基于奇异候选方法的指纹核心和增量的可靠检测

T. Ohtsuka, Daisuke Watanabe, Daisuke Tomizawa, Yuta Hasegawa, H. Aoki
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引用次数: 21

摘要

指纹的奇异点即核心点和三角点是指纹分类的重要参考点。提出了几种传统的方法,如庞加莱指数法;然而,这些方法无法实现对低质量指纹的可靠检测。本文提出了一种新的基于扩展关系图的奇异候选分析的核心和增量检测方法。为了同时利用脊方向图的局部和全局特征,实现对局部图像噪声高容忍度的检测方法,在检测过程中采用奇异候选分析;这种分析涉及到提取存在一个奇点的概率很高的位置。实验结果表明,在指纹图像数据库FVC2000和FVC2002的奇异点检测中,该方法的成功率比庞加莱指数法高出10%。这些数据库包含一些质量较差的图像,尽管平均计算时间比庞加莱指数方法高15%-30%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliable detection of core and delta in fingerprints by using singular candidate method
The singular points of fingerprints, namely, core and delta, are important referential points for the classification of fingerprints. Several conventional approaches such as the Poincare index method have been proposed; however, these approaches cannot achieve the reliable detection of poor-quality fingerprints. In this paper, we propose a new core and delta detection method by singular candidate analysis using an extended relational graph. In order to use both the local and global features of the ridge direction patterns and to realize a method with high tolerance to local image noise, singular candidate analysis is adopted in the detection process; this analysis involves the extraction of locations in which the probability of the existence of a singular point is high. The experimental results show that the success rate of this approach is higher than that of the Poincare index method by 10% for singularity detection using the fingerprint image databases FVC2000 and FVC2002. These databases contain several poor quality images, even though the average computation time is 15%-30% greater than the Poincare index method.
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