Evolving Image Enhancement Pipelines
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Correia:2021:evomusart,
-
author = "Joao Correia and Leonardo Vieira and
Nereida Rodriguez-Fernandez and Juan Romero and
Penousal Machado",
-
title = "Evolving Image Enhancement Pipelines",
-
booktitle = "10th International Conference on Computational
Intelligence in Music, Sound, Art and Design, EvoMusArt
2021",
-
year = "2021",
-
month = "7-9 " # apr,
-
editor = "Juan Romero and Tiago Martins and
Nereida Rodriguez-Fernandez",
-
series = "LNCS",
-
publisher = "Springer Verlag",
-
address = "virtual event",
-
pages = "82--97",
-
organisation = "EvoStar, Species",
-
keywords = "genetic algorithms, genetic programming, Image
enhancement, Image processing, Computer vision,
Evolutionary computation",
-
isbn13 = "978-3-030-72913-4",
-
DOI = "doi:10.1007/978-3-030-72914-1_6",
-
size = "16 pages",
-
abstract = "Image enhancement is an image processing procedure in
which the original information of the image is
improved. It can be used to alter an image in several
different ways, for instance, by highlighting a
specific feature in order to ease post-processing
analyses by a human or machine. In this work, we show
our approach to image enhancement for digital
real-estate-marketing. The aesthetic quality of the
images for real-estate marketing is critical since it
is the only input that clients have once browsing for
options. Thus, improving and ensuring the aesthetic
quality of the images is crucial for marketing success.
The problem is that each set of images, even for the
same real-estate item, is often taken under diverse
conditions making it hard to find one solution that
fits all. State of the art image enhancement pipelines
applies a set of filters that tend to solve specific
issues, so it is still hard to generalise that solves
all type of issues encountered. With this in mind, we
propose a Genetic Programming approach for the
evolution of image enhancement pipelines, based on
image filters from the literature. We report a set of
experiments in image enhancement of real state images
and analysed the results. The overall results suggest
that it is possible to attain suitable pipelines that
enhance the image visually and according to a set of
image quality assessment metrics. The evolved pipelines
show improvements across the validation metrics showing
that it is possible to create image enhancement
pipelines automatically. Moreover, during the
experiments, some of the created pipelines end up
creating non-photorealistic rendering effects in a
moment of computational serendipity. Thus, we further
analysed the different evolved non-photorealistic
solutions, showing the potential of applying the
evolved pipelines in other types of images.",
-
notes = "http://www.evostar.org/2021/ EvoMusArt2021 held in
conjunction with EuroGP'2021, EvoCOP2021 and
EvoApplications2021",
- }
Genetic Programming entries for
Joao Nuno Goncalves Costa Cavaleiro Correia
Leonardo Vieira
Nereida Rodriguez-Fernandez
Juan Jesus Romero Cardalda
Penousal Machado
Citations