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Analyze COVID-19 CT images based on evolutionary algorithm with dynamic searching space

机译:基于动态搜索空间的进化算法分析Covid-19 CT图像

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摘要

The COVID-19 pandemic has caused a global alarm. With the advances in artificial intelligence, the COVID-19 testing capabilities have been greatly expanded, and hospital resources are significantly alleviated. Over the past years, computer vision researches have focused on convolutional neural networks (CNNs), which can significantly improve image analysis ability. However, CNN architectures are usually manually designed with rich expertise that is scarce in practice. Evolutionary algorithms (EAs) can automatically search for the proper CNN architectures and voluntarily optimize the related hyperparameters. The networks searched by EAs can be used to effectively process COVID-19 computed tomography images without expert knowledge and manual setup. In this paper, we propose a novel EA-based algorithm with a dynamic searching space to design the optimal CNN architectures for diagnosing COVID-19 before the pathogenic test. The experiments are performed on the COVID-CT data set against a series of state-of-the-art CNN models. The experiments demonstrate that the architecture searched by the proposed EA-based algorithm achieves the best performance yet without any preprocessing operations. Furthermore, we found through experimentation that the intensive use of batch normalization may deteriorate the performance. This contrasts with the common sense approach of manually designing CNN architectures and will help the related experts in handcrafting CNN models to achieve the best performance without any preprocessing operations
机译:Covid-19大流行引起了全球警报。随着人工智能的进步,Covid-19测试能力大大扩展,医院资源明显缓解。在过去几年中,计算机视觉研究专注于卷积神经网络(CNNS),这可以显着提高图像分析能力。然而,CNN架构通常是手动设计的丰富专业知识,即在实践中稀缺。进化算法(EAS)可以自动搜索适当的CNN架构,并自愿优化相关的Quand参数。 EAS搜索的网络可用于有效地处理Covid-19无需专业知识和手动设置的计算机断层扫描图像。在本文中,我们提出了一种具有动态搜索空间的基于新的基于EA的算法来设计用于在致病测试之前诊断Covid-19的最佳CNN架构。在针对一系列最先进的CNN模型的Covid-CT数据上执行实验。实验表明,所提出的基于EA的算法搜索的架构尚未实现最佳性能,而无需任何预处理操作。此外,我们通过实验发现,批量归一化的密集使用可能会恶化性能。这与手动设计CNN架构的常识方法形成了鲜明对比,并将帮助相关专家在手臂CNN模型中实现最佳性能,没有任何预处理操作

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