基于线匹配方法的视网膜图像半自动配准

C. Lupascu, D. Tegolo, F. Bellavia, Cesare Valenti
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引用次数: 14

摘要

准确的视网膜图像配准对于跟踪眼部相关疾病的发展至关重要。提出了一种基于视网膜图特征的半自动视网膜图像时间配准方法。这些特征表示连接视网膜血管树上的血管标志的直线:分叉、分支、交叉点、终点。在构建的视网膜图中,两个血管标志之间的一条直线表示它们由原始视网膜图像中的血管段连接。为了避免视网膜血管分割算法中出现的错误而导致信息的丢失,该算法采用人工提取标记点的方法。设计了直线模型来计算相似度度量,以量化图像之间的直线匹配。从匹配线集合中提取对应点,计算全局变换。利用累积逆一致性误差(CICE)评价了该配准方法在无真实情况下的性能。
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Semi-automatic registration of retinal images based on line matching approach
Accurate retinal image registration is essential to track the evolution of eye-related diseases. We propose a semiautomatic method based on features relying upon retinal graphs for temporal registration of retinal images. The features represent straight lines connecting vascular landmarks on the retina vascular tree: bifurcations, branchings, crossings, end points. In the built retinal graph, one straight line between two vascular landmarks indicates that they are connected by a vascular segment in the original retinal image. The locations of the landmarks are manually extracted to avoid the information loss due to errors in a retinal vessels segmentation algorithms. A straight line model is designed to compute a similarity measure to quantify the line matching between images. From the set of matching lines, corresponding points are extracted and a global transformation is computed. The performance of the registration method is evaluated in the absence of ground truth using the cumulative inverse consistency error (CICE).
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