JOURNAL ARTICLE

Attention Based Feature Fusion Network for Monkeypox Skin Leison Detection

Abstract

The recent monkeypox outbreak has raised significant public health concerns due to its rapid spread across multiple countries. Monkeypox can be difficult to distinguish from chickenpox and measles in the early stages because the symptoms of all three diseases are similar. Modern deep learning algorithms can be used to identify diseases, including COVID-19, by analyzing images of the affected areas. In this study, we introduce a lightweight model that merges two pre-trained architectures, EfficientNetV2B3 and ResNet151V2, to classify human monkeypox disease. We have also incorporated the squeeze-and-excitation attention network module to focus on the important parts of the feature maps for classifying the monkeypox images. This attention module provides channels and spatial attention to highlight significant areas within feature maps. We evaluated the effectiveness of our model by extensively testing it on a publicly available Monkeypox Skin Lesions Dataset using a four-fold cross-validation approach. The evaluation metrics of our model were compared with the existing others. Our model achieves a mean validation accuracy of 96.52%, with precision, recall, and F1-score values of 96.58%, 96.52%, and 96.51%, respectively.

Keywords:
Monkeypox Computer science Fusion Feature (linguistics) Artificial intelligence Pattern recognition (psychology) Chemistry

Metrics

4
Cited By
0.76
FWCI (Field Weighted Citation Impact)
21
Refs
0.67
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Poxvirus research and outbreaks
Life Sciences →  Immunology and Microbiology →  Virology
Herpesvirus Infections and Treatments
Health Sciences →  Medicine →  Epidemiology
Rabies epidemiology and control
Life Sciences →  Immunology and Microbiology →  Virology

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