Genetic programming for edge detection: a Gaussian-based approach
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Fu:2016:SC,
-
author = "Wenlong Fu and Mark Johnston and Mengjie Zhang",
-
title = "Genetic programming for edge detection: a
Gaussian-based approach",
-
journal = "Soft Computing",
-
year = "2016",
-
volume = "20",
-
number = "3",
-
pages = "1231--1248",
-
month = mar,
-
keywords = "genetic algorithms, genetic programming, Edge
detection, Sampling, Feature extraction",
-
ISSN = "1432-7643",
-
DOI = "doi:10.1007/s00500-014-1585-1",
-
size = "18 pages",
-
abstract = "Gaussian-based filtering techniques have been
popularly applied to edge detection. However, how to
effectively tune parameters of Gaussian filters and how
to effectively combine different Gaussian filters are
still open issues. In this study, a new genetic
programming (GP) approach is proposed to automatically
tune parameters of Gaussian filters and automatically
combine different types of Gaussian filters to extract
edge features. In general, it is time-consuming for GP
to evolve edge detectors using a large training image
dataset. To efficiently evolve edge detectors from a
large training image dataset, we propose sampling
techniques (randomly selecting training images) to
evolve Gaussian-based edge detectors. A sampling
technique only using part of a set of images obtains
similar performance to the training data using all of
these images. The evolved edge detectors from the
proposed sampling technique perform better than the
Gaussian gradient and rotation invariant surround
suppression. Based on the analysis of GP evolving edge
detectors, it is suggested that combining Gaussian
filters should be based on different types of Gaussian
filters, and the Gaussian gradient should be considered
as a major filter in these combinations.",
- }
Genetic Programming entries for
Wenlong Fu
Mark Johnston
Mengjie Zhang
Citations