Saeed, 2020 - Google Patents
A machine learning based approach for segmenting retinal nerve images using artificial neural networksSaeed, 2020
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- 14719977089490632094
- Author
- Saeed A
- Publication year
- Publication venue
- Engineering, Technology & Applied Science Research
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Abstract Artificial Intelligence (AI) based Machine Learning (ML) is gaining more attention from researchers. In ophthalmology, ML has been applied to fundus photographs, achieving robust classification performance in the detection of diseases such as diabetic retinopathy …
- 229930002945 all-trans-retinaldehyde 0 title abstract description 28
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