A Two-Stage Approach Combining Feature Selection and Construction for Hyperspectral Crop Classification
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- @InProceedings{liang:2025:CEC,
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author = "Jing Liang and Zexuan Yang and Ying Bi",
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title = "A Two-Stage Approach Combining Feature Selection and
Construction for Hyperspectral Crop Classification",
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booktitle = "2025 IEEE Congress on Evolutionary Computation (CEC)",
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year = "2025",
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editor = "Yaochu Jin and Thomas Baeck",
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address = "Hangzhou, China",
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month = "8-12 " # jun,
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publisher = "IEEE",
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keywords = "genetic algorithms, genetic programming, Precision
agriculture, Diversity reception, Crops, Evolutionary
computation, Feature extraction, Hyperspectral imaging,
Image classification, Overfitting, Genetic operators,
Feature Construction, Feature Selection, Crop
Classification",
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isbn13 = "979-8-3315-3432-5",
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DOI = "
10.1109/CEC65147.2025.11042960",
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abstract = "Hyperspectral image classification is effective for
obtaining high-precision crop distribution maps.
However, learning discriminative features from
hyperspectral images to improve classification accuracy
remains a highly focused research topic. Existing
methods often fail to fully integrate feature selection
and feature construction, which may result in learnt
feature sets with lower information levels and increase
the risk of overfitting. To address these issues, this
paper proposes a two-stage approach that combines
feature selection and feature construction for
hyperspectral image classification. In the first stage,
feature selection is used to remove redundant features
and obtain a high-quality feature subset. In the second
stage, feature construction is employed to generate
more discriminative high-level features, aiming to find
the optimal combination of high-level and original
features. Comparative experiments on four hyperspectral
image datasets demonstrate that the proposed approach
significantly outperforms nine baseline methods in crop
classification tasks.",
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notes = "also known as \cite{11042960}",
- }
Genetic Programming entries for
Jing Liang
Zexuan Yang
Ying Bi
Citations