Multi-class multi-label ophthalmological disease detection using transfer learning based convolutional neural network

Biomedical Signal Processing and Control - Tập 66 - Trang 102329 - 2021
Neha Gour1, Pritee Khanna1
1PDPM Indian Institution of Information Technology, Design and Manufacturing, Jabalpur, India

Tài liệu tham khảo

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