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Fingerprint Verification and Identification Based on Local Geometric Invariants Constructed from Minutiae Points and Augmented with Global Directional Filterbank Features

机译:基于细节点构造并具有全局方向性滤波器组特征的局部几何不变量的指纹验证和识别

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This paper addresses the problems of fingerprint identification and verification when a query fingerprint is taken under conditions that differ from those under which the fingerprint of the same person stored in a database was constructed. This occurs when using a different fingerprint scanner with a different pressure, resulting in a fingerprint impression that is smeared and distorted in accordance with a geometric transformation (e.g., affine or even non-linear). Minutiae points on a query fingerprint are matched and aligned to those on one of the fingerprints in the database, using a set of absolute invariants constructed from the shape and/or size of minutiae triangles depending on the assumed map. Once the best candidate match is declared and the corresponding minutiae points are flagged, the query fingerprint image is warped against the candidate fingerprint image in accordance with the estimated warping map. An identification/verification cost function using a combination of distance map and global directional filterbank (DFB) features is then utilized to verify and identify a query fingerprint against candidate fingerprint(s). Performance of the algorithm yields an area of 0.99967 (perfect classification is a value of 1) under the receiver operating characteristic (ROC) curve based on a database consisting of a total of 1680 fingerprint images captured from 240 fingers. The average probability of error was found to be 0.713%. Our algorithm also yields the smallest false non-match rate (FNMR) for a comparable false match rate (FMR) when compared to the well-known technique of DFB features and triangulation-based matching integrated with modeling non-linear deformation. This work represents an advance in resolving the fingerprint identification problem beyond the state-of-the-art approaches in both performance and robustness.
机译:本文讨论了在不同于构造数据库中存储的同一个人的指纹的条件下获取查询指纹时的指纹识别和验证问题。当使用具有不同压力的不同指纹扫描仪时,会发生这种情况,从而导致指纹印象根据几何变换(例如仿射或什至是非线性的)而被涂抹和扭曲。使用一组由细节三角形的形状和/或大小(取决于假设的图)构造的绝对不变量,将查询指纹上的细节点与数据库中一个指纹上的细节点进行匹配和对齐。一旦宣布了最佳候选匹配并标记了相应的细节点,就会根据估计的翘曲映射图将查询指纹图像相对于候选指纹图像进行翘曲。然后,使用结合了距离图和全局方向性滤波器组(DFB)功能的标识/验证成本函数来针对候选指纹来验证和标识查询指纹。该算法的性能基于包含240个手指的1680个指纹图像组成的数据库,在接收器工作特性(ROC)曲线下产生了0.99967的区域(完美分类为1的值)。发现错误的平均概率为0.713%。与众所周知的DFB特征和基于三角剖分的匹配与非线性变形建模集成的技术相比,我们的算法还产生了可比的错误匹配率(FMR)最小的错误不匹配率(FNMR)。这项工作代表了在解决指纹识别问题方面的一项超越技术和鲁棒性的先进技术。

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