a vital role by improving the quality of underwater images owing to its significance in different applications in marines, such as military, resource development, biological research, and underwater environmental assessments. Moreover, light is absorbed and scattered while propagating through water, leading to color distortion. Additionally, floating micro-particles in the water contribute to low image contrast, resulting in blurry and poorly lit underwater images with a color cast. Therefore, many researchers have been attracted to developing diverse computer vision-based methods to improve the quality of underwater images, such as restoration, enhancement, and deep-learning techniques to restore and enhance degraded underwater images. Although numerous studies have attempted to address these issues, there is still much room for improvement in the quality of the produced images. To this end, this paper proposes a new enhancement method to improve underwater image quality. The presented approach utilizes the Coronavirus herd immunity optimizer algorithm for underwater image enhancement (CHIO-UIE) and is evaluated using standard measures on public datasets. The empirical results demonstrate that the CHIO-UIE method enhances the quality of images based on qualitative and quantitative evaluations, successfully improving underwater images with low contrast and light by significantly enhancing the visual impact of distorted underwater images across various underwater environments. ? 2024 The Authors Final 2025-03-03T07:44:26Z 2025-03-03T07:44:26Z 2024 Article 10.1016/j.aej.2024.01.009 2-s2.0-85185507865 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85185507865&doi=10.1016%2fj.aej.2024.01.009&partnerID=40&md5=c628267325b5a6b27c15e86591a8322e https://irepository.uniten.edu.my/handle/123456789/36755 91 115 125 All Open Access; Gold Open Access Elsevier B.V. Scopus |
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Computer vision Deep learning Energy efficiency Environmental technology Image enhancement Image reconstruction Military applications Military photography Quality control Restoration Biological research CHIO Coronaviruses Herd immunities Metahurstic algorithm Military resources Optimizers Resource development Underwater computer vision Underwater image enhancements Coronavirus |
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Computer vision Deep learning Energy efficiency Environmental technology Image enhancement Image reconstruction Military applications Military photography Quality control Restoration Biological research CHIO Coronaviruses Herd immunities Metahurstic algorithm Military resources Optimizers Resource development Underwater computer vision Underwater image enhancements Coronavirus Alyasseri Z.A.A. Ghalib R. Jamil N. Mohammed H.J. Ali N. Ali N.S. Al-Wesabi F.N. Assiri M. Lighting enhancement of underwater image using coronavirus herd immunity optimizer |
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Recently, the technology of Underwater computer vision has played a vital role by improving the quality of underwater images owing to its significance in different applications in marines, such as military, resource development, biological research, and underwater environmental assessments. Moreover, light is absorbed and scattered while propagating through water, leading to color distortion. Additionally, floating micro-particles in the water contribute to low image contrast, resulting in blurry and poorly lit underwater images with a color cast. Therefore, many researchers have been attracted to developing diverse computer vision-based methods to improve the quality of underwater images, such as restoration, enhancement, and deep-learning techniques to restore and enhance degraded underwater images. Although numerous studies have attempted to address these issues, there is still much room for improvement in the quality of the produced images. To this end, this paper proposes a new enhancement method to improve underwater image quality. The presented approach utilizes the Coronavirus herd immunity optimizer algorithm for underwater image enhancement (CHIO-UIE) and is evaluated using standard measures on public datasets. The empirical results demonstrate that the CHIO-UIE method enhances the quality of images based on qualitative and quantitative evaluations, successfully improving underwater images with low contrast and light by significantly enhancing the visual impact of distorted underwater images across various underwater environments. ? 2024 The Authors |
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57862594800 |
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57862594800 Alyasseri Z.A.A. Ghalib R. Jamil N. Mohammed H.J. Ali N. Ali N.S. Al-Wesabi F.N. Assiri M. |
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Article |
author |
Alyasseri Z.A.A. Ghalib R. Jamil N. Mohammed H.J. Ali N. Ali N.S. Al-Wesabi F.N. Assiri M. |
author_sort |
Alyasseri Z.A.A. |
title |
Lighting enhancement of underwater image using coronavirus herd immunity optimizer |
title_short |
Lighting enhancement of underwater image using coronavirus herd immunity optimizer |
title_full |
Lighting enhancement of underwater image using coronavirus herd immunity optimizer |
title_fullStr |
Lighting enhancement of underwater image using coronavirus herd immunity optimizer |
title_full_unstemmed |
Lighting enhancement of underwater image using coronavirus herd immunity optimizer |
title_sort |
lighting enhancement of underwater image using coronavirus herd immunity optimizer |
publisher |
Elsevier B.V. |
publishDate |
2025 |
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1825816074109583360 |
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13.244109 |