Abstract
Glaucoma, a leading cause of permanent vision loss globally, can be
effectively managed with early detection, making timely diagnosis
crucial for preserving sight. The paper proposed a hybrid model
combining Bidirectional Long Short-Term Memory (BiLSTM) and
Enhanced Vision Transformer (EViT) for automated glaucoma
detection in fundus images. The BiLSTM captures temporal
dependencies, while the EViT leverages spatial relationships,
improving performance. The specific methodology consists of the
following steps: (1)Image Acquisition; (2)Image preprocessing with
data augmentation; (3) Hybrid BiLSTM with Enhanced Vision
Transformer Learning for Glaucoma Disease Prediction; (4)
experimental evaluations and comparisons with conventional deep
learning models to validate the efficacy and utility of the proposed
hybrid model for Glaucoma prediction. The proposed method achieves
state-of-the-art performance on the RIM-ONE DL image dataset, with
impressive metrics: 97% precision, 96.7% recall, 97.8% accuracy, and
96.62% F1-score, surpassing existing CNN-based and attention-based
glaucoma detection approaches.
Authors
P. Revathy, R. Jayaprakash
Nallamuthu Gounder Mahalingam College, India
Keywords
Data Augmentation, Glaucoma Prediction, LSTM, BiLSTM, Vision Transformer