Enhanced segmentation and complex-sclera features for human recognition with unconstrained visible-wavelength imaging

Sinan H. Alkassar, W. L. Woo, S. Dlay, J. Chambers
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引用次数: 18

Abstract

Sclera recognition has received attention recently due to the distinctive features extracted from blood vessels within the sclera. However, uncontrolled human pose, multiple iris gaze directions, different eye image capturing distance and variation in lighting conditions lead to many challenges in sclera recognition. Therefore, we propose an enhanced system for sclera recognition with visible-wavelength eye images captured in unconstrained conditions. The proposed segmentation algorithm fuses multiple color space skin classifiers to overcome the noise factors introduced through acquiring sclera images such as motion, blur, gaze and rotation. We also propose a blood vessel enhancement and feature extraction method which we denote as complex-sclera features to increase the adaptability to noisy blood vessel deformations. The proposed system is evaluated using UBIRIS.v1, UBIRIS.v2 and UTIRIS databases and the results are promising in terms of accuracy and suitability in real-time applications due to low processing times.
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增强分割和复杂巩膜特征的人类识别与无约束的可见波长成像
由于从巩膜内的血管中提取出独特的特征,巩膜识别最近受到了人们的关注。然而,不受控制的人体姿态、多个虹膜凝视方向、不同的人眼图像捕获距离以及光照条件的变化给巩膜识别带来了许多挑战。因此,我们提出了一种增强的系统,用于巩膜识别在无约束条件下捕获的可见波长眼睛图像。该分割算法融合了多个颜色空间皮肤分类器,克服了通过获取巩膜图像引入的运动、模糊、凝视和旋转等噪声因素。我们还提出了一种血管增强和特征提取方法,我们将其称为复杂巩膜特征,以提高对嘈杂血管变形的适应性。使用UBIRIS对所提出的系统进行了评估。v1, UBIRIS。v2和UTIRIS数据库,由于处理时间短,结果在实时应用的准确性和适用性方面很有希望。
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