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Image recognition of COVID-19 using DarkCovidNet architecture based on convolutional neural network
9
Zitationen
5
Autoren
2021
Jahr
Abstract
Purpose The purpose of this study/paper To focus on finding COVID-19 with the help of DarkCovidNet architecture on patient images. Design/methodology/approach We used machine learning techniques with convolutional neural network. Findings Detecting COVID-19 symptoms from patient CT scan images. Originality/value This paper contains a new architecture for detecting COVID-19 symptoms from patient computed tomography scan images.
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