Rice Yield Prediction Using Spectral and Textural Indices Derived from UAV Imagery and Machine Learning Models in Lambayeque, Peru

被引:0
作者
Quille-Mamani, Javier [1 ]
Ramos-Fernandez, Lia [2 ]
Huanuqueno-Murillo, Jose [2 ]
Quispe-Tito, David [2 ]
Cruz-Villacorta, Lena [3 ,4 ]
Pino-Vargas, Edwin [5 ]
Flores del Pino, Lisveth [6 ]
Heros-Aguilar, Elizabeth [7 ]
Ruiz, Luis Angel [1 ]
机构
[1] Univ Politecn Valencia, Geoenvironm Cartog & Remote Sensing Grp CGAT, Cami Vera S-N, Valencia 46022, Spain
[2] Natl Agrarian Univ La Molina, Dept Water Resources, Lima 15024, Peru
[3] Univ Nacl Agr Molina, Dept Terr Planning, Lima 15024, Peru
[4] Univ Nacl Agr Molina, Doctoral Program Engn & Environm Sci, Lima 15024, Peru
[5] Jorge Basadre Grohmann Natl Univ, Dept Civil Engn, Tacna 23000, Peru
[6] Natl Agrarian Univ Molina, Ctr Res Chem Toxicol & Environm Biotechnol, Lima 15024, Peru
[7] Natl Agrarian Univ La Molina, Dept Phytotechn, Lima 15024, Peru
关键词
vegetation indices (VIs); textural indices (TIs); multiple linear regression (MLR); support vector regression (SVR); random forest (RF); cross-validation; machine learning; ABOVEGROUND BIOMASS;
D O I
10.3390/rs17040632
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Predicting rice yield accurately is crucial for enhancing farming practices and securing food supplies. This research aims to estimate rice yield in Peru's Lambayeque region by utilizing spectral and textural indices derived from unmanned aerial vehicle (UAV) imagery, which offers a cost-effective alternative to traditional approaches. UAV data collection in commercial areas involved seven flights in 2022 and ten in 2023, focusing on key growth stages such as flowering, milk, and dough, each showing significant predictive capability. Vegetation indices like NDVI, SP, DVI, NDRE, GNDVI, and EVI2, along with textural features from the gray-level co-occurrence matrix (GLCM) such as ENE, ENT, COR, IDM, CON, SA, and VAR, were combined to form a comprehensive dataset for model training. Among the machine learning models tested, including Multiple Linear Regression (MLR), Support Vector Machines (SVR), and Random Forest (RF), MLR demonstrated high reliability for annual data with an R2 of 0.69 during the flowering and milk stages, and an R2 of 0.78 for the dough stage in 2022. The RF model excelled in the combined analysis of 2022-2023 data, achieving an R2 of 0.58 for the dough stage, all confirmed through cross-validation. Integrating spectral and textural data from UAV imagery enhances early yield prediction, aiding precision agriculture and informed decision-making in rice management. These results emphasize the need to incorporate climate variables to refine predictions under diverse environmental conditions, offering a scalable solution to improve agricultural management and market planning.
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页数:27
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