Leaf Area Index Estimation Using Chinese GF-1 Wide Field View Data in an Agriculture Region
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Tao Yu | Kun Jia | Xiangqin Wei | Zheng Wei | Qingyan Meng | Xingfa Gu | Xiang Zhou | Chunmei Wang | Tao Yu | Xingfa Gu | K. Jia | Qingyan Meng | Chunmei Wang | Xiang Zhou | Zheng Wei | Xiangqin Wei
[1] Sylvain G. Leblanc,et al. A four-scale bidirectional reflectance model based on canopy architecture , 1997, IEEE Trans. Geosci. Remote. Sens..
[2] H. Mooney,et al. Modeling the Exchanges of Energy, Water, and Carbon Between Continents and the Atmosphere , 1997, Science.
[3] Paul E. Lewis,et al. FLAASH, a MODTRAN4-based atmospheric correction algorithm, its application and validation , 2002, IEEE International Geoscience and Remote Sensing Symposium.
[4] Shunlin Liang,et al. Advances in Land Remote Sensing : System, Modeling, Inversion and Application , 2019 .
[5] Jindi Wang,et al. Advanced remote sensing : terrestrial information extraction and applications , 2012 .
[6] R. Lacaze,et al. Global mapping of vegetation parameters from POLDER multiangular measurements for studies of surface-atmosphere interactions: A pragmatic method and its validation , 2002 .
[7] Shunlin Liang,et al. Recent developments in estimating land surface biogeophysical variables from optical remote sensing , 2007 .
[8] Jindi Wang,et al. A dynamic Bayesian network data fusion algorithm for estimating leaf area index using time-series data from in situ measurement to remote sensing observations , 2012 .
[9] Xiaoxia Wang,et al. Comparison of Four Machine Learning Methods for Generating the GLASS Fractional Vegetation Cover Product from MODIS Data , 2016, Remote. Sens..
[10] F. Baret,et al. PROSPECT: A model of leaf optical properties spectra , 1990 .
[11] Jennifer L. Dungan,et al. Seasonal LAI in slash pine estimated with landsat TM , 1992 .
[12] D. Roberts,et al. A comparison of error metrics and constraints for multiple endmember spectral mixture analysis and spectral angle mapper , 2004 .
[13] Jindi Wang,et al. A Bayesian network algorithm for retrieving the characterization of land surface vegetation , 2008 .
[14] Honggang Bu,et al. Active-Optical Sensors Using Red NDVI Compared to Red Edge NDVI for Prediction of Corn Grain Yield in North Dakota, U.S.A. , 2015, Sensors.
[15] R. Myneni,et al. Investigation of a model inversion technique to estimate canopy biophysical variables from spectral and directional reflectance data , 2000 .
[16] R. Myneni,et al. A review on the theory of photon transport in leaf canopies , 1989 .
[17] W. Verhoef. Light scattering by leaf layers with application to canopy reflectance modelling: The SAIL model , 1984 .
[18] Jiali Xie,et al. Assessing vegetation dynamics in the Three-North Shelter Forest region of China using AVHRR NDVI data , 2011 .
[19] D. W. Franzen,et al. Use of corn height to improve the relationship between active optical sensor readings and yield estimates , 2013, Precision Agriculture.
[20] Jonas Sjöberg,et al. Efficient training of neural nets for nonlinear adaptive filtering using a recursive Levenberg-Marquardt algorithm , 2000, IEEE Trans. Signal Process..
[21] Suhong Liu,et al. Global Land Surface Fractional Vegetation Cover Estimation Using General Regression Neural Networks From MODIS Surface Reflectance , 2015, IEEE Transactions on Geoscience and Remote Sensing.
[22] K. Loague,et al. Statistical and graphical methods for evaluating solute transport models: Overview and application , 1991 .
[23] S. Running,et al. Global products of vegetation leaf area and fraction absorbed PAR from year one of MODIS data , 2002 .
[24] A. Kalra,et al. Estimating soil moisture using remote sensing data: A machine learning approach , 2010 .
[25] J. Privette,et al. Inversion methods for physically‐based models , 2000 .
[26] P. Bicheron. A Method of Biophysical Parameter Retrieval at Global Scale by Inversion of a Vegetation Reflectance Model , 1999 .
[27] Arnab Bhowmik,et al. A Case Study of Improving Yield Prediction and Sulfur Deficiency Detection Using Optical Sensors and Relationship of Historical Potato Yield with Weather Data in Maine , 2017, Sensors.
[28] Fumin Wang,et al. New Vegetation Index and Its Application in Estimating Leaf Area Index of Rice , 2007 .
