P. Scheromm, G. Martin, and A. Bergoin, Influence of nitrogen fertilization on the potential bread-baking quality of two wheat cultivars differing in their responses to increasing nitrogen supplies, Cereal Chemistry, vol.69, pp.664-670, 1993.

S. Guo, T. Dang, and M. D. Hao, Effects of Fertilization on Wheat Yield, NO_3~-N Accumulation and Soil Water Content in Semi-Arid Area of China

, Scientia Agricultura Sinica, vol.4, issue.4, pp.745-751, 2005.

P. Pjjr, J. Hatfield, and J. Schepers, Remote sensing for crop management

, Photogrammetric Engineering & Remote Sensing, vol.69, pp.647-664, 2003.

X. Xu, C. Zhao, and J. Wang, Using optimal combination method and in situ hyperspectral measurements to estimate leaf nitrogen concentration in barley, Precision Agriculture, vol.15, pp.227-240, 2014.

X. Jin, S. Liu, and F. Baret, Estimates of plant density of wheat crops at emergence from very low altitude UAV imagery
URL : https://hal.archives-ouvertes.fr/hal-01578842

S. Moharana and S. Dutta, Spatial variability of chlorophyll and nitrogen content of rice from hyperspectral imagery

, Isprs Journal of Photogrammetry & Remote Sensing, vol.122, pp.17-29, 2016.

C. Zhao, Advances of research and application in remote sensing for agriculture

, Transactions of the Chinese Society for Agricultural Machinery, issue.12, pp.277-293, 2014.

W. Zhou, B. Wu, and M. Zhang, Comprehensive monitoring of crop growth -take India as an example, J]. Journal of Remote Sensing, vol.19, issue.4, pp.539-549, 2015.

J. Tang, Q. Liao, and Y. Liu, Estimating leaf area index of crops based on hyperspectral compact airborne spectrographic imager (CASI) data, J]. Spectroscopy and Spectral Analysis, vol.35, issue.5, pp.1351-1356, 2015.

G. Yang, J. Liu, and C. Zhao, Unmanned aerial vehicle remote sensing for field-based crop Phenotyping: current status and perspectives, Frontiers in Plant Science, 2017.

C. Zhang and J. Kovacs, The application of small unmanned aerial systems for precision agriculture: a review, Precision Agriculture, vol.13, pp.693-712, 2012.

. Shun-ping, X. Shao, and . Wei, Framework of SAGI Agriculture Remote Sensing and Its Perspectives in Supporting National Food Security, Journal of Integrative Agriculture, vol.13, issue.7, pp.1443-1450, 2014.

S. Candiago, F. Remondino, D. Giglio, and M. , Evaluating Multispectral Images and Vegetation Indices for Precision Farming Applications from UAV Images, Remote Sensing, vol.7, pp.4026-4047, 2015.

J. Suomalainen, N. Anders, and S. Iqbal, A Lightweight Hyperspectral Mapping System and Photogrammetric Processing Chain for Unmanned Aerial Vehicles, Remote Sensing, vol.6, pp.11013-11030, 2014.

X. Zhao, G. Yang, and J. Liu, Estimation of soybean breeding yield based on optimization of spatial scale of UAV hyperspectral image, Transactions of the CSAE, vol.2017, pp.110-116

S. Nie, C. Wang, and P. Dong, Estimating Leaf Area Index of Maize Using Airborne Discrete-Return LiDAR Data

, Remote Sensing Letters, vol.9, issue.7, pp.3259-3266, 2016.

O. Vergaradí-az, M. Zamanallah, and B. Masuka, A Novel Remote Sensing Approach for Prediction of Maize Yield Under Different Conditions of Nitrogen Fertilization

, Frontiers in Plant Science, p.7, 2016.

W. Li, Z. Niu, and H. Chen, Remote estimation of canopy height and aboveground biomass of maize using high-resolution stereo images from a low-cost unmanned aerial vehicle system, Ecological Indicators, vol.67, pp.637-648, 2016.

J. Bendig, K. Yu, and H. Aasen, Combining UAV-based plant height from crop surface models, visible, and near-infrared vegetation indices for biomass monitoring in barley

, International Journal of Applied Earth Observation & Geoinformation, vol.39, pp.79-87, 2015.

M. Schirrmann, A. Giebel, and F. Gleiniger, Monitoring Agronomic Parameters of Winter Wheat Crops with Low-Cost UAV Imagery, vol.8, p.706, 2016.

M. Saberioon, M. Amin, and A. Anuar, Assessment of rice leaf chlorophyll content using visible bands at different growth stages at both the leaf and canopy scale

, International Journal of Applied Earth Observations & Geoinformation, vol.32, issue.10, pp.35-45, 2014.

J. Torres-sá-nchez, F. López-granados, and J. Peña, An automatic object-based method for optimal thresholding in UAV images: Application for vegetation detection in herbaceous crops

, Computers & Electronics in Agriculture, vol.114, issue.C, pp.43-52, 2015.

X. Zhou, H. Zheng, and X. Xu, Predicting grain yield in rice using multi-temporal vegetation indices from UAV-based multispectral and digital imagery

, Isprs Journal of Photogrammetry & Remote Sensing, vol.130, pp.246-255, 2017.

C. Tucker, Red and photographic infrared linear combinations for monitoring vegetation

, Remote Sensing of Environment, vol.8, issue.2, pp.127-150, 1979.

M. Louhaichi, M. M. Borman, and D. E. Johnson, Spatially Located Platform and Aerial Photography for Documentation of Grazing Impacts on Wheat, Geocarto International, vol.16, issue.1, pp.65-70, 2001.

G. Meyer and J. Neto, Verification of color vegetation indices for automated crop imaging applications

, Computers & Electronics in Agriculture, vol.63, issue.2, pp.282-293, 2008.

D. Woebbecke, G. E. Meyer, V. Bargen, and K. , Color indices for weed identification under various soil, residue, and lighting conditions, Transactions of the ASAE, vol.38, issue.1, pp.259-269, 1995.

T. Kataoka, T. Kaneko, and H. Okamoto, Crop growth estimation system using machine vision, Advanced Intelligent Mechatronics, 2003.

, IEEE/ASME International Conference on, vol.2, pp.1079-1083, 2003.

A. Gitelson, A. Viña, and T. Arkebauer, Remote estimation of leaf area index and green leaf biomass in maize canopies

, Geophysical Research Letters, issue.5, p.30, 2003.