CNN模型上各种优化器在肺炎检测中的应用分析

Yuvraj Sinha Chowdhury, Rupshali Dasgupta, S. Nanda
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引用次数: 2

摘要

肺炎是一种可能致命的细菌性呼吸道感染,由细菌、真菌或病毒引起,这些细菌、真菌或病毒侵入人体肺部的肺泡,携带大量液体或脓液。诊断肺炎最常用的技术是检查胸部x光片,x光片的结果必须由医学专家评估。识别肺炎的困难方法导致由于诊断和治疗不足而丧失生命。随着计算机技术的出现,开发一种自动检测和治疗肺炎的设备现在是可行的。在本研究中,在不同的层数上使用了不同的优化器,以找出使用CNN进行肺炎检测的最有效组合。设计了卷积神经网络模型,涉及一,二,三,四和五个隐藏层用于分类目的,并选择了三个优化器,即RMSProp, Adam和SGD。为了训练和测试,我们使用了一个由5856张胸部x射线图像组成的Kaggle数据集,将其分为测试、训练和val三个文件夹,具有4个隐藏层和“SGD”优化器的模型的测试准确率最高,达到91%,具有1个隐藏层和“Adam”优化器的模型的测试准确率最低,为84%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Various Optimizer on CNN model in the Application of Pneumonia Detection
Pneumonia is a possibly lethal bacterial respiratory infection caused by bacteria, fungi, or viruses that invade the alveoli of the human lung with a load of fluid or pus. The most often used technique for diagnosing pneumonia is by examining Chest X-rays, and the results of the X-ray must be evaluated by a medical specialist. The difficult way of identifying pneumonia results in the loss of life due to insufficient diagnosis and treatment. With the advent of computer technology, the development of an automated device for detecting and treating pneumonia is now feasible. In this study, different Optimizers were used on a different number of layers to find which combination is the most efficient for the purpose of Pneumonia Detection using CNN. The Convolutional Neural Network models were designed involving one, two, three, four and five hidden layers for classification purposes and three optimisers namely RMSProp, Adam and SGD were chosen. For training and testing purposes, a Kaggle dataset consisting of 5856 Chest X-Ray images was used, split into three folders of the test, train and val. The model with four hidden layers and the "SGD" optimiser achieved the highest testing accuracy of 91% and the model with one hidden layer and the "Adam" optimiser achieved the lowest testing accuracy of 84%.
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