An efficient, two-stage iris recognition system

J. Gentile, N. Ratha, J. Connell
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引用次数: 51

Abstract

There have been claims of very high information content in iris texture, higher even than in fingerprints. This makes iris attractive for large scale identification systems with possibly millions of people. However, some systems operate by performing N 1:1 matches of the probe against the database. This can get prohibitively expensive in terms of computation as N grows large. Note that for identification systems the per-match time dominants system performance, unlike verification where feature extraction time is the primary component. In this paper we show how to use a short-length iris code to pre-screen a large database and thereby reduce the number of full comparisons needed to a fraction of the total. Since the screening code is much smaller than the full iris code, the time to process the whole database is greatly reduced. As an added benefit, we show that we can use the alignment inferred from the short code to greatly restrict the range of alignments searched for the full code, which further speeds up the system. As we demonstrate in experiments, the two stage approach can reduce the cost and/or time needed by an order of magnitude with very little impact on identification performance.
一种高效的两级虹膜识别系统
有人声称虹膜纹理的信息含量非常高,甚至比指纹还高。这使得虹膜对可能包含数百万人的大规模身份识别系统具有吸引力。但是,有些系统通过对数据库执行探针的N 1:1匹配来操作。当N变大时,这在计算方面会变得非常昂贵。请注意,对于识别系统,每次匹配时间支配着系统性能,而不像验证,特征提取时间是主要组成部分。在本文中,我们展示了如何使用短长度虹膜代码来预筛选大型数据库,从而将所需的完整比较次数减少到总数的一小部分。由于筛选代码比完整的虹膜代码小得多,因此处理整个数据库的时间大大减少。作为一个额外的好处,我们展示了我们可以使用从短代码推断的对齐来极大地限制搜索完整代码的对齐范围,这进一步加快了系统的速度。正如我们在实验中所证明的那样,两阶段方法可以将所需的成本和/或时间降低一个数量级,而对识别性能的影响很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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