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GoogleNet CNN Neural Network towards Chest CT-Coronavirus Medical Image Classification

机译:Googlenet CNN神经网络胸部CT-coronavirus医学图像分类

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摘要

In the end of the year 2019 and the beginning of the year 2020, the world was overwhelmed by a medical pandemic that was not previously seen which is known Covid-19 (Coronavirus). Coronavirus (CoV) is a large family of viruses that cause illness ranging from the common cold to more severe diseases such as Middle East Respiratory Syndrome (MERS-CoV) and Severe Acute Respiratory Syndrome (SARS-CoV). This paper aims to improve the accuracy of detection for CT-Coronavirus images using deep learning for Convolutional Neural Networks (CNNs) that helps medical staffs for classification chest CT- Coronavirus medical image in early stage. Deep learning is successfully used as a tool for machine learning, where the CNNs are capable of automatically extracting and learning features medical image dataset. This research retrains GoogleNet CNN architecture over the COVIDCT-Dataset for classification CT- Coronavirus image. In this research, COVIDCT-Dataset contains 349 CT images containing clinical findings of COVID-19. The validation accuracy of retraining GoogleNet is 82.14% where elapsed time is 74 min and 37 sec.
机译:在2019年底和2020年初,世界被先前未被众所周知的医疗大流行众所周知的众所周知的Covid-19(冠状病毒)。冠状病毒(COV)是一大家族病毒,导致疾病从常见感冒到更严重的疾病,如中东呼吸综合征(MERS-COV)和严重急性呼吸综合征(SARS-COV)。本文旨在利用深度学习对卷积神经网络(CNNS)的深度学习来提高CT-Coronavirus图像的检测准确性,这有助于在早期阶段进行分类胸部CT-coronavirus医学图像的医务人员。深度学习被成功用作机器学习的工具,其中CNN能够自动提取和学习功能医学图像数据集。本研究删除了COVIDCT-DataSet上的Googlenet CNN架构进行分类CT-coronavirus图像。在本研究中,Covidct-DataSet包含含有Covid-19的临床发现的349个CT图像。 Retringing Googlenet的验证精度为82.14%,其中经过时间为74分钟,37秒。

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