CNN Fusion for Diabetic Retinopathy Screening
Analysis
Key Takeaways
- •Feature-level fusion of CNN backbones improves DR screening accuracy compared to single models.
- •The Eff+Den fusion model provides a good balance between accuracy and computational efficiency.
- •Lightweight fusion models can generalize well across heterogeneous datasets.
- •The study highlights the importance of considering both accuracy and throughput in real-world DR screening workflows.
“The EfficientNet-B0 + DenseNet121 (Eff+Den) fusion model achieves the best overall mean performance (accuracy: 82.89%) with balanced class-wise F1-scores.”