一种基于惩罚二次模型的扭曲指纹匹配新算法

Kai Cao, Xin Yang, Xunqiang Tao, Yangyang Zhang, Jie Tian
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引用次数: 4

摘要

目前,指纹识别中最具挑战性的问题之一是扭曲指纹的匹配问题。在本文中,我们提出了惩罚二次模型来处理非线性失真。首先,利用所有脊上的细节和采样点来表示指纹;其次,通过相邻采样点估计细节点之间的相似度;第三,采用贪婪匹配算法建立初始细节对应关系,用于选择地标,计算二次模型参数;最后,对输入指纹进行扭曲,并再次进行匹配处理,得到扭曲指纹与模板指纹的相似度评分。为了减少错误地标的影响,我们在二次模型中引入了惩罚项,以保持模型的平滑性。在FVC2004 DB1上的实验结果表明,二次型模型能够有效地描述二次型皮肤表面的内图像变换,该策略能够提高指纹匹配算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel matching algorithm for distorted fingerprints based on penalized quadratic model
At present, one of the most challenging problems in fingerprint recognition is the matching of distorted fingerprints. In this paper, we propose penalized quadratic model to deal with the non-linear distortion. Firstly, minutiae as well as sampling points on all the ridges are employed to represent fingerprint. Secondly, similarity between minutiae is estimated by their neighboring sampling points. Thirdly, greedy matching algorithm is adopted to establish the initial minutiae correspondences which are used to select landmarks to calculate the quadratic model parameters. At last, input fingerprint is warped and matching process is conducted again to obtain similarity score between warped fingerprint and template fingerprint. In order to diminish the impact of the erroneous landmarks, we introduce a penalty term into the quadratic model to keep it smoothing. Experimental results on FVC2004 DB1 approve that quadratic model is effective to describe the inner-image transformation of a quadratic skin surface, and the proposed strategy can improve the performance of fingerprint matching algorithm.
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