2024
DOI: 10.32628/ijsrst241161119
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Enhancing Monkeypox Detection with Efficientnet-B5 And Image Augmentation Fusion Technique

Abdullahi Lawal Rukuna,
Umar Muhammad Bello,
Abdulmalik Abdulsalam
et al.

Abstract: The recent surge of monkeypox infections worldwide has underscored the need for rapid, accurate diagnostic tools, particularly in regions with limited access to laboratory-based tests. This study employs deep learning, utilizing a pre-trained efficientNet-B5 model through transfer learning, to classify monkeypox from digital skin lesion images. Data was compiled from Kaggle, web scraping, and hospital records, covering both monkeypox and similar skin conditions such as chickenpox, measles and smallpox. The dat… Show more

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