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A CARS-SPA-GA Feature Wavelength Selection Method Based on Hyperspectral Imaging with Potato Leaf Disease Classification
by
Li, Xue
, Li, Honghui
, Fu, Xueliang
in
Accuracy
/ Agricultural production
/ Algorithms
/ Animals
/ Classification
/ Coleoptera
/ Crop diseases
/ Crops
/ Deep learning
/ Diseases
/ Feature selection
/ Forecasts and trends
/ Hyperspectral Imaging - methods
/ hyperspectral imaging technique
/ Identification
/ ladybug beetle
/ Leaves
/ Machine learning
/ Medical research
/ Medicine, Experimental
/ Methods
/ Plant Diseases - parasitology
/ Plant Leaves
/ potato early blight
/ Potatoes
/ Principal components analysis
/ Solanum tuberosum - parasitology
/ Support Vector Machine
/ Tobacco
2024
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A CARS-SPA-GA Feature Wavelength Selection Method Based on Hyperspectral Imaging with Potato Leaf Disease Classification
by
Li, Xue
, Li, Honghui
, Fu, Xueliang
in
Accuracy
/ Agricultural production
/ Algorithms
/ Animals
/ Classification
/ Coleoptera
/ Crop diseases
/ Crops
/ Deep learning
/ Diseases
/ Feature selection
/ Forecasts and trends
/ Hyperspectral Imaging - methods
/ hyperspectral imaging technique
/ Identification
/ ladybug beetle
/ Leaves
/ Machine learning
/ Medical research
/ Medicine, Experimental
/ Methods
/ Plant Diseases - parasitology
/ Plant Leaves
/ potato early blight
/ Potatoes
/ Principal components analysis
/ Solanum tuberosum - parasitology
/ Support Vector Machine
/ Tobacco
2024
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A CARS-SPA-GA Feature Wavelength Selection Method Based on Hyperspectral Imaging with Potato Leaf Disease Classification
by
Li, Xue
, Li, Honghui
, Fu, Xueliang
in
Accuracy
/ Agricultural production
/ Algorithms
/ Animals
/ Classification
/ Coleoptera
/ Crop diseases
/ Crops
/ Deep learning
/ Diseases
/ Feature selection
/ Forecasts and trends
/ Hyperspectral Imaging - methods
/ hyperspectral imaging technique
/ Identification
/ ladybug beetle
/ Leaves
/ Machine learning
/ Medical research
/ Medicine, Experimental
/ Methods
/ Plant Diseases - parasitology
/ Plant Leaves
/ potato early blight
/ Potatoes
/ Principal components analysis
/ Solanum tuberosum - parasitology
/ Support Vector Machine
/ Tobacco
2024
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A CARS-SPA-GA Feature Wavelength Selection Method Based on Hyperspectral Imaging with Potato Leaf Disease Classification
Journal Article
A CARS-SPA-GA Feature Wavelength Selection Method Based on Hyperspectral Imaging with Potato Leaf Disease Classification
2024
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Overview
Early blight and ladybug beetle infestation are important factors threatening potato yields. The current research on disease classification using the spectral differences between the healthy and disease-stressed leaves of plants has achieved good progress in a variety of crops, but less research has been conducted on early blight in potato. This paper proposes a CARS-SPA-GA feature selection method. First, the raw spectral data of potato leaves in the visible/near-infrared light region were preprocessed. Then, the feature wavelengths were selected via competitive adaptive reweighted sampling (CARS) and the successive projection algorithm (SPA), respectively. Then, the two sets of wavelengths were reorganized and duplicates were removed, and secondary feature selection was conducted with genetic algorithm (GA). Finally, the feature wavelengths were fed into different classifiers and the parameters were optimized using a real-coded genetic algorithm (RCGA). The experimental results show that the feature wavelengths selected by the CARS-SPA-GA method accounted only for 9% of the full band, and the classification accuracy of the RCGA-optimized support vector machine (SVM) classification model reached 98.366%. These results show that it is feasible to classify early blight and ladybug beetle infestation in potato using visible/near-infrared spectral data, and the CARS-SPA-GA method can substantially improve the accuracy and detection efficiency of potato pest and disease classification.
Publisher
MDPI AG,MDPI
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