Acta Agriculturae Zhejiangensis ›› 2026, Vol. 38 ›› Issue (5): 1035-1047.DOI: 10.3969/j.issn.1004-1524.20250318
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ZHANG Hao(
), TAN Feng, ZHOU Yu, WANG Dachen, ZHOU Hongping, JIANG Hongzhe*(
)
Received:2025-04-22
Online:2026-05-25
Published:2026-06-02
CLC Number:
ZHANG Hao, TAN Feng, ZHOU Yu, WANG Dachen, ZHOU Hongping, JIANG Hongzhe. Research progress of hyperspectral imaging technology in the in-situ sensing of crop quality and safety[J]. Acta Agriculturae Zhejiangensis, 2026, 38(5): 1035-1047.
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URL: http://www.zjnyxb.cn/EN/10.3969/j.issn.1004-1524.20250318
| 样品 Sample | 感知内容 Test items | 建模方法 Modeling approach | 性能评估 Result validation | 参考文献 Reference |
|---|---|---|---|---|
| 葡萄Grape | TSS | PLSR | [ | |
| 花青素含量Anthocyanin content | PLSR | [ | ||
| TP | PLSR | [ | ||
| 葡萄Grape | TSS | PLSR | [ | |
| 花青素含量Anthocyanin content | PLSR | [ | ||
| TP | PLSR | [ | ||
| TA | PLSR | [ | ||
| 葡萄Grape | TSS、成熟度Ripeness | PLS-DA | ACC=86%~91% | [ |
| 蓝莓Blueberry | 成熟度Ripeness | KNN、SVM、AdaBoost | ACC=88% | [ |
| 杧果Mango | 成熟度Ripeness | PLS-DA、CNN | F1>0.97 | [ |
| 草莓Strawberry | 成熟度Ripeness | SVM | ACC=98.6% | [ |
| 桃Peach | 成熟度Ripeness | LIBSVM | ACC=91.7% | [ |
| 油茶果Camellia oleifera fruit | 成熟度Ripeness | PLS-DA | ACC=93.82% | [ |
| 油茶果Camellia oleifera fruit | 成熟度Ripeness | PLS-DA | ACC=88.6% | [ |
| 辣椒Pepper | 成熟度Ripeness | SG-Der-SAM PCA-KELM | ACC=99.8% ACC=89.4% | [ [ |
| 辣椒Pepper | 成熟度Ripeness | PCA-KELM | ACC=97.3% | [ |
Table 1 In-situ perception classification model for ripeness
| 样品 Sample | 感知内容 Test items | 建模方法 Modeling approach | 性能评估 Result validation | 参考文献 Reference |
|---|---|---|---|---|
| 葡萄Grape | TSS | PLSR | [ | |
| 花青素含量Anthocyanin content | PLSR | [ | ||
| TP | PLSR | [ | ||
| 葡萄Grape | TSS | PLSR | [ | |
| 花青素含量Anthocyanin content | PLSR | [ | ||
| TP | PLSR | [ | ||
| TA | PLSR | [ | ||
| 葡萄Grape | TSS、成熟度Ripeness | PLS-DA | ACC=86%~91% | [ |
| 蓝莓Blueberry | 成熟度Ripeness | KNN、SVM、AdaBoost | ACC=88% | [ |
| 杧果Mango | 成熟度Ripeness | PLS-DA、CNN | F1>0.97 | [ |
| 草莓Strawberry | 成熟度Ripeness | SVM | ACC=98.6% | [ |
| 桃Peach | 成熟度Ripeness | LIBSVM | ACC=91.7% | [ |
| 油茶果Camellia oleifera fruit | 成熟度Ripeness | PLS-DA | ACC=93.82% | [ |
| 油茶果Camellia oleifera fruit | 成熟度Ripeness | PLS-DA | ACC=88.6% | [ |
| 辣椒Pepper | 成熟度Ripeness | SG-Der-SAM PCA-KELM | ACC=99.8% ACC=89.4% | [ [ |
| 辣椒Pepper | 成熟度Ripeness | PCA-KELM | ACC=97.3% | [ |
| 样品Sample | 建模方法Modeling approach | 性能评估Result validation | 参考文献Reference |
|---|---|---|---|
| 生菜Lettuce | MC-UVE-CARS-PLS | RC=82.71%,RP=84.67% | [ |
| 生菜Lettuce | PCA | AVG=0.952 6、0.047 7 | [ |
| 冬小麦Winter wheat | BPNN | [ | |
| 玉米Corn | LR | R2>0.6 | [ |
| 紫花苜蓿Alfalfa | PLS | R2=0.86,RMSE=2.00% | [ |
