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Classification and detection of diabetic retinopathy based on multi-scale shallow neural network

Mohamed Elageli M. Ghet, Omar Ismael Al-Sanjary, Ali Khatibi

Abstract


The high-quality annotated training samples in medical image processing have limited the development of deep neural networks in their field. This paper designs and proposes an integrated method for classifying and detecting diabetic retinopathy based on a multi-scale shallow neural network. The method consists of multiple shallow neural network base learners, which extract pathological features under different receptive fields. The integrated learning strategy proposed is used to optimize the integration and finally realize the classification and detection of diabetic retinopathy. In addition, to verify the effectiveness of the method in this paper on a small sample data-set, based on the two-dimensional entropy of the image, multiple sub-datasets are constructed for verification. The results show that, compared with the existing methods, the integrated method for the classification and detection of diabetic retinopathy proposed in this paper has a good detection effect on a small sample data-set.


Keywords


image classification; diabetic retinopathy; multi-scale shallow neural network

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References


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DOI: https://doi.org/10.32629/jai.v6i2.638

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Copyright (c) 2023 Mohamed Elageli M. Ghet, Omar Ismael Al-Sanjary, Ali Khatibi

License URL: https://creativecommons.org/licenses/by-nc/4.0