基于胸部x射线图像和深度学习CNN机制的COVID检测

H. Aljahdali
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引用次数: 1

摘要

正如我们所知,冠状病毒从中国传播到世界各地的速度有多快。根据世界计量信息的统计,有500多万疑似病例,近33万人死亡,由于病例每天都在迅速增加,医院提供的检测包有限。因此,必须建立一个真正的自动检测系统,以最大限度地高性能检查患者是否为Covid-19疑似患者,作为减缓冠状病毒在人群中的传播的替代方案。在这项研究中,我们使用了深度学习(DL)的卷积神经网络(CNN)和ResNet模型。经过严格的分析,我们得出结论,每个ResNet分层模型在几乎所有类型的胸部x射线图像数据集上,无论是包含肋骨阴影和clivade还是分割后,都具有错误率小于3%的高性能。我们为现有的模型提出了一个新的解决方案,并通过在ResNet中添加更多的层来应用分层架构风格来增强ResNet模型,这将有助于最小化错误率。此外,为了通过调整批大小和学习率来提高ResNet的性能,我们实现了学习率0.00001,与其他学习率0.1,0.01,0.001和0.0001相比,它具有更高的准确性。拟议的研究是有希望的covid检测框架,有助于我们应对covid死亡
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COVID Detection Using Chest X-ray Images & Deep Learning CNN Mechanism
As we know that how rapidly is corona virus spreading, starting from China, to all over the world. There are more than 5 million suspected cases and almost 0.33 million deaths according to the statistics of world meterinfo, and there are limited test kits available in hospitals because of cases are increasing rapidly on the daily bases. So, it is compulsory to build an authentic automatic detection system which gives maximum high performance to check whether the patient is Covid-19 suspect or not as an alternative to slow down the spread of coronavirus among people.In this research, we have used deep learning’s (DL) Convolutional neural network (CNN) and ResNet models. With a critical analysis, we conclude that every ResNet layered model has the high performance with error rate less than 3% on approximately all kinds of datasets of chest Xray images whether it includes rib shadow & clivade or after segmentation. We have proposed a new solution for existing model and to enhance the ResNet model by applying layered architecture style by adding more layers to our ResNet which will help to minimize the error rate. Further, to boost the performance of ResNet by tune up the batch size and learning rate, we achieve the learning rate 0.00001 that has higher accuracy as compared to the other learning rates 0.1, 0.01, 0.001 and 0.0001. The proposed study is promising framework for the covid detection that assist us to deal the COVID decease
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