TY - JOUR KW - Adaptive Scavenger-Based Dingo Optimization Algorithm KW - Diabetic Retinopathy Severity Classification KW - High-Ranking-Based Deep Ensemble Learning KW - Inception KW - ResNet50 KW - ResNet9 KW - Architecture KW - VGG AU - A. Jeba Sheela AU - M. Krishnamurthy AB - Background problem: Diabetic Retinopathy (DR) is characterized by high glucose levels in the blood, which can lead to permanent vision loss and microvascular complications. Various deep learning techniques for DR analysis tend to be more complex and may experience delays in delivering accurate results, thereby limiting their application in clinical settings. Implementing real-time prediction and severity analysis of DR can address this problem by providing real-time diagnostic insights based on DR severity levels. Aim: So, this paper is intended to offer a new DR detection and severity classification model with the high-ranking-based ensemble learning approach. Methodology: The preprocessed and segmented images are utilized in the feature extraction process using ensemble architecture which incorporated VGG16, Resnet, and Inception to get three sets of features. The optimal features are selected using an Adaptive Scavenger-Based Dingo Optimization Algorithm (AS-DOX) to achieve the efficient classification of DR severity. The optimization constraint stake place in the High- Ranking-Based Deep Ensemble Learning (HR-DEL) model helps to enhance the efficacy of classification for the offered approach. The simulation analysis provides enhanced performance with the accurate classification of the designed DR severity classification approach by comparing it with other baseline methods. Result: From the result analysis, the offered method achieves 96.6 % accuracy and sensitivity rate. Moreover, it achieves a 90.52% precision rate. Conclusion: Thus, the designed DR severity classification model attains better performance, and also it is utilized for early detection of DR severity. IS - In press M1 - In press N2 - Background problem: Diabetic Retinopathy (DR) is characterized by high glucose levels in the blood, which can lead to permanent vision loss and microvascular complications. Various deep learning techniques for DR analysis tend to be more complex and may experience delays in delivering accurate results, thereby limiting their application in clinical settings. Implementing real-time prediction and severity analysis of DR can address this problem by providing real-time diagnostic insights based on DR severity levels. Aim: So, this paper is intended to offer a new DR detection and severity classification model with the high-ranking-based ensemble learning approach. Methodology: The preprocessed and segmented images are utilized in the feature extraction process using ensemble architecture which incorporated VGG16, Resnet, and Inception to get three sets of features. The optimal features are selected using an Adaptive Scavenger-Based Dingo Optimization Algorithm (AS-DOX) to achieve the efficient classification of DR severity. The optimization constraint stake place in the High- Ranking-Based Deep Ensemble Learning (HR-DEL) model helps to enhance the efficacy of classification for the offered approach. The simulation analysis provides enhanced performance with the accurate classification of the designed DR severity classification approach by comparing it with other baseline methods. Result: From the result analysis, the offered method achieves 96.6 % accuracy and sensitivity rate. Moreover, it achieves a 90.52% precision rate. Conclusion: Thus, the designed DR severity classification model attains better performance, and also it is utilized for early detection of DR severity. PY - 9998 SE - 1 SP - 1 EP - 16 T2 - International Journal of Interactive Multimedia and Artificial Intelligence TI - Ensemble Diabetic Retinopathy Severity Classification Framework With Optimized VGG16, Resnet, and Inception Features VL - In press SN - 1989-1660 ER -