abhikrm0102/Lung-Nodules-Detection-and-Classification-using-UNet-DenseNet
Develop a machine learning (ML) model for lung cancer detection using U-Net and DenseNet architectures. Achieve an accuracy of at least 99.96% in lung nodule detection and classification. Achieved validation of 99.9%.
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Dec 09, 2023
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