Enhanced SVM Based Covid 19 Detection System Using Efficient Transfer Learning Algorithms

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Abdelhai LATI
Khaled BENSID
Ibtissem LATI
Chahra GEZZAL

The detection of the novel coronavirus disease (COVID-19) has recently become a critical task for medical diagnosis. Knowing that deep Learning is an advanced area of machine learning that has gained much of interest, especially convolutional neural network. It has been widely used in a variety of applications. Since it has been proved that transfer learning is effective for the medical classification tasks,
in this study; COVID -19 detection system is implemented as a quick alternative, accurate and reliable diagnosis option to detect COVID-19 disease. Three pre-trained convolutional neural network based models (ResNet50, VGG19, AlexNet) have been proposed for this system. Based on the obtained performance results, the pre-trained models with support vector machine (SVM) provide the best classification performance compared to the used models individually.

Paraules clau
COVID-19, Support Vector Machine (SVM), VGG19, AlexNet, ResNet50

Article Details

Com citar
LATI, Abdelhai et al. «Enhanced SVM Based Covid 19 Detection System Using Efficient Transfer Learning Algorithms ». ELCVIA: electronic letters on computer vision and image analysis, 2023, vol.VOL 22, núm. 1, doi:10.5565/rev/elcvia.1601.
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