Back to Search Start Over

How plant structure impacts the biochemical leaf traits assessment from in-field hyperspectral images: A simulation study based on light propagation modeling in 3D virtual wheat scenes.

Authors :
Makdessi, Nathalie Al
Jean, Pierre-Antoine
Ecarnot, Martin
Gorretta, Nathalie
Rabatel, Gilles
Roumet, Pierre
Source :
Field Crops Research. Apr2017, Vol. 205, p95-105. 11p.
Publication Year :
2017

Abstract

Light propagation modeling in 3-dimensional virtual scenes has been successfully applied to many fields, including plant canopies. However, its application to detailed analyses on how multiple scattering affects spectral-based biochemistry assessments has never been proposed. In this article, a wheat canopy model has been built using simulation models included in the open source software platform Open-Alea. Adel-Wheat, a 3D dynamic model of the aerial growth of winter wheat, has been associated with spectra collected on wheat leaves with an ASD spectrometer, and then used as input of the Caribu light propagation model. Caribu calculates the proportion of direct and scattered light for all polygons of the 3D scene. Principal component analysis was first applied to analyze the distribution of resulting spectra in the spectral feature space. Then the influence of canopy structure on quantitative regression models has been considered. For this purpose, a typical agronomical problem, i.e. nitrogen content retrieval, was addressed, using a Partial Least Square regression model. This study exhibits some important results concerning the distribution of collected spectra in the spectral feature space due to multiple scattering, and underlines the physical interpretation of these results. In the short term, it shows that satisfactory nitrogen content prediction (error about 0.5% of dry matter) can be obtained at the plant level, when considering only the plant top leaves. Moreover, its paves the way for future researches to develop spectral analysis tools able to overcome such multiple scattering phenomena. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03784290
Volume :
205
Database :
Academic Search Index
Journal :
Field Crops Research
Publication Type :
Academic Journal
Accession number :
121753567
Full Text :
https://doi.org/10.1016/j.fcr.2017.02.001