基于下采样反向传播技术的指纹认证系统

P. Ochieng, Kani, H. Harsa, Firmansyah
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引用次数: 2

摘要

指纹认证过程在人类身份识别中起着至关重要的作用。存储在数据库中的指纹通常用于在安全检查、灾难和医学判例等情况下确认个人身份。然而,当处理由大量指纹组成的数据库时,使用现有的一些方法来识别正确的指纹匹配是一个很大的挑战。因此,开发执行速度快、精度高的指纹自动认证流程至关重要。本文介绍了一种新的下采样像素预处理技术,将原始指纹像素矩阵压缩为一个单位输入向量,用于指纹认证系统的人工神经网络。进一步,提出的降采样技术通过计算每个输入行矩阵上像素值之和的算术平均值来压缩原始像素矩阵,从而生成用于人工神经网络的单位输入向量。该算法使用反向传播技术训练系统匹配指纹样本,并将其与提供给每个授权用户的数字联系起来。将该方法应用于102个具有标准500行和列像素、8位灰度分辨率的指纹样本中,证明了该方法的有效性。结果表明,采用下采样像素的反向传播方法可以准确识别102个样本中的100个指纹。此外,对比评估表明,该方法优于反向传播正常像素感知器、下采样像素感知器和正常像素感知器,达到98.03%的精度,最小收敛时间为30秒,均方误差(MSE)为0.05%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fingerprint authentication system using Back-Propagation with downsampling technique
Fingerprint authentication process plays a crucial role for human identifications. Fingerprint stored in the database are often used to confirm individual identity in cases like security checks, disaster, and medical jurisprudence. However, when dealing with the database consisting of a huge number of the fingerprint, recognizing the correct fingerprint matches using some of the existing methods present a great challenge. Therefore, it is critical to develop automatic fingerprint authentication process with fast execution time and high precision. Here we introduce a novel downsampling pixel preprocessing technique to compress original fingerprint pixel matrix to a unit input vector for Artificial Neural Network for fingerprint authentication system. Furthermore, the proposed downsampling technique compress the original pixel matrix by computing the arithmetic mean of the sum of the pixel values on each input row matrix to generate a unit input vector for ANN. Using back-propagation technique the algorithm trains the system to matches fingerprints samples and relates them to the number provided for each authorized user. The interest of the proposed method is illustrated by its application to 102 fingerprint samples with standard 500 pixels both row and column with 8bits grayscale resolution. The results indicate the proposed Back-Propagation with downsampled pixel precisely recognize 100 fingerprints from 102 tested samples. Moreover, the comparative evaluation shows the proposed method outperform Back-Propagation normal pixel, Perceptron with Downsampled pixel and Perceptron with normal pixel achieving 98.03 % precision with minimum convergence time of 30 seconds and mean square error (MSE) of 0.05%.
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