Title of article :
Markov Random Field Models for Directional Field and Singularity Extraction in Fingerprint Images
Author/Authors :
S. C. Dass، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
A Bayesian formulation is proposed for reliable and
robust extraction of the directional field in fingerprint images using
a class of spatially smooth priors. The spatial smoothness allows
for robust directional field estimation in the presence of moderate
noise levels. Parametric template models are suggested as candidate
singularity models for singularity detection. The parametric
models enable joint extraction of the directional field and the singularities
in fingerprint impressions by dynamic updating of feature
information. This allows for the detection of singularities that may
have previously been missed, as well as better aligning the directional
field around detected singularities. A criteria is presented
for selecting an optimal block size to reduce the number of spurious
singularity detections. The best rates of spurious detection
and missed singularities given by the algorithm are 4.9% and 7.1%,
respectively, based on the NIST 4 database.
Keywords :
Markov random field models , directional field estimation , singularity detection. , Bayesian statistics
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING