Analysis of Activation Functions and Hyper-Parameters in Transfer Learning Models for Classifying Diabetic Retinopathy
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Abstract
A comparative study of transfer learning models with hyperparameter optimization for
classifying diabetic retinopathy has been derived in the present work. This thesis focuses on
the classification of diabetic retinopathy using transfer learning models with an optimization
of hyperparameters.
Chapter 1, deals with providing information about diabetic retinopathy, which is diabetesrelated
retinal disorder that ranks as one of the most common causes of blindness. We elaborate
on the importance of early diagnosis and possible difficulties with traditional approaches to
screening. The possibility of deep learning AI technology and its application in the
identification of diabetic retinopathy is discussed. It is crucial to focus on the design of accurate
and pragmatic automated detection systems to support the healthcare staff in early
identification and early action. The chapter also describes the purpose of this research and the
role this research can play in enhancing the quality of patient care and easing the burden of
healthcare systems.
The current understanding and gaps of literature in existing approaches are discussed in
Chapter 2, which is a literature review. As mentioned in Chapter 3, the transfer learning-based
solution applies three types of pre-trained CNN and examines different activation functions,
optimizers as well as padding modes in a manner of systematic analysis. Hyperparameters
tuning is used in the optimization of each of the developed diabetic retinopathy detection
model.
Chapter 4 covers the results of the experiments carried out, where the various evaluation
measures including accuracy, precision, recall, F1 score, specificity, and AUC-ROC are used
to compare the models. ROC curves and plots of accuracy vs the epoch and loss vs the epoch
is used to understand the performance of the model and characteristics of training. The
following are the results that we have got that supports our findings. This work will supplement
the existing scholarship on automating diabetic retinopathy screening and could positively
impact early detection and intervention
