基于生物特征的IMS一致密钥生成

P. Suresh, K. Radhika
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引用次数: 1

摘要

安全性和用户隐私是通过网络进行数字交易时关注的领域。将生物识别模式匹配集成到身份管理系统(IMS)中可以增强事务的安全性并提高易用性。在基于生物特征的系统中,通过使用直接从特征集生成的密钥而不是传统的存储模板来提高用户的隐私性。本文提出了一个将生物特征密钥认证集成到IMS中的框架。生成的键需要保持一致。如果为每个生物识别输入实例生成相同的密钥,则可以获得密钥的一致性。由于生物识别数据固有的用户内部和用户之间的差异,直接从特征集生成长而一致的键提出了挑战。介绍了一种利用矢量量化和聚类学习原理生成一致性键的新方法。从手写签名数据集中提取了15位密钥。结果是有希望的,可以扩展到多模态生物特征集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biometric based Consistent Key Generation for IMS
Security and user privacy are areas of concern in digital transactions over a network. Integration of biometric pattern matching into an identity management system (IMS) enhances security of transactions and improves ease of use. Privacy of users in a biometric based system is improved by using keys generated directly from feature sets instead of conventional stored templates. This paper proposes a framework for integrating biometric key based authentication into an IMS. The generated keys need to be consistent. Consistency of keys is attained if the same key is generated for every instance of biometric input. Generation of long and consistent keys directly from feature sets poses a challenge due to intra and inter user variations inherent to biometric data. A novel methodology for generating consistent keys using principles of vector quantization and cluster based learning is introduced. 15-bit keys have been extracted from handwritten signature datasets. The results are promising and can be extended to multi-modal biometric feature sets.
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