The robustness of canopy gap fraction estimates from red and near-infrared reflectances: A comparison of approaches (original) (raw)

Optimal modalities for radiative transfer-neural network estimation of canopy biophysical characteristics: Evaluation over an agricultural area with CHRIS/PROBA observations

Frédéric Baret

Remote Sensing of Environment, 2011

View PDFchevron_right

Canopy biophysical variables estimation from MERIS observations based on neural networks and radiative transfer modelling: principles and validation

Marie Weiss

2004

View PDFchevron_right

Validation of neural network techniques for the estimation of canopy biophysical variables from vegetation data

Marie Weiss

2000

View PDFchevron_right

Neural network estimation of LAI, fAPAR, fCover and LAI×Cab, from top of canopy MERIS reflectance data: Principles and validation

Marie Weiss

Remote Sensing of Environment, 2006

View PDFchevron_right

Retrieving wheat Green Area Index during the growing season from optical time series measurements based on neural network radiative transfer inversion

Marie Weiss

Remote Sensing of Environment, 2011

View PDFchevron_right

Review of spectral vegetation indices and methods for estimation of crop biophysical variables

Lachezar Filchev

Aerospace Research in Bulgaria, 2017

View PDFchevron_right

Comparing prediction power and stability of broadband and hyperspectral vegetation indices for estimation of green leaf area index and canopy chlorophyll density

Niels Broge

Remote Sensing of Environment, 2001

View PDFchevron_right

Hyperspectral vegetation indices and novel algorithms for predicting green LAI of crop canopies: Modeling and validation in the context of precision agriculture

Elizabeth Pattey

Remote Sensing of Environment, 2004

View PDFchevron_right

A Global Sensitivity Analysis of Commonly Used Satellite-Derived Vegetation Indices for Homogeneous Canopies Based on Model Simulation and Random Forest Learning

Lifu Zhang

Remote Sensing, 2019

View PDFchevron_right

Comparison the accuracies of different spectral indices for estimation of vegetation cover fraction in sparse vegetated areas

mehdi saati

World Pumps, 2011

View PDFchevron_right

Machine learning methods’ performance in radiative transfer model inversion to retrieve plant traits from Sentinel-2 data of a mixed mountain forest

Prof. Dr. Marco Heurich

International Journal of Digital Earth, 2020

View PDFchevron_right

Application of Vegetation Indices for Agricultural Crop Yield Prediction Using Neural Network Techniques

Daniel P. Ames

Remote Sensing, 2010

View PDFchevron_right

Retrieving canopy variables by radiative transfer model inversion-a regional approach for imaging spectrometer data

Andreas Müller

2008

View PDFchevron_right

Optical remote sensing of vegetation: Modeling, caveats, and algorithms

Darrel Williams

1995

View PDFchevron_right

Neural networks for land cover applications

William Emery

2008

View PDFchevron_right

Why confining to vegetation indices? Exploiting the potential of improved spectral observations using radiative transfer models

Roshanak Darvishzadeh

Remote Sensing for Agriculture, Ecosystems, and Hydrology XIII, 2011

View PDFchevron_right

A semi-empirical approach for modeling the vegetation thermal infrared directional anisotropy of canopies based on using vegetation indices

Jean-Louis Roujean

ISPRS Journal of Photogrammetry and Remote Sensing, 2020

View PDFchevron_right

Synergy between 1‐D and 3‐D radiation transfer models to retrieve vegetation canopy properties from remote sensing data

Michel Verstraete

Journal of Geophysical Research: Atmospheres, 2004

View PDFchevron_right

Retrieval of canopy biophysical variables from bidirectional reflectance: using prior information to solve the ill-posed problem. Remote Sensing of Environment, in press

Marie Weiss

Remote Sensing of Environment

View PDFchevron_right

Comparison of Recent Remote Sensing Data Using an Artificial Neural Network to Predict Soil Moisture by Focusing on Radiometric Indices

Recep Gündoğan

Turkish Journal of Agriculture - Food Science and Technology

View PDFchevron_right

Application of Landsat ETM+ and OLI Data for Foliage Fuel Load Monitoring Using Radiative Transfer Model and Machine Learning Method

Gengke Lai

IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 2021

View PDFchevron_right

Retrieval of canopy biophysical variables from bidirectional reflectance

Marie Weiss

Remote Sensing of Environment, 2003

View PDFchevron_right

Comparative Evaluation of Inversion Approaches of the Radiative Transfer Model for Estimation of Crop Biophysical Parameters

Gopal Krishna, Vinay Sehgal

International Agrophysics, 2015

View PDFchevron_right

Estimation of vegetation canopy leaf area index and fraction of absorbed photosynthetically active radiation from atmosphere-corrected MISR data

Yujie Wang

Journal of Geophysical Research, 1998

View PDFchevron_right

Using Neural Nets to Derive Sensor-Independent Climate Quality Vegetation Data based on AVHRR, SPOT-Vegetation, SeaWiFS and MODIS

Hamse Mussa, David J Lary

View PDFchevron_right

A Neural Network Technique for Separating Land Surface Emissivity and Temperature From ASTER Imagery

Jiancheng Shi

IEEE Transactions on Geoscience and Remote Sensing, 2000

View PDFchevron_right

Sensitivity analysis of artificial neural network for chlorophyll prediction using hyperspectral data

George P. Petropoulos, Ujjwal Singh

View PDFchevron_right