Classification of Buried Targets Using Ground Penetrating Radar: Comparison Between Genetic Programming and Neural Networks
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Kobashigawa:2011:LAWP,
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author = "Jill S. Kobashigawa and Hyoung-sun Youn and
Magdy F. Iskander and Zhengqing Yun",
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title = "Classification of Buried Targets Using Ground
Penetrating Radar: Comparison Between Genetic
Programming and Neural Networks",
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journal = "IEEE Antennas and Wireless Propagation Letters",
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year = "2011",
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volume = "10",
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pages = "971--974",
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size = "4 pages",
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abstract = "The detection and classification of buried targets
such as unexploded ordnance (UXO) using ground
penetrating radar (GPR) technology involves complex
qualitative features and 2-D scattering images. These
processes are often performed by human operators and
are thus subject to error and bias. Artificial
intelligence (AI) technologies, such as neural networks
(NN) and fuzzy systems, have been applied to develop
autonomous classification algorithms and have shown
promising results. Genetic programming (GP), a
relatively new AI method, has also been examined for
these classification purposes. In this letter, the
results of a comparison between the classification
performances of NN versus the GP techniques for GPR UXO
data are presented. Simulated 2-D scattering patterns
from one UXO target and four non-UXO objects are used
in this comparison. Different levels of noise and cases
of untrained data are also examined. Obtained results
show that GP provides better performance than NN
methods with increasing problem difficulty. Genetic
programming also showed robustness to untrained data as
well as an inherent capability of providing global
optimal searching, which could minimise efforts on
training processes.",
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keywords = "genetic algorithms, genetic programming, 2D image
scattering, AI technology, GP techniques, GPR UXO data,
NN techniques, artificial intelligence technology,
buried target classification, buried target detection,
fuzzy systems, global optimal searching, ground
penetrating radar technology, human operators, neural
networks, unexploded ordnance, artificial intelligence,
buried object detection, ground penetrating radar,
image classification, neural nets, pattern clustering,
radar computing, radar imaging, search problems",
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DOI = "doi:10.1109/LAWP.2011.2167120",
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ISSN = "1536-1225",
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notes = "Also known as \cite{6009168}",
- }
Genetic Programming entries for
Jill S K Nakatsu
Hyoung-sun Youn
Magdy F Iskander
Zhengqing Yun
Citations