Experimental investigation of feature descriptors for retinal image registration

E. Šabanovič, D. Matuzevičius
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引用次数: 8

Abstract

Retinal imaging is an important test for diagnosis of eye diseases and treatment evaluation. One of the steps in eye fundus image processing is image registration. It is inevitable in order to eliminate geometrical differences, introduced during imaging with different settings or pursuing follow up disease screenings. One of available strategies for image alignment is feature-based approach where feature descriptors have an important role in registration process. The quality of feature descriptors affects feature matching performance and overall results of image registration. In this paper we present a comparison of various feature extractors in tandem with conventional, bio-inspired or deep neural network-based local feature detectors applied for retinal image registration. Comparative evaluation of descriptors has been carried out using Fundus Image Registration Dataset, measuring Euclidean distance between ground truth points after image alignment. We present the results showing the performance of various feature detector-descriptor pairs applied for retinal image registration.
视网膜图像配准特征描述符的实验研究
视网膜成像是眼科疾病诊断和治疗评价的重要检测手段。眼底图像处理的一个重要步骤是图像配准。为了消除几何差异是不可避免的,这些差异是在不同设置的成像过程中引入的,或者是在进行后续疾病筛查时引入的。基于特征的图像对齐方法是一种有效的图像对齐策略,其中特征描述符在配准过程中起着重要的作用。特征描述符的质量影响着特征匹配的性能和图像配准的整体效果。在本文中,我们比较了各种特征提取器与传统的、生物启发的或基于深度神经网络的局部特征检测器在视网膜图像配准中的应用。使用眼底图像配准数据集对描述符进行比较评价,测量图像对齐后地面真值点之间的欧氏距离。我们展示了用于视网膜图像配准的各种特征检测器-描述符对的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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