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Multi-patch deep sparse histograms for iris recognition in visible spectrum using collaborative subspace for robust verification

机译:使用协作子空间进行稳健验证的多补丁深稀疏直方图,用于可见光谱中的虹膜识别

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摘要

The challenge of recognizing iris in visible spectrum images captured using smartphone stems from heavily degraded data (due to reflection, partial closure of eyes, pupil dilation due to light) where the iris texture is either not visible or visible to very low extent. In order to perform reliable verification, the set of extracted features should be robust and unique to obtain high similarity scores between different samples of same subject while obtaining high dissimilarity score between samples of different subjects. In this work, we propose multi-patch deep features using deep sparse filters to obtain robust features for reliable iris recognition. Further, we also propose to represent them in a collaborative subspace to perform classification via maximized likelihood, even under single sample enrolment. Through the set of extensive experiments on MICHE-I iris dataset, we demonstrate the robustness of newly proposed scheme which achieves high verification rate (GMR > 95%) with low Equal Error Rate (EER < 2%). Further, the robustness of proposed feature representation is reiterated by employing simple distance measures which has outperformed the state-of-art techniques. Additionally, the scheme is tested on the MICHE-II challenge evaluation dataset where the results are promising with GMR =100% on limited sub-corpus of iPhone data. (C) 2017 Elsevier B.V. All rights reserved.
机译:在使用智能手机捕获的可见光谱图像中识别虹膜的挑战源于严重退化的数据(由于反射,眼睛部分闭合,由于光导致的瞳孔扩张),其中虹膜纹理不可见或可见度非常低。为了执行可靠的验证,提取的特征集应该是健壮且唯一的,以在同一对象的不同样本之间获得高相似性评分,同时在不同对象的样本之间获得高相似性评分。在这项工作中,我们提出了使用深度稀疏滤波器的多色深度特征以获得可靠的虹膜识别的鲁棒特征。此外,我们还建议将它们表示在协作子空间中,以便即使在单个样本注册下也可以通过最大可能性进行分类。通过在MICHE-I虹膜数据集上进行的广泛实验,我们证明了新提出的方案的鲁棒性,该方案可实现高验证率(GMR> 95%)和低等错误率(EER <2%)。此外,通过采用简单的距离度量来重申所提出的特征表示的鲁棒性,该距离度量已经超过了最新技术。此外,该方案在MICHE-II挑战评估数据集上进行了测试,结果在iPhone数据的有限子集中GMR = 100%时,结果很有希望。 (C)2017 Elsevier B.V.保留所有权利。

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