生物识别干扰:一种基于SVM分类器的安全增强方案

P. Deshmukh, S. Mohod
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引用次数: 0

摘要

传统的密码和令牌访问方式带来了新的特权,生物识别技术有助于减轻用户的压力。利用生物识别技术可以消除局限性和弱点。然而,由于生物识别技术不容易被撤销,因此增加了隐私风险和新的安全问题。因为生物识别系统的欺骗攻击。因此,为了保护生物特征免受欺骗攻击,本文开发并提出了一种增强安全性的多模态生物特征干扰方案。首先,我们分析了为什么多模态生物识别系统受到高安全性要求方案的关注。其次,提高生物识别系统的安全性,防止欺骗攻击,开发了机器学习系统模型。我们展示了这些机器学习算法对生物特征图像进行预处理。进一步,我们分析了用户识别与提高精度和可靠性使用生物特征。对生物特征的每一个特征进行特征提取,然后将所有特征拼接成一个特征。该算法借助于机器学习分类器,利用提取的特征对系统的结果进行预测。
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Biometric Jammer: A Security Enhancement Scheme using SVM Classifier
A new privilege of biometrics help to reduce the stress of user, Which comes along with the traditional access methods of passwords and token. Using the biometrics limitations and weaknesses can be knocked out. However, biometrics has raise privacy risks and new security since they cannot be easily revoked. Due to the spoofing attack on biometrics. Thus, to protect biometric traits against spoofing attack a multimodal biometric jammer scheme for the security enhancement have been developed and suggested in this paper. Firstly, we analyze why the multimodal biometric system have attracted attention for high security-demanding schemes. Secondly, security of biometric system is increasing and prevented it from spoofing attack developing a machine learning system model. We show that these machine learning algorithms perform pre-processing of biometric traits images. Further we analyze user identification with the increase precision and reliability using biometric features. Where feature extraction of each one trait of biometric is done and then all features are concatenation to get a single feature. With the aid of machine learning classifier using extracted features the algorithm predict the result of the system.
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