Unmanned aerial vehicle-based field phenotyping of crop biomass using growth traits retrieved from PROSAIL model
暂无分享,去创建一个
Haiyan Cen | Yong He | Jiangpeng Zhu | Dawei Sun | Liang Wan | Jiafei Zhang | Xiaoya Dong | Xiaoyue Du | Yufei Liu | Liang Wan | Jiangpeng Zhu | Dawei Sun | Yong He | Yufei Liu | Xiaoya Dong | Xiaoyue Du | Jiafei Zhang | Haiyan Cen
[1] F. Baret,et al. Estimation of Plant and Canopy Architectural Traits Using the Digital Plant Phenotyping Platform1 [OPEN]. , 2019, Plant physiology.
[2] F. Baret,et al. Estimates of plant density of wheat crops at emergence from very low altitude UAV imagery. , 2017 .
[3] Lorena González Pérez,et al. Canopy Temperature and Vegetation Indices from High-Throughput Phenotyping Improve Accuracy of Pedigree and Genomic Selection for Grain Yield in Wheat , 2016, G3: Genes, Genomes, Genetics.
[4] W. Verhoef. Light scattering by leaf layers with application to canopy reflectance modelling: The SAIL model , 1984 .
[5] Xu Wang,et al. Field-based high-throughput phenotyping of plant height in sorghum using different sensing technologies , 2018, Plant Methods.
[6] Nora Tilly,et al. Fusion of Plant Height and Vegetation Indices for the Estimation of Barley Biomass , 2015, Remote. Sens..
[7] A. Ghulam,et al. Unmanned Aerial System (UAS)-Based Phenotyping of Soybean using Multi-sensor Data Fusion and Extreme Learning Machine , 2017 .
[8] P. Zarco-Tejada,et al. Relationships between net photosynthesis and steady-state chlorophyll fluorescence retrieved from airborne hyperspectral imagery , 2013 .
[9] Frédéric Baret,et al. Exploiting the centimeter resolution of UAV multispectral imagery to improve remote-sensing estimates of canopy structure and biochemistry in sugar beet crops , 2019, Remote Sensing of Environment.
[10] Xiaoxia Wang,et al. Fractional Vegetation Cover Estimation Method Through Dynamic Bayesian Network Combining Radiative Transfer Model and Crop Growth Model , 2016, IEEE Transactions on Geoscience and Remote Sensing.
[11] Guijun Yang,et al. Winter wheat yield estimation based on multi-source medium resolution optical and radar imaging data and the AquaCrop model using the particle swarm optimization algorithm , 2017 .
[12] Roberta E. Martin,et al. Multi-method ensemble selection of spectral bands related to leaf biochemistry , 2015 .
[13] Simon Bennertz,et al. Combining UAV-based plant height from crop surface models, visible, and near infrared vegetation indices for biomass monitoring in barley , 2015, Int. J. Appl. Earth Obs. Geoinformation.
[14] F. Baret,et al. PROSPECT: A model of leaf optical properties spectra , 1990 .
[15] Lei Tian,et al. Development of methods to improve soybean yield estimation and predict plant maturity with an unmanned aerial vehicle based platform , 2016 .
[16] P. Zarco-Tejada,et al. Previsual symptoms of Xylella fastidiosa infection revealed in spectral plant-trait alterations , 2018, Nature Plants.
[17] James Hansen,et al. Assimilation of remotely sensed soil moisture and vegetation with a crop simulation model for maize yield prediction , 2013 .
[18] A. Wellburn,et al. Determinations of total carotenoids and chlorophylls a and b of leaf extracts in different solvents , 1983 .
[19] M. Weiss,et al. Remote sensing for agricultural applications: A meta-review , 2020 .
[20] Jonathan P. Dash,et al. Optimising prediction of forest leaf area index from discrete airborne lidar , 2017 .
[21] Charles M. Bachmann,et al. Retrieval of Salt Marsh Above-Ground Biomass from High-Spatial Resolution Hyperspectral Imagery Using PROSAIL , 2019, Remote. Sens..
[22] Yidan Bao,et al. Grain yield prediction of rice using multi-temporal UAV-based RGB and multispectral images and model transfer – a case study of small farmlands in the South of China , 2020 .
[23] F. Baret,et al. Green area index from an unmanned aerial system over wheat and rapeseed crops , 2014 .
[24] Carolina Blanch,et al. A CMOS-Compatible, Monolithically Integrated Snapshot-Mosaic Multispectral Imager , 2015 .
[25] Michael Thiel,et al. High Resolution Mapping of Soil Properties Using Remote Sensing Variables in South-Western Burkina Faso: A Comparison of Machine Learning and Multiple Linear Regression Models , 2017, PloS one.
[26] T. Mockler,et al. Vegetation Index Weighted Canopy Volume Model (CVMVI) for soybean biomass estimation from Unmanned Aerial System-based RGB imagery , 2019, ISPRS Journal of Photogrammetry and Remote Sensing.
[27] Wolfram Mauser,et al. Evaluation of the PROSAIL Model Capabilities for Future Hyperspectral Model Environments: A Review Study , 2018, Remote. Sens..
[28] Wenji Zhao,et al. Above-bottom biomass retrieval of aquatic plants with regression models and SfM data acquired by a UAV platform – A case study in Wild Duck Lake Wetland, Beijing, China , 2017 .
[29] Elfatih M. Abdel-Rahman,et al. Color Calibration of Proximal Sensing RGB Images of Oilseed Rape Canopy via Deep Learning Combined with K-Means Algorithm , 2019, Remote. Sens..
