Y. C. Tian, Y. Zhu, X. Yao, X. J. Liu, and W. X. Cao, Nondestructive Monitoring of Crop Nitrogen Nutrition Based on Spectral Information, Chinese Journal of Ecology, issue.09, pp.1454-1463, 2007.

Y. M. Li, X. J. Zhang, L. Zhang, and G. , Hyperspectral Nitrogen Estimation Model of Remotesensing in Rice, Jiangsu Agricultural Sciences, vol.44, issue.8, pp.435-439, 2016.

R. H. Wang, X. Y. Song, and Z. H. Li, Estimation of Winter Wheat Nitrogen Nutrition Index Using Hyperspectral Remote Sensing, Transactions of the Chinese Society of Agricultural Engineering, vol.30, issue.19, pp.191-187, 2014.

H. T. Nguyen, J. H. Kim, and A. T. Nguyen, Using Canopy Reflectance and Partial Least Squares Regression to Calculate Within-Field Statistical Variation in Crop Growth and Nitrogen Status of Rice, Precision Agriculture, vol.7, pp.249-264, 2006.

L. He, X. Song, W. Feng, B. B. Guo, Y. S. Zhang et al., Improved Remote Sensing of Leaf Nitrogen Concentration in Winter Wheat Using Multi-Angular Hyperspectral Data, Remote Sensing of Environment, vol.174, pp.122-133, 2016.

Y. S. Inoue, E. J. Sakaiya, Y. Zhu, and W. Takahashi, Diagnostic Mapping of Canopy Nitrogen Content in Rice Based on Hyperspectral Measurements, Remote Sensing of Environment, pp.210-221, 2012.

C. H. Zhang, J. M. Kovacs, and M. P. Wachowiak, Relationship between Hyperspectral Measurements and Mangrove Leaf Nitrogen Concentrations, vol.5, pp.891-908, 2013.

Q. X. Tong, B. Zhang, and L. F. Zheng, Hyperspectral Remote Sensing, 2006.

H. L. Jiang, H. Yang, X. P. Chen, S. D. Wang, X. K. Li et al., Research on Accuracy and Stability of Inversing Vegetation Chlorophyll Content by Spectral Index Method, Spectroscopy and Spectral Analysis, vol.35, issue.04, pp.975-981, 2015.

E. R. Hunt, P. C. Doraiswamy, and J. E. Mcmurtrey, A Visible Band Index for Remote Sensing Leaf Chlorophyll Content at The Canopy Scale, International Journal of Applied Earth Observation and Geoinformation, pp.103-112, 2013.

J. Peñuelas, R. Isla, and I. Filella, Visible and Near-Infrared Reflectance Assessment of Salinity Effects on Barley, Crop Science, vol.37, pp.198-202, 1997.

S. Tanaka, K. Kawamura, and M. Maki, Spectral Index for Quantifying Leaf Area Index of Winter Wheat by Field Hyperspectral Measurements: A Case Study in Gifu Prefecture, Central Japan, Remote Sensing, vol.7, pp.5329-5346, 2015.

A. A. Gitelson and M. N. Merzlyak, Quantitative Estimation of Chlorophyll-a Using Reflectance Spectral: Experiments with Autumn Chestnut and Maple Leaves, Journal of Photochemistry and Photobiology B-biology, vol.22, issue.3, pp.247-252, 1994.

G. P. Asner, R. E. Martin, and D. E. Knapp, Spectroscopy of Canopy Chemicals in Humid Tropical Forests, Remote Sensing of Environment, vol.115, pp.3587-3598, 2011.

A. A. Gitelson and M. N. Merzlyak, Spectral Reflectance Changes Associated with Autumn Senescence of Aesculus Hippocastanum L. and Acer Platanoides L. Leaves. Spectral Features and Relation to Chlorophyll Estimation, Journal of Plant Physiology, vol.143, issue.3, pp.286-292, 1994.