| 葡萄藤Grapevine | RF | ACC=83.3% | [ |
Table 2 In-situ sensing model for moisture content
| 样品Sample | 建模方法Modeling approach | 性能评估Result validation | 参考文献Reference |
|---|---|---|---|
| 生菜Lettuce | MC-UVE-CARS-PLS | RC=82.71%,RP=84.67% | [ |
| 生菜Lettuce | PCA | AVG=0.952 6、0.047 7 | [ |
| 冬小麦Winter wheat | BPNN | [ | |
| 玉米Corn | LR | R2>0.6 | [ |
| 紫花苜蓿Alfalfa | PLS | R2=0.86,RMSE=2.00% | [ |
| 葡萄藤Grapevine | RF | ACC=83.3% | [ |
| 样品Sample | 感知内容Test items | 建模方法Modeling approach | 性能评估Result validation | 参考文献Reference |
|---|---|---|---|---|
| 牧草Forage | 磷含量Phosphorus content | FD-IB+SVM | R2=0.67,RMSE=0.047 2% | [ |
| 水稻Rice | 氮含量Nitrogen content | GA-ELM | R2>0.68 | [ |
| 水稻Rice | 钾含量Potassium content | PROSPECT-5 | R2=0.74 | [ |
| 冬小麦Winter wheat | 氮含量Nitrogen content | SVR | R2=0.88 | [ |
| RFR | R2=0.91 | [ | ||
| 冬小麦Winter wheat | 氮含量Nitrogen content | N-PROSAIL | R2=0.75%,RMSE=0.38% | [ |
| 苹果树Apple tree | 氮含量Nitrogen content | PLSR | R2=0.772 8 | [ |
| MLR | R2=0.784 3 | [ |
Table 3 In-situ sensing model for mineral content
| 样品Sample | 感知内容Test items | 建模方法Modeling approach | 性能评估Result validation | 参考文献Reference |
|---|---|---|---|---|
| 牧草Forage | 磷含量Phosphorus content | FD-IB+SVM | R2=0.67,RMSE=0.047 2% | [ |
| 水稻Rice | 氮含量Nitrogen content | GA-ELM | R2>0.68 | [ |
| 水稻Rice | 钾含量Potassium content | PROSPECT-5 | R2=0.74 | [ |
| 冬小麦Winter wheat | 氮含量Nitrogen content | SVR | R2=0.88 | [ |
| RFR | R2=0.91 | [ | ||
| 冬小麦Winter wheat | 氮含量Nitrogen content | N-PROSAIL | R2=0.75%,RMSE=0.38% | [ |
| 苹果树Apple tree | 氮含量Nitrogen content | PLSR | R2=0.772 8 | [ |
| MLR | R2=0.784 3 | [ |
| 样品 Sample | 感知内容 Test items | 建模方法 Modeling approach | 性能评估 Result validation | 参考文献 Reference |
|---|---|---|---|---|
| 番茄Tomato | 综合品质Comprehensive quality | RNN | [ | |
| 番茄Tomato | 综合品质Comprehensive quality | MLR | [ | |
| 油茶果Camellia oleifera fruit | 综合成熟度Composite maturity index | SPA-CNNR | RP=0.839,RMSEP=0.261,RPD=1.849 | [ |
| 油茶果Camellia oleifera fruit | 综合品质Comprehensive quality | RF | R2=0.853 4,RMSE=0.052 6 | [ |
Table 4 In-situ sensing model for comprehensive quality
| 样品 Sample | 感知内容 Test items | 建模方法 Modeling approach | 性能评估 Result validation | 参考文献 Reference |
|---|---|---|---|---|
| 番茄Tomato | 综合品质Comprehensive quality | RNN | [ | |
| 番茄Tomato | 综合品质Comprehensive quality | MLR | [ | |
| 油茶果Camellia oleifera fruit | 综合成熟度Composite maturity index | SPA-CNNR | RP=0.839,RMSEP=0.261,RPD=1.849 | [ |
| 油茶果Camellia oleifera fruit | 综合品质Comprehensive quality | RF | R2=0.853 4,RMSE=0.052 6 | [ |
| 样品 Sample | 建模方法 Modeling approach | 性能评估 Result validation | 参考文献 Reference |
|---|---|---|---|
| 山核桃 Pecan | XGboost | RMSEP=0.842 | [ |
| 柑橘 Citrus | H-ELR、PLSR | R2=0.876, RMSE=3.447, RPD=2.601 | [ |
| 植物Plants | 3D-CNN-LSTM | [ | |
