C-Net: A Reliable Convolutional Neural Network for Biomedical Image Classification
@article{Barzekar2022CNetAR, title={C-Net: A Reliable Convolutional Neural Network for Biomedical Image Classification}, author={H. Barzekar and Zeyun Yu}, journal={Expert Syst. Appl.}, year={2022}, volume={187}, pages={116003} }
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