[29] Keith D. Shepherd,et al. Rapid characterization of Organic Resource Quality for Soil and Livestock Management in Tropical Agroecosystems Using Near Infrared Spectroscopy. , 2003 .
[30] David W. Franzen,et al. Comparison of two ground-based active-optical sensors for in-season estimation of corn (Zea mays, L.) yield , 2016 .
[31] O. Hagolle,et al. LAI, fAPAR and fCover CYCLOPES global products derived from VEGETATION: Part 1: Principles of the algorithm , 2007 .
[32] G. Bonan. Forests and Climate Change: Forcings, Feedbacks, and the Climate Benefits of Forests , 2008, Science.
[33] E. Dufrene,et al. Retrieval of forest biophysical variables by inverting a 3-D radiative transfer model and using high and very high resolution imagery , 2004 .
[34] J. Townshend,et al. A long-term Global LAnd Surface Satellite (GLASS) data-set for environmental studies , 2013 .
[35] David W. Franzen,et al. Comparison of Satellite Imagery and Ground-Based Active Optical Sensors as Yield Predictors in Sugar Beet, Spring Wheat, Corn, and Sunflower , 2017 .
[36] J. Chen,et al. Defining leaf area index for non‐flat leaves , 1992 .
[37] Will Steffen,et al. Establishing A Earth Observation Product Service For The Terrestrial Carbon Community: The Globcarbon Initiative , 2006 .
[38] Anne M. Denton,et al. Sugar Beet Yield and Quality Prediction at Multiple Harvest Dates Using Active‐Optical Sensors , 2016 .
[39] Bing-Fang Wu,et al. [Accuracy improvement of spectral classification of crop using microwave backscatter data]. , 2011, Guang pu xue yu guang pu fen xi = Guang pu.
[40] V. Arora. MODELING VEGETATION AS A DYNAMIC COMPONENT IN SOIL‐VEGETATION‐ATMOSPHERE TRANSFER SCHEMES AND HYDROLOGICAL MODELS , 2002 .
[41] 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 .
[42] Jindi Wang,et al. Use of General Regression Neural Networks for Generating the GLASS Leaf Area Index Product From Time-Series MODIS Surface Reflectance , 2014, IEEE Transactions on Geoscience and Remote Sensing.
[43] Yuwei Li,et al. Fractional Forest Cover Changes in Northeast China From 1982 to 2011 and Its Relationship With Climatic Variations , 2015, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.
[44] J. Chen. Evaluation of Vegetation Indices and a Modified Simple Ratio for Boreal Applications , 1996 .
[45] Shunlin Liang,et al. Observational evidence for impacts of vegetation change on local surface climate over northern China using the Granger causality test , 2015 .
[46] J. Nash,et al. River flow forecasting through conceptual models part I — A discussion of principles☆ , 1970 .
[47] P. V. Raju,et al. Classification of wheat crop with multi-temporal images: performance of maximum likelihood and artificial neural networks , 2003 .
[48] F. J. García-Haro,et al. INTER-COMPARISON OF SEVIRI/MSG AND MERIS/ENVISAT BIOPHYSICAL PRODUCTS OVER EUROPE AND AFRICA , 2008 .
[49] A. Kuusk. The Hot Spot Effect in Plant Canopy Reflectance , 1991 .
[50] R. Lacaze,et al. A Global Database of Land Surface Parameters at 1-km Resolution in Meteorological and Climate Models , 2003 .
[51] N. Goel,et al. Inversion of vegetation canopy reflectance models for estimating agronomic variables. I. Problem definition and initial results using the Suits model , 1983 .
[52] W. Verhoef,et al. PROSPECT+SAIL models: A review of use for vegetation characterization , 2009 .
[53] Frédéric Baret,et al. Fractional vegetation cover estimation algorithm for Chinese GF-1 wide field view data , 2016 .
[54] N. Gobron,et al. The MERIS Global Vegetation Index (MGVI): Description and preliminary application , 1999 .
[55] Roberta E. Martin,et al. PROSPECT-4 and 5: Advances in the leaf optical properties model separating photosynthetic pigments , 2008 .
[56] Xingfa Gu,et al. Land cover classification using Landsat 8 Operational Land Imager data in Beijing, China , 2014 .
[57] Frédéric Baret,et al. GEOV1: LAI and FAPAR essential climate variables and FCOVER global time series capitalizing over existing products. Part1: Principles of development and production , 2013 .
[58] Qing Xiao,et al. Unified Optical-Thermal Four-Stream Radiative Transfer Theory for Homogeneous Vegetation Canopies , 2007, IEEE Transactions on Geoscience and Remote Sensing.