An Ingenious Method to Detect COVID in X-Ray Images Using Machine Learning Techniques

Palak Kumari, N. Rani, N. Suresh kumar
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Abstract

Covid-19 is a fatal disease caused by the Covid-19 virus. It is very big problem for the whole world. The World Health Organization (WHO) has declared a pandemic. In May 2020, more people throughout the world had a favorable experience. The COVID illness is rapidly growing, and we are unable to stop it. We addressed the COVID-19 data science research initiatives employing a number of approaches, including statics, machine learning (ML), modelling, simulation, data visualization, and artificial intelligence (AI). We all suffering from COVID-19. in this case higher value of case comes from negative and lower false positive rate. The global impact of the COVID-19 outbreak was enormous. To tackle the pandemic, many projects have been launched, including those in the field of deep learning. This paper proposes a deep neural network modification based on the Xception model. The model is used to detect COVID-19 using chest X-ray images. Batch normalization and two stacks of two dense layers each are used in the proposed model. The layer addition is intended to avoid overfitting the proposed model. The proposed as a result, we compare the model’s loss, accuracy, and performance speed, and the results show that the quality of the machine learning model has higher prediction accuracy and loss, but it takes longer to execute than traditional machine learning languages. Machine learning algorithms in general, and convolutional neural networks (CNNs) in particular, have shown promise in medical picture analysis and categorization. The architecture of this study has been presented for the diagnosis of COVID-19.
一种利用机器学习技术检测x射线图像中COVID的巧妙方法
Covid-19是由Covid-19病毒引起的一种致命疾病。这对整个世界来说都是一个大问题。世界卫生组织(世卫组织)宣布了一场大流行。2020年5月,全球有更多的人获得了良好的体验。新冠肺炎疫情正在迅速蔓延,我们无法阻止。我们采用多种方法解决了COVID-19数据科学研究计划,包括静力学、机器学习(ML)、建模、仿真、数据可视化和人工智能(AI)。我们都在遭受COVID-19的折磨。在这种情况下,较高的病例值来自于阴性和较低的假阳性率。新冠肺炎疫情对全球造成巨大影响。为了应对这一流行病,已经启动了许多项目,包括深度学习领域的项目。本文提出了一种基于异常模型的深度神经网络修正方法。该模型用于通过胸部x线图像检测COVID-19。在提出的模型中使用了批归一化和两个密集层的两个堆栈。层的增加是为了避免过度拟合所提出的模型。结果,我们比较了模型的损失、准确率和性能速度,结果表明,质量好的机器学习模型具有更高的预测精度和损失,但比传统的机器学习语言需要更长的时间来执行。一般来说,机器学习算法,特别是卷积神经网络(cnn),在医学图像分析和分类方面显示出了前景。本研究的架构已被提出用于COVID-19的诊断。
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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