Title of article :
Matching Shapes With Self-Intersections: Application to Leaf Classification
Author/Authors :
F. Mokhtarian and S. Abbasi، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2004
Abstract :
We address the problem of two-dimensional (2-D)
shape representation and matching in presence of self-intersection
for large image databases. This may occur when part of an object
is hidden behind another part and results in a darker section in the
gray level image of the object. The boundary contour of the object
must include the boundary of this part which is entirely inside the
outline of the object.
The Curvature Scale Space (CSS) image of a shape is a multiscale
organization of its inflection points as it is smoothed.
The CSS-based shape representation method has been selected
for MPEG-7 standardization. We study the effects of contour
self-intersection on the Curvature Scale Space image. When there
is no self-intersection, the CSS image contains several arch shape
contours, each related to a concavity or a convexity of the shape.
Self intersections create contours with minima as well as maxima
in the CSS image. An efficient shape representation method has
been introduced in this paper which describes a shape using the
maxima as well as the minima of its CSS contours. This is a natural
generalization of the conventional method which only includes the
maxima of the CSS image contours. The conventional matching
algorithm has also been modified to accommodate the new information
about the minima. The method has been successfully used
in a real world application to find, for an unknown leaf, similar
classes from a database of classified leaf images representing
different varieties of chrysanthemum. For many classes of leaves,
self-intersection is inevitable during the scanning of the image.
Therefore the original contributions of this paper is the generalization
of the Curvature Scale Space representation to the class of
2-D contours with self-intersection, and its application to the classification
of Chrysanthemum leaves.
Keywords :
Curvature scale space , multiscaleorganization , leaf classification , self-intersections , shape matching.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING