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Deep Dense Multi-level feature for partial high-resolution fingerprint matching

机译:Deep Dense Multi-level功能,用于部分高分辨率指纹匹配

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摘要

Fingerprint sensors on mobile devices commonly have limited area, which results in partial fingerprints. Optical sensor can capture fingerprints at very high resolution (2000ppi) with abundant details like pores, incipients, etc. It is quite crucial to develop effective partial-to-partial high-resolution fingerprint matching algorithms. Existing fingerprint matching methods are mainly minutiae-based, with fusion of different levels of features. Their accuracy degrades significantly in our application due to minutiae insufficiency and detection error. In this paper, we propose a novel representation for partial high-resolution fingerprint, named Deep Dense Multi-level feature (DDM). We train a deep convolutional neural network that can extract discriminative features inside any local fingerprint block with certain size. We find that not only minutiae but most local blocks contain sufficient features. Moreover, we analyze DDM and find that it contains multi-level information. When utilizing DDM for partial-to-partial matching, we first extract features block by block through a fully convolutional network, next match the two sets of features pairwise exhaustively, and then select the bi-directional best matches to compute matching score. Experiments indicate that our method outperforms several state-of-the-art approaches.
机译:移动设备上的指纹传感器通常具有有限的面积,这会导致部分指纹。光学传感器可以以非常高的分辨率(2000ppi)捕获具有丰富细节的指纹,例如毛孔,初发等。开发有效的部分到部分高分辨率指纹匹配算法至关重要。现有的指纹匹配方法主要基于细节细节,并融合了不同级别的特征。由于细节不足和检测错误,它们的准确性在我们的应用中会大大降低。在本文中,我们提出了一种用于部分高分辨率指纹的新颖表示形式,称为“深密度多级特征(DDM)”。我们训练了一个深度卷积神经网络,该网络可以提取具有一定大小的任何本地指纹块内的判别特征。我们发现不仅细节,而且大多数局部块都包含足够的功能。此外,我们分析了DDM,发现它包含多级信息。当使用DDM进行部分到部分匹配时,我们首先通过完全卷积网络逐块提取特征,然后穷尽地将两组特征成对匹配,然后选择双向最佳匹配以计算匹配分数。实验表明,我们的方法优于几种最先进的方法。

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