Comparative analysis of deep learning models for COVID-19 detection

Santoshi Kumari, Ediga Ranjith, Abhishek Gujjar, Siranjeevi Narasimman, H S Aadil Sha Zeelani
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引用次数: 10

Abstract

Corona virus disease also acknowledged as COVID-19 outbreak, a worldwide pandemic is one of the most acute and severe viruses in recent time. The rate of COVID cases rise rapidly around the world. Although vaccines have been developed, deep learning (DL) techniques shown as a useful method for clinical diagnosis and other fields. Deep structured learning also known as Deep learning is method based on artificial neural network with interpretation learning. This paper aims to do a comparative analysis on medical images like computer tomography scans (CT scan) and X-ray by means of different deep learning systems. This analysis discusses about structures developed for COVID-19 analysis via deep learning performances on Inception, VGG, Xception, Resnet models and provide insights and on data sets to train these neural networks. A comparative analysis is done for considering the better deep learning model for detection. The main aim of this paper is to ease medical experts and help them to understand the ways of deep learning techniques and how they can be prospective used to combat COVID-19.

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新型冠状病毒肺炎深度学习检测模型的对比分析
冠状病毒病也被称为COVID-19疫情,是近年来世界范围内最严重和最严重的病毒之一。世界各地的新冠肺炎病例率迅速上升。虽然疫苗已经开发出来,但深度学习(DL)技术在临床诊断和其他领域显示出有用的方法。深度结构化学习也称为深度学习,是一种基于人工神经网络的解释学习方法。本文旨在通过不同的深度学习系统对计算机断层扫描(CT)和x射线等医学图像进行对比分析。本分析讨论了通过在Inception、VGG、Xception、Resnet模型上的深度学习性能为COVID-19分析开发的结构,并提供了对训练这些神经网络的数据集的见解。为了考虑更好的深度学习检测模型,进行了比较分析。本文的主要目的是为医学专家提供方便,帮助他们了解深度学习技术的方法以及如何将其用于对抗COVID-19。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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