Register      Login
Crop and Pasture Science Crop and Pasture Science Society
Plant sciences, sustainable farming systems and food quality

Articles citing this paper

Detection of nitrogen deficiency in wheat from spectral reflectance indices and basic crop eco-physiological concepts

D. Rodriguez A E , G. J. Fitzgerald B , R. Belford C and L. K. Christensen D
+ Author Affiliations
- Author Affiliations

A Agricultural Production Systems Research Unit (APSRU), Department of Primary Industries and Fisheries, PO Box 102, Toowoomba, Qld 4350, Australia.

B USDA-ARS, U.S. Water Conservation Laboratory, 4331 E. Broadway Rd, Phoenix, AZ 85040, USA.

C Primary Industries Research Victoria, PO Box 260, Horsham, Vic. 3401, Australia.

D Nordic Gene Bank, PO Box 41, SE-23053 Alnarp, Sweden.

E Corresponding author. Email: daniel.rodriguez@dpi.qld.gov.au

Australian Journal of Agricultural Research 57(7) 781-789 https://doi.org/10.1071/AR05361
Submitted: 12 October 2005  Accepted: 17 February 2006   Published: 14 July 2006



114 articles found in Crossref database.

Revised normalized difference nitrogen index (NDNI) for estimating canopy nitrogen concentration in wetlands
Wang Liwen, Wei Yaxing
Optik. 2016 127(19). p.7676
Which multispectral indices robustly measure canopy nitrogen across seasons: Lessons from an irrigated pasture crop
Patel Manish Kumar, Ryu Dongryeol, Western Andrew W., Suter Helen, Young Iain M.
Computers and Electronics in Agriculture. 2021 182 p.106000
A Novel Methodology for Improving Plant Pest Surveillance in Vineyards and Crops Using UAV-Based Hyperspectral and Spatial Data
Vanegas Fernando, Bratanov Dmitry, Powell Kevin, Weiss John, Gonzalez Felipe
Sensors. 2018 18(1). p.260
The potential of in-situ hyperspectral remote sensing for differentiating 12 banana genotypes grown in Uganda
Sinha Priyakant, Robson Andrew, Schneider Derek, Kilic Talip, Mugera Harriet Kasidi, Ilukor John, Tindamanyire Jimmy Moses
ISPRS Journal of Photogrammetry and Remote Sensing. 2020 167 p.85
Evaluation of coffee plant attributes by field collection and remotely piloted aircraft system images
Bento Nicole L., Ferraz Gabriel A. S., Barata Rafael A. P., Santana Lucas S., Faria Rafael O., Soares Daniel V.
Spanish Journal of Agricultural Research. 2022 20(3). p.e0205
Data Mining Models for Selection of the Best Spectral Reflectance Indices in Estimation of Crop Yields and Classification of Maize Hybrid Types Using SpectroRadiometer Data
2017 European Conference on Electrical Engineering and Computer Science (EECS) (2017)
Erol Hamza, Barutcular Celaleddin, Sabagh Ayman El, Erol Recep
Estimation of Total Nitrogen Content in Forage Maize (Zea mays L.) Using Spectral Indices: Analysis by Random Forest
López-Calderón Magali J., Estrada-Ávalos Juan, Rodríguez-Moreno Víctor M., Mauricio-Ruvalcaba Jorge E., Martínez-Sifuentes Aldo R., Delgado-Ramírez Gerardo, Miguel-Valle Enrique
Agriculture. 2020 10(10). p.451
Estimating productivity and nutritive value of Marandu palisadegrass using a proximal canopy reflectance sensor
Pezzopane José Ricardo Macedo, de Campos Bernardi Alberto Carlos, Bosi Cristiam, Sengling Orlando, Bonani Willian Lucas, Brunetti Henrique Bauab, Santos Patricia Menezes
Experimental Agriculture. 2022 58
Hyperspectral imaging of spinach canopy under combined water and nitrogen stress to estimate biomass, water, and nitrogen content
Corti Martina, Marino Gallina Pietro, Cavalli Daniele, Cabassi Giovanni
Biosystems Engineering. 2017 158 p.38
Combined Spectral Index to Improve Ground‐Based Estimates of Nitrogen Status in Dryland Wheat
Eitel J. U. H., Long D. S., Gessler P. E., Hunt E. R.
