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Convolutional neural networks for ocular smartphone-based biometrics

机译:卷积神经网络用于基于眼睛智能手机的生物识别

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Ocular biometrics in the visible spectrum has emerged as an area of significant research activity. In this paper, we propose a hybrid convolution-based model, for verifying a pair of periocular images containing the iris. We compose the hybrid model as a combination of an unsupervised and a supervised convolution neural network, and augment the combination with the well-known geometry-based Root SIFT model. We also compare the performance of both convolution-based models against each other, as well as, with the baseline Root SIFT. In the first (unsupervised w.r.t target dataset) convolution based deep learning approach, we use a stacked convolutional architecture, using external models learned a-priori on external facial and periocular data, on top of the baseline Root SIFT model applied on the provided data, and apply different score fusion models. In the second (supervised w.r.t target dataset) approach, we again use a stacked convolution architecture; but here, we learn the feature vector in a supervised manner. On the MICHE-II dataset, we obtain an AUROC of 0.946 and 0.981, and EER of 0.092 and 0.066, for the two models respectively. The hybrid model we propose, which combines these two convolutional neural networks, outperforms the constituents, in case both images arise from the same device type, but not necessarily so otherwise, obtaining a AUROC of 0.986 and EER of 0.053. We also benchmark our performance on the standard VISOB database, where we outperform the state of the art methods, achieving a TPR of 99.5% at a FPR of 0.001%. Given the robustness and significant performance of our methodology, our system can be used in practical applications with minimal error. (C) 2017 Elsevier B.V. All rights reserved.
机译:可见光谱中的眼生物识别技术已经成为重要的研究领域。在本文中,我们提出了一种基于混合卷积的模型,用于验证一对包含虹膜的眼周图像。我们将混合模型组合为无监督和有监督卷积神经网络的组合,并使用众所周知的基于几何的Root SIFT模型扩大组合。我们还比较了基于卷积的两个模型的性能,以及基线Root SIFT的性能。在第一种(无监督的wrt目标数据集)基于卷积的深度学习方法中,我们使用堆叠式卷积体系结构,其中使用在外部面部和眼周数据上先验学习的外部模型,并在提供的数据上应用基准Root SIFT模型之外,并应用不同的分数融合模型。在第二种(受监督的w.r.t目标数据集)方法中,我们再次使用堆叠式卷积体系结构;但是在这里,我们以监督的方式学习特征向量。在MICHE-II数据集上,两个模型的AUROC分别为0.946和0.981,EER为0.092和0.066。我们建议的混合模型结合了这两个卷积神经网络,在两个图像均来自同一设备类型的情况下,其性能优于组件,但并非一定如此,因此获得的AUROC为0.986,EER为0.053。我们还在标准VISOB数据库上对性能进行基准测试,该数据库的性能优于最先进的方法,TPR为0.001%时,TPR为99.5%。鉴于我们的方法的稳定性和显着的性能,我们的系统可以在实际应用中以最小的误差使用。 (C)2017 Elsevier B.V.保留所有权利。

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