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Customized VGG19 Architecture for Pneumonia Detection in Chest X-Rays

机译:用于胸部X射线中肺炎的定制VGG19架构

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Pneumonia is one of the major illnesses in children and aged humans due to the Infection in the lungs. Early analysis of pneumonia is necessary to prepare for a possible treatment procedure to regulate and cure the disease. This research aspires to develop a Deep-Learning System (DLS) to diagnose the lung abnormality using chest X-ray (radiograph) images. The proposed work is implemented using; (i) Conventional chest radiographs and (ii) Chest radiograph treated with a threshold filter. The initial experimental evaluation is carried out using the traditional DLS, such as AlexNet, VGG16, VGG19 and ResNet50 with a SoftMax classifier. The results confirmed that, VGG19 provides better classification accuracy (86.97%) compared to other methods. Later, a customized VGG19 network is proposed using the Ensemble Feature Scheme (EFS), which combines the handcrafted features attained with CWT, DWT and GLCM with the Deep-Features (DF) achieved using Transfer-Learning (TL) practice. The performance of customized VGG19 is tested using different classifiers, such as SVM-linear, SVM-RBF, KNN classifier, Random-Forest (RF) and Decision-Tree (DT). The result confirms that VGG19 with RF classifier offers better accuracy (95.70%). When the similar experiment is repeated using threshold filter treated chest radiographs, the VGG19 with RF classifier offered superior classification accuracy (97.94%). This result confirms that, proposed DLS will work well on the benchmark images and in the future, it can be considered to diagnose clinical grade chest radiographs. (c) 2021 Elsevier B.V. All rights reserved.
机译:由于肺部感染,肺炎是儿童和老年人的主要疾病之一。对肺炎的早期分析是准备可能的治疗程序调节和治愈疾病的治疗方法所必需的。这项研究旨在开发一种深入学习系统(DLS)来诊断使用胸部X射线(Xco.Noth照片)图像来诊断肺异常。拟议的工作是使用的; (i)用阈值过滤器处理的常规胸部射线照片和(ii)胸部射线照片。初始实验评估使用传统的DLS进行,例如AlexNet,VGG16,VGG19和Reset50,具有Softmax分类器。结果证实,与其他方法相比,VGG19提供了更好的分类准确性(86.97%)。稍后,使用集合特征方案(EFS)提出了一种定制的VGG19网络,其将CWT,DWT和GLCM与使用传输学习(TL)实践实现的深度特征(DF)相结合的手工制作功能。使用不同的分类器测试定制的VGG19的性能,例如SVM-LINEAR,SVM-RBF,KNN分类器,随机林(RF)和决策树(DT)。结果证实,具有RF分类器的VGG19提供更好的准确性(95.70%)。当使用阈值滤波处理的胸部射线照片重复类似的实验时,具有RF分类器的VGG19提供了卓越的分类精度(97.94%)。该结果证实,建议的DLS将在基准图像和未来工作,可以考虑诊断临床级胸部X线片。 (c)2021 Elsevier B.v.保留所有权利。

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