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Detection of Covid-19 and other pneumonia cases from CT and X-ray chest images using deep learning based on feature reuse residual block and depthwise dilated convolutions neural network

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GaffariCelik/Covid-19

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CovidDWNet

Fig-5

Feature reuse residual block architecture-(a) and depthwise dilated convolutions architecture-(b), which constitute the basic structure of the proposed architecture

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Performance results of the proposed architecture in binary and multiple classes

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ROC analysis of the proposed model.

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From CovidDWNet architecture using Grad-CAM resulting sample heatmaps and Covid-19 visuals

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Updated version and Code metadata

https://doi.org/10.24433/CO.2183919.v1

Citation and More Information:

Celik, G. (2023). Detection of Covid-19 and other pneumonia cases from CT and X-ray chest images using deep learning based on feature reuse residual block and depthwise dilated convolutions neural network. Applied Soft Computing, 133, 109906. https://doi.org/10.1016/j.asoc.2022.109906

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Detection of Covid-19 and other pneumonia cases from CT and X-ray chest images using deep learning based on feature reuse residual block and depthwise dilated convolutions neural network

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