Segmentation-Based Attention Mask for Enhancing Fundus Image Diagnosing
Abstract
Abstract. Approach to improve the classification of ocular diseases from fundus images by leveraging semantic segmentation as an attention mechanism. Key anatomical structures – optic disc, optic cup, and retinal vessels – are segmented using deep learning models and combined into weighted attention masks. These masks guide a classifier based on EfficientNetB6 to focus on clinically relevant regions, resulting in significant improvements in diagnostic accuracy. The method enhances detection sensitivity for subtle disease features and increases model interpretability.
Description
Himbitskaya, E. Segmentation-Based Attention Mask for Enhancing Fundus Image Diagnosing / E. Himbitskaya, K. Svistunova, S. Kezik // Pattern Recognition and Information Processing (PRIP'2025) : Proc. of the 17th Int. Conf., Minsk, Belarus, 16–18 Sept. 2025 / United Institute of Informatics Problems of the National Academy of Sciences of Belarus ; ed.: A. Tuzikov, A. Belotserkovsky. – Minsk, 2025. – P. 443–445. – URL: https://prip.by/2025/assets/files/PRIP2025_Proceedings_final.pdf.



