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Adaptive Multimodal Biometric Fusion Algorithm Using Particle Swarm

机译:粒子群的自适应多峰生物特征融合算法

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This paper introduces a new algorithm called "Adaptive Multimodal Biometric Fusion Algorithm" (AMBF), which is a combination of Bayesian decision fusion and particle swarm optimization. A Bayesian framework is implemented to fuse decisions received from multiple biometric sensors. The system's 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. Particle swarm optimization searches the decision and sensor operating points (i.e. thresholds) space to achieve the desired security level. The optimization function aims to minimize the cost in a Bayesian decision fusion. The particle swarm optimization algorithm results in the fusion rule and the operating points of sensors at which the system can work. This algorithm is important to systems designed with varying security needs and user access requirements. The adaptive algorithm is found to achieve desired security level and switch between different rules and sensor operating points for varying needs.
机译:本文介绍了一种新的算法,称为“自适应多峰生物特征融合算法”(AMBF),它是贝叶斯决策融合和粒子群优化的结合。实施贝叶斯框架以融合从多个生物特征传感器接收的决策。对于一部分决策融合规则,系统的准确性得以提高。最佳规则是错误成本和入侵者先验概率的函数。该贝叶斯框架使可以自适应地提高或降低安全级别的系统设计形式化。粒子群优化算法搜索决策和传感器操作点(即阈值)空间,以达到所需的安全级别。优化功能旨在将贝叶斯决策融合中的成本降至最低。粒子群优化算法得出系统可以工作的融合规则和传感器的工作点。该算法对于设计具有不同安全需求和用户访问要求的系统很重要。发现自适应算法可以达到所需的安全级别,并可以根据不同的需求在不同的规则和传感器操作点之间切换。

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