| 小麦Wheat | K-means、PLSR | [ |
Table 5 In-situ sensing models of chlorophyll content
| 样品 Sample | 建模方法 Modeling approach | 性能评估 Result validation | 参考文献 Reference |
|---|---|---|---|
| 山核桃 Pecan | XGboost | RMSEP=0.842 | [ |
| 柑橘 Citrus | H-ELR、PLSR | R2=0.876, RMSE=3.447, RPD=2.601 | [ |
| 植物Plants | 3D-CNN-LSTM | [ | |
| 小麦Wheat | K-means、PLSR | [ |
| 样品Sample | 感知内容Test items | 建模方法Modeling approach | 性能评估Result validation | 参考文献Reference |
|---|---|---|---|---|
| 小麦Wheat | FHB | ETR | R2=0.94 | [ |
| 小麦Wheat | FHB | SB+VI+WF | R2=0.88,RMSE=2.68% | [ |
| 小麦Wheat | FHB | BPNN | ACC=98% | [ |
| 小麦Wheat | 条锈病Stripe rust | PCA-loadings-BPNN | [ | |
| 小麦Wheat | 条锈病Stripe rust | PLSR | R2=0.65、0.75、0.82 | [ |
| 小麦Wheat | PM | PLSR | ACC=82.35% | [ |
| 小麦Wheat | SR | RFC | ACC=85% | [ |
| 马铃薯Potato | 晚疫病Late blight | RFC | ACC=0.99±0.04 | [ |
| 马铃薯Potato | 晚疫病Late blight | CropdocNet | ACC=98.09% | [ |
| 水稻Rice | 稻曲病False smut | GBDT | ACC=85.62% | [ |
| 水稻Rice | 稻曲病False smut | RF | ACC=74.23%、85.19% | [ |
| 柑橘Citrus | 流胶病Gummosis | SAM | ACC=94% | [ |
Table 6 In-situ sensing models for fungal diseases
| 样品Sample | 感知内容Test items | 建模方法Modeling approach | 性能评估Result validation | 参考文献Reference |
|---|---|---|---|---|
| 小麦Wheat | FHB | ETR | R2=0.94 | [ |
| 小麦Wheat | FHB | SB+VI+WF | R2=0.88,RMSE=2.68% | [ |
| 小麦Wheat | FHB | BPNN | ACC=98% | [ |
| 小麦Wheat | 条锈病Stripe rust | PCA-loadings-BPNN | [ | |
| 小麦Wheat | 条锈病Stripe rust | PLSR | R2=0.65、0.75、0.82 | [ |
| 小麦Wheat | PM | PLSR | ACC=82.35% | [ |
| 小麦Wheat | SR | RFC | ACC=85% | [ |
| 马铃薯Potato | 晚疫病Late blight | RFC | ACC=0.99±0.04 | [ |
| 马铃薯Potato | 晚疫病Late blight | CropdocNet | ACC=98.09% | [ |
| 水稻Rice | 稻曲病False smut | GBDT | ACC=85.62% | [ |
| 水稻Rice | 稻曲病False smut | RF | ACC=74.23%、85.19% | [ |
| 柑橘Citrus | 流胶病Gummosis | SAM | ACC=94% | [ |
| 样品 Sample | 感知内容 Test items | 建模方法 Modeling approach | 性能评估 Result validation | 参考文献 Reference |
|---|---|---|---|---|
| 马铃薯Potato | 黑胫病Blackleg | SVM | BA=0.915 | [ |
| 柑橘Citrus | 溃疡病Citrus canker | RBF、KNN | ACC=100% | [ |
| 柑橘Citrus | 黄龙病Huanglongbing disease | GA、SAE | ACC=99.72% | [ |
| 杧果Mango | 虫害Insect pest | MD-FCM、XCS-RBFNN | ACC=97.02% | [ |
| 棉花Cotton | 蚜害Aphid infestation | PLSR | R2=0.612,RMSE=0.89 | [ |
Table 7 In-situ sensing models for other diseases
| 样品 Sample | 感知内容 Test items | 建模方法 Modeling approach | 性能评估 Result validation | 参考文献 Reference |
|---|---|---|---|---|
| 马铃薯Potato | 黑胫病Blackleg | SVM | BA=0.915 | [ |
| 柑橘Citrus | 溃疡病Citrus canker | RBF、KNN | ACC=100% | [ |
| 柑橘Citrus | 黄龙病Huanglongbing disease | GA、SAE | ACC=99.72% | [ |
| 杧果Mango | 虫害Insect pest | MD-FCM、XCS-RBFNN | ACC=97.02% | [ |
| 棉花Cotton | 蚜害Aphid infestation | PLSR | R2=0.612,RMSE=0.89 | [ |
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