Oriented patterns, e.g. fingerprints, consist of smoothly
varying flow-like patterns, together with important singular
points (i.e. cores and deltas) where the orientation changes
abruptly. Gabor filters and anisotropic diffusion methods
have been widely used to enhance oriented patterns. However,
none of them can well cope with regions of varying
curvatures or regions surrounding singular points. By incorporating
the ridge curvatures and the singularities into
the diffusion model, we propose a new diffusion method to
better exploit the global characteristics of oriented patterns.
Specifically, we first locate the singular points, and regularize
the estimated orientation field by using a singularity
driven nonlinear diffusion process. We then enhance the
oriented patterns by applying an oriented diffusion process
which is driven by the curvature and singularity. Experiments
on synthetic data and real fingerprint images validated
that the proposed method is capable of co...