Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Breunig, Fábio M.
2011.
Classification of soybean varieties using different techniques: case study with Hyperion and sensor spectral resolution simulations.
Journal of Applied Remote Sensing,
Vol. 5,
Issue. 1,
p.
053533.
Zhang, Huihui
Lan, Yubin
Suh, Charles P.-C.
Westbrook, John
Clint Hoffmann, W.
Yang, Chenghai
and
Huang, Yanbo
2013.
Fusion of remotely sensed data from airborne and ground-based sensors to enhance detection of cotton plants.
Computers and Electronics in Agriculture,
Vol. 93,
Issue. ,
p.
55.
Shapira, Uri
Herrmann, Ittai
Karnieli, Arnon
and
Bonfil, David J.
2013.
Field spectroscopy for weed detection in wheat and chickpea fields.
International Journal of Remote Sensing,
Vol. 34,
Issue. 17,
p.
6094.
Eddy, P.R.
Smith, A.M.
Hill, B.D.
Peddle, D.R.
Coburn, C.A.
and
Blackshaw, R.E.
2014.
Weed and crop discrimination using hyperspectral image data and reduced bandsets.
Canadian Journal of Remote Sensing,
Vol. 39,
Issue. 6,
p.
481.
Wilson, Jeffrey
Zhang, Chunhua
and
Kovacs, John
2014.
Separating Crop Species in Northeastern Ontario Using Hyperspectral Data.
Remote Sensing,
Vol. 6,
Issue. 2,
p.
925.
S. Fletcher, Reginald
N. Reddy, Krishna
and
B. Turley, Rickie
2016.
Spectral Discrimination of Two Pigweeds from Cotton with Different Leaf Colors.
American Journal of Plant Sciences,
Vol. 07,
Issue. 15,
p.
2138.
S. Fletcher, Reginald
2016.
Using Vegetation Indices as Input into Random Forest for Soybean and Weed Classification.
American Journal of Plant Sciences,
Vol. 07,
Issue. 15,
p.
2186.
Peerbhay, Kabir
Mutanga, Onisimo
Lottering, Romano
and
Ismail, Riyad
2016.
Unsupervised anomaly weed detection in riparian forest areas using hyperspectral data and LiDAR.
p.
1.
Fletcher, Reginald S.
and
Reddy, Krishna N.
2016.
Random forest and leaf multispectral reflectance data to differentiate three soybean varieties from two pigweeds.
Computers and Electronics in Agriculture,
Vol. 128,
Issue. ,
p.
199.
Peerbhay, Kabir
Mutanga, Onisimo
Lottering, Romano
and
Ismail, Riyad
2016.
Mapping Solanum mauritianum plant invasions using WorldView-2 imagery and unsupervised random forests.
Remote Sensing of Environment,
Vol. 182,
Issue. ,
p.
39.
Castaldi, F.
Pelosi, F.
Pascucci, S.
and
Casa, R.
2017.
Assessing the potential of images from unmanned aerial vehicles (UAV) to support herbicide patch spraying in maize.
Precision Agriculture,
Vol. 18,
Issue. 1,
p.
76.
Fernández‐Quintanilla, C
Peña, J M
Andújar, D
Dorado, J
Ribeiro, A
López‐Granados, F
and
Smith, Richard
2018.
Is the current state of the art of weed monitoring suitable for site‐specific weed management in arable crops?.
Weed Research,
Vol. 58,
Issue. 4,
p.
259.
Shirzadifar, Alimohammad
Bajwa, Sreekala
Mireei, Seyed Ahmad
Howatt, Kirk
and
Nowatzki, John
2018.
Weed species discrimination based on SIMCA analysis of plant canopy spectral data.
Biosystems Engineering,
Vol. 171,
Issue. ,
p.
143.
Sanders, John
Everman, Wesley J.
Austin, R.
Roberson, G. T.
Richardson, R. J.
and
Vo-Dinh, Tuan
2019.
Weed species differentiation using spectral reflectance land image classification.
p.
24.
Rehman, Tanzeel U.
Zaman, Qamar U.
Chang, Young K.
Schumann, Arnold W.
and
Corscadden, Kenneth W.
2019.
Development and field evaluation of a machine vision based in-season weed detection system for wild blueberry.
Computers and Electronics in Agriculture,
Vol. 162,
Issue. ,
p.
1.
Marston, Zachary P D
Cira, Theresa M
Hodgson, Erin W
Knight, Joseph F
Macrae, Ian V
Koch, Robert L
and
Rondon, Silvia
2020.
Detection of Stress Induced by Soybean Aphid (Hemiptera: Aphididae) Using Multispectral Imagery from Unmanned Aerial Vehicles.
Journal of Economic Entomology,
Vol. 113,
Issue. 2,
p.
779.
Singh, Vijay
Rana, Aman
Bishop, Michael
Filippi, Anthony M.
Cope, Dale
Rajan, Nithya
and
Bagavathiannan, Muthukumar
2020.
Vol. 159,
Issue. ,
p.
93.
Pott, Luan P
Amado, Telmo JC
Schwalbert, Raí A
Sebem, Elodio
Jugulam, Mithila
and
Ciampitti, Ignacio A
2020.
Pre‐planting weed detection based on ground field spectral data.
Pest Management Science,
Vol. 76,
Issue. 3,
p.
1173.
Basinger, Nicholas T.
Jennings, Katherine M.
Hestir, Erin L.
Monks, David W.
Jordan, David L.
and
Everman, Wesley J.
2020.
Phenology affects differentiation of crop and weed species using hyperspectral remote sensing.
Weed Technology,
Vol. 34,
Issue. 6,
p.
897.
Bolch, Erik A.
Santos, Maria J.
Ade, Christiana
Khanna, Shruti
Basinger, Nicholas T.
Reader, Martin O.
and
Hestir, Erin L.
2020.
Remote Sensing of Plant Biodiversity.
p.
267.