Covid-19 Classification and Detection Model using Deep Learning

Meghna Madhu, Anushka Xavier, N. Jayapandian
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引用次数: 2

Abstract

One of the deadly diseases in recent years is covid19 which is affecting the lives of peoples. Also leading to severe adverse problems and death. Prevention is done using early diagnosis and medication which in turn helps in early detection of the disease. The basic aim of the paper is to identify and further classify the patients using the chest x-rays. From scratch the Convolutional Neural Network is diagnosed producing a very high accurate and optimum results. In recent years, researchers found out that in the radiological images such as like x-rays, the traces of covid-19 can be found. In few areas, a good accuracy of the covid-19 detection cannot be achieved due to lack of the people who test so the artificial intelligence is combined with the radiological image. In machine learning the models used are deep learning by automatizing the actions and making it certain by swift, skillful and proficient outcome produced by the chest images provided by the patients. There are several layers like convolutional layer, max pooling layer etc. which are initiated and are used with aid of ReLU activation function. These images given as inputs are also classified accordingly. There is a sequence of neurons being given as input to the active dense layer and there is a result to the input by a sigmoidal function. There is a rise in efficiency because the models are trained and there is a decline of loss at the same time. If there is a model where fitting is done earlier to the overfitting and is restricted from implementing in the data augmentation. There is a better and efficient involvement of suggestions to models of deep learning. Further there is a classification of chest images for identifying and analyzing covid19. So, to check the Covid detection, the images are used as raw. In this paper a model is proposed to have good accuracy in the classification between Covid and normal and further it can be classified into three categories like Covid, pneumonia, normal. There is a 98.08% for the first one and 87.02% for the second one. By introducing 17 convolutional layers and using the Darknet model used for classifying you only look once (YOLO) for the live identification of the objects and multiple layers of filters are used. In the model there is an initial screening.
基于深度学习的Covid-19分类和检测模型
近年来最致命的疾病之一是covid - 19,它正在影响人们的生活。也会导致严重的不良问题和死亡。预防是通过早期诊断和药物治疗来完成的,这反过来又有助于早期发现疾病。本文的基本目的是利用胸部x光片对患者进行识别和进一步分类。从头开始,卷积神经网络被诊断为产生非常高的准确性和最佳结果。近年来,研究人员发现,在x光等放射图像中可以找到covid-19的痕迹。在少数地区,由于缺乏检测人员,无法实现良好的covid-19检测准确性,因此将人工智能与放射图像相结合。在机器学习中,使用的模型是深度学习,通过自动化操作,并通过患者提供的胸部图像产生快速,熟练和熟练的结果来确定。有几个层,如卷积层,最大池化层等,它们是初始化的,并借助于ReLU激活函数使用。这些作为输入的图像也相应地进行分类。有一个神经元序列作为输入输入到活跃的密集层,并且有一个结果通过一个s型函数输入。由于模型经过训练,效率有所提高,同时损失也有所减少。如果存在一个模型,其中拟合在过拟合之前完成,并且在数据增强中被限制实现。对深度学习模型的建议有更好、更有效的参与。此外,还有一种用于识别和分析covid - 19的胸部图像分类。因此,为了检查Covid检测,图像被用作原始图像。本文提出了一种具有良好准确率的新型冠状病毒与普通病毒分类模型,并将其分为新型冠状病毒、肺炎和普通病毒三类。第一个为98.08%,第二个为87.02%。通过引入17个卷积层并使用用于分类的Darknet模型,您只需查看一次(YOLO)即可进行对象的实时识别,并使用多层过滤器。在模型中有一个初始筛选。
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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