Agronomy Journal. 2008 100(6). p.1694
Using Hybrid Artificial Intelligence and Evolutionary Optimization Algorithms for Estimating Soybean Yield and Fresh Biomass Using Hyperspectral Vegetation Indices
Yoosefzadeh-Najafabadi Mohsen, Tulpan Dan, Eskandari Milad
Remote Sensing. 2021 13(13). p.2555
Yielding to the image: How phenotyping reproductive growth can assist crop improvement and production
Dreccer M. Fernanda, Molero Gemma, Rivera-Amado Carolina, John-Bejai Carus, Wilson Zoe
Plant Science. 2019 282 p.73
Combining Multiangular, Polarimetric, and Hyperspectral Measurements to Estimate Leaf Nitrogen Concentration From Different Plant Species
Liu Ming, Sun Zhongqiu, Lu Shan, Omasa Kenji
IEEE Transactions on Geoscience and Remote Sensing. 2022 60 p.1
Detection of homogeneous wheat areas using multi-temporal UAS images and ground truth data analyzed by cluster analysis
Marino Stefano, Alvino Arturo
European Journal of Remote Sensing. 2018 51(1). p.266
Emerging and Established Technologies to Increase Nitrogen Use Efficiency of Cereals
Herrera Juan, Rubio Gerardo, Häner Lilia, Delgado Jorge, Lucho-Constantino Carlos, Islas-Valdez Samira, Pellet Didier
Agronomy. 2016 6(2). p.25
Satellite Remote Sensing of Wheat Infected byWheat streak mosaic virus
Mirik M., Jones D. C., Price J. A., Workneh F., Ansley R. J., Rush C. M.
Plant Disease. 2011 95(1). p.4
Application of Vegetative Indices for Leaf Nitrogen Estimation in Sugarcane Using Hyperspectral Data
Martins Juliano Araújo, Fiorio Peterson Ricardo, Silva Carlos Augusto Alves Cardoso, Demattê José Alexandre Melo, Silva Barros Pedro Paulo da
Sugar Tech. 2024 26(1). p.160
Canopy-scale wavelength and vegetative index sensitivities to cotton growth parameters and nitrogen status
Raper T. B., Varco J. J.
Precision Agriculture. 2015 16(1). p.62
Radiative transfer Vcmax estimation from hyperspectral imagery and SIF retrievals to assess photosynthetic performance in rainfed and irrigated plant phenotyping trials
Camino Carlos, Gonzalez-Dugo Victoria, Hernandez Pilar, Zarco-Tejada Pablo J.
Remote Sensing of Environment. 2019 231 p.111186
Remotely estimating aerial N status of phenologically differing winter wheat cultivars grown in contrasting climatic and geographic zones in China and Germany
Li Fei, Mistele Bodo, Hu Yuncai, Yue Xianlu, Yue Shanchao, Miao Yuxin, Chen Xinping, Cui Zhenling, Meng Qingfeng, Schmidhalter Urs
Field Crops Research. 2012 138 p.21
Mapping wheat nitrogen uptake from RapidEye vegetation indices
Magney Troy S., Eitel Jan U. H., Vierling Lee A.
Precision Agriculture. 2017 18(4). p.429
High‐Throughput Sensing of Aerial Biomass and Above‐Ground Nitrogen Uptake in the Vegetative Stage of Well‐Watered and Drought Stressed Tropical Maize Hybrids
Winterhalter Loïc, Mistele Bodo, Jampatong Sansern, Schmidhalter Urs
Crop Science. 2011 51(2). p.479
Understanding the optical responses of leaf nitrogen in Mediterranean Holm oak (Quercus ilex) using field spectroscopy
Pacheco-Labrador Javier, González-Cascón Rosario, Martín M. Pilar, Riaño David
International Journal of Applied Earth Observation and Geoinformation. 2014 26 p.105
Sensing Approaches for Precision Agriculture (2021)
Franzen David W., Miao Yuxin, Kitchen Newell R., Schepers James S., Scharf Peter C.
