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Adaptive management of multimodal biometrics fusion using ant colony optimization

机译:基于蚁群优化的多模式生物特征识别融合自适应管理

摘要

This paper presents a new approach for the adaptive management of multimodal biometrics to meet a wide range of application dependent adaptive security requirements. In this work, ant colony optimization (ACO) is employed for the selection of key parameters like decision threshold and fusion rule, to ensure the optimal performance in meeting varying security requirements during the deployment of multimodal biometrics systems. Particle swarm optimization (PSO) has been widely utilized for the optimal selection of these parameters in the earlier attempts in the literature [Veeramachaneni et al., 2005] and [Kumar et al., 2010]. However, in PSO these parameters are computed in continuous domain while they are assumed to be better represented as discrete variables [Kumar et al., 2010]. This paper therefore proposes the use of ACO, in which discrete biometric verification parameters are computed to ensure the optimal performance from the multimodal biometrics system. The proposed ACO based framework is also extended to the pattern classification approach where fuzzy binary decision tree (FBDT) is utilized for two-class biometrics verification. The experimental results are presented on true multimodal systems from various publicly available databases; IITD databases of palmprint and iris, XM2VTS database of speech and faces, and the NIST BSSR1 databases of faces and fingerprint images. Our experimental results presented in this paper suggest that (i) ACO based approach is capable of operating on significantly small error rates in comparison to the widely employed PSO for automated selection of biometrics fusion rules/parameters, (ii) the score-level fusion yields better performance with lower error rate in comparison to the decision level fusion, and finally (iii) the FBDT based classification approach delivers considerably superior performance for the adaptive biometrics verification.
机译:本文提出了一种用于多模式生物特征识别的自适应管理的新方法,可以满足各种与应用相关的自适应安全性要求。在这项工作中,采用蚁群优化(ACO)来选择关键参数(例如决策阈值和融合规则),以确保在部署多模式生物识别系统期间满足不断变化的安全性要求的最佳性能。在文献[Veeramachaneni et al。,2005]和[Kumar et al。,2010]的早期尝试中,粒子群优化(PSO)已被广泛用于这些参数的最佳选择。然而,在PSO中,这些参数是在连续域中计算的,而假定它们可以更好地表示为离散变量[Kumar等,2010]。因此,本文提出了ACO的使用,其中计算离散的生物特征验证参数以确保多模式生物特征系统的最佳性能。所提出的基于ACO的框架还扩展到了模式分类方法,其中将模糊二进制决策树(FBDT)用于两类生物特征验证。实验结果在来自各种公开可用数据库的真正多峰系统上显示;掌纹和虹膜的IITD数据库,语音和面部的XM2VTS数据库以及面部和指纹图像的NIST BSSR1数据库。我们在本文中提出的实验结果表明(i)与广泛采用的PSO相比,基于ACO的方法能够以极低的错误率进行操作,以自动选择生物特征融合规则/参数,(ii)得分级别的融合产量与决策级融合相比,它具有更好的性能和更低的错误率,最后(iii)基于FBDT的分类方法为自适应生物特征验证提供了相当优越的性能。

著录项

  • 作者

    Kumar A;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 eng
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