Learning Global Fingerprint Features by Training a Fully Convolutional Network with Local Patches

Ruilin Li, Dehua Song, Yuhang Liu, Jufu Feng
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引用次数: 13

Abstract

Learning fingerprint representations is of critical importance in fingerprint indexing algorithms. Convolutional neural networks (CNNs) provide fingerprint features that perform remarkably well. In previous CNN based methods, global fingerprint features are acquired by training with entire fingerprints or by aggregating local descriptors. The former method does not make full use of the information of matched minutiae, thereby achieving relatively-low performance. While the latter way needs to extract all local features, which is time-consuming. In this paper, we propose an efficient strategy to learn global features making full use of the information of matched minutiae. We train a fully convolutional network (FCN) with local patches. Patch classes contain more information than the original fingerprint classes, and such information is helpful to learn discriminative features. In the indexing stage, we utilize the capability of FCN to get global features of whole fingerprints. Furthermore, the learned features are robust to translation, rotation, and occlusion. Therefore, we do not need to align fingerprints. The proposed approach outperforms the state-of-the-art on benchmark datasets. We achieve 99.83% identification accuracy at the penetration rate of 1% using only 256-bytes per fingerprint on NIST SD4.
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用局部补丁训练全卷积网络学习全局指纹特征
在指纹索引算法中,指纹表征的学习是至关重要的。卷积神经网络(cnn)提供了非常出色的指纹特征。在以前的基于CNN的方法中,通过对整个指纹进行训练或对局部描述符进行聚合来获得全局指纹特征。前一种方法没有充分利用匹配细节的信息,性能相对较低。后一种方法需要提取所有的局部特征,耗时较长。本文提出了一种充分利用匹配细节信息学习全局特征的有效策略。我们训练了一个带有局部补丁的全卷积网络(FCN)。补丁类比原始指纹类包含更多的信息,这些信息有助于识别特征的学习。在索引阶段,我们利用FCN的能力来获取整个指纹的全局特征。此外,学习到的特征对平移、旋转和遮挡具有鲁棒性。因此,我们不需要对齐指纹。所提出的方法在基准数据集上优于最先进的方法。我们在NIST SD4上每个指纹仅使用256字节,在1%的渗透率下实现了99.83%的识别准确率。
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