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Fast minutiae extractor using neural network

机译:使用神经网络的快速细节提取器

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摘要

In this paper, we propose a fast and reliable neural network-based algorithm for fingerprint minutiae extraction. In particular, our algorithm involves a two-stage process: in the first stage, a network generates candidate patches in which minutiae may exist; in the second stage, another network extracts minutiae from every patch.These two networks share a common part to reduce the running time. Moreover, we analyze the properties of fingerprint images and propose a principle for designing efficient networks for minutiae extraction. For efficiency, our algorithm extracts minutiae directly from raw fingerprint images, without traditional pre-processes. Another benefit of this design is that the networks only require datasets with minutiae labels for training. On the public fingerprint datasets (FVC 2002 and 2004), our algorithm requires 26 ms on average to extract minutiae from one fingerprint on a single GPU. Compared with other neural network-based algorithms, our algorithm runs approximately 10 times faster and does not lose substantial accuracy. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在本文中,我们提出了一种快速可靠的神经网络基于神经网络的指纹细节提取算法。特别是,我们的算法涉及两阶段过程:在第一阶段,网络生成候选贴片,其中可能存在细小块;在第二阶段,另一个网络从每个补丁中提取minutiae。这两个网络共享一个常用部分以减少运行时间。此外,我们分析了指纹图像的性质,并提出了设计高效网络的原则,用于测定的细节提取。为了效率,我们的算法直接从原始指纹图像提取细节,而无需传统的预流程。这种设计的另一个好处是网络只需要具有Metiae标签的数据集进行培训。在公共指纹数据集(FVC 2002和2004)上,我们的算法平均需要26毫秒,以从单个GPU上的一个指纹提取细节。与其他基于神经网络的算法相比,我们的算法速度快大约10倍,不会损失大量准确性。 (c)2020 elestvier有限公司保留所有权利。

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