Comparison of GP and SAP in the image-processing filter construction using pathology images
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Hiroyasu:2010:CISP,
-
author = "Tomoyuki Hiroyasu and Sosuke Fujita and
Akihito Watanabe and Mitsunori Miki and Maki Ogura and
Manabu Fukumoto",
-
title = "Comparison of GP and SAP in the image-processing
filter construction using pathology images",
-
booktitle = "3rd International Congress on Image and Signal
Processing (CISP 2010)",
-
year = "2010",
-
month = "16-18 " # oct,
-
volume = "2",
-
pages = "904--908",
-
abstract = "In this paper, programming methods of constructing
filters for choosing target images from pathology
images are discussed. Automatic construction of these
filters would be very useful in the medical field.
Image processing filters can be expressed as tree
topology operations. Genetic Programming (GP) is an
evolutionary computation algorithm that can design tree
topology operations. Simulated Annealing Programming
(SAP) is also an emergent algorithm that can create
tree topology operations. These two algorithms, GP and
SAP, were applied to construct Image Processing Filters
and the characteristics of these two algorithms were
compared. The results indicated that GP has strong
search capability for finding the global optimum
solution. However, in the latter part of the search,
the diversity of solutions is lost and the program size
becomes large. This can be avoided by removing introns.
It is assumed that filters developed by GP have strong
robustness for other images. On the other hand, SAP
requires many iterations to find the optimum but the
program size is small. Filters developed by SAP are
relatively weak from the viewpoint of robustness for
other images.",
-
keywords = "genetic algorithms, genetic programming, GP, SAP,
image processing filter construction, medical image
processing, pathology images, simulated annealing
programming, medical image processing, simulated
annealing",
-
DOI = "doi:10.1109/CISP.2010.5646895",
-
notes = "'GP can derive the best solution with less evaluation
time than SAP.' Also known as \cite{5646895}",
- }
Genetic Programming entries for
Tomoyuki Hiroyasu
Sosuke Fujita
Akihito Watanabe
Mitsunori Miki
Maki Ogura
Manabu Fukumoto
Citations