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Detection of CIVID-19 by GoogLeNet-COD

机译:通过Googlenet-COD检测Cive-19

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The outbreak of COVID-19 has been striking the world for months and caused hundreds of thousands of mortality. Early and accurate detection turns out to be one of the most effective ways to slow the spreading of the virus. To help radiologists interpret images, we developed an automatic CT image-based detection system, which achieved high accuracy on the detection of COVID-19. The proposed model in the detection system is codenamed GoogLeNet-COD, which utilizes one of the state-of-the-art deep convolutional neural networks GooLeNet as the backbone. As GoogLeNet was initially trained on ImageNet, we first replaced the last top two layers with four new layers, which include the dropout layer, two fully-connected layers and the output layer. The dropout technique is utilized to prevent overfitting in the system by inserting a dropout layer in the network. The newly added fully-connected layer serves as a transitional layer that prevents significant information loss while the last fully-connected layer is used to generate possibilities for the final output layer. The hold-out validation method is used to evaluate the performance of the proposed system. The experiment on a private COVID-19 dataset showed a high accuracy of our system.
机译:Covid-19的爆发已经令世界袭击了几个月,造成了数十万个死亡率。早期和准确的检测结果是减缓病毒扩散的最有效方法之一。为了帮助放射科医生解释图像,我们开发了一种自动CT图像的检测系统,可在Covid-19检测到高精度。检测系统中的所提出的模型是代号为Googlenet-Cod,它利用最先进的深卷积神经网络Goolenet作为骨干。随着Googlenet最初在想象中培训,我们首先用四个新图层替换最后两层,其中包括丢弃层,两个完全连接的层和输出层。通过在网络中插入丢弃层来防止系统中的过滤技术来防止系统。新添加的完全连接层用作过渡层,它可以防止显着的信息丢失,而最后一个完全连接的层用于为最终输出层生成可能性。保持验证方法用于评估所提出的系统的性能。私人Covid-19数据集的实验显示了我们系统的高精度。

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