首页> 外文期刊>计算机、材料和连续体(英文) >Fingerprint Liveness Detection from Different Fingerprint Materials Using Convolutional Neural Network and Principal Component Analysis
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Fingerprint Liveness Detection from Different Fingerprint Materials Using Convolutional Neural Network and Principal Component Analysis

机译:使用卷积神经网络和主要成分分析,从不同指纹材料检测指纹活动

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摘要

Fingerprint-spoofing attack often occurs when imposters gain access illegally by using artificial fingerprints,which are made of common fingerprint materials,such as silicon,latex,etc.Thus,to protect our privacy,many fingerprint liveness detection methods are put forward to discriminate fake or true fingerprint.Current work on liveness detection for fingerprint images is focused on the construction of complex handcrafted features,but these methods normally destroy or lose spatial information between pixels.Different from existing methods,convolutional neural network(CNN)can generate high-level semantic representations by learning and concatenating low-level edge and shape features from a large amount of labeled data.Thus,CNN is explored to solve the above problem and discriminate true fingerprints from fake ones in this paper.To reduce the redundant information and extract the most distinct features,ROI and PCA operations are performed for learned features of convolutional layer or pooling layer.After that,the extracted features are fed into SVM classifier.Experimental results based on the LivDet(2013)and the LivDet(2011)datasets,which are captured by using different fingerprint materials,indicate that the classification performance of our proposed method is both efficient and convenient compared with the other previous methods.
机译:当驾驶员通过使用人工指纹非法进入时,通常会发生指纹欺骗攻击,这些指纹是由硅,乳胶等的常规指纹材料制成的,以保护我们的隐私,许多指纹活力检测方法都提出了鉴别假或真正的指纹。对于指纹图像的活动检测,专注于构建复杂的手工特征,但这些方法通常会破坏或丢失像素之间的空间信息。从现有方法中丢失空间信息,卷积神经网络(CNN)可以产生高级别通过学习和串联来自大量标记数据的低级边缘和形状特征的语义表示。探讨了CNN,以解决上述问题,并在本文中判断真假的指纹。为减少冗余信息并提取为卷积层或戳的学习功能执行最明显的特征,ROI和PCA操作凌层。在此之后,提取的特征被馈入SVM分类器。基于Livdet(2013)的实验结果,Livdet(2011)数据集通过使用不同的指纹材料捕获,表明我们提出的方法的分类性能与其他先前的方法相比,既有效方便。

著录项

  • 来源
    《计算机、材料和连续体(英文)》 |2017年第004期|P.357-372|共16页
  • 作者单位

    School of Computer and Software Nanjing University of Information Science&Technology Ning Liu Road No.219 Nanjing China 210044Jiangsu Engineering Center of Network Monitoring Ning Liu Road No.219 Nanjing China 210044Department of Electrical and Computer Engineering University of Windsor 401 Sunset Avenue Windsor ON Canada N9B 3P4;

    Department of Electrical and Computer Engineering University of Windsor 401 Sunset Avenue Windsor ON Canada N9B 3P4;

    Department of Electrical and Computer Engineering University of Windsor 401 Sunset Avenue Windsor ON Canada N9B 3P4;

    School of Computer Science Guangzhou University Yudongxi Road 36 Tianhe District Guangzhou China 510500;

    School of Computer and Software Nanjing University of Information Science&Technology Ning Liu Road No.219 Nanjing China 210044Jiangsu Engineering Center of Network Monitoring Ning Liu Road No.219 Nanjing China 210044;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 chi
  • 中图分类 计算技术、计算机技术;
  • 关键词

    Fingerprint liveness detection; CNNs; PCA; SVM; ROI; LivDet 2013; LivDet 2011;

    机译:指纹活度检测;CNNS;PCA;SVM;ROI;救生2013;寿命2011;
  • 入库时间 2022-08-19 04:55:13
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