Enhancing LAI estimation using multispectral imagery and machine learning: A comparison between reflectance-based and vegetation indices-based approaches

被引:6
作者
Chatterjee, Sumantra [1 ]
Baath, Gurjinder S. [1 ]
Sapkota, Bala Ram [1 ,2 ]
Flynn, K. Colton [3 ]
Smith, Douglas R. [3 ]
机构
[1] Texas A&M AgriLife Res, Blackland Res & Extens Ctr, 720 E Blackland Rd, Temple, TX 76502 USA
[2] Texas A&M Univ, Dept Soil & Crop Sci, College Stn, TX 77843 USA
[3] USDA ARS, Grassland Soil & Water Res Lab, 808 E Blackland Rd, Temple, TX 76502 USA
基金
美国食品与农业研究所;
关键词
UAV; Leaf area index; Corn; Vegetation index; Canopy reflectance; LEAF-AREA INDEX; PRODUCTS; MODEL;
D O I
10.1016/j.compag.2024.109790
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Leaf area index (LAI) is a critical growth parameter in precision agricultural applications but estimating LAI across large and complex fields is challenging. Remote sensing approaches, particularly unmanned aerial vehicles (UAV)-based remote sensing, can offer on demand, cost-effective solutions. While vegetation indices (VIs) are commonly used for LAI estimation with multispectral imagery, they often face issues such as inconsistency and saturation in dense crop canopies, especially in late growth stages of crops like corn ( Zea Mays L.). Alternatively, canopy spectral reflectance, if used directly with advanced statistical tools like machine learning, can potentially overcome these limitations of VI-based models and provide more consistent and accurate LAI predictions. This research used a large diverse dataset of LAI data collected from corn experimental plots treated with seven planting times in three different field locations from 2022 to 2023. A side-by-side performance comparison of reflectance-based models and VI-based models was conducted for LAI predictions across multiple datasets, categorized based on six different crop growth stages, three field locations and all combined, using five different machine learning algorithms. Machine learning modeling was executed for each dataset via k-fold cross- validation using 80% data, and the model performance was externally tested with the remaining 20% independent data. Results demonstrated that reflectance-based models outperformed VI-based models, especially at mid- to late vegetative growth (5--15%) and silking stages (25%). The superior performance of reflectance-bands was regulated by red edge and near infrared bands due to their greater sensitivity to higher LAI. However, VI- based models performed better at early vegetative growth stages, primarily due to the effectiveness of soil- adjusted indices like Modified Soil Adjusted Vegetation Index (MSAVI). Machine learning algorithms such as K Neighbors Regressor and Extra Tree Regressor were most effective for modeling LAI, regardless of whether reflectance-based or VI-based approaches were used. Findings suggest that the direct use of canopy spectral reflectance with machine learning algorithms could enhance LAI predictions, benefiting precision agriculture applications in dense canopy crops like corn.
引用
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页数:13
相关论文
共 45 条
[31]  
Pedregosa F, 2011, J MACH LEARN RES, V12, P2825, DOI 10.1145/2786984.2786995
[32]   Tree induction vs. logistic regression: A learning-curve analysis [J].
Perlich, C ;
Provost, F ;
Simonoff, JS .
JOURNAL OF MACHINE LEARNING RESEARCH, 2004, 4 (02) :211-255
[33]  
Perry M.T., 2023, rasterstats: Summary statistics of geospatial raster datasets based on vector geometries (Version 0.18.0) [Python]
[34]   Unmanned aerial systems-based remote sensing for monitoring sorghum growth and development [J].
Shafian, Sanaz ;
Rajan, Nithya ;
Schnell, Ronnie ;
Bagavathiannan, Muthukumar ;
Valasek, John ;
Shi, Yeyin ;
Olsenholler, Jeff .
PLOS ONE, 2018, 13 (05)
[35]   Quantifying effect of maize tassels on LAI estimation based on multispectral imagery and machine learning methods [J].
Shao, Mingchao ;
Nie, Chenwei ;
Zhang, Aijun ;
Shi, Liangsheng ;
Zha, Yuanyuan ;
Xu, Honggen ;
Yang, Hongye ;
Yu, Xun ;
Bai, Yi ;
Liu, Shuaibing ;
Cheng, Minghan ;
Lin, Tao ;
Cui, Ningbo ;
Wu, Wenbin ;
Jin, Xiuliang .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2023, 211
[36]  
Trevor HastieRobert Tibshirani Jerome Friedman., 2009, The elements of statistical learning, V2, DOI [10.1007/978-0-387-84858-7, DOI 10.1007/978-0-387-84858-7_14]
[37]   Calibration of the Aqua Crop model for winter wheat using MODIS LAI images [J].
Trombetta, Andrea ;
Iacobellis, Vito ;
Tarantino, Eufemia ;
Gentile, Francesco .
AGRICULTURAL WATER MANAGEMENT, 2016, 164 :304-316
[38]   INSTRUMENT FOR INDIRECT MEASUREMENT OF CANOPY ARCHITECTURE [J].
WELLES, JM ;
NORMAN, JM .
AGRONOMY JOURNAL, 1991, 83 (05) :818-825
[39]   Blood-based multi-tissue gene expression inference with Bayesian ridge regression [J].
Xu, Wenjian ;
Liu, Xuanshi ;
Leng, Fei ;
Li, Wei .
BIOINFORMATICS, 2020, 36 (12) :3788-3794
[40]   Enhancing Leaf Area Index Estimation for Maize with Tower-Based Multi-Angular Spectral Observations [J].
Yan, Lieshen ;
Liu, Xinjie ;
Jing, Xia ;
Geng, Liying ;
Che, Tao ;
Liu, Liangyun .
SENSORS, 2023, 23 (22)