Alfalfa Yield Prediction Using UAV-Based Hyperspectral Imagery and Ensemble Learning
Feng Luwei, Zhang Zhou, Ma Yuchi, Du Qingyun, Williams Parker, Drewry Jessica, Luck Brian
Remote Sensing. 2020 12(12). p.2028
A combined approach of geostatistics and geographical clustering for delineating homogeneous zones in a durum wheat field in organic farming
Diacono M., De Benedetto D., Castrignanò A., Rubino P., Vitti C., Abdelrahman H.M., Sollitto D., Cocozza C., Ventrella D.
NJAS: Wageningen Journal of Life Sciences. 2013 64-65(1). p.47
Making Better Fertiliser Decisions for Cropping Systems in Australia (BFDC): knowledge gaps and lessons learnt
Conyers M. K., Bell M. J., Wilhelm N. S., Bell R., Norton R. M., Walker C.
Crop and Pasture Science. 2013 64(5). p.539
Durum wheat in-field monitoring and early-yield prediction: assessment of potential use of high resolution satellite imagery in a hilly area of Tuscany, Central Italy
DALLA MARTA A., GRIFONI D., MANCINI M., ORLANDO F., GUASCONI F., ORLANDINI S.
The Journal of Agricultural Science. 2015 153(1). p.68
Advances in Citrus Nutrition (2012)
Suárez Lola, Berni José A. J.
Remote sensing of nitrogen and water stress in wheat
Tilling Adam K., O’Leary Garry J., Ferwerda Jelle G., Jones Simon D., Fitzgerald Glenn J., Rodriguez Daniel, Belford Robert
Field Crops Research. 2007 104(1-3). p.77
Analysis of Soybean Seed Yield Using Vegetation Index Captured with UAV
Tambo Ayaka, Shimada Masahiro, Yoshifuji Akinori, Imamoto Yuji, Nagahata Hideki, Fujihara Yoichi, Tsukaguchi Tadashi
Japanese Journal of Crop Science. 2021 90(3). p.261
Integrating UAV hyperspectral data and radiative transfer model simulation to quantitatively estimate maize leaf and canopy nitrogen content
Li Jiating, Ge Yufeng, Puntel Laila A., Heeren Derek M., Bai Geng, Balboa Guillermo R., Gamon John A., Arkebauer Timothy J., Shi Yeyin
International Journal of Applied Earth Observation and Geoinformation. 2024 129 p.103817
Şeker pancarı yapraklarında azot durumunun spektral diskriminant analizi ile belirlenmesi
DEDEOĞLU Mert, BAŞAYİĞİT Levent, ERİŞOĞLU Murat
Toprak Bilimi ve Bitki Besleme Dergisi. 2019 7(2). p.128
Sensing Approaches for Precision Agriculture (2021)
Taylor James A., Anastasiou Evangelos, Fountas Spyros, Tisseyre Bruno, Molin Jose P., Trevisan Rodrigo G., Chen Hongyan, Travers Marcus
Applications of a Hyperspectral Imaging System Used to Estimate Wheat Grain Protein: A Review
Ma Junjie, Zheng Bangyou, He Yong
Frontiers in Plant Science. 2022 13
Leaf and canopy optical characteristics as crop‐N‐status indicators for field nitrogen management in corn
Rambo Lisandro, Ma Bao‐Luo, Xiong Youcai, Regis Ferreira da Silvia Paulo
Journal of Plant Nutrition and Soil Science. 2010 173(3). p.434
Sustainable Agriculture Reviews (2015)
Ma Bao-Luo, Biswas Dilip Kumar
Simultaneous identification of spring wheat nitrogen and water status using visible and near infrared spectra and Powered Partial Least Squares Regression
Kusnierek Krzysztof, Korsaeth Audun
Computers and Electronics in Agriculture. 2015 117 p.200
Spectral measurements of the total aerial N and biomass dry weight in maize using a quadrilateral-view optic
Mistele Bodo, Schmidhalter Urs
Field Crops Research. 2008 106(1). p.94
Precision nitrogen management of wheat. A review
Diacono Mariangela, Rubino Pietro, Montemurro Francesco
Agronomy for Sustainable Development. 2013 33(1). p.219
Differentiating stress induced by greenbugs and Russian wheat aphids in wheat using remote sensing
Yang Z., Rao M.N., Elliott N.C., Kindler S.D., Popham T.W.
