Genetic Programming-Based Discriminative Feature Learning for Low-Quality Image Classification
Created by W.Langdon from
gp-bibliography.bib Revision:1.8129
- @Article{Ying_Bi:Cybernetics2,
-
author = "Ying Bi and Bing Xue and Mengjie Zhang",
-
title = "Genetic Programming-Based Discriminative Feature
Learning for Low-Quality Image Classification",
-
journal = "IEEE Transactions on Cybernetics",
-
year = "2022",
-
volume = "52",
-
number = "8",
-
pages = "8272--8285",
-
keywords = "genetic algorithms, genetic programming",
-
DOI = "doi:10.1109/TCYB.2021.3049778",
-
ISSN = "2168-2275",
-
abstract = "Being able to learn discriminative features from
low-quality images has raised much attention recently
due to their wide applications ranging from autonomous
driving to safety surveillance. However, this task is
difficult due to high variations across images, such as
scale, rotation, illumination, and viewpoint, and
distortions in images, such as blur, low contrast, and
noise. Image preprocessing could improve the quality of
the images, but it often requires human intervention
and domain knowledge. Genetic programming (GP) with a
flexible representation can automatically perform image
preprocessing and feature extraction without human
intervention. Therefore, this study proposes a new
evolutionary learning approach using GP (EFLGP) to
learn discriminative features from images with blur,
low contrast, and noise for classification. In the
proposed approach, we develop a new program structure
(individual representation), a new function set, and a
new terminal set. With these new designs, EFLGP can
detect small regions from a large input low-quality
image, select image operators to process the regions or
detect features from the small regions, and output a
flexible number of discriminative features. A set of
commonly used image preprocessing operators is employed
as functions in EFLGP to allow it to search for
solutions that can effectively handle low-quality image
data. The performance of EFLGP is comprehensively
investigated on eight datasets of varying difficulty
under the original (clean), blur, low contrast, and
noise scenarios, and compared with a large number of
benchmark methods using handcrafted features and deep
features. The experimental results show that EFLGP
achieves significantly better or similar results in
most comparisons. The results also reveal that EFLGP is
more invariant than the benchmark methods to blur, low
contrast, and noise.",
-
notes = "Also known as \cite{9345467}",
- }
Genetic Programming entries for
Ying Bi
Bing Xue
Mengjie Zhang
Citations