Ahuja Sakshi, Panigrahi Bijaya Ketan, Dey Nilanjan, Rajinikanth Venkatesan, Gandhi Tapan Kumar
Electrical Engineering Department, IITD, New Delhi, 110016 India.
Department of Information Technology, Techno International New Town, Kolkata, 700156 West Bengal India.
Appl Intell (Dordr). 2021;51(1):571-585. doi: 10.1007/s10489-020-01826-w. Epub 2020 Aug 21.
Lung abnormality is one of the common diseases in humans of all age group and this disease may arise due to various reasons. Recently, the lung infection due to SARS-CoV-2 has affected a larger human community globally, and due to its rapidity, the World-Health-Organisation (WHO) declared it as pandemic disease. The COVID-19 disease has adverse effects on the respiratory system, and the infection severity can be detected using a chosen imaging modality. In the proposed research work; the COVID-19 is detected using transfer learning from CT scan images decomposed to three-level using stationary wavelet. A three-phase detection model is proposed to improve the detection accuracy and the procedures are as follows; Phase1- data augmentation using stationary wavelets, Phase2- COVID-19 detection using pre-trained CNN model and Phase3- abnormality localization in CT scan images. This work has considered the well known pre-trained architectures, such as ResNet18, ResNet50, ResNet101, and SqueezeNet for the experimental evaluation. In this work, 70% of images are considered to train the network and 30% images are considered to validate the network. The performance of the considered architectures is evaluated by computing the common performance measures. The result of the experimental evaluation confirms that the ResNet18 pre-trained transfer learning-based model offered better classification accuracy (training = 99.82%, validation = 97.32%, and testing = 99.4%) on the considered image dataset compared with the alternatives.
肺部异常是所有年龄段人群的常见疾病之一,这种疾病可能由多种原因引起。最近,由严重急性呼吸综合征冠状病毒2(SARS-CoV-2)引起的肺部感染在全球范围内影响了大量人群,由于其传播速度快,世界卫生组织(WHO)宣布它为大流行病。新型冠状病毒肺炎(COVID-19)疾病对呼吸系统有不良影响,可以使用选定的成像方式检测感染的严重程度。在所提出的研究工作中,利用从使用平稳小波分解为三级的CT扫描图像进行迁移学习来检测COVID-19。提出了一种三相检测模型以提高检测准确性,步骤如下:阶段1——使用平稳小波进行数据增强,阶段2——使用预训练的卷积神经网络(CNN)模型检测COVID-19,阶段3——在CT扫描图像中进行异常定位。这项工作考虑了著名的预训练架构,如ResNet18、ResNet50、ResNet101和SqueezeNet用于实验评估。在这项工作中,70%的图像用于训练网络,30%的图像用于验证网络。通过计算常见的性能指标来评估所考虑架构的性能。实验评估结果证实,与其他方案相比,基于ResNet18预训练迁移学习的模型在所考虑的图像数据集上提供了更好的分类准确率(训练 = 99.82%,验证 = 97.32%,测试 = 99.4%)。