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

Articles citing this paper

Plant and soil influences on estimating biomass of wheat in plant breeding plots using field spectral radiometers

SM Bellairs, NC Turner, PT Hick and RCG Smith
47(7) pp.1017 - 1034


24 articles found in Crossref database.

Assessment of Nitrogen Status in Wheat Using Aerial Photography
Zubillaga Mercedes, Urricariet Susana
Communications in Soil Science and Plant Analysis. 2005 36(13-14). p.1787
Advances in Agronomy Volume 58 (1996)
Turner Neil C.
Remote Detection of Rhizomania in Sugar Beets
Steddom K., Heidel G., Jones D., Rush C. M.
Phytopathology®. 2003 93(6). p.720
High-throughput non-destructive biomass determination during early plant development in maize under field conditions
Montes J.M., Technow F., Dhillon B.S., Mauch F., Melchinger A.E.
Field Crops Research. 2011 121(2). p.268
RED EDGE AS A POTENTIAL INDEX FOR DETECTING DIFFERENCES IN PLANT NITROGEN STATUS IN WINTER WHEAT
Kanke Yumiko, Raun William, Solie John, Stone Marvin, Taylor Randal
Journal of Plant Nutrition. 2012 35(10). p.1526
Spectral Reflectance Indices as a Potential Indirect Selection Criteria for Wheat Yield under Irrigation
Babar M. A., Reynolds M. P., van Ginkel M., Klatt A. R., Raun W. R., Stone M. L.
Crop Science. 2006 46(2). p.578
Relationship between Growth Traits and Spectral Vegetation Indices in Durum Wheat
Aparicio N., Villegas D., Araus J. L., Casadesús J., Royo C.
Crop Science. 2002 42(5). p.1547
Identifying traits to improve the nitrogen economy of wheat: Recent advances and future prospects
Foulkes M.J., Hawkesford M.J., Barraclough P.B., Holdsworth M.J., Kerr S., Kightley S., Shewry P.R.
Field Crops Research. 2009 114(3). p.329
Spectral Vegetation Indices as Nondestructive Tools for Determining Durum Wheat Yield
Aparicio Nieves, Villegas Dolors, Casadesus Jaume, Araus José Luis, Royo Conxita
Agronomy Journal. 2000 92(1). p.83
Development of Vegetation Indices for Identifying Insect Infestations in Soybean
Board James E., Maka Vijay, Price Randy, Knight Dina, Baur Matthew E.
Agronomy Journal. 2007 99(3). p.650
Development of a Mobile Multispectral Imaging Platform for Precise Field Phenotyping
Svensgaard Jesper, Roitsch Thomas, Christensen Svend
Agronomy. 2014 4(3). p.322
A light-weight multi-spectral aerial imaging system for nitrogen crop monitoring
Lebourgeois V., Bégué A., Labbé S., Houlès M., Martiné J. F.
Precision Agriculture. 2012 13(5). p.525
Adapting irrigated and rainfed wheat to climate change in semi-arid environments: Management, breeding options and land use change
Hernandez-Ochoa Ixchel M., Luz Pequeno Diego Notello, Reynolds Matthew, Babar Md Ali, Sonder Kai, Milan Anabel Molero, Hoogenboom Gerrit, Robertson Ricky, Gerber Stefan, Rowland Diane L., Fraisse Clyde W., Asseng Senthold
European Journal of Agronomy. 2019 109 p.125915
Growth Stage Classification and Harvest Scheduling of Snap Bean Using Hyperspectral Sensing: A Greenhouse Study
Hassanzadeh Amirhossein, Murphy Sean P., Pethybridge Sarah J., van Aardt Jan
Remote Sensing. 2020 12(22). p.3809
NDVI as a potential tool for predicting biomass, plant nitrogen content and growth in wheat genotypes subjected to different water and nitrogen conditions
Cabrera-Bosquet L., Molero G., Stellacci A., Bort J., Nogués S., Araus J.
Cereal Research Communications. 2011 39(1). p.147
Crop Physiology (2009)
Foulkes M. John, Reynolds Matthew P., Sylvester-Bradley Roger
Physiology and Biotechnology Integration for Plant Breeding (2004)
Reynolds Matthew, Slafer Gustavo, Royo Conxita, Araus Jose
Spectral Reflectance to Estimate Genetic Variation for In‐Season Biomass, Leaf Chlorophyll, and Canopy Temperature in Wheat
Babar M. A., Reynolds M. P., van Ginkel M., Klatt A. R., Raun W. R., Stone M. L.
Crop Science. 2006 46(3). p.1046
Advances in precision agriculture in south-eastern Australia. I. A regression methodology to simulate spatial variation in cereal yields using farmers' historical paddock yields and normalised difference vegetation index
Fisher P. D., Abuzar M., Rab M. A., Best F., Chandra S.
Crop and Pasture Science. 2009 60(9). p.844
Diagnosis of nitrogen status in Chinese cabbage (Brassica rapa chinensis) using the ratio of amide II to amide I in leaves based on mid‐infrared photoacoustic spectroscopy
Li Chunyang, Du Changwen, Ma Fei, Zhou Jianmin
Journal of Plant Nutrition and Soil Science. 2015 178(6). p.888
Quantifying genetic effects of ground cover on soil water evaporation using digital imaging
Mullan Daniel J., Reynolds Matthew P.
Functional Plant Biology. 2010 37(8). p.703
Effect of sensor view angle on the assessment of agronomic traits by ground level hyper-spectral reflectance measurements in durum wheat under contrasting Mediterranean conditions
Aparicio N., Villegas D., Royo C., Casadesus J., Araus J. L.
International Journal of Remote Sensing. 2004 25(6). p.1131
Normalized Difference Vegetation Index as a Tool for Wheat Yield Estimation: A Case Study from Faisalabad, Pakistan
Sultana Syeda Refat, Ali Amjed, Ahmad Ashfaq, Mubeen Muhammad, Zia-Ul-Haq M., Ahmad Shakeel, Ercisli Sezai, Jaafar Hawa Z. E.
The Scientific World Journal. 2014 2014 p.1
Optical Measurement of Crop Cover for Yield Prediction of Wheat
Reyniers M., Vrindts E., Baerdemaeker J. De
Biosystems Engineering. 2004 89(4). p.383

Committee on Publication Ethics


Abstract Export Citation Get Permission