Empirical and Physical Estimation of Canopy Water Content from CHRIS/PROBA Data
暂无分享,去创建一个
[1] J. Sobrino,et al. A method to estimate soil moisture from Airborne Hyperspectral Scanner (AHS) and ASTER data: Application to SEN2FLEX and SEN3EXP campaigns , 2012 .
[2] S. Tarantola,et al. Designing a spectral index to estimate vegetation water content from remote sensing data: Part 1 - Theoretical approach , 2002 .
[3] F. Baret,et al. Estimating Canopy Characteristics from Remote Sensing Observations: Review of Methods and Associated Problems , 2008 .
[4] Juan J. Flores,et al. The application of artificial neural networks to the analysis of remotely sensed data , 2008 .
[5] Thomas J. Jackson,et al. Vegetation water content during SMEX04 from ground data and Landsat 5 Thematic Mapper imagery , 2008 .
[6] F. Baret,et al. Neural network estimation of LAI, fAPAR, fCover and LAI×Cab, from top of canopy MERIS reflectance data : Principles and validation , 2006 .
[7] W. Verhoef,et al. PROSPECT+SAIL models: A review of use for vegetation characterization , 2009 .
[8] C. Giardino,et al. Estimation of leaf and canopy water content in poplar plantations by means of hyperspectral indices and inverse modeling , 2008 .
[9] W. Verhoef. Earth observation modelling based on layer scattering matrices , 1984 .
[10] Martha C. Anderson,et al. Upscaling ground observations of vegetation water content, canopy height, and leaf area index during SMEX02 using aircraft and Landsat imagery , 2004 .
[11] D. Riaño,et al. Estimation of live fuel moisture content from MODIS images for fire risk assessment , 2008 .
[12] P. Curran. Remote sensing of foliar chemistry , 1989 .
[13] S. Ustin,et al. Water content estimation in vegetation with MODIS reflectance data and model inversion methods , 2003 .
[14] T. Jackson,et al. Remote sensing of vegetation water content from equivalent water thickness using satellite imagery , 2008 .
[15] C. Atzberger,et al. Spatially constrained inversion of radiative transfer models for improved LAI mapping from future Sentinel-2 imagery , 2012 .
[16] W. Verhoef. Light scattering by leaf layers with application to canopy reflectance modelling: The SAIL model , 1984 .
[17] Xingfa Gu,et al. Evaluation of methods for soil surface moisture estimation from reflectance data , 2003 .
[18] Michael E. Schaepman,et al. Using spectral information from the NIR water absorption features for the retrieval of canopy water content , 2008, Int. J. Appl. Earth Obs. Geoinformation.
[19] Aleixandre Verger,et al. Optimal modalities for radiative transfer-neural network estimation of canopy biophysical characteristics: Evaluation over an agricultural area with CHRIS/PROBA observations , 2011 .
[20] S. Ustin,et al. Multi-temporal vegetation canopy water content retrieval and interpretation using artificial neural networks for the continental USA , 2008 .
[21] O. Hagolle,et al. LAI, fAPAR and fCover CYCLOPES global products derived from VEGETATION: Part 1: Principles of the algorithm , 2007 .
[22] Michael E. Schaepman,et al. Estimating canopy water content using hyperspectral remote sensing data , 2010, Int. J. Appl. Earth Obs. Geoinformation.
[23] F. J. García-Haro,et al. Derivation of high-resolution leaf area index maps in support of validation activities: Application to the cropland Barrax site , 2009 .
[24] Elvezio Ronchetti,et al. Robust Linear Model Selection by Cross-Validation , 1997 .
[25] Richard Bamler,et al. Enhanced Automated Canopy Characterization from Hyperspectral Data by a Novel Two Step Radiative Transfer Model Inversion Approach , 2009, Remote. Sens..
[26] Michael H. Young,et al. Monitoring Vegetation Phenological Cycles in Two Different Semi-Arid Environmental Settings Using a Ground-Based NDVI System: A Potential Approach to Improve Satellite Data Interpretation , 2010, Remote. Sens..
[27] Olga Sykioti,et al. Monitoring canopy biophysical and biochemical parameters in ecosystem scale using satellite hyperspectral imagery: An application on a Phlomis fruticosa Mediterranean ecosystem using multiangular CHRIS/PROBA observations , 2010 .
[28] F. M. Danson,et al. A global review of remote sensing of live fuel moisture content for fire danger assessment: Moving t , 2013 .
[29] F. Baret,et al. PROSPECT: A model of leaf optical properties spectra , 1990 .
[30] David Riaño,et al. Water content estimation from hyperspectral images and MODIS indexes in Southeastern Arizona , 2008 .
[31] Mark Beale,et al. Neural Network Toolbox™ User's Guide , 2015 .
[32] Robert O. Green,et al. Temporal and spatial patterns in vegetation and atmospheric properties from AVIRIS , 1997 .
[33] Olga Sykioti,et al. Band depth analysis of CHRIS/PROBA data for the study of a Mediterranean natural ecosystem. Correlations with leaf optical properties and ecophysiological parameters , 2011 .
[34] J. Peñuelas,et al. The reflectance at the 950–970 nm region as an indicator of plant water status , 1993 .
[35] F. Baret,et al. Improving canopy variables estimation from remote sensing data by exploiting ancillary information. Case study on sugar beet canopies , 2002 .
[36] F. C. Coca,et al. Estimación de parámetros biofísicos de vegetación utilizando el método de la cámara hemisférica , 2005 .
[37] Wolfram Mauser,et al. Optimal Exploitation of the Sentinel-2 Spectral Capabilities for Crop Leaf Area Index Mapping , 2012, Remote. Sens..
[38] D. Riaño,et al. Estimation of fuel moisture content from multitemporal analysis of Landsat Thematic Mapper reflectance data: Applications in fire danger assessment , 2002 .
[39] Frédéric Baret,et al. Validation of global moderate-resolution LAI products: a framework proposed within the CEOS land product validation subgroup , 2006, IEEE Transactions on Geoscience and Remote Sensing.
[40] L. Alonso,et al. ADVANCES AND LIMITATIONS IN A PARAMETRIC GEOMETRIC CORRECTION OF CHRIS/PROBA DATA , 2005 .
[41] C. Tucker. Remote sensing of leaf water content in the near infrared , 1980 .
[42] S. Tarantola,et al. Detecting vegetation leaf water content using reflectance in the optical domain , 2001 .
[43] D. Riaño,et al. Combining NDVI and surface temperature for the estimation of live fuel moisture content in forest fire danger rating , 2004 .
[44] Robert O. Green,et al. Estimation of aerosol optical depth, pressure elevation, water vapor, and calculation of apparent surface reflectance from radiance measured by the airborne visible/infrared imaging spectrometer (AVIRIS) using a radiative transfer code , 1993, Defense, Security, and Sensing.
[45] José F. Moreno,et al. An optimum interpolation method applied to the resampling of NOAA AVHRR data , 1994, IEEE Trans. Geosci. Remote. Sens..
[46] P. Atkinson,et al. Introduction Neural networks in remote sensing , 1997 .
[47] David Riaño,et al. Detection of diurnal variation in orchard canopy water content using MODIS/ASTER airborne simulator (MASTER) data , 2013 .