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A fully automatic method for segmenting retinal artery walls in adaptive optics images

机译:一种在自适应光学图像中分割视网膜动脉壁的全自动方法

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Adaptive optics imaging of the retina has recently proven its capability to image micrometric structures such as blood vessels, involved in common ocular diseases. In this paper, we propose an approach for automatically segmenting the walls of retinal arteries in the images acquired with this technology. The walls are modeled as four curves approximately parallel to a previously detected reference line located near the vessel center ( axial reflection). These curves are first initialized using a tracking procedure and then more accurately positioned using an active contour model embedding a parallelism constraint. We consider both healthy and pathological subjects in the same framework and show that the proposed method applies in all cases. Extensive experiments are also proposed, by analyzing the robustness of the axial reflections detection, the influence of the tracking parameters as well as the performance of the tracking and the active contour model. Noticeably, the results show a good robustness for detecting axial reflections and a moderate influence of the tracking parameters. Compared to a naive initialization, the active contour model coupled with the tracking also offers faster convergence and better accuracy while keeping an overall error smaller or very near the inter-physicians error. (C) 2015 Elsevier B.V. All rights reserved.
机译:视网膜的自适应光学成像最近已证明其能够对涉及常见眼病的微观结构(如血管)成像。在本文中,我们提出了一种在使用该技术获取的图像中自动分割视网膜动脉壁的方法。将壁建模为四个曲线,大致平行于位于容器中心附近的先前检测到的参考线(轴向反射)。这些曲线首先使用跟踪过程进行初始化,然后使用嵌入了平行度约束的活动轮廓模型进行更精确的定位。我们在同一框架内同时考虑了健康和病理科目,并表明所提出的方法适用于所有情况。通过分析轴向反射检测的鲁棒性,跟踪参数的影响以及跟踪和活动轮廓模型的性能,还提出了广泛的实验。值得注意的是,结果显示出对于检测轴向反射具有良好的鲁棒性,并且对跟踪参数的影响适中。与天真的初始化相比,主动轮廓模型与跟踪相结合还提供了更快的收敛性和更好的准确性,同时使总体误差较小或非常接近医师间误差。 (C)2015 Elsevier B.V.保留所有权利。

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