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利用深度特征融合技术对莱姆皮疹病进行分类。

Lyme rashes disease classification using deep feature fusion technique.

机构信息

Department of Computer Science, University of Okara, Okara, Pakistan.

Department of Information Sciences, Division of Science and Technology, University of Education, Lahore, Pakistan.

出版信息

Skin Res Technol. 2023 Nov;29(11):e13519. doi: 10.1111/srt.13519.

Abstract

Automatic classification of Lyme disease rashes on the skin helps clinicians and dermatologists' probe and investigate Lyme skin rashes effectively. This paper proposes a new in-depth features fusion system to classify Lyme disease rashes. The proposed method consists of two main steps. First, three different deep learning models, Densenet201, InceptionV3, and Exception, were trained independently to extract the deep features from the erythema migrans (EM) images. Second, a deep feature fusion mechanism (meta classifier) is developed to integrate the deep features before the final classification output layer. The meta classifier is a basic deep convolutional neural network trained on original images and features extracted from base level three deep learning models. In the feature fusion mechanism, the last three layers of base models are dropped out and connected to the meta classifier. The proposed deep feature fusion method significantly improved the classification process, where the classification accuracy was 98.97%, which is particularly impressive than the other state-of-the-art models.

摘要

皮肤莱姆病皮疹的自动分类有助于临床医生和皮肤科医生有效探究莱姆皮肤皮疹。本文提出了一种新的深度特征融合系统来对莱姆病皮疹进行分类。该方法主要包括两个步骤。首先,分别使用 Densenet201、InceptionV3 和 Exception 三个不同的深度学习模型从游走性红斑(EM)图像中提取深度特征。其次,开发了一个深度特征融合机制(元分类器),在最终的分类输出层之前对深度特征进行融合。元分类器是一个基于原始图像和从基础三个深度学习模型提取的特征训练的基本深度卷积神经网络。在特征融合机制中,基础模型的最后三层被丢弃,并连接到元分类器。所提出的深度特征融合方法显著改善了分类过程,分类准确率达到 98.97%,明显优于其他最先进的模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d796/10628356/0860fb1f8071/SRT-29-e13519-g005.jpg

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