Not just select samples, but exploration: Genetic programming aided remote sensing target detection under deep learning
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{WANG:2023:asoc,
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author = "Shuai Wang and Shichen Huang and Shuai Liu and
Ying Bi",
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title = "Not just select samples, but exploration: Genetic
programming aided remote sensing target detection under
deep learning",
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journal = "Applied Soft Computing",
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volume = "145",
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pages = "110570",
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year = "2023",
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ISSN = "1568-4946",
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DOI = "doi:10.1016/j.asoc.2023.110570",
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URL = "https://www.sciencedirect.com/science/article/pii/S1568494623005884",
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keywords = "genetic algorithms, genetic programming, Auxiliary
feature detection, Evolutionary computation, Remote
sensing images, Sample selection, Target detection,
ANN",
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abstract = "The data of target detection in remote sensing images
are diverse, and the detection results of some
categories with a small number of samples are poor. In
order to solve this problem, most of the existing
methods focus on the category with a small number of
samples through data augmentation, but this will bring
huge loss of original information, resulting in the
decline of the effectiveness of some categories when
improving the effectiveness. Additionally, since remote
sensing image targets are small, numerous and densely
distributed, the mixing degree of target and background
is high, making them hardly distinguished. Therefore, a
loss-based sample selection mechanism is proposed to
enhance the category samples with low proportion. In
the training process, we select between the original
samples and enhanced samples through loss feedback, so
as to retain the original sample information as much as
possible and improve the detection performance. On this
basis, an auxiliary feature detection module is
proposed. First, the module detects the highly mixed
area between the object to be detected and the
background, and uses a series of image enhancement
operations to build a genetic programming (GP) tree to
separate the object from the background as much as
possible, so that the detector can better extract and
detect target features. Compared with other latest
related algorithms, the loss-based sample selection
mechanism and evolutionary auxiliary feature detection
method proposed in this paper can improve the detection
performance of low proportion categories through the
sample selection mechanism, and improve the robustness
to background clutter interference through evolutionary
auxiliary feature detection. The proposed approach
effectively improves the detection performance and
performs well in remote sensing target detection",
- }
Genetic Programming entries for
Shuai Wang
Shichen Huang
Shuai Liu
Ying Bi
Citations