Change detection in remote sensing images based on multi-tree genetic programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8519
- @Article{Bi:2025:ASOC,
-
author = "Ying Bi and Tuo Zhang and Jintao Lian and
Yaxin Chang and Jing Liang",
-
title = "Change detection in remote sensing images based on
multi-tree genetic programming",
-
journal = "Applied Soft Computing",
-
year = "2025",
-
volume = "183",
-
pages = "113609",
-
month = nov,
-
keywords = "genetic algorithms, genetic programming, MTEGP, Change
detection, Remote sensing, Ensemble learning,
Classification",
-
ISSN = "1568-4946",
-
URL = "
https://www.sciencedirect.com/science/article/pii/S1568494625009202",
-
DOI = "
doi:10.1016/j.asoc.2025.113609",
-
abstract = "Change detection in remote sensing images plays a
crucial role in applications such as environmental
monitoring, urban planning, and disaster management.
Accurately identifying and distinguishing changed areas
within complex image data poses significant challenges.
Existing methods often struggle with high
false-positive rates and limited adaptability. using
multi-tree genetic programming (GP) to automate the
construction of ensembles for change detection in
remote sensing images. The method employs a unique
multi-tree GP representation comprising three distinct
trees that difference, spectral, and texture features
to identify changes. These trees are combined into an
ensemble using a majority voting strategy to make
predictions. The approach integrates multi-tree
crossover and mutation strategies to generate new
individuals, which are evaluated based on a fitness
function derived from classification accuracy. To
validate its effectiveness, the proposed multi-tree GP
approach is evaluated on four benchmark datasets
(SZTAKI, EGY_BCD, LEVIR_CD+, and S2Looking) and
compared with eight methods. In most cases, the
proposed approach achieves higher maximum change
detection accuracy. Notably, on the SZTAKI dataset
(Img_10), it achieves an accuracy of 96.11 percent,
representing a 5.55 percent improvement over the worst
baseline (KNN) and a 0.55 percent gain over the best
baseline (SpectralFormer). Experimental results
demonstrate that the proposed approach outperforms
standard GP, as well as several classic classifiers and
neural network based methods, establishing it as an
effective tool for remote sensing change detection. The
method capability of to leverage diverse features and
integrate them through ensemble learning underscores
its potential in enhancing change detection accuracy
using remote sensing imagery.",
-
notes = "Also known as \cite{BI2025113609}
School of Electrical and Information Engineering,
Zhengzhou University, Zhengzhou, 450001, China",
- }
Genetic Programming entries for
Ying Bi
Tuo Zhang
Jintao Lian
Yaxin Chang
Jing Liang
Citations