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Finger Vein Verification using Intrinsic and Extrinsic Features

机译:使用内在和外在特征的手指静脉验证

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Finger vein has attracted substantial attention due to its good security. However, the variability of the finger vein data will be caused by the illumination, environment temperature, acquisition equipment, and so on, which is a great challenge for finger vein recognition. To address this problem, we propose a novel method to design an endto-end deep Convolutional Neural Network (CNN) for robust finger vein recognition. The approach mainly includes an Intrinsic Feature Learning (IFL) module using an auto-encoder network and an Extrinsic Feature Learning (EFL) module based on a Siamese network. The IFL module is designed to estimate the expectation of intra-class finger vein images with various offsets and rotation, while the EFL module is constructed to learn the inter-class feature representation. Then, robust verification is finally achieved by considering the distances of both intrinsic and extrinsic features. We conduct experiments on two public datasets (i.e. SDUMLA-HMT and MMCBNU_6000) and an in-house dataset (MultiView-FV) with more deformation finger vein images, and the equal error rate (EER) is 0.47%, 0.1%, and 1.69% respectively. The comparison against baseline and existing algorithms shows the effectiveness of our proposed method.
机译:由于其良好的安全性,手指静脉引起了大量的关注。然而,手指静脉数据的可变性将由照明,环境温度,采集设备等引起,这是手指静脉识别的巨大挑战。为了解决这个问题,我们提出了一种设计一种用于设计坚固的手指静脉识别的内端末端深度卷积神经网络(CNN)的新方法。该方法主要包括使用自动编码器网络的内在特征学习(IFL)模块和基于暹罗网络的外在特征学习(EFL)模块。 IFL模块旨在估计各种偏移和旋转的类内静脉图像的期望,而EFL模块被构造以学习帧间特征表示。然后,通过考虑内在和外在特征的距离来实现鲁棒验证。我们在两个公共数据集(即SDUMLA-HMT和MMCBNU_6000)上进行实验,以及具有更变形的手指静脉图像的内部数据集(MultiView-FV),并且等于错误率(eer)为0.47%,0.1%和1.69 % 分别。对基线和现有算法的比较显示了我们所提出的方法的有效性。

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