Computers and Electronics in Agriculture. 2009 67(1-2). p.64
SWIR-based spectral indices for assessing nitrogen content in potato fields
Herrmann I., Karnieli A., Bonfil D. J., Cohen Y., Alchanatis V.
International Journal of Remote Sensing. 2010 31(19). p.5127
Improving estimation of summer maize nitrogen status with red edge-based spectral vegetation indices
Li Fei, Miao Yuxin, Feng Guohui, Yuan Fei, Yue Shanchao, Gao Xiaowei, Liu Yuqing, Liu Bin, Ustin Susan L., Chen Xinping
Field Crops Research. 2014 157 p.111
Field partition by proximal and remote sensing data fusion
De Benedetto Daniela, Castrignano Annamaria, Diacono Mariangela, Rinaldi Michele, Ruggieri Sergio, Tamborrino Rosanna
Biosystems Engineering. 2013 114(4). p.372
Growth and yield responses to amending the sugarcane monoculture: interactions between break history and nitrogen fertiliser
Bell M. J., Garside A. L.
Crop and Pasture Science. 2014 65(3). p.287
Plant Colorants Interfere with Reflectance‐Based Vegetation Indices
Obear Glen R., Kreuser William C., Hubbard Ken, DeBels Brad, Soldat Douglas J.
Crop Science. 2017 57(2). p.595
Nitrogen retrieval in grapevine (Vitis vinifera L.) leaves by hyperspectral sensing
Peanusaha Sirapoom, Pourreza Alireza, Kamiya Yuto, Fidelibus Matthew W., Chakraborty Momtanu
Remote Sensing of Environment. 2024 302 p.113966
Assessing newly developed and published vegetation indices for estimating rice leaf nitrogen concentration with ground- and space-based hyperspectral reflectance
Tian Y.C., Yao X., Yang J., Cao W.X., Hannaway D.B., Zhu Y.
Field Crops Research. 2011 120(2). p.299
Quantitative dynamics of stem water soluble carbohydrates in wheat can be monitored in the field using hyperspectral reflectance
Dreccer M. Fernanda, Barnes Laura R., Meder Roger
Field Crops Research. 2014 159 p.70
The Genetic Architecture of Flowering Time and Related Traits in Two Early Flowering Maize Lines
Khanal Raja, Earl Hugh, Lee Elizabeth A., Lukens Lewis
Crop Science. 2011 51(1). p.146
Spectral vegetation indices selected for quantifying Russian wheat aphid (Diuraphis noxia) feeding damage in wheat (Triticum aestivum L.)
Mirik M., Ansley R. J., Michels G. J., Elliott N. C.
Precision Agriculture. 2012 13(4). p.501
High throughput phenotyping of canopy water mass and canopy temperature in well-watered and drought stressed tropical maize hybrids in the vegetative stage
Winterhalter Loïc, Mistele Bodo, Jampatong Sansern, Schmidhalter Urs
European Journal of Agronomy. 2011 35(1). p.22
Multiple Facets of Nitrogen: From Atmospheric Gas to Indispensable Agricultural Input
Kabange Nkulu Rolly, Lee So-Myeong, Shin Dongjin, Lee Ji-Yoon, Kwon Youngho, Kang Ju-Won, Cha Jin-Kyung, Park Hyeonjin, Alibu Simon, Lee Jong-Hee
Life. 2022 12(8). p.1272
Assessing the vertical footprint of reflectance measurements to characterize nitrogen uptake and biomass distribution in maize canopies
Winterhalter Loïc, Mistele Bodo, Schmidhalter Urs
Field Crops Research. 2012 129 p.14
Utilization of a high-throughput shoot imaging system to examine the dynamic phenotypic responses of a C4 cereal crop plant to nitrogen and water deficiency over time
Neilson E. H., Edwards A. M., Blomstedt C. K., Berger B., Møller B. Lindberg, Gleadow R. M.
