Intelligent Diagnosis of Covid-19 Based on CNN-PNN

A. Khorsheed
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Abstract

Today the whole world suffers and fears the epidemic of the Coronavirus and the developed waves in it, as we have now reached the fourth wave, and this is a serious matter. Where the statistics of the Coronavirus in the current data showed that 213 countries are affected by this epidemic, and about 6 millions of deaths are recorded. This virus spreads rapidly, and patients mainly suffer from breathing. The patient who suffers from pre-existing health problems will be more likely to contract this disease, so there was an urgent need for artificial intelligence to enter to quickly detect this virus, so the world turned to deep learning, which is one of the most powerful methods and techniques for classification because of its use of Bayas Rule, where there is no possibility of error. This paper proposes CNN (Convolutional Neural Networks) and PNN (Proprestitc Neural Networks) mixed tomography scanning model to classify Covid-19 images, the proposed network called the CNN-PNN model. The CNN-PNN model can use CNN to compute the dependency and continuity features of the output of the middle layer of the PNN model, and correlate the properties of these middle levels with the final full network to predict the classification.
基于CNN-PNN的新型冠状病毒智能诊断
今天,全世界都在为冠状病毒的流行及其发展中的浪潮感到痛苦和恐惧,因为我们现在已经进入了第四波,这是一个严重的问题。当前数据中关于冠状病毒的统计数据显示,有213个国家受到这一流行病的影响,记录的死亡人数约为600万人。这种病毒传播迅速,患者主要表现为呼吸症状。患有先前健康问题的患者更容易感染这种疾病,因此迫切需要人工智能进入以快速检测这种病毒,因此世界转向了深度学习,这是最强大的分类方法和技术之一,因为它使用了Bayas规则,不存在错误的可能性。本文提出了CNN(卷积神经网络)和PNN (proprestic神经网络)混合断层扫描模型对Covid-19图像进行分类,所提出的网络称为CNN-PNN模型。CNN-PNN模型可以利用CNN计算PNN模型中间层输出的依赖和连续性特征,并将这些中间层的属性与最终的完整网络相关联,从而预测分类。
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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