Abstract

Our work aims to monitor wheat crop using a variety-based approach by taking into consideration four different phenological stages of wheat crop development. In addition to highlighting the contribution of Red-Edge vegetation indices in mapping wheat dry matter and nitrogen content dynamics, as well as using Random Forest regressor in the estimation of wheat yield, dry matter and nitrogen uptake relying on UAV (Unmanned Aerial Vehicle) multispectral imagery. The study was conducted on an experimental platform with 12 wheat varieties located in Sidi Slimane (Morocco). Several flight missions were conducted using eBee UAV with MultiSpec4C camera according to phenological growth stages of wheat. The proposed methodology is subdivided into two approaches, the first aims to find the most suitable vegetation index for wheat’s biophysical parameters estimation and the second to establish a global model regardless of the varieties to estimate the biophysical parameters of wheat: Dry matter and nitrogen uptake. The two approaches were conducted according to six main steps: (1) UAV flight missions and in-situ data acquisition during four phenological stages of wheat development, (2) Processing of UAV multispectral images which enabled us to elaborate the vegetation indices maps (RTVI, MTVI2, NDVI, NDRE, GNDVI, GNDRE, SR-RE et SR-NIR), (3) Automatic extraction of plots by Object-based image analysis approach and creating a spatial database combining the spectral information and wheat’s biophysical parameters, (4) Monitoring wheat growth by generating dry biomass and wheat’s nitrogen uptake model using exponential, polynomial and linear regression for each variety this step resumes the varietal approach, (5) Engendering a global model employing both linear regression and Random Forest technique, (6) Wheat yield estimation. The proposed method has allowed to predict from 1 up to 21% difference between actual and estimated yield when using both RTVI index and Random Forest technique as well as mapping wheat’s dry biomass and nitrogen uptake along with the nitrogen nutrition index (NNI) and therefore facilitate a careful monitoring of the health and the growth of wheat crop. Nevertheless, some wheat varieties have shown a significant difference in yield between 2.6 and 3.3 t/ha.

Highlights

  • Licensee MDPI, Basel, Switzerland.Precision agriculture has demonstrated its potential by englobing advanced technologies to ensure efficiency gains and to alleviate food security allowing the implementation of modern management and decision tools [1]

  • This insensitivity is mainly due to the nature of the combinations of the bands used in the formula of the vegetation index which does not allow a variation of the indices adapted to the variation of the dry matter

  • For NDRE the red-edge band did not add any improvement to the correlation contrary to the SR-RE and RTVI indices for which the correlation with the dry matter is strong

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Summary

Introduction

Precision agriculture has demonstrated its potential by englobing advanced technologies to ensure efficiency gains and to alleviate food security allowing the implementation of modern management and decision tools [1]. AgriEngineering 2021, 3 key role as an innovative production system, which relies on input management in a field based on actual crop needs while optimizing deployed resources [2,3]. For this purpose, it aims to control the production chain and the factors that influence it by exploiting new technologies such as GNSS (Global Navigation Satellite System) and remote sensing to manage crops and reduce the use of fertilizers, pesticides and water [4]

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