1. Adaptive Class Learning to Screen Diabetic Disorders in Fundus Images of Eye
- Author
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Dey, Shramana, Dutta, Pallabi, Bhattacharyya, Riddhasree, Pal, Surochita, Mitra, Sushmita, and Raman, Rajiv
- Subjects
Computer Science - Computer Vision and Pattern Recognition ,Computer Science - Artificial Intelligence - Abstract
The prevalence of ocular illnesses is growing globally, presenting a substantial public health challenge. Early detection and timely intervention are crucial for averting visual impairment and enhancing patient prognosis. This research introduces a new framework called Class Extension with Limited Data (CELD) to train a classifier to categorize retinal fundus images. The classifier is initially trained to identify relevant features concerning Healthy and Diabetic Retinopathy (DR) classes and later fine-tuned to adapt to the task of classifying the input images into three classes: Healthy, DR, and Glaucoma. This strategy allows the model to gradually enhance its classification capabilities, which is beneficial in situations where there are only a limited number of labeled datasets available. Perturbation methods are also used to identify the input image characteristics responsible for influencing the models decision-making process. We achieve an overall accuracy of 91% on publicly available datasets., Comment: Accepted at International Conference on Pattern Recognition (ICPR) 2024
- Published
- 2025
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