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Obtaining Stable Iris Codes Exploiting Low-Rank Tensor Space and Spatial Structure Aware Refinement for Better Iris Recognition

机译:获得稳定的虹膜码利用低级张量空间和空间结构意识到更好的虹膜识别

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The strength of iris recognition in terms of optimal biometric performance has been challenged by inevitable operational conditions in unconstrained scenarios. In this work we present a new approach for extracting stable iris weight maps to account for the noisy iris representation as a result of capture conditions and ineluctable segmentation errors. Traditional approaches to extract stable bits often ignore inter-code relations under the presence of multiple enrolment samples. Unlike previous works, we formulate the stable code extraction using tensor representation to exactly recover the low-rank non-noisy iris information using the multiple enrolment samples. Further, the proposed approach produces stable class specific (user specific) iris weight maps by eliminating the error bits due to sub-optimal segmentation or pupil dilation effects using spatial correspondence in a patch-wise manner. Through the set of experiments on two publicly available iris databases acquired under semi-constrained and unconstrained setting, we demonstrate the superiority for identification and verification performance over current state-of-the-art algorithms. Rank-1 identification rate on CASIAv4 distance database is achieved at 93.3% and a verification accuracy of Genuine Match Rate (GMR) of 80% at False Match Rate(FMR) of 0.0001 indicating the applicability of proposed approach in operational scenarios.
机译:在最佳生物识别性能方面,虹膜识别的强度受到不受约束方案中不可避免的业务条件的挑战。在这项工作中,我们提出了一种提取稳定的IRIS权重映射的新方法,以解释由于捕获条件和不可推测的分割错误而导致的噪声虹膜表示。提取稳定位的传统方法通常在存在多个注册样本的存在下忽略典型码。与以前的作品不同,我们使用张量表示配制稳定的代码提取,以使用多个注册样本完全恢复低级非噪声虹膜信息。此外,所提出的方法通过使用以贴片方式使用空间对应的子最优分割或瞳孔扩张效果消除误差位,产生稳定的类别(用户特定)IRIS权重映射。通过在半约束和无约束环境下获得的两个公共可用虹膜数据库的一组实验,我们展示了对当前最先进的算法的识别和验证性能的优越性。 Casiav4距离数据库的Rank-1识别率为93.3%,真正的匹配率(GMR)的验证精度为80%,假匹配率(FMR)为0.0001,表明在操作场景中提出的方法的适用性。

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