Retina Blood Vessels Segmentation and Classification with the Multi-featured Approach.

Usharani Bhimavarapu
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Abstract

Segmenting retinal blood vessels poses a significant challenge due to the irregularities inherent in small vessels. The complexity arises from the intricate task of effectively merging features at multiple levels, coupled with potential spatial information loss during successive down-sampling steps. This particularly affects the identification of small and faintly contrasting vessels. To address these challenges, we present a model tailored for automated arterial and venous (A/V) classification, complementing blood vessel segmentation. This paper presents an advanced methodology for segmenting and classifying retinal vessels using a series of sophisticated pre-processing and feature extraction techniques. The ensemble filter approach, incorporating Bilateral and Laplacian edge detectors, enhances image contrast and preserves edges. The proposed algorithm further refines the image by generating an orientation map. During the vessel extraction step, a complete convolution network processes the input image to create a detailed vessel map, enhanced by attention operations that improve modeling perception and resilience. The encoder extracts semantic features, while the Attention Module refines blood vessel depiction, resulting in highly accurate segmentation outcomes. The model was verified using the STARE dataset, which includes 400 images; the DRIVE dataset with 40 images; the HRF dataset with 45 images; and the INSPIRE-AVR dataset containing 40 images. The proposed model demonstrated superior performance across all datasets, achieving an accuracy of 97.5% on the DRIVE dataset, 99.25% on the STARE dataset, 98.33% on the INSPIREAVR dataset, and 98.67% on the HRF dataset. These results highlight the method's effectiveness in accurately segmenting and classifying retinal vessels.

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利用多特征方法进行视网膜血管分割和分类
由于小血管固有的不规则性,视网膜血管的分割是一项重大挑战。这种复杂性来自于有效合并多层次特征的复杂任务,以及连续下采样步骤中潜在的空间信息损失。这尤其影响了对对比度微弱的小血管的识别。为了应对这些挑战,我们提出了一个专门用于自动动脉和静脉(A/V)分类的模型,作为血管分割的补充。本文介绍了一种先进的方法,利用一系列复杂的预处理和特征提取技术对视网膜血管进行分割和分类。集合滤波器方法结合了双边和拉普拉斯边缘检测器,增强了图像对比度并保留了边缘。所提出的算法通过生成方向图进一步完善图像。在血管提取步骤中,一个完整的卷积网络会对输入图像进行处理,生成详细的血管图,并通过注意力操作来增强建模感知和复原能力。编码器提取语义特征,而注意力模块则完善血管描绘,从而获得高度准确的分割结果。该模型使用 STARE 数据集(包含 400 幅图像)、DRIVE 数据集(包含 40 幅图像)、HRF 数据集(包含 45 幅图像)和 INSPIRE-AVR 数据集(包含 40 幅图像)进行了验证。所提出的模型在所有数据集上都表现出卓越的性能,在 DRIVE 数据集上的准确率达到 97.5%,在 STARE 数据集上的准确率达到 99.25%,在 INSPIREAVR 数据集上的准确率达到 98.33%,在 HRF 数据集上的准确率达到 98.67%。这些结果凸显了该方法在准确分割和分类视网膜血管方面的有效性。
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