CMUC, Department of Mathematics, University of Coimbra, Coimbra, 3001-501 Portugal.
CMUC, Department of Mathematics, University of Coimbra, Coimbra, 3001-501 Portugal.
Comput Biol Med. 2016 Dec 1;79:130-143. doi: 10.1016/j.compbiomed.2016.09.019. Epub 2016 Sep 26.
In this work we propose a novel method for identifying individuals based on retinal fundus image matching. The method is based on the image registration of retina blood vessels, since it is known that the retina vasculature of an individual is a signature, i.e., a distinctive pattern of the individual. The proposed image registration consists of a multiscale affine registration followed by a multiscale elastic registration. The major advantage of this particular two-step image registration procedure is that it is able to account for both rigid and non-rigid deformations either inherent to the retina tissues or as a result of the imaging process itself. Afterwards a decision identification measure, relying on a suitable normalized function, is defined to decide whether or not the pair of images belongs to the same individual. The method is tested on a data set of 21721 real pairs generated from a total of 946 retinal fundus images of 339 different individuals, consisting of patients followed in the context of different retinal diseases and also healthy patients. The evaluation of its performance reveals that it achieves a very low false rejection rate (FRR) at zero FAR (the false acceptance rate), equal to 0.084, as well as a low equal error rate (EER), equal to 0.053. Moreover, the tests performed by using only the multiscale affine registration, and discarding the multiscale elastic registration, clearly show the advantage of the proposed approach. The outcome of this study also indicates that the proposed method is reliable and competitive with other existing retinal identification methods, and forecasts its future appropriateness and applicability in real-life applications.
在这项工作中,我们提出了一种基于视网膜眼底图像匹配来识别个体的新方法。该方法基于视网膜血管的图像配准,因为已知个体的视网膜血管是一个特征,即个体的独特模式。所提出的图像配准由多尺度仿射配准和多尺度弹性配准组成。这种特殊的两步图像配准过程的主要优点在于,它能够同时考虑到固有的视网膜组织变形或成像过程本身引起的刚性和非刚性变形。然后,定义了一种决策识别度量,该度量依赖于合适的归一化函数,以确定一对图像是否属于同一个个体。该方法在一个由总共 946 张 339 个不同个体的视网膜眼底图像生成的 21721 对真实图像数据集上进行了测试,包括在不同视网膜疾病背景下接受治疗的患者和健康患者。对其性能的评估表明,它在零 FAR(假接受率)下实现了非常低的错误拒绝率(FRR),等于 0.084,并且具有较低的等错误率(EER),等于 0.053。此外,仅使用多尺度仿射配准进行的测试,而丢弃多尺度弹性配准,清楚地显示了所提出方法的优势。这项研究的结果还表明,该方法可靠且与其他现有的视网膜识别方法具有竞争力,并预测其在现实生活应用中的未来适宜性和适用性。