Monkeypox Detection and Classification Using Deep Learning Based Features Selection and Fusion Approach

Sarmad Maqsood, R. Damaševičius
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Abstract

In today’s healthcare system, clinical diagnosis has taken on a crucial role. As the COVID-19 virus’s global infection declines, the monkeypox virus is steadily developing. Because of this, it’s critical to identify them early, before they spread to the larger population. Early detection can be aided by AI-based detection. In this study, a fusion based contrast enhancement approach is used to preprocess the source images. Two pre-trained DCNN models (Inception-ResNet-V2 and NASNet-Large) are modified and trained using transfer learning. From each DCNN model, deep feature vectors are extracted and the entropy-based controlled algorithm is used for the best features selection. The convolutional sparse image decomposition fusion approach is utilized to fused the feature for classification. Finally, the selected features are forwarded to a multi-class support vector machine (M-SVM) for final classification. After performing experiments on public datasets, the proposed approach obtained an accuracy of 98.59%, sensitivity of 92.78%, specificity of 95.47%, and AUC of 0.987. Simulation studies show that the proposed approach outperforms other methods both visually and quantitatively.
基于深度学习特征选择与融合方法的猴痘检测与分类
在当今的医疗保健系统中,临床诊断已经承担了至关重要的作用。随着COVID-19病毒全球感染率下降,猴痘病毒正在稳步发展。正因为如此,在它们扩散到更大的人群之前,及早发现它们是至关重要的。基于人工智能的检测可以帮助早期检测。本研究采用基于融合的对比度增强方法对源图像进行预处理。使用迁移学习对两个预训练的DCNN模型(Inception-ResNet-V2和NASNet-Large)进行了修改和训练。从每个DCNN模型中提取深度特征向量,并使用基于熵的控制算法进行最佳特征选择。利用卷积稀疏图像分解融合方法融合特征进行分类。最后,将选择的特征转发给多类支持向量机(M-SVM)进行最终分类。在公开数据集上进行实验后,该方法的准确率为98.59%,灵敏度为92.78%,特异性为95.47%,AUC为0.987。仿真研究表明,该方法在视觉上和数量上都优于其他方法。
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