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Eye Cataract Disease Classification: A Comparative Model Performance Analysis Under Data Constraints

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dc.contributor.author Rahman, Mahmudur
dc.contributor.author Sakib, K. M. Sadman
dc.contributor.author Tahmiduzzaman, KBM
dc.contributor.author Anikur Rahman, Md
dc.contributor.author Munia, Jerin Akther
dc.contributor.author Akash, Abdul Hady
dc.date.accessioned 2025-11-13T03:30:45Z
dc.date.available 2025-11-13T03:30:45Z
dc.date.issued 2025-06-10
dc.identifier.uri http://dspace.daffodilvarsity.edu.bd:8080/handle/123456789/15534
dc.description Conference Paper en_US
dc.description.abstract Blindness frequently arises from cataracts, which often require to be detected early for optimal treatment. Timely diagnosis is crucial since severe cases might require surgery. In such instances, computer-aided diagnosis can help the doctor detect the patient immediately by assisting in distinguishing the cataract condition from a normal eye. Finding enough cataract imaging data to train a custom Convolutional Neural Network(CNN) model can be challenging. Even with proper augmentation, a custom CNN model will still perform badly on testing data because it is unable to comprehend the extensive features offered by the enhanced data. However, with small as well as augmented data, the pre-trained model can still give better results than the custom CNN. Pre-trained models are trained to utilize augmented data to extract a wide range of features while boosting accuracy. Recall and accuracy are crucial factors in any disease screening process. In this study, we aimed to augment the data to mitigate the imbalance and scarcity of data, giving our pre-trained model more features to train efficiently. Later, to improve the model’s performance, we ensembled the models and assessed the ensemble models with optimal weights to find the best result on the test data, yielding an accuracy of 98.62% and Recall, Precision, F1 Score of 99% respectively. en_US
dc.language.iso en_US en_US
dc.subject Eye Cataract Disease Classification en_US
dc.subject Ensemble Approach en_US
dc.subject Densenet121 en_US
dc.subject InceptionV3 en_US
dc.subject ResNet50 en_US
dc.subject Pre-Trained Deep Learning Model en_US
dc.subject Data Augmentation en_US
dc.title Eye Cataract Disease Classification: A Comparative Model Performance Analysis Under Data Constraints en_US
dc.type Other en_US


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