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首页> 外文期刊>Mathematical Problems in Engineering >An Automatic Cognitive Graph-Based Segmentation for Detection of Blood Vessels in Retinal Images
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An Automatic Cognitive Graph-Based Segmentation for Detection of Blood Vessels in Retinal Images

机译:基于认知图的自动分割在视网膜图像中检测血管

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摘要

This paper presents a hierarchical graph-based segmentation for blood vessel detection in digital retinal images. This segmentation employs some of perceptual Gestalt principles: similarity, closure, continuity, and proximity to merge segments into coherent connected vessel-like patterns. The integration of Gestalt principles is based on object-based features (e.g., color and black top-hat (BTH) morphology and context) and graph-analysis algorithms (e.g., Dijkstra path). The segmentation framework consists of two main steps: preprocessing and multiscale graph-based segmentation. Preprocessing is to enhance lighting condition, due to low illumination contrast, and to construct necessary features to enhance vessel structure due to sensitivity of vessel patterns to multiscale/multiorientation structure. Graph-based segmentation is to decrease computational processing required for region of interest into most semantic objects. The segmentation was evaluated on three publicly available datasets. Experimental results show that preprocessing stage achieves better results compared to state-of-the-art enhancement methods. The performance of the proposed graph-based segmentation is found to be consistent and comparable to other existing methods, with improved capability of detecting small/thin vessels.
机译:本文提出了一种基于层次图的分割方法,用于数字视网膜图像中的血管检测。这种分割采用了一些格式塔的感知原理:相似性,闭合性,连续性和接近性,以将各段合并成连贯的相连的血管状图案。格式塔原理的集成基于基于对象的功能(例如颜色和黑色礼帽(BTH)的形态和上下文)和图形分析算法(例如Dijkstra路径)。分割框架包括两个主要步骤:预处理和基于多尺度图的分割。预处理是由于照明对比度低而增强照明条件,并且由于血管图案对多尺度/多方向结构的敏感性而构造必要的特征以增强血管结构。基于图的分割将减少感兴趣区域到大多数语义对象中所需的计算处理。在三个公开可用的数据集上评估了细分。实验结果表明,与最先进的增强方法相比,预处理阶段可获得更好的结果。发现所提出的基于图的分割的性能是一致的,并且可以与其他现有方法相媲美,并且具有改进的检测小/薄血管的能力。

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