Deep Transfer Learning Based Unified Framework for COVID19 Classification and Infection Detection from Chest X-Ray Images

被引:0
作者
Sankar Ganesh Sundaram
Saleh Abdullah Aloyuni
Raed Abdullah Alharbi
Tariq Alqahtani
Mohamed Yacin Sikkandar
Chidambaram Subbiah
机构
[1] KPR Institute of Engineering and Technology,Department of Artificial Intelligence and Data Science
[2] Majmaah University,Department of Public Health, College of Applied Medical Sciences
[3] Majmaah University,Department of Medical Equipment Technology, College of Applied Medical Sciences
[4] National Engineering College,Department of Information Technology
来源
Arabian Journal for Science and Engineering | 2022年 / 47卷
关键词
COVID19; Classification; Segmentation; Chest X-ray; Transfer learning; Residual SqueezeNet; SegNet;
D O I
暂无
中图分类号
学科分类号
摘要
The presentation of the COVID19 has endangered several million lives worldwide causing thousands of deaths every day. Evolution of COVID19 as a pandemic calls for automated solutions for initial screening and treatment management. In addition to the thermal scanning mechanisms, findings from chest X-ray imaging examinations are reliable predictors in COVID19 detection, long-term monitoring and severity evaluation. This paper presents a novel deep transfer learning based framework for COVID19 detection and segmentation of infections from chest X-ray images. It is realized as a two-stage cascaded framework with classifier and segmentation subnetwork models. The classifier is modeled as a fine-tuned residual SqueezeNet network, and the segmentation network is implemented as a fine-tuned SegNet semantic segmentation network. The segmentation task is enhanced with a bioinspired Gaussian Mixture Model-based super pixel segmentation. This framework is trained and tested with two public datasets for binary and multiclass classifications and infection segmentation. It achieves accuracies of 99.69% and 99.48% for binary and three class classifications, and a mean accuracy of 83.437% for segmentation. Experimental results and comparative evaluations demonstrate the superiority of this unified model and signify potential extensions for biomarker definition and severity quantization.
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页码:1675 / 1692
页数:17
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