W. Jihua, Z. Chunjiang, and H. Wenjiang, Quantitative remote sensing and its application in agriculture, 2008.

P. J. Pinter, J. L. Hatfield, J. S. Schepers, E. M. Barnes, M. S. Moran et al., Remote sensing for crop management, Photogramm. Eng. Remote Sens, vol.69, pp.647-664, 2003.

M. Maki and K. Homma, Empirical regression models for estimating multiyear leaf area index of rice from several vegetation indices at the field scale. Remote Sens, vol.6, pp.4764-4779, 2014.

S. Potithep, S. Nagai, K. N. Nasahara, H. Muraoka, and R. Suzuki, Two separate periods of the LAI-VIs relationships using in situ measurements in a deciduous broadleaf forest, Agric. For. Meteorol, vol.169, pp.148-155, 2013.

Y. Inoue and K. Iwasaki, Spectral estimation of radiation absorptance and leaf area index in corn canopies as affected by canopy architecture and growth stage, Jpn. J. Crop Sci, vol.60, pp.578-580, 1991.

F. Li, Y. Miao, S. D. Hennig, M. L. Gnyp, X. Chen et al., Evaluating hyperspectral vegetation indices for estimating nitrogen concentration of winter wheat at different growth stages, Precis. Agric, vol.11, pp.335-357, 2010.

Q. Xie, W. Huang, and D. Liang, Comparative Study on Remote Sensing Invertion Methods for Estimating Winter Wheat Leaf Area Index, Spectroscopy and Spectral Analysis, vol.34, pp.489-493, 2014.

L. Hui, L. Liang, and Z. Lianpeng, Wheat leaf area index inversion with hyperspectral remote sensing based on support vector regression algorithm, Transactions of the Chinese Society of Agricultural Engineering, vol.29, pp.139-146, 2013.

L. Liang, Y. Minhua, and Z. Lianpeng, Chlorophyll content inversion with hyperspectral technology for wheat canopy based on support vector regression algorithm, Transactions of the Chinese Society of Agricultural Engineering, vol.28, pp.162-171, 2012.

Q. Cai, J. Jiang, and L. Tao, Estimation of Winter Wheat Leaf Area Index with Joint Principal Component Analysis and Least Squares Support Vector Model, J]. Journal of Triticeae Crops, vol.34, issue.9, pp.1292-1296, 2014.

J. Xiu-liang, . Xu-xin-gang, and . Ji-hua, Hyperspectral Estimation of Leaf Water Content for Winter Wheat Based on Grey Relational Analysis, TSpectroscopy and Spectral Analysis, vol.32, pp.103-3106, 2012.

X. Jin, X. Xu, and X. Song, Estimation of Leaf Water Content in Winter Wheat Using Grey Relational Analysis -Partial Least Squares Modeling with Hyperspectral Data, Agronomy Journal, vol.105, issue.5, pp.1085-1392, 2013.

X. Tian, W. Wenbin, and Z. Qingbo, 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, pp.139-147, 2013.

K. Lee, W. B. Cohen, R. E. Kennedy, T. K. Maiersperger, T. Stith et al., Hyperspectral versus multispectral data for estimating leaf area index in four different biomes, Remote Sensing of Environment, vol.91, pp.508-520, 2004.

J. Shun-fa, W. Yi-bao, and X. Yu-li, AIC principle and its Application in the Polynomial Models of the Crop Yield

A. Shanghai, , vol.1, pp.73-78, 1985.

Z. Li, X. Xu, and X. Jin, Remote Sensing Prediction of Winter Wheat Protein Content Based on Nitrogen Translocation and GRA-PLS Method

, Scientia Agricultura Sinica, vol.47, issue.19, pp.3780-3790, 2014.

A. H. , Problem of control and information, Proc.2nd Int.Symp.on Information Theory, pp.267-281, 1973.

D. Deering and J. Harlan, Monitoring the Vernal Advancement and Retrogradation (greenwave effect) of Natural Vegetation, 1974.

R. Pearson and D. L. Miller, Remote mapping of standing crop biomass for estimation of the productivity of the shortgrass prairie, Proceedingsof the English International Sysposium on Remote Sensing of Environment, vol.2, pp.1375-1381, 1972.

G. Rondeaux, M. Steven, and F. Baret, Optimization of soil-adjusted vegetation indices

, Remote Sensing environment, vol.55, issue.2, pp.95-107, 1996.

D. Haboudane, J. Miller, and N. Tremblay, Integrated narrow-band vegetation indices for prediction of crop chlorophyll content for application to precision agriculture

, Remote Sensing of Environment, vol.81, issue.2/3, pp.416-426, 2002.

G. Rondeaux, M. Steven, and F. Baret, Optimization of soil-adjusted vegetation indices

, Remote Sensing environment, vol.55, issue.2, pp.95-107, 1996.

D. 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, issue.2, pp.337-354, 2002.

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, J]. Journal of Plant Physiology, vol.143, issue.3, pp.286-292, 1994.

J. E. Vogelmann, B. Rock, and D. Moss, Red edge spectral measurements from sugar maple leaves, International Journal of Remote Sensing, vol.14, issue.8, pp.1563-1575, 1993.

J. Penuelas, F. Baret, and I. Filella, Semi-empirical indices to assess carotenoids/chlorophyll a ratio from leaf spectral reflectance, Photosynthetica, vol.31, issue.2, pp.221-230, 1995.

J. Gamon, J. Penuelas, and C. B. Field, A narrow-waveband spectral index that tracks diurnal changes in photosynthetic efficienc

, Remote Sensing of Environment, vol.41, issue.1, pp.35-44, 1992.

D. Haboudane, J. R. Miller, and E. Pattey, Hyperspectral vegetation indices and novel algorithms for predicting green LAI of crop canopies: modeling and validation in the context of precision agriculture, Remote Sens. Environ, vol.90, pp.337-352, 2004.

J. Qi, A. Chehbouni, and A. R. Huete, A Modified Soil Adjusted Vegetation Index. Remote Sensing of Environment, vol.48, pp.119-126, 1994.

J. Chen, Evaluation of vegetation indices and modified simple ratio for boreal applications, Can. J. Remote Sens, vol.22, pp.229-242, 1996.