Adaptive Deep Learning Detection Model for Multi-Foggy Images
The fog has different features and effects within every single environment. Detection whether there is fog in the image is considered a challenge and giving the type of fog has a substantial enlightening effect on image defogging. Foggy scenes have different types such as scenes based on fog density...
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my.uniten.dspace-270512023-05-29T17:39:03Z Adaptive Deep Learning Detection Model for Multi-Foggy Images Arif Z.H. Mahmoud M.A. Abdulkareem K.H. Kadry S. Mohammed M.A. Al-Mhiqani M.N. Al-Waisy A.S. Nedoma J. 57350531200 55247787300 57197854295 55906598300 57192089894 57197853907 57188925513 57014879400 The fog has different features and effects within every single environment. Detection whether there is fog in the image is considered a challenge and giving the type of fog has a substantial enlightening effect on image defogging. Foggy scenes have different types such as scenes based on fog density level and scenes based on fog type. Machine learning techniques have a significant contribution to the detection of foggy scenes. However, most of the existing detection models are based on traditional machine learning models, and only a few studies have adopted deep learning models. Furthermore, most of the existing machines learning detection models are based on fog density-level scenes. However, to the best of our knowledge, there is no such detection model based on multi-fog type scenes have presented yet. Therefore, the main goal of our study is to propose an adaptive deep learning model for the detection of multi-fog types of images. Moreover, due to the lack of a publicly available dataset for inhomogeneous, homogenous, dark, and sky foggy scenes, a dataset for multi-fog scenes is presented in this study (https://github.com/Karrar-H-Abdulkareem/Multi-Fog-Dataset). Experiments were conducted in three stages. First, the data collection phase is based on eight resources to obtain the multi-fog scene dataset. Second, a classification experiment is conducted based on the ResNet-50 deep learning model to obtain detection results. Third, evaluation phase where the performance of the ResNet-50 detection model has been compared against three different models. Experimental results show that the proposed model has presented a stable classification performance for different foggy images with a 96% score for each of Classification Accuracy Rate (CAR), Recall, Precision, F1-Score which has specific theoretical and practical significance. Our proposed model is suitable as a pre-processing step and might be considered in different real-time applications. � 2022, Universidad Internacional de la Rioja. All rights reserved. Final 2023-05-29T09:39:02Z 2023-05-29T09:39:02Z 2022 Article 10.9781/ijimai.2022.11.008 2-s2.0-85143626658 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85143626658&doi=10.9781%2fijimai.2022.11.008&partnerID=40&md5=1dc4018fa013e691d42bd7eab005b197 https://irepository.uniten.edu.my/handle/123456789/27051 7 7 26 37 All Open Access, Gold, Green Universidad Internacional de la Rioja Scopus |
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The fog has different features and effects within every single environment. Detection whether there is fog in the image is considered a challenge and giving the type of fog has a substantial enlightening effect on image defogging. Foggy scenes have different types such as scenes based on fog density level and scenes based on fog type. Machine learning techniques have a significant contribution to the detection of foggy scenes. However, most of the existing detection models are based on traditional machine learning models, and only a few studies have adopted deep learning models. Furthermore, most of the existing machines learning detection models are based on fog density-level scenes. However, to the best of our knowledge, there is no such detection model based on multi-fog type scenes have presented yet. Therefore, the main goal of our study is to propose an adaptive deep learning model for the detection of multi-fog types of images. Moreover, due to the lack of a publicly available dataset for inhomogeneous, homogenous, dark, and sky foggy scenes, a dataset for multi-fog scenes is presented in this study (https://github.com/Karrar-H-Abdulkareem/Multi-Fog-Dataset). Experiments were conducted in three stages. First, the data collection phase is based on eight resources to obtain the multi-fog scene dataset. Second, a classification experiment is conducted based on the ResNet-50 deep learning model to obtain detection results. Third, evaluation phase where the performance of the ResNet-50 detection model has been compared against three different models. Experimental results show that the proposed model has presented a stable classification performance for different foggy images with a 96% score for each of Classification Accuracy Rate (CAR), Recall, Precision, F1-Score which has specific theoretical and practical significance. Our proposed model is suitable as a pre-processing step and might be considered in different real-time applications. � 2022, Universidad Internacional de la Rioja. All rights reserved. |
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57350531200 Arif Z.H. Mahmoud M.A. Abdulkareem K.H. Kadry S. Mohammed M.A. Al-Mhiqani M.N. Al-Waisy A.S. Nedoma J. |
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Arif Z.H. Mahmoud M.A. Abdulkareem K.H. Kadry S. Mohammed M.A. Al-Mhiqani M.N. Al-Waisy A.S. Nedoma J. |
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Arif Z.H. Mahmoud M.A. Abdulkareem K.H. Kadry S. Mohammed M.A. Al-Mhiqani M.N. Al-Waisy A.S. Nedoma J. Adaptive Deep Learning Detection Model for Multi-Foggy Images |
author_sort |
Arif Z.H. |
title |
Adaptive Deep Learning Detection Model for Multi-Foggy Images |
title_short |
Adaptive Deep Learning Detection Model for Multi-Foggy Images |
title_full |
Adaptive Deep Learning Detection Model for Multi-Foggy Images |
title_fullStr |
Adaptive Deep Learning Detection Model for Multi-Foggy Images |
title_full_unstemmed |
Adaptive Deep Learning Detection Model for Multi-Foggy Images |
title_sort |
adaptive deep learning detection model for multi-foggy images |
publisher |
Universidad Internacional de la Rioja |
publishDate |
2023 |
_version_ |
1806425942231351296 |
score |
13.214268 |