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A Two-Step Approach for Longitudinal Registration of Retinal Images

机译:视网膜图像纵向配准的两步法

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This paper presents a novel two step approach for longitudinal (over time) registration of retinal images. Longitudinal registration is an important preliminary step to analyse longitudinal changes on the retina including disease progression. While potential overlap and minimal geometric distortion are likely in longitudinal images, identification of reliable features over time is a potential challenge for longitudinal registration. Relying on the widely accepted phenomenon that retinal vessels are more reliable over time, the proposed method aims to accurately match bifurcation and crossover points between different timestamp images. Binary robust independent elementary features (BRIEF) are computed around bifurcation points which are then matched based on Hamming distance. Prior to computing BRIEF descriptors, a preliminary registration is performed relying on SURF key-point matching. Experiments are conducted on different image datasets containing 109 longitudinal image pairs in total. The proposed method has been found to produce accurate registration (i.e. registration with zero alignment error) for 97 % cases, which is significantly higher than the other methods in comparison. The paper also reveals the finding that both the number and distributions of accurately matching key-points pairs are important for successful registration of image pairs.
机译:本文提出了一种新颖的两步式视网膜图像纵向(随时间变化)配准方法。纵向配准是分析视网膜纵向变化(包括疾病进展)的重要的初步步骤。虽然在纵向图像中可能会出现重叠和最小的几何变形,但随着时间的流逝,可靠特征的识别是纵向对齐的潜在挑战。依靠广为接受的视网膜血管随时间推移更可靠的现象,该方法旨在准确匹配不同时间戳图像之间的分叉点和交叉点。在分叉点周围计算二进制鲁棒独立基本特征(BRIEF),然后基于汉明距离进行匹配。在计算Brief描述符之前,依赖于SURF关键点匹配执行初步注册。对总共包含109个纵向图像对的不同图像数据集进行了实验。已经发现提出的方法在97%的情况下可以产生准确的配准(即对准误差为零的配准),相比之下其他方法明显更高。本文还揭示了这样的发现,即准确匹配的关键点对的数量和分布对于图像对的成功配准很重要。

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