Biophysical Variable Retrieval of Silage Maize with Gaussian Process Regression and Hyperparameter Optimization Algorithms

被引:6
|
作者
Akbari, Elahe [1 ]
Boloorani, Ali Darvishi [2 ]
Verrelst, Jochem [3 ]
Pignatti, Stefano [4 ]
Samany, Najmeh Neysani [2 ]
Soufizadeh, Saeid [5 ]
Hamzeh, Saeid [2 ]
机构
[1] Hakim Sabzevari Univ, Fac Geog & Environm Sci, Dept Remote Sensing & Geog Informat Syst, Sabzevar 9617976487, Iran
[2] Univ Tehran, Fac Geog, Dept Remote Sensing & GIS, Tehran 141785393, Iran
[3] Univ Valencia, Image Proc Lab IPL, C-Catedrat Jose Beltran 2, Paterna 46980, Valencia, Spain
[4] Inst Methodol Environm Anal CNR IMAA, I-85050 Tito, PZ, Italy
[5] Shahid Beheshti Univ, Environm Sci Res Inst, Dept Agroecol, Tehran 1983969411, Iran
关键词
biophysical variables; optimization algorithm; Gaussian process regression; machine learning regression algorithms; remote sensing; LEAF-AREA INDEX; VEGETATION PROPERTIES; GREEN LAI; SENTINEL-2; BIOMASS; BANDS; CORN;
D O I
10.3390/rs15143690
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Quantification of vegetation biophysical variables such as leaf area index (LAI), fractional vegetation cover (fCover), and biomass are among the key factors across hydrological, agricultural, and irrigation management studies. The present study proposes a kernel-based machine learning algorithm capable of performing adaptive and nonlinear data fitting so as to generate a suitable, accurate, and robust algorithm for spatio-temporal estimation of the three mentioned variables using Sentinel-2 images. To this aim, Gaussian process regression (GPR)-particle swarm optimization (PSO), GPR-genetic algorithm (GA), GPR-tabu search (TS), and GPR-simulated annealing (SA) hyperparameter-optimized algorithms were developed and compared against kernel-based machine learning regression algorithms and artificial neural network (ANN) and random forest (RF) algorithms. The accuracy of the proposed algorithms was assessed using digital hemispherical photography (DHP) data and destructive measurements performed during the growing season of silage maize in agricultural fields of Ghale-Nou, southern Tehran, Iran, in the summer of 2019. The results on biophysical variables against validation data showed that the developed GPR-PSO algorithm outperformed other algorithms under study in terms of robustness and accuracy (0.917, 0.931, 0.882 using R-2 and 0.627, 0.078, and 1.99 using RMSE in LAI, fCover, and biomass of Sentinel-2 20 m, respectively). GPR-PSO also possesses the unique ability to generate pixel-based uncertainty maps (confidence level) for prediction purposes (i.e., estimated uncertainty level <0.7 in LAI, fCover, and biomass, for 96%, 98%, and 71% of the total study area, respectively). Altogether, GPR-PSO appears to be the most suitable option for mapping biophysical variables at the local scale using Sentinel-2 images.
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页数:17
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