Classification of Human Monkeypox Disease Using Deep Learning Models and
Attention Mechanisms
- URL: http://arxiv.org/abs/2211.15459v1
- Date: Mon, 21 Nov 2022 13:30:34 GMT
- Title: Classification of Human Monkeypox Disease Using Deep Learning Models and
Attention Mechanisms
- Authors: Md. Enamul Haque, Md. Rayhan Ahmed, Razia Sultana Nila, Salekul Islam
- Abstract summary: Human monkeypox disease syndromes are quite similar to chickenpox, and measles classic symptoms.
Various deep-learning methods have shown promising performances in the image-based diagnosis of COVID-19.
An architecture consisting of Xception-CBAM-Dense layers performed better than the other models at classifying human monkeypox.
- Score: 0.9257985820122999
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As the world is still trying to rebuild from the destruction caused by the
widespread reach of the COVID-19 virus, and the recent alarming surge of human
monkeypox disease outbreaks in numerous countries threatens to become a new
global pandemic too. Human monkeypox disease syndromes are quite similar to
chickenpox, and measles classic symptoms, with very intricate differences such
as skin blisters, which come in diverse forms. Various deep-learning methods
have shown promising performances in the image-based diagnosis of COVID-19,
tumor cell, and skin disease classification tasks. In this paper, we try to
integrate deep transfer-learning-based methods, along with a convolutional
block attention module (CBAM), to focus on the relevant portion of the feature
maps to conduct an image-based classification of human monkeypox disease. We
implement five deep-learning models, VGG19, Xception, DenseNet121,
EfficientNetB3, and MobileNetV2, along with integrated channel and spatial
attention mechanisms, and perform a comparative analysis among them. An
architecture consisting of Xception-CBAM-Dense layers performed better than the
other models at classifying human monkeypox and other diseases with a
validation accuracy of 83.89%.
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