Litcius/Paper detail

Estimating leaf and canopy nitrogen contents in major field crops across the growing season from hyperspectral images using nonparametric regression

Dong Wang, P.C. Struik, Lei Liang, Xinyou Yin

2025Computers and Electronics in Agriculture11 citationsDOIOpen Access PDF

Abstract

• Leaf and canopy nitrogen contents were estimated for rice, wheat and maize. • Partial Least Squares Regression and Support Vector Regression were most robust. • Model performance was improved by combining spectral and phenological features. • Leaf nitrogen concentration was better predicted than specific leaf nitrogen. • Indirect prediction methods provided results comparable to direct ones. Estimating leaf nitrogen (N) status is crucial for site- and time-specific crop N management, and can be accomplished more routinely than ever before with the advent of hyperspectral imaging techniques. Yet, there is still a lack of information about how leaf and canopy N of major crops could be predicted from different regression methods, hyperspectral feature types, and prediction pathways. We conducted field experiments with different N supply for rice, wheat and maize, in China. Features of canopy reflectance (Ref), vegetation indices (VIs), and texture information (Tex) were extracted from acquired hyperspectral images. These features and crop developmental stage (DS) were applied to estimate crop N parameters, using five nonparametric regression algorithms: Partial Least Squares Regression (PLSR), Support Vector Regression (SVR), Random Forest Regression, Deep Neural Network, and Convolutional Neural Network. The performance of PLSR and SVR models was significantly better than that of the others when field samples were limited. Use of feature combination in leaf N prediction was identified necessary from the improved model performance after incorporating the features of Ref, Tex, and DS. The prediction of the mass-based leaf N trait, leaf N concentration, was better than that of the area-based trait, specific leaf N (SLN). Values of SLN and canopy leaf-N content were predicted comparably via themselves direct and indirect methods, although indirect procedures involved more steps requiring the prediction of two or more component traits. These results were discussed in view of making use of available regression-models, features and pathways for best predictabilities so as to improve crop N monitoring for sustainable field N management.

Topics & Concepts

Hyperspectral imagingCanopyGrowing seasonEnvironmental sciencePlant canopyAgronomyNitrogenNonparametric statisticsField (mathematics)Remote sensingNonparametric regressionRegression analysisMathematicsBotanyStatisticsGeographyBiologyChemistryOrganic chemistryPure mathematicsRemote Sensing in AgricultureSpectroscopy and Chemometric AnalysesLeaf Properties and Growth Measurement
Estimating leaf and canopy nitrogen contents in major field crops across the growing season from hyperspectral images using nonparametric regression | Litcius