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.
翻译:指针的特征通常用于指纹识别和认证。每当具有不同脊柱的特征(例如,近奇数),近乎常态的RF就要求生成更多脊脊线,起源于小丘,我们称之为这些必要的小丘线。我们发现指纹具有在相当任意的地点出现的额外小丘线。我们称之为随机小丘线,或者,由于它们可能传递指纹个性超越其特性,因此,在一些点上通常用于指纹识别和认证。因此,假定小丘线模式是实现两个分点进程的超集:一个直径点进程(其活动功能由差异字段提供),并有额外的硬核心,一个同质的Poisson点进程,为必要和特征建模。我们分别使用Bayesian 的特性参数,以及相似的底线参数,我们用一个不同的底线模型来进行不同的模拟。