Stocktake Sale on now: wide range of books at up to 70% off!
Register      Login
Animal Production Science Animal Production Science Society
Food, fibre and pharmaceuticals from animals

Articles citing this paper

The use of qualitative airborne multispectral imaging for managing agricultural crops - a case study in south-eastern Australia

D. W. Lamb
40(5) pp.725 - 738


46 articles found in Crossref database.

Extended-altitude, aerial mapping of crop NDVI using an active optical sensor: A case study using a Raptor™ sensor over wheat
Lamb D.W., Schneider D.A., Trotter M.G., Schaefer M.T., Yule I.J.
Computers and Electronics in Agriculture. 2011 77(1). p.69
Use of remote sensing to map occurrence and spread of Phytophthora cinnamomi in Banksia woodlands on the Gnangara Groundwater System, Western Australia
Wilson Barbara A., Zdunic Katherine, Kinloch Janine, Behn Graeme
Australian Journal of Botany. 2012 60(6). p.495
Actual Pathogen Detection: Sensors and Algorithms - a Review
Hahn Federico
Algorithms. 2009 2(1). p.301
Managing Wine Quality (2010)
Bramley R.G.V.
Remote Sensing of Soil Moisture in Vineyards Using Airborne and Ground-Based Thermal Inertia Data
Soliman Aiman, Heck Richard, Brenning Alexander, Brown Ralph, Miller Stephen
Remote Sensing. 2013 5(8). p.3729
Modular, multispectral infrared imaging system for reflection and transmission measurements
Imaging, Manipulation, and Analysis of Biomolecules, Cells, and Tissues XXI (2023)
Stojek Rafał, Łabaj Filip, Tarnok Attila, Houston Jessica P., Su Xuantao
Use of high resolution digital multi-spectral imagery to assess the distribution of disease caused byPhytophthora cinnamomion heathland at Anglesea, Victoria
Hill R. J., Wilson B. A., Rookes J. E., Cahill D. M.
Australasian Plant Pathology. 2009 38(2). p.110
MULTISPECTRAL IMAGING SYSTEM FOR FECAL AND INGESTA DETECTION ON POULTRY CARCASSES
PARK BOSOON, LAWRENCE KURT C., WINDHAM WILLIAM R., SMITH DOUGLAS P.
Journal of Food Process Engineering. 2004 27(5). p.311
Examining the impact of shade on above‐ground biomass and normalized difference vegetation index of C3 and C4 grass species in North‐Western NSW, Australia
Barnes P., Wilson B. R., Reid N., Bayerlein L., Koen T. B., Olupot G.
Grass and Forage Science. 2015 70(2). p.324
Virtual, Augmented and Mixed Reality (2021)
Erickson Austin, Kim Kangsoo, Bruder Gerd, Welch Gregory F.
Determining the Best Optimum Time for Predicting Sugarcane Yield Using Hyper-Temporal Satellite Imagery
Mutanga Shingirirai, Schoor Chris van, Olorunju Phindile Lukhele, Gonah Tichatonga, Ramoelo Abel
Advances in Remote Sensing. 2013 02(03). p.269
A neural network architecture combining VHR SAR and multispectral data for precision farming in viticulture
2014 IEEE Geoscience and Remote Sensing Symposium (2014)
Del Frate Fabio, Latini Daniele, Picchiani Matteo, Schiavon Giovanni, Vittucci Cristina
Wine Science (2014)
Jackson Ronald S.
Agricultural Applications of High-Resolution Digital Multispectral Imagery
Warren Georgina, Metternicht Graciela
Photogrammetric Engineering & Remote Sensing. 2005 71(5). p.595
Assessment of grape yield and composition using the reflectance based Water Index in Mediterranean rainfed vineyards
Serrano Lydia, González-Flor Cristina, Gorchs Gil
Remote Sensing of Environment. 2012 118 p.249
Evaluating an active optical sensor for quantifying and mapping green herbage mass and growth in a perennial grass pasture
Trotter M. G., Lamb D. W., Donald G. E., Schneider D. A.
Crop and Pasture Science. 2010 61(5). p.389
Unmanned Aerial Vehicle Based Agricultural Remote Sensing Multispectral Image Processing Methods
Zhao Yu, Meng Fan Feng, Feng Jiang
Advanced Materials Research. 2014 905 p.585
A comparison of two ranging approaches in an active, optical plant canopy sensor
2014 IEEE Sensors Applications Symposium (SAS) (2014)
Schaefer Michael T., Lamb David W., Bradbury Ron
Principles of Applied Remote Sensing (2016)
Khorram Siamak, van der Wiele Cynthia F., Koch Frank H., Nelson Stacy A. C., Potts Matthew D.
Multispectral imaging for improved liquid classification in security sensor systems
Algorithms and Technologies for Multispectral, Hyperspectral, and Ultraspectral Imagery XXIV (2018)
Burns Andrea, Bajwa Waheed U., Messinger David W., Velez-Reyes Miguel
