Texture and Wavelet-Based Spoof Fingerprint Detection for Fingerprint Biometric Systems

S. B. Nikam, S. Agarwal
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引用次数: 82

Abstract

This paper describes an image-based system to detect spoof fingerprint attacks in fingerprint biometric systems. It is based on the observation that, real and spoof fingerprints exhibit different textural characteristics. These are based on structural, orientation, roughness, smoothness and regularity differences of diverse regions in a fingerprint image. Local binary pattern (LBP) histograms are used to capture these textural details. Wavelet energy features characterizing ridge frequency and orientation information are also used for improving the efficiency of the proposed method. Dimensionality of the integrated feature set is reduced by running Pudilpsilas Sequential Forward Floating Selection (SFFS) algorithm. We propose to use a hybrid classifier, formed by fusing three classifiers: neural network, support vector machine and k-nearest neighbor using the ldquoProduct Rulerdquo. Classification rates achieved with these classifiers, including a hybrid classifier are in the range ~94% to ~97%. Experimental results indicate that, the new liveness detection approach is a very promising technique, as it needs only one fingerprint and no extra hardware to detect vitality.
基于纹理和小波的指纹生物识别欺骗检测
本文介绍了一种基于图像的指纹欺骗检测系统。这是基于观察到真实指纹和伪造指纹具有不同的纹理特征。这是基于指纹图像中不同区域的结构、方向、粗糙度、平滑度和规则性的差异。局部二值模式(LBP)直方图用于捕获这些纹理细节。同时利用小波能量特征表征脊频和方向信息,提高了方法的效率。通过运行Pudilpsilas序列前向浮动选择(SFFS)算法对集成特征集进行降维。我们建议使用一种混合分类器,它由三个分类器融合而成:神经网络、支持向量机和使用ldquoProduct规则的k近邻。这些分类器(包括混合分类器)的分类率在~94%到~97%之间。实验结果表明,这种新的活力检测方法是一种很有前途的技术,因为它只需要一个指纹,不需要额外的硬件来检测活力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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