[30] Liang Wan,et al. Characterization and Detection of Leaf Photosynthetic Response to Citrus Huanglongbing from Cool to Hot Seasons in Two Orchards , 2020 .
[31] Subashisa Dutta,et al. Spatial variability of chlorophyll and nitrogen content of rice from hyperspectral imagery , 2016 .
[32] Thomas G. Dietterich. An Experimental Comparison of Three Methods for Constructing Ensembles of Decision Trees: Bagging, Boosting, and Randomization , 2000, Machine Learning.
[33] F. Maupas,et al. Retrieving LAI, chlorophyll and nitrogen contents in sugar beet crops from multi-angular optical remote sensing: Comparison of vegetation indices and PROSAIL inversion for field phenotyping , 2017 .
[34] Min Jiang,et al. Estimates of rice lodging using indices derived from UAV visible and thermal infrared images , 2018 .
[35] E. Addink,et al. Monitoring height and greenness of non-woody floodplain vegetation with UAV time series , 2018, ISPRS Journal of Photogrammetry and Remote Sensing.
[36] S. Sankaran,et al. Low-altitude, high-resolution aerial imaging systems for row and field crop phenotyping: A review , 2015 .
[37] Qiang Liu,et al. LAI retrieval and uncertainty evaluations for typical row-planted crops at different growth stages , 2008 .
[38] Eija Honkavaara,et al. Estimating Biomass and Nitrogen Amount of Barley and Grass Using UAV and Aircraft Based Spectral and Photogrammetric 3D Features , 2018, Remote. Sens..
[39] J. Foley,et al. Yield Trends Are Insufficient to Double Global Crop Production by 2050 , 2013, PloS one.
[40] Yidan Bao,et al. Dynamic monitoring of biomass of rice under different nitrogen treatments using a lightweight UAV with dual image-frame snapshot cameras , 2019, Plant Methods.
[41] B. Kowalski,et al. Partial least-squares regression: a tutorial , 1986 .
[42] W. Verhoef,et al. A spectral directional reflectance model of row crops , 2010 .
[43] Hao Yang,et al. Unmanned Aerial Vehicle Remote Sensing for Field-Based Crop Phenotyping: Current Status and Perspectives , 2017, Front. Plant Sci..
[44] P. Reich,et al. Biomass allocation to leaves, stems and roots: meta-analyses of interspecific variation and environmental control. , 2012, The New phytologist.
[45] T. Cheng,et al. Inversion of rice canopy chlorophyll content and leaf area index based on coupling of radiative transfer and Bayesian network models , 2019, ISPRS Journal of Photogrammetry and Remote Sensing.
[46] Simon Bennertz,et al. Estimating Biomass of Barley Using Crop Surface Models (CSMs) Derived from UAV-Based RGB Imaging , 2014, Remote. Sens..
[47] A. Skidmore,et al. Mapping spatio-temporal variation of grassland quantity and quality using MERIS data and the PROSAIL model , 2012 .
[48] Yong He,et al. Combining UAV-Based Vegetation Indices and Image Classification to Estimate Flower Number in Oilseed Rape , 2018, Remote. Sens..
[49] Bo-Hui Tang,et al. Inversion of the PROSAIL model to estimate leaf area index of maize, potato, and sunflower fields from unmanned aerial vehicle hyperspectral data , 2014, Int. J. Appl. Earth Obs. Geoinformation.
[50] T. Quaife,et al. Application of Sentinel-2A data for pasture biomass monitoring using a physically based radiative transfer model , 2018, Remote Sensing of Environment.
[51] W. Maes,et al. Perspectives for Remote Sensing with Unmanned Aerial Vehicles in Precision Agriculture. , 2019, Trends in plant science.
[52] S. Mantel,et al. Current and potential capabilities of UAS for crop water productivity in precision agriculture , 2019, Agricultural Water Management.
[53] Heikki Saari,et al. Processing and Assessment of Spectrometric, Stereoscopic Imagery Collected Using a Lightweight UAV Spectral Camera for Precision Agriculture , 2013, Remote. Sens..
[54] Weiliang Fan,et al. Estimating bamboo forest aboveground biomass using EnKF-assimilated MODIS LAI spatiotemporal data and machine learning algorithms , 2018, Agricultural and Forest Meteorology.
[55] Ulrich Schurr,et al. Future scenarios for plant phenotyping. , 2013, Annual review of plant biology.
[56] Andrew K. Skidmore,et al. Mapping forest canopy nitrogen content by inversion of coupled leaf-canopy radiative transfer models from airborne hyperspectral imagery , 2018 .
[57] Wouter A. Dorigo,et al. Improving the Robustness of Cotton Status Characterisation by Radiative Transfer Model Inversion of Multi-Angular CHRIS/PROBA Data , 2012, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.
[58] Jose A. Jiménez-Berni,et al. Field crop phenomics: enabling breeding for radiation use efficiency and biomass in cereal crops. , 2019, The New phytologist.
[59] Guijun Yang,et al. Estimate of winter-wheat above-ground biomass based on UAV ultrahigh-ground-resolution image textures and vegetation indices , 2019, ISPRS Journal of Photogrammetry and Remote Sensing.
[60] Hongkun Zheng,et al. Using hyperspectral analysis as a potential high throughput phenotyping tool in GWAS for protein content of rice quality , 2019, Plant Methods.
[61] S. Robinson,et al. Food Security: The Challenge of Feeding 9 Billion People , 2010, Science.
[62] W. Verhoef,et al. PROSPECT+SAIL models: A review of use for vegetation characterization , 2009 .
[63] A. Viña,et al. Remote estimation of canopy chlorophyll content in crops , 2005 .