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Automated layer segmentation of macular OCT images via graph-based SLIC superpixels and manifold ranking approach

机译:基于曲线图的切杆超像素和歧管排名方法自动化黄斑OCT图像的自动化层分割

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摘要

Using the graph-based a simple linear iterative clustering (SLIC) superpixels and manifold ranking technology, a novel automated intra-retinal layer segmentation method is proposed in this paper. Eleven boundaries of ten retinal layers in optical coherence tomography (OCT) images are exactly, fast and reliably quantified. Instead of considering the intensity or gradient features of the single-pixel in most existing segmentation methods, the proposed method focuses on the superpixels and the connected components-based image cues. The image is represented as some weighted graphs with superpixels or connected components as nodes. Each node is ranked with the gradient and spatial distance cues via graph-based Dijkstra's method or manifold ranking. So that it can effectively overcome speckle noise, organic texture and blood vessel artifacts issues. Segmentation is carried out in a three-stage scheme to extract eleven boundaries efficiently. The segmentation algorithm is validated on 2D and 3D OCT images in three databases, and is compared with the manual tracings of two independent observers. It demonstrates promising results in term of the mean unsigned boundaries errors, the mean signed boundaries errors, and layers thickness errors. (C) 2016 Elsevier Ltd. All rights reserved.
机译:使用基于图的简单线性迭代聚类(SLIC)超像素和歧管排名技术,本文提出了一种新型自动化的视网膜内层分段方法。在光学相干断层扫描(OCT)图像中的十个视网膜层的11个边界是完全的,快速且可靠地量化的。代替考虑在大多数现有分段方法中单像素的强度或梯度特征,所提出的方法侧重于超像素和基于连接的组件的图像线索。图像表示为带有超像素或连接组件的一些加权图形作为节点。每个节点通过基于图形的Dijkstra的方法或歧管排名在梯度和空间距离提示中排名。这样它就可以有效地克服斑点噪声,有机纹理和血管伪影问题。分割在三阶段方案中进行,以有效地提取11个边界。分段算法在三个数据库中在2D和3D OCT图像上验证,并与两个独立观察者的手动曲线进行比较。它展示了在平均无符号边界错误,平均签名的边界错误和层厚度误差中的有希望的结果。 (c)2016 Elsevier Ltd.保留所有权利。

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