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Registration of Color and OCT Fundus Images Using Low-dimensional Step Pattern Analysis

机译:使用低维阶梯模式分析对彩色和OCT眼底图像进行配准

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Existing feature descriptor-based methods on retinal image registration are mainly based on scale-invariant feature transform (SIFT) or partial intensity invariant feature descriptor (PIIFD). While these descriptors are many times being exploited, they have not been applied to color fundus and optical coherence tomography (OCT) fundus image pairs. OCT fundus images are challenging to register as they are often degraded by speckle noise. The descriptors also demand high dimensionality to adequately represent the features of interest. To this end, this paper presents a registration algorithm coined low-dimensional step pattern analysis (LoSPA), tailored to achieve low dimensionality while providing sufficient distinctiveness to effectively register OCT fundus images with color fundus photographs. The algorithm locates hypotheses of robust corner features based on connecting edges from the edge maps, mainly formed by vascular junctions. It continues with describing the corner features in a rotation invariant manner using step patterns. These customized step patterns are insensitive to intensity changes. We conduct comparative evaluation and LoSPA achieves a higher success rate in registration when compared to the state-of-the-art algorithms.
机译:现有的基于特征描述符的视网膜图像配准方法主要基于尺度不变特征变换(SIFT)或部分强度不变特征描述符(PIIFD)。尽管这些描述符被多次使用,但它们尚未应用于彩色眼底和光学相干断层扫描(OCT)眼底图像对。 OCT眼底图像的成像极具挑战性,因为它们通常会因斑点噪声而退化。描述符还要求高维,以充分表示感兴趣的特征。为此,本文提出了一种配准算法,即低维阶梯图案分析(LoSPA),旨在实现低维,同时提供足够的独特性,以有效地将OCT眼底图像与彩色眼底照片配准。该算法基于边缘图的连接边缘(主要由血管结形成)来确定鲁棒拐角特征的假设。它继续使用步骤模式以旋转不变的方式描述拐角特征。这些定制的阶跃模式对强度变化不敏感。与最先进的算法相比,我们进行了比较评估,并且LoSPA的注册成功率更高。

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