A genetic programming based system for the automatic construction of image filters
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @Article{journals/icae/PedrinoRKSTTMN13,
-
author = "Emerson Carlos Pedrino and Valentin Obac Roda and
Edilson Reis Rodrigues Kato and Jose Hiroki Saito and
Mario Luiz Tronco and Roberto H. Tsunaki and
Orides {Morandin, Jr.} and Maria C. Nicoletti",
-
title = "A genetic programming based system for the automatic
construction of image filters",
-
journal = "Integrated Computer-Aided Engineering",
-
year = "2013",
-
number = "3",
-
volume = "20",
-
keywords = "genetic algorithms, genetic programming",
-
bibdate = "2013-06-19",
-
bibsource = "DBLP,
http://dblp.uni-trier.de/db/journals/icae/icae20.html#PedrinoRKSTTMN13",
-
pages = "275--287",
-
URL = "http://dx.doi.org/10.3233/ICA-130429",
-
DOI = "doi:10.3233/ICA-130429",
-
abstract = "The manual selection of linear and nonlinear operators
for producing image filters is not a trivial task in
practice, so new proposals that can automatically
improve and speed up the process can be of great help.
This paper presents a new proposal for constructing
image filters using an evolutionary programming
approach, which has been implemented as the IFbyGP
software. IFbyGP employs a variation of the Genetic
Programming algorithm (GP) and can be applied to binary
and gray level image processing. A solution to an image
processing problem is represented by IFbyGP as a set of
morphological, convolution and logical operators. The
method has a wide range of applications, encompassing
pattern recognition, emulation filters, edge detection,
and image segmentation. The algorithm works with a
training set consisting of input images, goal images,
and a basic set of instructions supplied by the user,
which would be suitable for a given application. By
making the choice of operators and operands involved in
the process more flexible, IFbyGP searches for the most
efficient operator sequence for a given image
processing application. Results obtained so far are
encouraging and they stress the feasibility of the
proposal implemented by IFbyGP. Also, the basic
language used by IFbyGP makes its solutions suitable to
be directly used for hardware control, in a context of
evolutionary hardware. Although the proposal
implemented by IFbyGP is general enough for dealing
with binary, gray level and colour images, only
applications using the first two are considered in this
paper; as it will become clear in the text, IFbyGP aims
at the direct use of induced sequences of operations by
hardware devices. Several application examples
discussing and comparing IFbyGP results with those
obtained by other methods available in the literature
are presented and discussed.",
- }
Genetic Programming entries for
Emerson Carlos Pedrino
Valentin Obac Roda
Edilson R R Kato
Jose Hiroki Saito
Mario Luiz Tronco
Roberto Hideaki Tsunaki
Orides Morandin Jr
Maria do Carmo Nicoletti
Citations