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A Multi-Model Based Ensembling Approach to Detect COVID-19 from Chest X-Ray Images

机译:基于多模型的组合方法来检测Covid-19来自Chest X射线图像

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Since the onset of COVID-19, radiographic image analysis coupled with artificial intelligence (AI) has become popular due to insufficient RT-PCR test kits. In this paper, an automated AI-assisted COVID-19 diagnosis scheme is proposed utilizing the ensembling approach of multiple convolutional neural networks (CNNs). Two different strategies have been carried out for ensembling: A feature level fusionbased ensembling method and a decision level ensembling method. Several traditional CNN architectures are tested and finally in the ensembling operation, MobileNet, InceptionV3, DenseNet201, DenseNet121 and Xception are used. To handle the computational complexity of multiple networks, transfer learning strategy is incorporated through ImageNet pre-trained weight initialization. For feature-level ensembling scheme, global averages of the convolutional feature maps generated from multiple networks are aggregated and undergo through fully connected layers for combined optimization. Additionally, for decision level ensembling scheme, final prediction generated from multiple networks are converged into a single prediction by utilizing the maximum voting criterion. Both strategies perform better than any individual network. Outstanding performances have been achieved through extensive experimentation on a public database with 96% accuracy on 3-class (COVID-19/normal/pneumonia) diagnosis and 89.21% on 4-class (COVID-19/normal/viral pneumonia/bacterial pneumonia) diagnosis.
机译:由于Covid-19的发作,由于RT-PCR测试套件不足,与人工智能(AI)耦合的放射线图像分析变得流行。本文采用了多个卷积神经网络(CNNS)的合并方法提出了一种自动AI辅助CoVID-19诊断方案。为合奏进行了两种不同的策略:特征级融合的集合方法和决策级合奏方法。测试了几种传统的CNN架构,最后在合奏操作中进行了测试,使用MobileNet,Inceptionv3,densenet201,densenet121和七脚。为了处理多个网络的计算复杂性,通过Imagenet预先训练的重量初始化并入转移学习策略。对于特征级合奏方案,从多个网络生成的卷积特征映射的全局平均值聚合并经过完全连接的层进行组合优化。另外,对于判定级合奏方案,通过利用最大投票标准,从多个网络生成的最终预测被收敛到单个预测中。这两种策略都比任何单独的网络都能更好。通过对3级(Covid-19 / Normal / Pneumonia)诊断的96%精度的公共数据库的广泛实验,实现了卓越的表演,并在4级(Covid-19 / Normal / Viral肺炎/细菌肺炎)的89.21%诊断。

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