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IMPLEMENTASI KOMBINASI ARSITEKTUR DOUBLE U-NET, BiLSTM DAN ATTENTION GATE DALAM SEGMENTASI EXUDATE PADA CITRA RETINA PENYAKIT DIABETIC RETINOPATHY
Diabetic retinopathy is an eye disease caused by high glucose levels and high blood pressure that can lead to blindness. One of the signs of diabetic retinopathy is the presence of exudate in the retinal image. Diabetic retinopathy can be analysed by segmenting exudate using Convolutional Neural Network (CNN) method. This research used Double U-Net, BiLSTM, and Attention Gate architecture for exudate segmentation in retinal images. BiLSTM is applied in the bridge part to reduce the risk of redundancy and model complexity through bidirectional drilling. Attention Gate inserted in the decoder section improves feature representation by giving more attention to relevant features. The exudate segmentation results with the application of the proposed architecture obtained an accuracy value of 98% indicates the model is very good at predicting all labels correctly overall. Sensitivity of 72% indicates the model predicts the exudate area quite well. Specificity of 99% indicates the model is very good at predicting areas that are not part of the exudate. F1-Score 76% indicates the model has a good balance between sensitivity and specificity. IoU 62% indicates a poor level of overlap between the predicted image and the ground truth. The results of this study show that the model predicts and performs well in segmenting exudates in retinal images. However, improvements in F1-score and IoU are needed to improve the segmentation performance to be more optimal.
Inventory Code | Barcode | Call Number | Location | Status |
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2507003121 | T173998 | T1739982025 | Central Library (Reference) | Available but not for loan - Not for Loan |
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