Journal of Experimental Botany. 2015 66(7). p.1817
Monitoring Wheat Growth Using a Portable Three-Band Instrument for Crop Growth Monitoring and Diagnosis
Li Huaimin, Lin Weipan, Pang Fangrong, Jiang Xiaoping, Cao Weixing, Zhu Yan, Ni Jun
Sensors. 2020 20(10). p.2894
Spectral and thermal sensing for nitrogen and water status in rainfed and irrigated wheat environments
Fitzgerald G. J., Rodriguez D., Christensen L. K., Belford R., Sadras V. O., Clarke T. R.
Precision Agriculture. 2006 7(4). p.233
Spectral variables as criteria for selection of soybean genotypes at different vegetative stages
Oliveira Jhenyfer Ferreira de, Alcântara Júlia Ferreira de, Santana Dthenifer Cordeiro, Teodoro Larissa Pereira Ribeiro, Baio Fábio Henrique Rojo, Coradi Paulo Carteri, Silva Junior Carlos Antonio da, Teodoro Paulo Eduardo
Remote Sensing Applications: Society and Environment. 2023 32 p.101026
Measuring and predicting canopy nitrogen nutrition in wheat using a spectral index—The canopy chlorophyll content index (CCCI)
Fitzgerald Glenn, Rodriguez Daniel, O’Leary Garry
Field Crops Research. 2010 116(3). p.318
Integrating satellite data with a Nitrogen Nutrition Curve for precision top-dress fertilization of durum wheat
Fabbri Carolina, Mancini Marco, dalla Marta Anna, Orlandini Simone, Napoli Marco
European Journal of Agronomy. 2020 120 p.126148
Spectrally monitoring the response of the biocrust moss Syntrichia caninervis to altered precipitation regimes
Young Kristina E., Reed Sasha C.
Scientific Reports. 2017 7(1).
Innovations in Remote Sensing and Photogrammetry (2009)
Ferwerda J.G., Jones S.D., O’Leary G., Belford R., Fitzgerald G.J.
An approach for delineating homogeneous zones by using multi-sensor data
De Benedetto D., Castrignanò A., Rinaldi M., Ruggieri S., Santoro F., Figorito B., Gualano S., Diacono M., Tamborrino R.
Geoderma. 2013 199 p.117
Geospatial Technologies for Crops and Soils (2021)
Mani Pabitra Kumar, Mandal Agniva, Biswas Saikat, Sarkar Buddhadev, Mitran Tarik, Meena Ram Swaroop
Approaches, applications, and future directions for hyperspectral vegetation studies: An emphasis on yield‐limiting factors in wheat
Bruning Brooke, Berger Bettina, Lewis Megan, Liu Huajian, Garnett Trevor
The Plant Phenome Journal. 2020 3(1).
Technologies and Data Analytics to Manage Grain Quality On-Farm—A Review
Walker Cassandra K., Assadzadeh Sahand, Wallace Ashley J., Delahunty Audrey J., Clancy Alexander B., McDonald Linda S., Fitzgerald Glenn J., Nuttall James G., Panozzo Joe F.
Agronomy. 2023 13(4). p.1129
MINERAL DEFICIENCY STRESS: Reflectance Properties, Leaf Photosynthesis and Growth of Nitrogen Deficient Big Bluestem (Andropogon gerardii)
Kakani V. G., Reddy K. R.
Journal of Agronomy and Crop Science. 2010 196(5). p.379
Airborne Hyperspectral Images and Ground-Level Optical Sensors As Assessment Tools for Maize Nitrogen Fertilization
Quemada Miguel, Gabriel Jose, Zarco-Tejada Pablo
Remote Sensing. 2014 6(4). p.2940
Comparative analysis of index and chemometric techniques-based assessment of leaf area index (LAI) in wheat through field spectroradiometer, Landsat-8, Sentinel-2 and Hyperion bands
Das Bappa, Sahoo Rabi N., Pargal Sourabh, Krishna Gopal, Verma Rakesh, Chinnusamy Viswanathan, Sehgal Vinay K., Gupta Vinod K.
Geocarto International. 2020 35(13). p.1415
Evaluating the performance of the CCCI-CNI index for estimating N status of winter wheat
Palka M., Manschadi A.M., Koppensteiner L., Neubauer T., Fitzgerald G.J.
European Journal of Agronomy. 2021 130 p.126346
Comparative prediction accuracy of hyperspectral bands for different soybean crop variables: From leaf area to seed composition
Chiozza Mariana V., Parmley Kyle A., Higgins Race H., Singh Asheesh K., Miguez Fernando E.
Field Crops Research. 2021 271 p.108260
Rapid estimation of canopy nitrogen of cereal crops at paddock scale using a Canopy Chlorophyll Content Index
Perry Eileen M., Fitzgerald Glenn J., Nuttall James G., O’Leary Garry J., Schulthess Urs, Whitlock Andrew
Field Crops Research. 2012 134 p.158
Effects of N application rate on N remobilization and accumulation in maize (Zea mays L.) and estimating of vegetative N remobilization using hyperspectral measurements
Wen Peng-Fei, Wang Rui, Shi Zu-Jiao, Ning Fang, Wang Shu-Lan, Zhang Yu-Jiao, Zhang Yuan-Hong, Wang Qian, Li Jun
Computers and Electronics in Agriculture. 2018 152 p.166
Estimating leaf nitrogen concentration with three-band vegetation indices in rice and wheat
Wang Wei, Yao Xia, Yao XinFeng, Tian YongChao, Liu XiaoJun, Ni Jun, Cao WeiXing, Zhu Yan
Field Crops Research. 2012 129 p.90
Temporal Changes of Leaf Spectral Properties and Rapid Chlorophyll—A Fluorescence under Natural Cold Stress in Rice Seedlings
Székely Árpád, Szalóki Tímea, Jancsó Mihály, Pauk János, Lantos Csaba
Plants. 2023 12(13). p.2415
Do crop sensors promote improved nitrogen management in grain crops?
Colaço A.F., Bramley R.G.V.
Field Crops Research. 2018 218 p.126
Examining view angle effects on leaf N estimation in wheat using field reflectance spectroscopy
Song Xiao, Feng Wei, He Li, Xu Duanyang, Zhang Hai-Yan, Li Xiao, Wang Zhi-Jie, Coburn Craig A., Wang Chen-Yang, Guo Tian-Cai
ISPRS Journal of Photogrammetry and Remote Sensing. 2016 122 p.57
Assessing the Robustness of Vegetation Indices to Estimate Wheat N in Mediterranean Environments
Cammarano Davide, Fitzgerald Glenn, Casa Raffaele, Basso Bruno
Remote Sensing. 2014 6(4). p.2827
Number of sampling leaves for reflectance measurement of Chinese cabbage and kale
Chung Sun-Ok, Ngo Viet-Duc, Kabir Md. Shaha Nur, Hong Soon-Jung, Park Sang-Un, Kim Sun-Ju, Park Jong-Tae
Korean Journal of Agricultural Science. 2014 41(3). p.169
A quick review of advantages and limitations of biological fertilizers in wheat cultivation
Sharifi Parisa
Main Group Chemistry. 2022 21(3). p.821
Hyperspectral imaging for estimating leaf, flower, and fruit macronutrient concentrations and predicting strawberry yields
Dung Cao Dinh, Trueman Stephen J., Wallace Helen M., Farrar Michael B., Gama Tsvakai, Tahmasbian Iman, Bai Shahla Hosseini
Environmental Science and Pollution Research. 2023 30(53). p.114166
Canopy reflectance response to plant nitrogen accumulation in rice
Bajwa S. G., Mishra A. R., Norman R. J.
Precision Agriculture. 2010 11(5). p.488
Putting green canopy reflectance by time from colourant and spray oil combination product application
Leiby Nathaniel L., Schlossberg M. J.
International Journal of Remote Sensing. 2022 43(19-24). p.7024
Detection of Powdery Mildew in Two Winter Wheat Plant Densities and Prediction of Grain Yield Using Canopy Hyperspectral Reflectance
Cao Xueren, Luo Yong, Zhou Yilin, Fan Jieru, Xu Xiangming, West Jonathan S., Duan Xiayu, Cheng Dengfa, Grosch Rita
PLOS ONE. 2015 10(3). p.e0121462
Assessment of plant nitrogen stress in wheat (Triticum aestivum L.) through hyperspectral indices
Ranjan Rajeev, Chopra Usha Kiran, Sahoo Rabi N., Singh Anil Kumar, Pradhan Sanatan
International Journal of Remote Sensing. 2012 33(20). p.6342
Soil nitrogen—crop response calibration relationships and criteria for winter cereal crops grown in Australia
Bell Michael J., Strong Wayne, Elliott Denis, Walker Charlie
Crop and Pasture Science. 2013 64(5). p.442
Crop Physiology (2009)
Rodriguez Daniel, Robson Andrew J., Belford Robert
Sensitivity of Ground‐Based Remote Sensing Estimates of Wheat Chlorophyll Content to Variation in Soil Reflectance
Eitel J. U. H., Long D. S., Gessler P. E., Hunt E. R., Brown D. J.
Soil Science Society of America Journal. 2009 73(5). p.1715
Remote estimation of above ground nitrogen uptake during vegetative growth in winter wheat using hyperspectral red-edge ratio data
Feng Wei, Guo Bin-Bin, Zhang Hai-Yan, He Li, Zhang Yuan-Shuai, Wang Yong-Hua, Zhu Yun-Ji, Guo Tian-Cai
Field Crops Research. 2015 180 p.197
Plant Breeding Reviews (2016)
Balyan Harindra S., Gahlaut Vijay, Kumar Anuj, Jaiswal Vandana, Dhariwal Raman, Tyagi Sandhya, Agarwal Priyanka, Kumari Supriya, Gupta Pushpendra K.
Estimation of spikelet number per area by UAV-acquired vegetation index in rice (Oryza sativa L.)
Tsukaguchi Tadashi, Kobayashi Haruka, Fujihara Yoichi, Chono Shunsuke
Plant Production Science. 2022 25(1). p.20
(2018)
Cossani Cesar Mariano, Sadras Victor O.
Assessing seasonal land cover dynamics in the tropical Kilombero floodplain of East Africa
Kirimi Fridah, Thiong’o Kuria, Gabiri Geofrey, Diekkrüger Bernd, Thonfeld Frank
Journal of Applied Remote Sensing. 2018 12(02). p.1
Remote Sensing for Monitoring Potato Nitrogen Status
Alkhaled Alfadhl, Townsend Philip A., Wang Yi
American Journal of Potato Research. 2023 100(1). p.1
Ground-based remote sensing for assessing water and nitrogen status of broccoli
El-Shikha D.M., Waller P., Hunsaker D., Clarke T., Barnes E.
Agricultural Water Management. 2007 92(3). p.183
Assessment of Piatã palisadegrass forage mass in integrated livestock production systems using a proximal canopy reflectance sensor
Pezzopane José Ricardo Macedo, Bernardi Alberto Carlos de Campos, Bosi Cristiam, Crippa Paulo Henrique, Santos Patrícia Menezes, Nardachione Estefânia Cereda
European Journal of Agronomy. 2019 103 p.130
Optimising three-band spectral indices to assess aerial N concentration, N uptake and aboveground biomass of winter wheat remotely in China and Germany
Li Fei, Mistele Bodo, Hu Yuncai, Chen Xinping, Schmidhalter Urs
ISPRS Journal of Photogrammetry and Remote Sensing. 2014 92 p.112
Using ground-based spectral reflectance sensors and photography to estimate shoot N concentration and dry matter of potato
Zhou Zhenjiang, Jabloun Mohamed, Plauborg Finn, Andersen Mathias Neumann
Computers and Electronics in Agriculture. 2018 144 p.154
Comparison of different hyperspectral vegetation indices for canopy leaf nitrogen concentration estimation in rice
Tian Yong-Chao, Gu Kai-Jian, Chu Xu, Yao Xia, Cao Wei-Xing, Zhu Yan
Plant and Soil. 2014 376(1-2). p.193
Detecting Frost Stress in Wheat: A Controlled Environment Hyperspectral Study on Wheat Plant Components and Implications for Multispectral Field Sensing
Murphy Mary E., Boruff Bryan, Callow J. Nikolaus, Flower Ken C.
