Podrobná bibliografie
| Název: |
A Review of Crop Attribute Monitoring Technologies for General Agricultural Scenarios. |
| Autoři: |
Li, Zhuofan, Wang, Ruochen, Ding, Renkai |
| Zdroj: |
AgriEngineering; Nov2025, Vol. 7 Issue 11, p365, 36p |
| Témata: |
PRECISION farming, DEEP learning, SUSTAINABILITY, REAL-time computing, NEAR infrared spectroscopy, AGRICULTURAL technology, ARTIFICIAL intelligence, MULTISENSOR data fusion |
| Abstrakt: |
As global agriculture shifts to intelligence and precision, crop attribute detection has become foundational for intelligent systems (harvesters, UAVs, sorters). It enables real-time monitoring of key indicators (maturity, moisture, disease) to optimize operations—reducing crop losses by 10–15% via precise cutting height adjustment—and boosts resource-use efficiency. This review targets harvesting-stage and in-field monitoring for grains, fruits, and vegetables, highlighting practical technologies: near-infrared/Raman spectroscopy (non-destructive internal attribute detection), 3D vision/LiDAR (high-precision plant height/density/fruit location measurement), and deep learning (YOLO for counting, U-Net for disease segmentation). It addresses universal field challenges (lighting variation, target occlusion, real-time demands) and actionable fixes (illumination compensation, sensor fusion, lightweight AI) to enhance stability across scenarios. Future trends prioritize real-world deployment: multi-sensor fusion (e.g., RGB + thermal imaging) for comprehensive perception, edge computing (inference delay < 100 ms) to solve rural network latency, and low-cost solutions (mobile/embedded device compatibility) to lower smallholder barriers—directly supporting scalable precision agriculture and global sustainable food production. [ABSTRACT FROM AUTHOR] |
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| Databáze: |
Complementary Index |