booktitle = "2020 IEEE International conference of Moroccan
Geomatics (Morgeo)",
title = "Generate knowledge base from very high spatial
resolution satellite image using robust classification
rules and genetic programming",
year = "2020",
keywords = "genetic algorithms, genetic programming, Remote
sensing, High resolution, Data Mining",
DOI = "doi:10.1109/Morgeo49228.2020.9121914",
month = may,
size = "6 pages",
abstract = "Object based image analysis techniques give accurate
results when a good knowledge base is extracted from
remote sensing imagery. Data mining algorithms and
especially evolutionary process can extract useful
knowledge that can be used in different fields. In this
paper, object-oriented classification was used, more
particularly object-based image analysis approach
(OOIA) to classify a large feature space composed of a
very high spatial resolution satellite image (VHR).
Genetic programming (GP) concept was applied to extract
classification rules with an induction form. Comparison
of the performance of three GP algorithms
(Bojarczuc_GP, Falco_GP and Tan_GP) was mad using JCLEC
Framework. Results showed two main conclusions. 1)
testing and evaluation of the generated rules allow us
to discover that GP algorithms can classify and extract
useful knowledge from VHR satellite data. 2) evaluation
of the performance of the three Genetic programming
models demonstrates that the Bojarczuk model is
efficient on accuracy classification than the Falco and
Tan models.",
notes = "Faculty of Sciences of Rabat, Mohamed V University,
Rabat, Morocco