用于生物识别的快速自动视网膜血管分割和血管标志提取方法

F. Author
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引用次数: 4

摘要

生物特征识别(Biometric identification,或biometics)是指根据个体的显著特征来识别个体。更准确地说,生物计量学是一门基于生理或行为特征来识别或验证一个人身份的科学。视网膜识别(RR)试图通过比较眼睛后部血管(视网膜血管)的图像来识别一个人。该方法充分利用了在人体所有生理特征中,视网膜图像是最好的识别特征。由于视网膜血管结构复杂的显著特征,每个人的视网膜以及每个人的眼睛都是独一无二的。视网膜血管的标志是:分叉点和终点。由于其独特和不变的性质,视网膜似乎是最精确和可靠的生物识别。本文介绍了一种视网膜眼底图像血管树自动分割和血管地标提取算法。该方法由预处理步骤、主处理步骤和后处理步骤3个主要处理阶段组成。预处理步骤包括3个阶段:a)绿色波段选择,b)掩模生成,c)血管网络检测图像增强。该过程主要包括4个阶段:a)共发生矩阵计算,b)第二熵阈值分割血管,c)形态学细化,d)地标检测。后处理步骤包含2个子阶段:e)剪枝,f) Landmark属性估计。“眼纹”表示就是利用这些显著特征构建的。实验结果表明,该方法对视网膜眼底图像进行信息检测和提取是有效的。提议方法的运行时间为8秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast automatic retinal vessel segmentation and vascular landmarks extraction method for biometric applications
Biometric identification, or biometrics, refers to identifying an individual based on his or her distinguishing characteristics. More precisely, biometrics is the science of identifying, or verifying the identity of, a person based on physiological or behavioral characteristics. Retinal Recognition (RR) seeks to identify a person by comparing images of the blood vessels in the back of the eye, the retinal vasculature. This method takes advantage of the fact that of all human physiological features, the retinal image is the best identifying characteristic. Because of the complex structure of the salient features of the retinal vessels, each person's retina and also each person's eye is unique. Retinal vessel landmarks are: bifurcation and end points. Due to its unique and unchanging nature, the retina appears to be the most precise and reliable biometric. This article describes an algorithm for automatic vessel tree segmentation and vascular landmarks extraction from retinal fundus images. The propose method is composing of 3 main processing stages: a preprocessing step, a main process step, and a post processing step. The preprocessing step consists of 3 stages): a) Green-color band selection, b) Mask generation, c) Image enhancement for vessel network detection. The main process consists of 4 stages: a) Cooccurrence matrix calculation, b) Vessel segmentation by the Second Entropy thresholding, c) Morphological thinning, and d) Landmarks detection. And the post processing step contains 2 sub stages: e) Pruning, and f) Landmark attributes estimation. The “eye print” representation is constructed using this salient features. The obtained results shown the effectiveness and accuracy of the propose method to detect and extract information from a retinal fundus images. The elapsed time for the propose method is 8 seconds.
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