基于智能物联网系统和Resnet 18双线性深度贪婪网络的Covid -19医疗诊断与识别

Indrajit Das, Papiya Das, Aniruddha Roy, Papiya Debnath, Subhrapratim Nath
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引用次数: 0

摘要

COVID-19大范围流行引发了一场国际卫生危机。COVID-19患者的诊断是使用深度学习进行的,尽管这需要大量的放射学数据收集才能有效地提供最佳结果。本文介绍了一种新型智能系统,该系统具有用于covid - 19的物联网传感器和“双线性Resnet 18深度贪婪网络”,该系统在有限数量的数据集上有效。尽管小数据集带来了特殊性,但所提出的方法可以成功地克服过拟合和欠拟合的异常。当使用提供的COVID-19病例x射线数据集正确评估训练模型时,建议的架构可确保成功得出结论。推荐的模型提供97%的准确率,优于现有的方法。提供更好的精度,召回率和F1分数;分别为98%、96%和96.94%,优于现有的其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medical Diagnosis and Identification of Covid -19 by Intelligent IoT System and Resnet 18 Bilinear Deep Greedy Network
An international health crisis has been caused by the widespread COVID-19 epidemic. COVID-19 patient diagnoses are made using deep learning, although this necessitates a massive radiography data collection in order to efficiently deliver an optimum result. This paper presents a novel Intelligent System with IoT sensors for covid 19 and "Bilinear Resnet 18 Deep Greedy Network," which is effective with a limited amount of datasets. Despite peculiarities brought on by a small dataset, the suggested approach could successfully combat the anomalies of over fitting and under fitting. The suggested architecture ensures a successful conclusion when the trained model is correctly evaluated using the provided X-ray datasets of COVID-19 cases. The recommended model offers accuracy of 97%, which is superior to existing methodologies. Better precision, recall, and F1 score are provided; which are 98%, 96%, and 96.94% respectively, which is better than other existing methodology.
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