论文标题
指纹的特征和必要细节
Characteristic and Necessary Minutiae in Fingerprints
论文作者
论文摘要
指纹具有山脊图案,其山脊频率(RF)遵循(OF),通常具有某些奇异性。此外,在某些点,称为小小的,脊线末端或叉子,此点模式通常用于指纹识别和身份验证。每当of具有不同的山脊线(例如近乎奇异性)时,几乎恒定的RF都需要产生更多的山脊线,起源于细节。我们称这些为必要的细节。事实证明,指纹具有额外的细节,这些细节发生在相当任意的位置。我们将其称为随机细节,或者,因为它们可能传达超出特征细节的指纹个性。因此,假定细节点模式是两个随机点过程的叠加的实现:具有额外硬核的strauss点过程(其活性函数由发散场给出),并分别建模必要的和特征性的临界值。我们使用基于MCMC的细节分离算法(MISEAL)进行贝叶斯推断。在模拟中,它提供了良好的混合和良好的基础参数估计。在应用指纹时,我们可以将两种细节图案分开,并以两种不同的印刷品的验证,具有相似的特征细节,传达了指纹个性。
Fingerprints feature a ridge pattern with moderately varying ridge frequency (RF), following an orientation field (OF), which usually features some singularities. Additionally at some points, called minutiae, ridge lines end or fork and this point pattern is usually used for fingerprint identification and authentication. Whenever the OF features divergent ridge lines (e.g. near singularities), a nearly constant RF necessitates the generation of more ridge lines, originating at minutiae. We call these the necessary minutiae. It turns out that fingerprints feature additional minutiae which occur at rather arbitrary locations. We call these the random minutiae or, since they may convey fingerprint individuality beyond the OF, the characteristic minutiae. In consequence, the minutiae point pattern is assumed to be a realization of the superposition of two stochastic point processes: a Strauss point process (whose activity function is given by the divergence field) with an additional hard core, and a homogeneous Poisson point process, modelling the necessary and the characteristic minutiae, respectively. We perform Bayesian inference using an MCMC-based minutiae separating algorithm (MiSeal). In simulations, it provides good mixing and good estimation of underlying parameters. In application to fingerprints, we can separate the two minutiae patterns and verify by example of two different prints with similar OF that characteristic minutiae convey fingerprint individuality.