一种鲁棒巩膜分割算法

P. Radu, J. Ferryman, Peter Wild
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引用次数: 27

摘要

巩膜分割在眼睛和虹膜生物识别中具有重要意义。然而,巩膜分割并没有作为一个单独的主题进行广泛的研究,而主要是作为一个更广泛的任务的组成部分进行总结。提出了一种基于像素级的彩色图像巩膜分割算法。该方法探索了不同的色彩空间,对图像噪声和不同的凝视方向具有鲁棒性。采用两阶段分类器增强了算法的鲁棒性。第一阶段使用一组简单分类器,第二阶段使用神经网络分类器对第一阶段分类器生成的概率空间进行运算。该方法在2015巩膜分割基准竞赛(BTAS 2015的一部分)中排名第一,准确率为95.05%,召回率为94.56%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A robust sclera segmentation algorithm
Sclera segmentation is shown to be of significant importance for eye and iris biometrics. However, sclera segmentation has not been extensively researched as a separate topic, but mainly summarized as a component of a broader task. This paper proposes a novel sclera segmentation algorithm for colour images which operates at pixel-level. Exploring various colour spaces, the proposed approach is robust to image noise and different gaze directions. The algorithm's robustness is enhanced by a two-stage classifier. At the first stage, a set of simple classifiers is employed, while at the second stage, a neural network classifier operates on the probabilities' space generated by the classifiers at the stage 1. The proposed method was ranked 1st in Sclera Segmentation Benchmarking Competition 2015, part of BTAS 2015, with a precision of 95.05% corresponding to a recall of 94.56%.
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