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Pupil Dynamics for Iris Liveness Detection

机译:虹膜活力检测的学生动态

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摘要

The primary objective of this paper is to propose a complete methodology for eye liveness detection based on pupil dynamics. This method may serve as a component of presentation attack detection in iris recognition systems, making them more secure. Due to a lack of public databases that would support this paper, we have built our own iris capture device to register pupil size changes under visible light stimuli, and registered 204 observations for 26 subjects (52 different irides), each containing 750 iris images taken every 40 ms. Each measurement registers the spontaneous pupil oscillations and its reaction after a sudden increase of the intensity of visible light. The Kohn and Clynes pupil dynamics model is used to describe these changes; hence we convert each observation into a feature space defined by model parameters. To answer the question whether the eye is alive (that is, if it reacts to light changes as a human eye) or the presentation is suspicious (that is, if it reacts oddly or no reaction is observed), we use linear and nonlinear support vector machines to classify natural reaction and spontaneous oscillations, simultaneously investigating the goodness of fit to reject bad modeling. Our experiments show that this approach can achieve a perfect performance for the data we have collected. All normal reactions are correctly differentiated from spontaneous oscillations. We investigated the shortest observation time required to model the pupil reaction, and found that time periods not exceeding 3 s are adequate to offer a perfect performance.
机译:本文的主要目的是提出一种基于瞳孔动力学的完整的眼活力检测方法。此方法可以用作虹膜识别系统中表示攻击检测的组件,从而使它们更安全。由于缺乏支持该论文的公共数据库,我们建立了自己的虹膜捕获设备来记录在可见光刺激下瞳孔大小的变化,并注册了204个观察对象(26个对象(52个不同的虹膜))的观察值,每个对象包含750张虹膜图像每40毫秒一次。每次测量都会记录可见光强度突然增加后的自发瞳孔振荡及其反应。 Kohn和Clynes瞳孔动力学模型用于描述这些变化。因此,我们将每个观察值转换为模型参数定义的特征空间。为了回答眼睛是活着的(即,它是否像人眼一样对光变化做出反应)还是表示可疑(即,如果它的反应异常或未观察到任何反应),我们使用线性和非线性支持向量机对自然反应和自发振荡进行分类,同时研究拟合的优劣,以拒绝不良建模。我们的实验表明,这种方法可以对我们收集的数据实现完美的性能。正确区分了所有正常反应和自发振荡。我们研究了对瞳孔反应进行建模所需的最短观察时间,发现不超过3秒的时间足以提供理想的性能。

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