Detection of Diabetic Retinopathy Using Discrete Wavelet-Based Center-Symmetric Local Binary Pattern and Statistical Features.

Imtiyaz Ahmad, Vibhav Prakash Singh, Manoj Madhava Gore
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Abstract

Computer-aided diagnosis (CAD) system assists ophthalmologists in early diabetic retinopathy (DR) detection by automating the analysis of retinal images, enabling timely intervention and treatment. This paper introduces a novel CAD system based on the global and multi-resolution analysis of retinal images. As a first step, we enhance the quality of the retinal images by applying a sequence of preprocessing techniques, which include the median filter, contrast limited adaptive histogram equalization (CLAHE), and the unsharp filter. These preprocessing steps effectively eliminate noise and enhance the contrast in the retinal images. Further, these images are represented at multi-scales using discrete wavelet transform (DWT), and center symmetric local binary pattern (CSLBP) features are extracted from each scale. The extracted CSLBP features from decomposed images capture the fine and coarse details of the retinal fundus images. Also, statistical features are extracted to capture the global characteristics and provide a comprehensive representation of retinal fundus images. The detection performances of these features are evaluated on a benchmark dataset using two machine learning models, i.e., SVM and k-NN, and found that the performance of the proposed work is considerably more encouraging than other existing methods. Furthermore, the results demonstrate that when wavelet-based CSLBP features are combined with statistical features, they yield notably improved detection performance compared to using these features individually.

Abstract Image

利用基于离散小波的中心对称局部二进制模式和统计特征检测糖尿病视网膜病变
计算机辅助诊断(CAD)系统通过自动分析视网膜图像,协助眼科医生进行早期糖尿病视网膜病变(DR)检测,从而实现及时干预和治疗。本文介绍了一种基于全局和多分辨率视网膜图像分析的新型 CAD 系统。首先,我们通过应用一系列预处理技术来提高视网膜图像的质量,这些技术包括中值滤波器、对比度受限自适应直方图均衡化(CLAHE)和非锐化滤波器。这些预处理步骤能有效消除噪音,增强视网膜图像的对比度。此外,这些图像使用离散小波变换(DWT)进行多尺度表示,并从每个尺度提取中心对称局部二元模式(CSLBP)特征。从分解图像中提取的 CSLBP 特征可捕捉视网膜眼底图像的精细和粗略细节。此外,还提取了统计特征,以捕捉全局特征并提供视网膜眼底图像的综合表征。使用 SVM 和 k-NN 两种机器学习模型在基准数据集上对这些特征的检测性能进行了评估,结果发现,与其他现有方法相比,拟议工作的性能更加令人鼓舞。此外,结果表明,当基于小波的 CSLBP 特征与统计特征相结合时,与单独使用这些特征相比,它们能显著提高检测性能。
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