Fingerprint matching by incorporating minutiae discriminability

Kai Cao, Eryun Liu, Liaojun Pang, Jimin Liang, Jie Tian
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引用次数: 29

Abstract

Traditional minutiae matching algorithms assume that each minutia has the same discriminability. However, this assumption is challenged by at least two facts. One of them is that fingerprint minutiae tend to form clusters, and minutiae points that are spatially close tend to have similar directions with each other. When two different fingerprints have similar clusters, there may be many well matched minutiae. The other one is that false minutiae may be extracted due to low quality fingerprint images, which result in both high false acceptance rate and high false rejection rate. In this paper, we analyze the minutiae discriminability from the viewpoint of global spatial distribution and local quality. Firstly, we propose an effective approach to detect such cluster minutiae which of low discriminability, and reduce corresponding minutiae similarity. Secondly, we use minutiae and their neighbors to estimate minutia quality and incorporate it into minutiae similarity calculation. Experimental results over FVC2004 and FVC-onGoing demonstrate that the proposed approaches are effective to improve matching performance.
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结合细微差别的指纹匹配
传统的细节匹配算法假设每个细节具有相同的可判别性。然而,这一假设受到至少两个事实的挑战。其中之一是指纹细节点倾向于形成簇,空间上接近的细节点彼此方向相似。当两个不同的指纹具有相似的簇时,可能存在许多匹配良好的细节。二是指纹图像质量不高,可能会提取出虚假细节,导致错误接受率和错误拒收率都很高。本文从全球空间分布和局部质量的角度分析了细微差别的可辨别性。首先,我们提出了一种有效的方法来检测这些低可辨别性的聚类细节,并降低相应的细节相似性。其次,利用微点及其邻点对微点质量进行估计,并将其纳入微点相似度计算中;在fvc - 2004和FVC-onGoing上的实验结果表明,本文提出的方法可以有效地提高匹配性能。
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