Publication Date:
2013
abstract:
We describe an optimization-based method for tackling the classic image
processing problem known as edge detection and we formulate it in the form of a
classification one. The novelty of the approach is in the use of spherical separation as
a classification tool in the image processing framework. Spherical separation consists
in separating bymeans of a sphere two given discrete point-sets in a finite dimensional
Euclidean space; in our context the two sets are the edge points and the non-edge
points, respectively, in the digital representation of a given image. Assuming that the
center of the sphere is fixed, the problem reduces to the minimization of a convex and
nonsmooth function of just one variable, which can be effectively solved by means of
an "ad hoc" bisection method. The results of our experiments on some edge detection
benchmark images are provided.
Iris type:
01.01 Articolo in rivista
Keywords:
Image processing; Edge detection; Binary classificatio; Spherical separation
List of contributors:
Astorino, Annabella
Published in: