Non-Destructive Monitoring of Maize Nitrogen Concentration Using a Hyperspectral LiDAR: An Evaluation from Leaf-Level to Plant-Level
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Zheng Niu | Shunfu Xiao | Kaiyi Bi | Jie Bai | Shuai Gao | Gang Sun | Ji Wang | Zeying Han | Z. Niu | Shuai Gao | Gang Sun | Shunfu Xiao | Kaiyi Bi | Zeying Han | Jie Bai | Ji Wang
[1] Chunjiang Zhao,et al. Non-uniform vertical nitrogen distribution within plant canopy and its estimation by remote sensing: A review , 2013 .
[2] Anthony G. Vorster,et al. Non-destructive aboveground biomass estimation of coniferous trees using terrestrial LiDAR , 2017 .
[3] E. Hunt,et al. Early season remote sensing of wheat nitrogen status using a green scanning laser , 2011 .
[4] Weixing Cao,et al. Assessing the Impact of Spatial Resolution on the Estimation of Leaf Nitrogen Concentration Over the Full Season of Paddy Rice Using Near-Surface Imaging Spectroscopy Data , 2018, Front. Plant Sci..
[5] Felix Morsdorf,et al. Assessing forest structural and physiological information content of multi-spectral LiDAR waveforms by radiative transfer modelling , 2009 .
[6] Wenjiang Huang,et al. Off-Nadir Hyperspectral Sensing for Estimation of Vertical Profile of Leaf Chlorophyll Content within Wheat Canopies , 2017, Sensors.
[7] Lutz Plümer,et al. Generation and application of hyperspectral 3D plant models: methods and challenges , 2015, Machine Vision and Applications.
[8] Zheng Niu,et al. 32-channel hyperspectral waveform LiDAR instrument to monitor vegetation: design and initial performance trials , 2014, Asia-Pacific Environmental Remote Sensing.
[9] Margaret Kalacska,et al. Estimation of foliar chlorophyll and nitrogen content in an ombrotrophic bog from hyperspectral data: Scaling from leaf to image , 2015 .
[10] Li Wang,et al. Design of a New Multispectral Waveform LiDAR Instrument to Monitor Vegetation , 2015, IEEE Geoscience and Remote Sensing Letters.
[11] Luigi Sartori,et al. Ten years of corn yield dynamics at field scale under digital agriculture solutions: A case study from North Italy , 2021, Comput. Electron. Agric..
[12] Lin Du,et al. Estimating Rice Leaf Nitrogen Concentration: Influence of Regression Algorithms Based on Passive and Active Leaf Reflectance , 2017, Remote. Sens..
[13] Brigitte Leblon,et al. Evaluation of Soil Properties, Topographic Metrics, Plant Height, and Unmanned Aerial Vehicle Multispectral Imagery Using Machine Learning Methods to Estimate Canopy Nitrogen Weight in Corn , 2021, Remote. Sens..
[14] P. Curran. Remote sensing of foliar chemistry , 1989 .
[15] Fumiki Hosoi,et al. Three-Dimensional Monitoring of Plant Structural Parameters and Chlorophyll Distribution , 2019, Sensors.
[16] A. Gitelson,et al. How deep does a remote sensor sense? Expression of chlorophyll content in a maize canopy , 2012 .
[17] Anatoly A. Gitelson,et al. Remote estimation of nitrogen and chlorophyll contents in maize at leaf and canopy levels , 2013, Int. J. Appl. Earth Obs. Geoinformation.
[18] Xiaolong Wang,et al. Determination of critical nitrogen concentration and dilution curve based on leaf area index for summer maize , 2018, Field Crops Research.
[19] Jing Liu,et al. Improving leaf area index (LAI) estimation by correcting for clumping and woody effects using terrestrial laser scanning , 2018, Agricultural and Forest Meteorology.
[20] J. Eitel,et al. Simultaneous measurements of plant structure and chlorophyll content in broadleaf saplings with a terrestrial laser scanner , 2010 .
[21] Rachel Gaulton,et al. The potential of dual-wavelength laser scanning for estimating vegetation moisture content , 2013 .
[22] Chunjiang Zhao,et al. Variations in crop variables within wheat canopies and responses of canopy spectral characteristics and derived vegetation indices to different vertical leaf layers and spikes , 2015 .
[23] Bodo Mistele,et al. Assessing the vertical footprint of reflectance measurements to characterize nitrogen uptake and biomass distribution in maize canopies , 2012 .
[24] Guangsheng Zhou,et al. Vertical distributions of chlorophyll and nitrogen and their associations with photosynthesis under drought and rewatering regimes in a maize field , 2019, Agricultural and Forest Meteorology.
[25] G. Lemaire,et al. N uptake and distribution in crops: an agronomical and ecophysiological perspective. , 2002, Journal of experimental botany.
[26] Brindusa Cristina Budei,et al. Identifying the genus or species of individual trees using a three-wavelength airborne lidar system , 2018 .
[27] Katja Berger,et al. Crop nitrogen monitoring: Recent progress and principal developments in the context of imaging spectroscopy missions. , 2020, Remote sensing of environment.
