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Hyperspectral imaging for classification of healthy and gray mold diseased tomato leaves with different infection severities
Chuanqi Xie,
Ce Yang
, Yong He
Bioproducts and Biosystems Engineering
Research output
:
Contribution to journal
›
Article
›
peer-review
126
Scopus citations
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Keyphrases
Hyperspectral Imaging
100%
Infection Severity
100%
Tomato Leaves
100%
Gray Mold
100%
K-nearest
100%
Feature Ranking
55%
C5.0
33%
Region of Interest
22%
Healthy Sample
22%
Hyperspectral
11%
Early Detection
11%
Inoculation
11%
Early Disease Detection
11%
Sensitive Bands
11%
Classification Results
11%
Reflectance Value
11%
Classification Model
11%
Age of Infection
11%
Neighborhood Model
11%
Band Grading
11%
Gray Mold Disease
11%
Spectral Dimension
11%
Chemistry
Hyperspectral Imaging
100%