A deep neural network using modified EfficientNet for skin cancer detection in dermoscopic images

Decision Analytics Journal - Tập 8 - Trang 100278 - 2023
Vipin Venugopal1, Navin Infant Raj1, Malaya Kumar Nath1, Norton Stephen2
1Department of Electronics and Communication Engineering, National Institute of Technology Puducherry, Karaikal, Puducherry, India
2Department of Pathology, Sri Venkateswara Medical College Hospital and Research Centre Ariyur, Puducherry, India

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