Hierachical pre-segmentation without prior knowledge
Files
Publication date
2001-06-01
Authors
Kuijper, Arjan
Florack, L.M.J.
Editors
Advisors
Supervisors
DOI
Document Type
Preprint
Metadata
Show full item recordCollections
License
Abstract
A new method to pre-segment images by means of a hierarchical
description is proposed. This description is obtained
from an investigation of the deep structure of a scale space
image - the input image and the Gaussian filtered ones simultaneously.
We concentrate on scale space critical points
- points with vanishing gradient with respect to both spatial
and scale direction. We show that these points are always
saddle points. They turn out to be extremely useful, since
the iso-intensity manifolds through these points provide a
scale space hierarchy tree and induce a segmentation without
a priori knowledge. Moreover, together with the socalled
catastrophe points, these scale space saddles form
the critical points of the parameterised critical curves - the
curves along which the spatial saddle points move in scale
space. Experimental results with respect to the hierarchy
and segmentation are given, based on artificial images and
real MRI .