HOG-CNN: Integrating Histogram of Oriented Gradients with Convolutional Neural Networks for Retinal Image Classification
Faisal Ahmed

TL;DR
HOG-CNN combines handcrafted HOG features with CNN representations to improve automated retinal disease classification, achieving high accuracy and interpretability on multiple benchmark datasets.
Contribution
This paper introduces a hybrid HOG-CNN model that fuses handcrafted features with deep learning for enhanced retinal image analysis.
Findings
Achieves 98.5% accuracy in binary diabetic retinopathy classification
Outperforms state-of-the-art models on multiple retinal disease datasets
Model is lightweight and suitable for resource-limited clinical settings
Abstract
The analysis of fundus images is critical for the early detection and diagnosis of retinal diseases such as Diabetic Retinopathy (DR), Glaucoma, and Age-related Macular Degeneration (AMD). Traditional diagnostic workflows, however, often depend on manual interpretation and are both time- and resource-intensive. To address these limitations, we propose an automated and interpretable clinical decision support framework based on a hybrid feature extraction model called HOG-CNN. Our key contribution lies in the integration of handcrafted Histogram of Oriented Gradients (HOG) features with deep convolutional neural network (CNN) representations. This fusion enables our model to capture both local texture patterns and high-level semantic features from retinal fundus images. We evaluated our model on three public benchmark datasets: APTOS 2019 (for binary and multiclass DR classification),…
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