4.6 Article

Boosting COVID-19 Image Classification Using MobileNetV3 and Aquila Optimizer Algorithm

Journal

ENTROPY
Volume 23, Issue 11, Pages -

Publisher

MDPI
DOI: 10.3390/e23111383

Keywords

feature selection; metaheuristic; atomic orbital search; dynamic opposite-based learning

Funding

  1. Deanship of Scientific Research, Imam Mohammad Ibn Saud Islamic University (IMSIU), Saudi Arabia [21-13-18-032]

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The paper introduces a framework for COVID-19 image classification using a combination of deep learning and optimization algorithms, with MobileNetV3 as the feature extractor and Aquila Optimizer as the feature selector, aiming to improve the accuracy of early diagnosis and detection of the disease.
Currently, the world is still facing a COVID-19 (coronavirus disease 2019) classified as a highly infectious disease due to its rapid spreading. The shortage of X-ray machines may lead to critical situations and delay the diagnosis results, increasing the number of deaths. Therefore, the exploitation of deep learning (DL) and optimization algorithms can be advantageous in early diagnosis and COVID-19 detection. In this paper, we propose a framework for COVID-19 images classification using hybridization of DL and swarm-based algorithms. The MobileNetV3 is used as a backbone feature extraction to learn and extract relevant image representations as a DL model. As a swarm-based algorithm, the Aquila Optimizer (Aqu) is used as a feature selector to reduce the dimensionality of the image representations and improve the classification accuracy using only the most essential selected features. To validate the proposed framework, two datasets with X-ray and CT COVID-19 images are used. The obtained results from the experiments show a good performance of the proposed framework in terms of classification accuracy and dimensionality reduction during the feature extraction and selection phases. The Aqu feature selection algorithm achieves accuracy better than other methods in terms of performance metrics.

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