利用深度学习提取指纹细节

L. N. Darlow, Benjamin Rosman
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引用次数: 54

摘要

指纹数据的高度可变性(例如,由于质量、湿度条件和扫描仪的差异)使得提取细节的任务具有挑战性,特别是当从依赖于可调算法组件(如图像增强)的角度进行处理时。我们将细节提取作为一个机器学习问题,并提出了一个深度神经网络——MENet,用于细节提取网络——来学习细节点的数据驱动表示。通过使用几种细节提取算法的现有功能,我们建立了一个投票方案来构建训练数据,从而在大型数据集上以自动化的方式训练MENet,以实现鲁棒性和可移植性,从而消除了繁琐的手动数据标记的需要。我们提出了一个后处理程序,从MENet的输出中确定精确的细节位置。我们表明,与现有的细节提取器相比,MENet表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fingerprint minutiae extraction using deep learning
The high variability of fingerprint data (owing to, e.g., differences in quality, moisture conditions, and scanners) makes the task of minutiae extraction challenging, particularly when approached from a stance that relies on tunable algorithmic components, such as image enhancement. We pose minutiae extraction as a machine learning problem and propose a deep neural network — MENet, for Minutiae Extraction Network — to learn a data-driven representation of minutiae points. By using the existing capabilities of several minutiae extraction algorithms, we establish a voting scheme to construct training data, and so train MENet in an automated fashion on a large dataset for robustness and portability, thus eliminating the need for tedious manual data labelling. We present a post-processing procedure that determines precise minutiae locations from the output of MENet. We show that MENet performs favourably in comparisons against existing minutiae extractors.
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