[28] Chaoyang Wu,et al. Estimating chlorophyll content from hyperspectral vegetation indices : Modeling and validation , 2008 .
[29] A. Qin,et al. Exploring new spectral bands and vegetation indices for estimating nitrogen nutrition index of summer maize , 2018 .
[30] Q. Guo,et al. Evaluating maize phenotype dynamics under drought stress using terrestrial lidar , 2019, Plant Methods.
[31] Gustau Camps-Valls,et al. Quantifying Vegetation Biophysical Variables from Imaging Spectroscopy Data: A Review on Retrieval Methods , 2018, Surveys in Geophysics.
[32] F. Baret,et al. Leaf optical properties with explicit description of its biochemical composition: Direct and inverse problems , 1996 .
[33] Yuri A. Gritz,et al. Relationships between leaf chlorophyll content and spectral reflectance and algorithms for non-destructive chlorophyll assessment in higher plant leaves. , 2003, Journal of plant physiology.
[34] Wenjiang Huang,et al. Estimation of Nitrogen Vertical Distribution by Bi-Directional Canopy Reflectance in Winter Wheat , 2014, Sensors.
[35] Salah Sukkarieh,et al. Machine learning approaches for crop yield prediction and nitrogen status estimation in precision agriculture: A review , 2018, Comput. Electron. Agric..
[36] Wenjiang Huang,et al. Remote Estimation of Nitrogen Vertical Distribution by Consideration of Maize Geometry Characteristics , 2018, Remote. Sens..
[37] John R. Miller,et al. Scaling-up and model inversion methods with narrowband optical indices for chlorophyll content estimation in closed forest canopies with hyperspectral data , 2001, IEEE Trans. Geosci. Remote. Sens..
[38] Weixing Cao,et al. Monitoring Leaf Nitrogen Status in Rice with Canopy Spectral Reflectance , 2004, Agronomy Journal.
[39] J. Dash,et al. The MERIS terrestrial chlorophyll index , 2004 .
[40] Hao Yang,et al. Remote Sensing of Leaf and Canopy Nitrogen Status in Winter Wheat (Triticum aestivum L.) Based on N-PROSAIL Model , 2018, Remote. Sens..
[41] Gong Wei,et al. Multi-wavelength canopy LiDAR for remote sensing of vegetation: Design and system performance , 2012 .
[42] Xu Chu,et al. Comparison of different hyperspectral vegetation indices for canopy leaf nitrogen concentration estimation in rice , 2014, Plant and Soil.
[43] Qi Chen,et al. Estimating aboveground and organ biomass of plant canopies across the entire season of rice growth with terrestrial laser scanning , 2020, Int. J. Appl. Earth Obs. Geoinformation.
[44] Wang Li,et al. Radiometric Calibration for Incidence Angle, Range and Sub-Footprint Effects on Hyperspectral LiDAR Backscatter Intensity , 2020, Remote. Sens..
[45] Clement Atzberger,et al. Comparative analysis of three chemometric techniques for the spectroradiometric assessment of canopy chlorophyll content in winter wheat , 2010 .
[46] Andrew K. Skidmore,et al. 3D leaf water content mapping using terrestrial laser scanner backscatter intensity with radiometric correction , 2015 .
[47] Haiyan Guan,et al. Land-cover classification of multispectral LiDAR data using CNN with optimized hyper-parameters , 2020, ISPRS Journal of Photogrammetry and Remote Sensing.
[48] H. Kage,et al. Organ-specific approaches describing crop growth of winter oilseed rape under optimal and N-limited conditions , 2017 .
[49] G. Lemaire,et al. Crop Mass and N Status as Prerequisite Covariables for Unraveling Nitrogen Use Efficiency across Genotype-by-Environment-by-Management Scenarios: A Review , 2020, Plants.
[50] Bo Zhu,et al. Estimation of rice leaf nitrogen contents based on hyperspectral LIDAR , 2016, Int. J. Appl. Earth Obs. Geoinformation.
[51] Pingheng Li,et al. Canopy vertical heterogeneity plays a critical role in reflectance simulation , 2013 .
[52] Xingang Xu,et al. Estimating Leaf Nitrogen Content in Corn Based on Information Fusion of Multiple-Sensor Imagery from UAV , 2021, Remote. Sens..
[53] A. Qin,et al. Development of a critical nitrogen dilution curve based on leaf dry matter for summer maize , 2017 .
[54] Teemu Hakala,et al. Fast and nondestructive method for leaf level chlorophyll estimation using hyperspectral LiDAR , 2014 .
[55] Hengbiao Zheng,et al. WREP: A wavelet-based technique for extracting the red edge position from reflectance spectra for estimating leaf and canopy chlorophyll contents of cereal crops , 2017 .
[56] Yoshio Inoue,et al. Diagnostic mapping of canopy nitrogen content in rice based on hyperspectral measurements , 2012 .
[57] Philip Lewis,et al. Hyperspectral remote sensing of foliar nitrogen content , 2012, Proceedings of the National Academy of Sciences.
[58] R. B. Bradstreet. The Kjeldahl Method for Organic Nitrogen , 1965 .