Hybrid deep neural network for automatic detection of COVID‐19 using chest x‐ray images

Author:

Acharya Upendra Kumar1ORCID,Ali Mohammad Taha2,Ahmed Mohd Kaif2,Siddiqui Mohd Tabish2,Gupta Harsh2,Kumar Sandeep3ORCID,Mishra Ajey Shakti2

Affiliation:

1. Department of Electronics & Communication Engineering KIET Group of Institutions Ghaziabad Uttar Pradesh India

2. Department of Electronics & Communication Engineering Galgotias College of Engineering and Technology Greater Noida India

3. Department of Electronics & Communication Engineering National Institute of Technology Delhi New Delhi India

Abstract

AbstractThe 2019 coronavirus (COVID‐19), started in China, spreads rapidly around the entire world. In automated medical imagery diagnostic technique, due to presence of noise in medical images and use of single pre‐trained model on low quality images, the existing deep network models cannot provide the optimal results with better accuracy. Hence, hybrid deep learning model of Xception model & Resnet50V2 model is proposed in this paper. This study suggests classifying X‐ray images into three categories namely, normal, bacterial/viral infections and Covid positive. It utilizes CLAHE & BM3D techniques to improve visual clarity and reduce noise. Transfer learning method with variety of pre‐trained models such as ResNet‐50, Inception V3, VGG‐16, VGG‐19, ResNet50V2, and Xception are used for better feature extraction and Chest X‐ray image classification. The overfitting issue were resolved using K‐fold cross validation. The proposed hybrid deep learning model results high accuracy of 97.8% which is better than existing techniques.

Publisher

Wiley

Subject

Electrical and Electronic Engineering,Computer Vision and Pattern Recognition,Software,Electronic, Optical and Magnetic Materials

Reference47 articles.

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3. GozesO Frid‐AdarM SagieN ZhangH JiW GreenspanH.Coronavirus detection and analysis on chest ct with deep learning arXiv:2004.02640. 2020.

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