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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >An effective retinal blood vessel segmentation method using multi-scale line detection
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An effective retinal blood vessel segmentation method using multi-scale line detection

机译:使用多尺度线检测的有效视网膜血管分割方法

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摘要

Changes in retinal blood vessel features are precursors of serious diseases such as cardiovascular disease and stroke. Therefore, analysis of retinal vascular features can assist in detecting these changes and allow the patient to take action while the disease is still in its early stages. Automation of this process would help to reduce the cost associated with trained graders and remove the issue of inconsistency introduced by manual grading. Among different retinal analysis tasks, retinal blood vessel extraction plays an extremely important role as it is the first essential step before any measurement can be made. In this paper, we present an effective method for automatically extracting blood vessels from colour retinal images. The proposed method is based on the fact that by changing the length of a basic line detector, line detectors at varying scales are achieved. To maintain the strength and eliminate the drawbacks of each individual line detector, the line responses at varying scales are linearly combined to produce the final segmentation for each retinal image. The performance of the proposed method was evaluated both quantitatively and qualitatively on three publicly available DRIVE, STARE, and REVIEW datasets. On DRIVE and STARE datasets, the proposed method achieves high local accuracy (a measure to assess the accuracy at regions around the vessels) while retaining comparable accuracy compared to other existing methods. Visual inspection on the segmentation results shows that the proposed method produces accurate segmentation on central reflex vessels while keeping close vessels well separated. On REVIEW dataset, the vessel width measurements obtained using the segmentations produced by the proposed method are highly accurate and close to the measurements provided by the experts. This has demonstrated the high segmentation accuracy of the proposed method and its applicability for automatic vascular calibre measurement. Other advantages of the proposed method include its efficiency with fast segmentation time, its simplicity and scalability to deal with high resolution retinal images.
机译:视网膜血管特征的变化是诸如心血管疾病和中风的严重疾病的先兆。因此,对视网膜血管特征的分析可以帮助检测这些变化,并允许患者在疾病仍处于早期阶段时采取行动。此过程的自动化将有助于减少与经过培训的分级人员相关的成本,并消除手动分级带来的不一致问题。在不同的视网膜分析任务中,视网膜血管抽取起着极其重要的作用,因为这是进行任何测量之前的第一步。在本文中,我们提出了一种从彩色视网膜图像自动提取血管的有效方法。所提出的方法基于这样的事实,即,通过改变基本的线检测器的长度,可以实现不同比例的线检测器。为了保持强度并消除每个单独的线检测器的缺点,将不同比例的线响应线性组合以产生每个视网膜图像的最终分割。在三个公开可用的DRIVE,STARE和REVIEW数据集中,定量和定性地评估了所提出方法的性能。在DRIVE和STARE数据集上,提出的方法实现了较高的局部精度(一种评估船只周围区域精度的措施),同时保持了与其他现有方法相比可比的精度。目视检查分割结果表明,该方法可在中央反射血管上产生精确的分割,同时保持紧密的血管良好分离。在REVIEW数据集上,使用通过建议的方法生成的分段获得的血管宽度测量值非常准确,接近专家提供的测量值。这证明了所提出方法的高分割精度及其在自动血管口径测量中的适用性。所提出的方法的其他优点包括其具有快速分割时间的效率,其处理高分辨率视网膜图像的简单性和可扩展性。

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