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Early Detection and Dynamic Grading of Sweet Potato Scab Based on Hyperspectral Imaging
by
Yue, Xuejun
, Ding, Xiawei
, Wang, Zhangying
, Huang, Lifei
, Ding, Ziyu
, Zeng, Fanguo
, Ning, Xiaosong
, Zou, Hongda
, Xia, Qiyao
, Tang, Fajiang
in
Accuracy
/ Agricultural production
/ Classification
/ Crop diseases
/ Crop management
/ Discriminant analysis
/ Disease detection
/ Disease management
/ Disease susceptibility
/ dynamic grading
/ early detection
/ Flowers & plants
/ Humidity
/ Hyperspectral imaging
/ Image processing
/ Ipomoea batatas
/ Leaves
/ Machine learning
/ Monitoring
/ Pathogens
/ Physiology
/ Plant diseases
/ Potatoes
/ Principal components analysis
/ Real time
/ Scab
/ spectral analysis
/ Support vector machines
/ sweet potato scab
/ Sweet potatoes
/ Vegetables
/ Vegetation
/ Wheat
2025
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Early Detection and Dynamic Grading of Sweet Potato Scab Based on Hyperspectral Imaging
by
Yue, Xuejun
, Ding, Xiawei
, Wang, Zhangying
, Huang, Lifei
, Ding, Ziyu
, Zeng, Fanguo
, Ning, Xiaosong
, Zou, Hongda
, Xia, Qiyao
, Tang, Fajiang
in
Accuracy
/ Agricultural production
/ Classification
/ Crop diseases
/ Crop management
/ Discriminant analysis
/ Disease detection
/ Disease management
/ Disease susceptibility
/ dynamic grading
/ early detection
/ Flowers & plants
/ Humidity
/ Hyperspectral imaging
/ Image processing
/ Ipomoea batatas
/ Leaves
/ Machine learning
/ Monitoring
/ Pathogens
/ Physiology
/ Plant diseases
/ Potatoes
/ Principal components analysis
/ Real time
/ Scab
/ spectral analysis
/ Support vector machines
/ sweet potato scab
/ Sweet potatoes
/ Vegetables
/ Vegetation
/ Wheat
2025
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Early Detection and Dynamic Grading of Sweet Potato Scab Based on Hyperspectral Imaging
by
Yue, Xuejun
, Ding, Xiawei
, Wang, Zhangying
, Huang, Lifei
, Ding, Ziyu
, Zeng, Fanguo
, Ning, Xiaosong
, Zou, Hongda
, Xia, Qiyao
, Tang, Fajiang
in
Accuracy
/ Agricultural production
/ Classification
/ Crop diseases
/ Crop management
/ Discriminant analysis
/ Disease detection
/ Disease management
/ Disease susceptibility
/ dynamic grading
/ early detection
/ Flowers & plants
/ Humidity
/ Hyperspectral imaging
/ Image processing
/ Ipomoea batatas
/ Leaves
/ Machine learning
/ Monitoring
/ Pathogens
/ Physiology
/ Plant diseases
/ Potatoes
/ Principal components analysis
/ Real time
/ Scab
/ spectral analysis
/ Support vector machines
/ sweet potato scab
/ Sweet potatoes
/ Vegetables
/ Vegetation
/ Wheat
2025
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Early Detection and Dynamic Grading of Sweet Potato Scab Based on Hyperspectral Imaging
Journal Article
Early Detection and Dynamic Grading of Sweet Potato Scab Based on Hyperspectral Imaging
2025
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Overview
This study investigates the early detection of sweet potato scab by using hyperspectral imaging and machine learning techniques. The research focuses on developing an accurate, economical, and non-destructive approach for disease detection and grading. Hyperspectral imaging experiments were conducted on two sweet potato varieties: Guangshu 87 (resistant) and Guicaishu 2 (susceptible). Data preprocessing included denoising, region of interest (ROI) selection, and average spectrum extraction, followed by dimensionality reduction using principal component analysis (PCA) and random forest (RF) feature selection. A novel dynamic grading method based on spectral-time data was introduced to classify the early stages of the disease, including the early latent and early mild periods. This method identified significant temporal spectral changes, enabling a refined disease staging framework. Key wavebands associated with sweet potato scab were identified in the near-infrared range, including 801.8 nm, 769.8 nm, 898.5 nm, 796.4 nm, and 780.5 nm. Classification models, including K-nearest neighbor (KNN), support vector machine (SVM), and linear discriminant analysis (LDA), were constructed to evaluate the effectiveness of spectral features. Among these classification models, the MSC-PCA-SVM model demonstrated the best performance. Specifically, the Susceptible Variety Disease Classification Model achieved an overall accuracy (OA) of 98.65%, while the Combined Variety Disease Classification Model reached an OA of 95.38%. The results highlight the potential of hyperspectral imaging for early disease detection, particularly for non-destructive monitoring of resistant and susceptible sweet potato varieties. This study provides a practical method for early disease classification of sweet potato scab, and future research could focus on real-time disease monitoring to enhance sweet potato crop management.
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