大规模生物识别应用的最优路径森林分类器

L. C. Afonso, J. Papa, A. Marana, A. Poursaberi, S. Yanushkevich, M. Gavrilova
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引用次数: 4

摘要

本文讨论了使用大型数据库,特别是虹膜数据库的生物特征识别。在这样的应用程序中,在保持可接受的识别率的同时保持较低的响应时间是至关重要的。因此,对于识别系统的处理和识别部分,必须评估速度和准确性之间的权衡。本文将基于图的模式识别框架——最优路径森林(OPF)作为分类器应用于预开发的虹膜识别系统。本文的目的是验证OPF在虹膜识别领域的有效性,以及它在不同规模虹膜数据库中的性能。采用现有的基于高斯-拉盖尔小波的编码方案进行虹膜编码。OPF和另外两种分类器(Hamming和Bayesian)的性能在小型、中型和大型数据库中进行了比较。这样的比较表明,OPF对大规模数据库的响应速度更快,因此比更准确但更慢的分类器表现得更好。
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Optimum-Path Forest Classifier for Large Scale Biometric Applications
This paper addresses biometric identification using large databases, in particular, iris databases. In such applications, it is critical to have low response time, while maintaining an acceptable recognition rate. Thus, the trade-off between speed and accuracy must be evaluated for processing and recognition parts of an identification system. In this paper, a graph-based framework for pattern recognition, called Optimum-Path Forest (OPF), is utilized as a classifier in a pre-developed iris recognition system. The aim of this paper is to verify the effectiveness of OPF in the field of iris recognition, and its performance for various scale iris databases. The existing Gauss-Laguerre Wavelet based coding scheme is used for iris encoding. The performance of the OPF and two other - Hamming and Bayesian - classifiers, is compared using small, medium, and large-scale databases. Such a comparison shows that the OPF has faster response for large-scale databases, thus performing better than the more accurate, but slower, classifiers.
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