Remote Sensing. 2020 12(3). p.477
Leaf chlorophyll and nitrogen dynamics and their relationship to lowland rice yield for site-specific paddy management
Gholizadeh Asa, Saberioon Mohammadmehdi, Borůvka Luboš, Wayayok Aimrun, Mohd Soom Mohd Amin
Information Processing in Agriculture. 2017 4(4). p.259
Machine Learning Techniques for Predicting Crop Photosynthetic Capacity from Leaf Reflectance Spectra
Heckmann David, Schlüter Urte, Weber Andreas P.M.
Molecular Plant. 2017 10(6). p.878
Remote estimation of chlorophyll on two wheat cultivars in two rainfed environments
Cammarano Davide, Fitzgerald Glenn, Basso Bruno, Chen Deli, Grace Peter, O'Leary Garry
Crop and Pasture Science. 2011 62(4). p.269
Use of the Canopy Chlorophyl Content Index (CCCI) for Remote Estimation of Wheat Nitrogen Content in Rainfed Environments
Cammarano Davide, Fitzgerald Glenn, Basso Bruno, O'Leary Garry, Chen Deli, Grace Peter, Fiorentino Costanza
Agronomy Journal. 2011 103(6). p.1597
An entirely new approach based on remote sensing data to calculate the nitrogen nutrition index of winter wheat
ZHAO Yu, WANG Jian-wen, CHEN Li-ping, FU Yuan-yuan, ZHU Hong-chun, FENG Hai-kuan, XU Xin-gang, LI Zhen-hai
Journal of Integrative Agriculture. 2021 20(9). p.2535
Spectral signature profiles of winter wheat in different growth stages under various environmental conditions
Remote Sensing for Agriculture, Ecosystems, and Hydrology XXIII (2021)
Avetisyan Daniela, Cvetanova Galya, Neale Christopher M., Maltese Antonino
Assessing the Reliability of Thermal and Optical Imaging Techniques for Detecting Crop Water Status under Different Nitrogen Levels
Masseroni Daniele, Ortuani Bianca, Corti Martina, Gallina Pietro Marino, Cocetta Giacomo, Ferrante Antonio, Facchi Arianna
Sustainability. 2017 9(9). p.1548
Evaluating canopy spectral reflectance vegetation indices to estimate nitrogen use traits in hard winter wheat
Frels Katherine, Guttieri Mary, Joyce Brian, Leavitt Bryan, Baenziger P. Stephen
Field Crops Research. 2018 217 p.82
Estimation of nitrogen content in wheat from proximal hyperspectral data using machine learning and explainable artificial intelligence (XAI) approach
Singh Harpinder, Roy Ajay, Setia R. K., Pateriya Brijendra
Modeling Earth Systems and Environment. 2022 8(2). p.2505
Drone remote sensing of wheat N using hyperspectral sensor and machine learning
Sahoo Rabi N., Rejith R. G., Gakhar Shalini, Ranjan Rajeev, Meena Mahesh C., Dey Abir, Mukherjee Joydeep, Dhakar Rajkumar, Meena Abhishek, Daas Anchal, Babu Subhash, Upadhyay Pravin K., Sekhawat Kapila, Kumar Sudhir, Kumar Mahesh, Chinnusamy Viswanathan, Khanna Manoj
Precision Agriculture. 2024 25(2). p.704
In-Field Wheat Reflectance: How to Reach the Organ Scale?
Dandrifosse Sébastien, Carlier Alexis, Dumont Benjamin, Mercatoris Benoît
Sensors. 2022 22(9). p.3342
Computer and Computing Technologies in Agriculture XI (2019)
Pei Haojie, Feng Haikuan, Yang Fuqin, Li Zhenhai, Yang Guijun, Niu Qinglin
Estimating the nitrogen nutrition index in grass seed crops using a UAV-mounted multispectral camera
Wang Hui, Mortensen Anders Krogh, Mao Peisheng, Boelt Birte, Gislum René
International Journal of Remote Sensing. 2019 40(7). p.2467
Estimation of Merchantable Volume of Eucalyptus Clones Based on Leaf-Level Hyperspectral Data
Mzinyane Thamsanqa D., van Aardt Jan, Ahmed Fethi
IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing. 2015 8(6). p.3095

Committee on Publication Ethics


Abstract Export Citation Get Permission