Wine Science (2020)
Jackson Ronald S.
Phenoliner: a multi-sensor field phenotyping platform
Kicherer A., Herzog K., Bendel N., Klück H.C., Backhaus A., Wieland M., Rose J.C., Klingbeil L., Kuhlmann H., Seiffert U., Töpfer R.
Acta Horticulturae. 2019 (1248). p.257
High-throughput field phenotyping in vineyards: demand, approaches, objectives
Kicherer A., Herzog K., Töpfer R.
Acta Horticulturae. 2024 (1390). p.273
Evaluating ten spectral vegetation indices for identifying rust infection in individual wheat leaves
Devadas R., Lamb D. W., Simpfendorfer S., Backhouse D.
Precision Agriculture. 2009 10(6). p.459
Assessment of Unmanned Aerial Vehicles Imagery for Quantitative Monitoring of Wheat Crop in Small Plots
Lelong Camille C. D., Burger Philippe, Jubelin Guillaume, Roux Bruno, Labbé Sylvain, Baret Frédéric
Sensors. 2008 8(5). p.3557
Managing Wine Quality (2022)
Bramley R.G.V.
Potato Yield Variability across the Landscape
Po Edgar A., Snapp Sieglinde S., Kravchenko Alexandra
Agronomy Journal. 2010 102(3). p.885
The use of vineyard spectral signatures to identify table grape cultivars
Di Lorenzo R., Santangelo T., Scafidi P., Pisciotta A.
Acta Horticulturae. 2021 (1314). p.197
Spatio-temporal variability of sugarcane fields and recommendations for yield forecast using NDVI
Bégué A., Lebourgeois V., Bappel E., Todoroff P., Pellegrino A., Baillarin F., Siegmund B.
International Journal of Remote Sensing. 2010 31(20). p.5391
Synthetic diamond lenses for multi-spectral imaging
Optical Components and Materials XVII (2020)
Faulkner Frederick, Bennett Andrew M., Twitchen Daniel J., Digonnet Michel J., Jiang Shibin
Assessment of Grape Yield and Composition Using Reflectance‐Based Indices in Rainfed Vineyards
González-Flor Cristina, Serrano Lydia, Gorchs Gil, Pons Josep M.
Agronomy Journal. 2014 106(4). p.1309
Future Food Systems (2024)
Al-Mallahi Ahmad
Lessons from nearly 20 years of Precision Agriculture research, development, and adoption as a guide to its appropriate application
Bramley R. G. V.
Crop and Pasture Science. 2009 60(3). p.197
High-throughput phenotyping for trait detection in vineyards
Kicherer Anna, Herzog Katja, Töpfer Reinhard, Aurand Jean-Marie
BIO Web of Conferences. 2015 5 p.01018
“My Friend, The Fire Ant”: A Preliminary Analysis of the Role of Fire Ants in Grapevine Health
Townsend Christi G., Connolly Matthew H., Whitesides Clayton J.
Papers in Applied Geography. 2016 2(1). p.85
Using remote sensing to predict grape phenolics and colour at harvest in a Cabernet Sauvignon vineyard: Timing observations against vine phenology and optimising image resolution
LAMB D.W., WEEDON M.M., BRAMLEY R.G.V.
Australian Journal of Grape and Wine Research. 2008 10(1). p.46
Prediction of Wheat Yield and Protein Using Remote Sensors on Plots—Part II: Improving Prediction Ability Using Data Fusion
Øvergaard Steen I., Isaksson Tomas, Korsaeth Audun
Journal of Near Infrared Spectroscopy. 2013 21(2). p.133
Wine Science (2008)
Jackson Ronald S.
Mobile sensor platforms: categorisation and research applications in precision farming
Zecha C. W., Link J., Claupein W.
Journal of Sensors and Sensor Systems. 2013 2(1). p.51
Characterising and mapping vineyard canopy using high-spatial-resolution aerial multispectral images
Hall Andrew, Louis John, Lamb David
Computers & Geosciences. 2003 29(7). p.813
A Comparative Study of Land Cover Classification Techniques for “Farmscapes” Using Very High Resolution Remotely Sensed Data
Verma Niva Kiran, Lamb David W., Reid Nick, Wilson Brian
Photogrammetric Engineering & Remote Sensing. 2014 80(5). p.461
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
Near Infrared Spectroscopy: A Key to More Food, Better Food and a Safer Environment
Batten Graeme D.
NIR news. 2004 15(2). p.4
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
Economic Fruit Trees Recognition in Hillsides: A CNN-Based Approach Using Enhanced UAV Imagery
Hooshyar Maral, Li Yuan-Shuo, Chun Tang Wen, Chen Ling-Wei, Huang Yueh-Min
IEEE Access. 2024 12 p.61991
Optical remote sensing applications in viticulture - a review
HALL A., LAMB D.W., HOLZAPFEL B., LOUIS J.
Australian Journal of Grape and Wine Research. 2002 8(1). p.36

Committee on Publication Ethics


Abstract Export Citation Get Permission