轻型深度可分离卷积神经网络筛查胸部CT和x线图像Covid-19感染

Malliga Subramanian, Sathishkumar V E, C. Ramya, S. V. Kogilavani, Deepti Ravi
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引用次数: 1

摘要

由于Covid-19在社区中传播迅速,因此需要自动检测系统作为快速诊断工具来防止Covid-19在人与人之间传播。在本文中,我们提出使用卷积神经网络来检测冠状病毒感染的患者,使用计算机断层扫描和x射线图像。此外,我们研究了深度CNN模型DenseNet201的迁移学习,用于从CT和x射线扫描中检测感染。采用网格搜索优化方法选择超参数的理想值,采用图像增强方法提高模型的泛化能力。我们进一步修改DenseNet架构,纳入深度可分离卷积,用于利用CT和x射线图像检测冠状病毒感染患者。有趣的是,所有提出的模型的准确率都高于94%,这相当于或高于早期深度学习模型的准确率。进一步,我们证明了深度可分离卷积减少了训练时间和计算复杂度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Lightweight Depthwise Separable Convolution Neural Network for Screening Covid-19 Infection from Chest CT and X-ray Images
Because Covid-19 spreads swiftly in the community, an automatic detection system is required to prevent Covid-19 from spreading among humans as a rapid diagnostic tool. In this paper, we propose to employ Convolution Neural Networks to detect coronavirus-infected patients using Computed Tomography and X-ray images. In addition, we look into the transfer learning of a deep CNN model, DenseNet201 for detecting infection from CT and X-ray scans. Grid Search optimization is utilized to select ideal values for hyper-parameters, while image augmentation is employed to increase the model’s capacity to generalize. We further modify DenseNet architecture to incorporate a depthwise separable convolution for detecting coronavirus-infected patients utilizing CT and X-ray images. Interestingly, all of the proposed models scored greater than 94% accuracy, which is equivalent to or higher than the accuracy of earlier deep learning models. Further, we demonstrate that depthwise separable convolution reduces the training time and computation complexity.
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