基于余弦变换指纹图像分数能量的指纹活力检测与机器学习分类器

Smita Khade, Sudeep D. Thepade
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引用次数: 9

摘要

生物特征识别因其易于获取和独特的个人身份识别而获得了越来越多的普及和信任。指纹是生物识别中应用最广泛、研究最广泛的一种识别方法。目前,利用明胶、木胶、尸体等模拟指纹对指纹生物识别系统提出了新的挑战。因此,指纹活性检测已成为一个原始而重要的研究领域。机器学习分类器可以通过正确提取指纹特征来帮助指纹活性检测。由于能量压缩能力,正交变换可以支持适当的特征提取;本文提出了一种基于余弦变换指纹样本分数系数和机器学习分类器的指纹活跃度检测新技术,并利用余弦变换指纹样本分数系数的8个命题,利用4种不同的机器学习分类器和机器学习分类器组成特征向量,进行了实验在ATVS和FVC 2000两个基准数据集上进行了分类精度的测试,比较了所提出的指纹活性检测方法的性能变化。随机森林分类器的分数系数为0.094%,活性检测总体较好,分数系数为0.094,分数系数为0.094%和0.024%的特征水平融合进一步提高了指纹活性检测的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Fingerprint Liveness Detection with Fractional Energy of Cosine Transformed Fingerprint Images and Machine Learning Classifiers
Biometric identification has gained more popularity and trust because of the ease of accessibility and unique person identification. Fingerprints are most widely used and studied in biometric identification. These days impersonation of fingerprints by means of gelatin, wood glue , cadaver are posing new challenges for fingerprint based biometric identification system. Hence fingerprint liveness detection has become one of the primitive and essential research areas .Machine learning classifiers may help in fingerprint liveness detection with the help of properly extracted features of fingerprints. The orthogonal transforms may support proper extraction of features because of energy compaction capability, for swifter and more accurate fingerprint liveness detection with fractional coefficients considered as feature vectors .The paper propose novel fingerprints liveness detection techniques with fractional coefficients of cosine transformed fingerprints samples and machine learning classifiers .Experimentation is carried out with eight propositions of fractional coefficients of Cosine transformed fingerprints considered to form feature vectors with four assorted machine learning classifiers and tested on 2 benchmark datasets ATVS and FVC 2000 .The classification accuracy is used to compare the performances of the variations of proposed fingerprint liveness detection method .Overall better liveness detection is observed with 0.094%of fractional coefficients for random forest classifiers closely followed of 0.094 fractional coefficients .The feature level fusion of 0.094% and 0.024% of fractional coefficients has given further boost in accuracy of fingerprint liveness detection.
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