Diabetic retinopathy detection: custom CNN architecture with regularization and data augmentation for improved generalization and efficiency
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Faculty of Applied Sciences, South Eastern University of Sri Lanka, Sammanthurai.
Abstract
Diabetic Retinopathy (DR) is still among the leading causes of blindness in the working age
population worldwide. Manual screening is inconvenient and not feasible. Current research
proposes deployment of a light CNN, which was trained with the ODIR dataset (5,018
fundus images: 2,574 Normal and 2,444 Abnormal/DR), on a 70:15:15 train-validation-test
split. Dynamic class weights implemented within Binary Focal Loss handled imbalance-
induced bias. Compared to a DenseNet121 baseline of 83% accuracy implemented with Test
Time Augmentation, the proposed model achieved 98% accuracy and 0.98 (Normal) and
0.97 (Abnormal) F1-scores. Robustness was achieved with LAB color preprocessing and
CLAHE enhancement, real-time data augmentation, and stratified sampling. The model’s
efficiency enables Edge-AI deployment in low-resource environments. Future work will
incorporate Explainable AI and multi-source validation to enhance interpretability and
clinical reliability.
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Conference Proceedings of 14th Annual Science Research Session – 2025 on “NEXT-GEN SOLUTIONS: Bridging Science and Sustainability” on October 30th 2025. Faculty of Applied Sciences, South Eastern University of Sri Lanka, Sammanthurai.. pp. 22.
