Remote Sensing Based Yield Estimation in a Stochastic Framework - Case Study of Durum Wheat in Tunisia
暂无分享,去创建一个
Michele Meroni | Olivier Leo | Michel M. Verstraete | Nabil Sghaier | Eduardo Marinho | M. Verstraete | M. Meroni | O. Leo | E. Marinho | Nabil Sghaier
[1] G. Dedieu,et al. SMAC: a simplified method for the atmospheric correction of satellite measurements in the solar spectrum , 1994 .
[2] J. Hausman. Specification tests in econometrics , 1978 .
[3] Clement Atzberger,et al. Correction: Rembold, F.; Atzberger, C.; Savin, I.; Rojas, O. Using Low Resolution Satellite Imagery for Yield Prediction and Yield Anomaly Detection. RemoteSens 2013, 5, 1704-1733 , 2013, Remote. Sens..
[4] Nadine Gobron,et al. Theoretical limits to the estimation of the leaf area index on the basis of visible and near-infrared remote sensing data , 1997, IEEE Trans. Geosci. Remote. Sens..
[5] J. H. Steiger. Tests for comparing elements of a correlation matrix. , 1980 .
[6] Chris Funk,et al. Phenologically-tuned MODIS NDVI-based production anomaly estimates for Zimbabwe , 2009 .
[7] Stephan J. Maas,et al. Remote sensing and crop production models: present trends , 1992 .
[8] Michael E. Schaepman,et al. A review on reflective remote sensing and data assimilation techniques for enhanced agroecosystem modeling , 2007, Int. J. Appl. Earth Obs. Geoinformation.
[9] Shunlin Liang. Four‐Dimensional Data Assimilation , 2005 .
[10] Clement Atzberger,et al. Using Low Resolution Satellite Imagery for Yield Prediction and Yield Anomaly Detection , 2013, Remote. Sens..
[11] J. Monteith. SOLAR RADIATION AND PRODUCTIVITY IN TROPICAL ECOSYSTEMS , 1972 .
[12] S. Goward,et al. Global Primary Production: A Remote Sensing Approach , 1995 .
[13] Agnès Bégué,et al. Forecasting Regional Sugarcane Yield Based on Time Integral and Spatial Aggregation of MODIS NDVI , 2013, Remote. Sens..
[14] Clement Atzberger,et al. Advances in Remote Sensing of Agriculture: Context Description, Existing Operational Monitoring Systems and Major Information Needs , 2013, Remote. Sens..
[15] Eric Vermote,et al. Atmospheric correction for the monitoring of land surfaces , 2008 .
[16] O. Hagolle,et al. LAI, fAPAR and fCover CYCLOPES global products derived from VEGETATION: Part 1: Principles of the algorithm , 2007 .
[17] M. Annabi,et al. Wheat production in Tunisia: Progress, inter-annual variability and relation to rainfall , 2010 .
[18] Herman Eerens,et al. Empirical regression models using NDVI, rainfall and temperature data for the early prediction of wheat grain yields in Morocco , 2008, Int. J. Appl. Earth Obs. Geoinformation.
[19] Shusen Wang,et al. Crop yield forecasting on the Canadian Prairies using MODIS NDVI data , 2011 .
[20] Bettina Baruth,et al. Enhanced Processing of 1-km Spatial Resolution fAPAR Time Series for Sugarcane Yield Forecasting and Monitoring , 2013, Remote. Sens..
[21] Frédéric Baret,et al. FAPAR over Europe for the past 29 years: A temporally consistent product derived from AVHRR and VEGETATION Sensors , 2010 .
[22] Leonid Roytman,et al. Forecasting crop production using satellite-based vegetation health indices in Kansas, USA , 2012 .
[23] J. Hogg. Quantitative remote sensing of land surfaces , 2004 .
[24] N. Gobron,et al. Monitoring the photosynthetic activity of vegetation from remote sensing data , 2006 .
[25] S. Running,et al. Global products of vegetation leaf area and fraction absorbed PAR from year one of MODIS data , 2002 .
[26] J. C. Taylor,et al. Real-time monitoring of vegetation biomass with NOAA-AVHRR in Etosha National Park, Namibia, for fire risk assessment , 2002 .
[27] N. Gobron,et al. On the need to observe vegetation canopies in the near-infrared to estimate visible light absorption , 2009 .
[28] C. Vignolles,et al. A methodology for a combined use of normalised difference vegetation index and CORINE land cover data for crop yield monitoring and forecasting. A case study on Spain , 2001 .
[29] Clement Atzberger,et al. Correction: Atzberger, C. Advances in Remote Sensing of Agriculture: Context Description, Existing Operational Monitoring Systems and Major Information Needs. Remote Sens 2013, 5, 949-981 , 2013, Remote. Sens..
[30] Bernardo Rudorff,et al. Monitoring biennial bearing effect on coffee yield using modis remote sensing imagery , 2012, 2012 IEEE International Geoscience and Remote Sensing Symposium.