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    • UNIR REVISTAS
    • Revista IJIMAI
    • 2022
    • vol. 7, nº 7, december 2022
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    • Revista IJIMAI
    • 2022
    • vol. 7, nº 7, december 2022
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    Adaptive Deep Learning Detection Model for Multi-Foggy Images

    Autor: 
    Hussein Arif, Zainab
    ;
    Mahmoud, Moamin
    ;
    Hameed Abdulkareem, Karrar
    ;
    Kadry, Seifedine
    ;
    Abed Mohammed, Mazin
    ;
    Nasser Al-Mhiqani, Mohammed
    ;
    Al-Waisy, Alaa S.
    ;
    Nedoma, Jan
    Fecha: 
    12/2022
    Palabra clave: 
    deep learning; fog computing; image defogging; multi-class classification; IJIMAI
    Revista / editorial: 
    International Journal of Interactive Multimedia and Artificial Intelligence (IJIMAI)
    Tipo de Ítem: 
    article
    URI: 
    https://reunir.unir.net/handle/123456789/13946
    DOI: 
    https://doi.org/10.9781/ijimai.2022.11.008
    Dirección web: 
    https://www.ijimai.org/journal/bibcite/reference/3223
    Open Access
    Resumen:
    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.
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