W. T. Crow, F. Chen, and R. H. Reichle, L-band microwave remote sensing and land data assimilation improve the representation of pre-storm soil moisture conditions for hydrologic forecasting, Geophysical Research Letters, 2017.

S. Meng, X. Xie, and S. Liang, Assimilation of soil moisture and streamflow observations to improve flood forecasting with considering runoff routing lags, Journal of hydrology, vol.550, pp.568-579, 2017.

L. Tian, S. Yuan, and S. M. Quiring, Evaluation of six indices for monitoring agricultural drought in the south-central United States, Agricultural and Forest Meteorology, vol.249, pp.107-119, 2018.

M. Pause, K. Schulz, and S. Zacharias, Near-surface soil moisture estimation by combining airborne L-band brightness temperature observations and imaging hyperspectral data at the field scale, Journal of Applied Remote Sensing, vol.6, pp.63516-63517, 2012.

J. P. Wigneron, T. J. Jackson, and P. O'neill, Modelling the passive microwave signature from land surfaces: A review of recent results and application to the L-band SMOS SMAP soil moisture retrieval algorithms, Remote Sensing of Environment, vol.192, pp.238-262, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01608643

J. Kolassa, R. H. Reichle, and C. S. Draper, Merging active and passive microwave observations in soil moisture data assimilation. Remote sensing of environment, vol.191, pp.117-130, 2017.

S. K. Chan, R. Bindlish, and P. E. O'neill, Assessment of the SMAP passive soil moisture product, IEEE Transactions on Geoscience and Remote Sensing, vol.54, issue.8, pp.4994-5007, 2016.

E. Santi, S. Paloscia, and S. Pettinato, Application of artificial neural networks for the soil moisture retrieval from active and passive microwave spaceborne sensors, International journal of applied earth observation and geoinformation, vol.48, pp.61-73, 2016.

O. Merlin, J. P. Walker, and J. D. Kalma, The NAFE'06 data set: Towards soil moisture retrieval at intermediate resolution, Advances in Water Resources, vol.31, pp.1444-1455, 2008.

A. Colliander, T. Jackson, and H. Mcnairn, Comparison of airborne passive and active L-band system (PALS) brightness temperature measurements to SMOS observations during the SMAP validation experiment 2012 (SMAPVEX12), IEEE Geoscience and Remote Sensing Letters, vol.12, issue.4, pp.801-805, 2015.

R. Fernandez-moran, J. P. Wigneron, and E. Lopez-baeza, Roughness and vegetation parameterizations at L-band for soil moisture retrievals over a vineyard field, Remote Sensing of Environment, vol.170, pp.269-279, 2015.

X. Chen, Y. Su, and J. Liao, Detecting significant decreasing trends of land surface soil moisture in eastern China during the past three decades (1979-2010), Journal of Geophysical Research: Atmospheres, vol.121, issue.10, pp.5177-5192, 2016.

Y. H. Kerr, P. Waldteufel, and J. P. Wigneron, Soil moisture retrieval from space: The Soil Moisture and Ocean Salinity (SMOS) mission, IEEE Transactions on Geoscience and Remote Sensing, vol.39, pp.1729-1735, 2001.
URL : https://hal.archives-ouvertes.fr/hal-01655355

D. Entekhabi, E. G. Njoku, and P. E. O'neill, The soil moisture active passive (SMAP) mission, Proceedings of the IEEE, vol.98, issue.5, pp.704-716, 2010.

J. P. Wigneron, Y. Kerr, and P. Waldteufel, L-band microwave emission of the biosphere (L-MEB) model: Description and calibration against experimental data sets over crop fields, Remote Sensing of Environment, vol.107, issue.4, pp.639-655, 2007.
URL : https://hal.archives-ouvertes.fr/insu-00387991

X. Wang, H. Xie, and H. Guan, Different responses of MODIS-derived NDVI to root-zone soil moisture in semi-arid and humid regions, Journal of Hydrology, vol.340, pp.12-24, 2007.

J. Cho, Y. W. Lee, and K. S. Han, The effect of fractional vegetation cover on the relationship between EVI and soil moisture in non-forest regions, Remote Sensing Letters, vol.5, pp.37-45, 2014.

R. Panciera, J. P. Walker, and T. J. Jackson, The soil moisture active passive experiments (SMAPEx): Toward soil moisture retrieval from the SMAP mission, IEEE Transactions on Geoscience and Remote Sensing, vol.52, pp.490-507, 2014.

O. Merlin, J. Walker, and R. Panciera, Soil moisture measurement in heterogeneous terrain, Proc. Int. Congr. MODSIM, pp.10-13, 2007.

A. Monerris, J. P. Walker, and R. Panciera, The third soil moisture active passive experiment, The 19th International Congress on Modeling and Simulation (MODSIM2011). Modelling and Simulation Society of Australia and New Zealand, 1980.

T. J. Jackson, D. M. Le-vine, and C. T. Swift, Large area mapping of soil moisture using the ESTAR passive microwave radiometer in Washita'92. Remote Sensing of Environment, vol.54, pp.27-37, 1995.

Z. Jiang, A. R. Huete, and K. Didan, Development of a two-band enhanced vegetation index without a blue band. Remote sensing of Environment, vol.112, pp.3833-3845, 2008.

P. S. Thenkabail and . Lyon, Hyperspectral remote sensing of vegetation, 2016.

Y. Fu, G. Yang, and J. Wang, A comparative analysis of spectral vegetation indices to estimate crop leaf area index, Intelligent Automation Soft Computing, vol.19, issue.3, pp.315-326, 2013.

M. Wu, C. Wu, and W. Huang, High-resolution Leaf Area Index estimation from synthetic Landsat data generated by a spatial and temporal data fusion model. Computers and electronics in agriculture, vol.115, pp.1-11, 2015.

M. Trombetti, D. Riaño, and M. A. Rubio, Multi-temporal vegetation canopy water content retrieval and interpretation using artificial neural networks for the continental USA. Remote Sensing of Environment, vol.112, pp.203-215, 2008.

E. Adam, O. Mutanga, and D. Rugege, Multispectral and hyperspectral remote sensing for identification and mapping of wetland vegetation: a review, Wetlands Ecology and Management, vol.18, issue.3, pp.281-296, 2010.

Y. Gao, J. P. Walker, and M. Allahmoradi, Optical sensing of vegetation water content: A synthesis study, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, vol.8, issue.4, pp.1456-1464, 2015.

M. H. Cosh, J. Tao, and T. J. Jackson, Vegetation water content mapping in a diverse agricultural landscape: National Airborne Field Experiment, Journal of Applied Remote Sensing, vol.4, pp.43532-043532, 2006.

Y. Xiao, W. Zhao, and D. Zhou, Sensitivity analysis of vegetation reflectance to biochemical and biophysical variables at leaf, canopy, and regional scales, IEEE Transactions on Geoscience and Remote Sensing, vol.52, issue.7, pp.4014-4024, 2014.

J. Xing, S. Symons, and M. Shahin, Detection of sprout damage in Canada Western Red Spring wheat with multiple wavebands using visible/near-infrared hyperspectral imaging, Biosystems Engineering, vol.106, pp.188-194, 2010.