利用多传感器融合技术提高楼宇门禁应用的个人识别精度

L. Osadciw, P. Varshney, K. Veeramachaneni
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引用次数: 34

摘要

本文讨论了一种多模态生物识别传感器融合控制方法。使用多模态生物识别技术的动机是为了提高系统的通用性和准确性。实现了贝叶斯框架来融合从多个生物传感器接收到的决策。对于决策融合规则子集,提高了系统的准确性。最优规则是错误代价和入侵者的先验概率的函数。这个贝叶斯框架形式化了一个系统的设计,该系统可以自适应地增加或减少安全级别。这对于为不同的安全性需求和用户访问需求而设计的系统非常重要。额外的生物识别模式和可变的误差代价赋予了系统适应性,提高了系统的可接受性。本文介绍了使用三种不同的生物识别系统的框架:声音,面部和手部生物识别系统。
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Improving personal identification accuracy using multisensor fusion for building access control applications
This paper discusses a multimodal biometric sensor fusion approach for controlling building access. The motivation behind using multimodal biometrics is to improve universality and accuracy of the system. A Bayesian framework is implemented to fuse the decisions received from multiple biometric sensors. The system accuracy improves for a subset of decision fusion rules. The optimal rule is a function of the error cost and a priori probability of an intruder. This Bayesian framework formalizes the design of a system that can adaptively increase or reduce the security level. This is important to systems designed for varying security needs and user access requirements. The additional biometric modes and variable error costs give the system adaptability improving system acceptability. This paper presents the framework using three different biometric systems: voice, face, and hand biometric systems.
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