J. He, B. F. Liu, and J. Li, Monitoring Model of LeafAarea Index of Winter Wheat Based on Hyperspectral Reflectance at Different Growth Stages, Transactions of the Chinese Society of Agricultural Engineering, vol.30, issue.24, pp.141-50, 2014.

B. Datt, A New Reflectance Index for Remote Sensing of Chlorophyll Content in Higher Plants: Tests Using Eucalyptus Leaves, Journal of Plant Physiology, vol.154, issue.1, pp.30-36, 1999.

D. A. Sims and J. A. Gamon, Relationships between Leaf Pigment Content and Spectral Reflectance Across a Wide Range of Species, Leaf Structures and Developmental Stages, Remote Sensing of Environment, vol.81, pp.337-354, 2002.

J. E. Vogelmann, B. N. Rock, and D. M. Moss, Red Edge Spectral Measurements from Sugar Maple Leaves, International Journal of Remote Sensing, vol.14, issue.8, pp.1563-1575, 1993.

X. J. Yin, Q. Zhang, and Q. Z. Zhao, Remote Sensing Inversion of Nitrogen Content Based on SVM in Processing Tomato Early Blight Leaves, pp.280-285, 2014.

A. J. Richardson and C. Weigand, Distinguishing Vegetation from Soil Background Information, Photogrammetric Engineering and Remote Sensing, vol.43, issue.12, pp.1541-1552, 1977.

J. M. Chen, Evaluation of Vegetation Indices and A Modified Simple Ratio for Boreal Applications, Canadian Journal of Remote Sensing, vol.22, issue.3, pp.229-242, 1996.

A. A. Gitelson, A. Vina, and V. Ciganda, Remote Estimation of Canopy Chlorophyll Content in Crops, Geophysical Research Letters, vol.32, issue.8, pp.1-4, 2005.

J. Dash and P. J. Curran, Evaluation of the MER IS Terrestrial Chlorophyll Index (MTCI), Advances in Space Research, vol.39, pp.100-104, 2007.

F. Baret and G. Guyot, Potentials and Limits of Vegetation Indices for LAI and APAR Assessment, Remote Sensing of Environment, vol.35, pp.161-173, 1991.

C. C. Lelong, P. Burger, and G. Jubelin, Assessment of Unmanned Aerial Vehicles Imagery for Quantitative Monitoring of Wheat Crop in Small Plots, Sensors, vol.8, issue.5, pp.3557-3585, 2008.

R. K. Gupta, D. Vijayan, and T. S. Prasad, Comparative Analysis of Red-Edge Hyperspectral Indices, Advance in Space Research, vol.32, pp.2217-2222, 2003.

Y. Inoue, M. Gué-rif, and F. Baret, Simple and Robust Methods for Remote Sensing of Canopy Chlorophyll Content: A Comparative Analysis of Hyperspectral Data for Different Types of Vegetation, Plant, Cell and Environment, vol.39, pp.2609-2623, 2016.

Z. F. Qin, Q. R. Chang, B. N. Xie, and J. Shen, Rice Leaf Nitrogen Content Estimation Based on Hyperspectral Imagery of UAV in Yellow River Diversion Irrigation District, Transactions of the Chinese Society of Agricultural Engineering, vol.32, issue.23, pp.77-85, 2016.

L. Breiman, Random Forests, Machine Learning, vol.45, pp.5-32, 2001.

Y. C. Tian, K. J. Gu, and C. Xu, Comparison of Different Hyperspectral Vegetation Indices for Canopy Leaf Nitrogen Concentration Estimation in Rice, Plant and Soil, vol.376, issue.1/2, pp.193-209, 2014.

T. Xia, W. B. Wu, and Q. B. Zhou, Comparison of Two Inversion Methods for Winter Wheat Leaf Area Index Based on Hyperspectral Remote Sensing, Transactions of the Chinese Society of Agricultural Engineering, vol.29, issue.3, pp.139-147, 2013.