Two-Dimensional Automatic SSA Domain Multi-Modal Deep Neural Network for Detection of COVID-19 From Lung Ultrasound Images

Two-Dimensional Automatic SSA Domain Multi-Modal Deep Neural Network for Detection of COVID-19 From Lung Ultrasound Images

Neha Muralidharan, Shaurya Gupta, Anurag Gade, Manas Ranjan Prusty, Rajesh Kumar Tripathy, Ram Bilas Pachori
DOI: 10.4018/979-8-3693-2703-6.ch012
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Abstract

This chapter proposes an image decomposition-based multi-modal deep convolutional neural network (CNN) for the automated detection of COVID-19 using ultrasound images. The two-dimensional (2D) automatic-singular spectral analysis (Auto-SSA) is introduced to decompose ultrasound images into four modes or sub-images. The obtained modes are then used as input to the proposed multi-modal CNN model for COVID-19 detection. The performance of the proposed model is assessed on a dataset consisting of 3710 ultrasound images. The classification schemes such as COVID-19 versus pneumonia versus other ailments and COVID-19 versus pneumonia versus healthy are considered in this work. The proposed multi-modal deep CNN has obtained the maximum accuracy values of 100% and 99.87% for COVID-19 versus pneumonia versus other ailments-based classification schemes using 5-fold cross-validation (CV) and hold-out validation techniques.
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