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Comparative Experiment of Convolutional Neural Network (CNN) Models Based on Pneumonia X-ray Images Detection

机译:基于肺炎X射线图像检测的卷积神经网络(CNN)模型的比较实验

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This paper aims to reveal the relationship between the Convolutional Neural Network (CNN) model’s behavior and the depth of the model. Due to the worldwide coronavirus pandemic, the training dataset is the chest x-ray images of the lungs, which are infected by pneumonia. The contrastive study incorporates three models: a classic model, which is the imitation of LeNet5, VGG16, and Residual Network 50. This research is based on pneumonia detection, and it can give people a deeper understanding of CNN’s mechanism rather than only focusing on the result of different models. The explainable analysis visualizes the loss value and accuracy curves, CAM & Grad-CAM images, and activation maps. It leads to three conclusions: first, as the depth of the model increases, the average loss values of a given epoch will decrease; secondly, the accuracy will increase with the increasing depth; third, the extracted attributes become more abstract in the deeper hidden layers.
机译:本文旨在揭示卷积神经网络(CNN)模型与模型深度之间的关系。由于全球冠状病毒大流行,训练数据集是肺部的胸X射线图像,其被肺炎感染。对比研究包括三种模型:一种经典模型,它是Lenet5,VGG16和剩余网络50的模仿。该研究基于肺炎检测,它可以让人们更深入地了解CNN的机制,而不是仅关注不同型号的结果。可解释的分析可视化损耗值和精度曲线,凸轮和升降凸轮图像和激活图。它导致三个结论:首先,随着模型的深度增加,给定时代的平均损失值将减少;其次,准确性随着深度的增加而增加;第三,提取的属性在更深的隐藏层中变得更加抽象。

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