Stocktake Sale on now: wide range of books at up to 70% off!
Register      Login
Functional Plant Biology Functional Plant Biology Society
Plant function and evolutionary biology

Articles citing this paper

A semi-automatic system for high throughput phenotyping wheat cultivars in-field conditions: description and first results

Alexis Comar A B E , Philippe Burger C , Benoit de Solan A B , Frédéric Baret B , Fabrice Daumard C D and Jean-François Hanocq B
+ Author Affiliations
- Author Affiliations

A ARVALIS Institut du végétal, 3 rue Joseph et Marie Hackin, 75116 Paris, France.

B INRA – UAPV, UMR EMMAH, Domaine Saint-Paul, Site Agroparc, 84914 Avignon, France.

C INRA – INPT, UMR 1248 AGIR, F-31320 Castanet-Tolosan, France.

D Laboratoire de Météorologie Dynamique, Equipe Fluorescence et Télédétection, Ecole Polytechnique, 91128 Palaiseau Cedex, France.

E Corresponding author. Email: alexis.comar@etd.univ-avignon.fr

Functional Plant Biology 39(11) 914-924 https://doi.org/10.1071/FP12065
Submitted: 27 February 2012  Accepted: 10 July 2012   Published: 20 August 2012



92 articles found in Crossref database.

Phenotyping plants: genes, phenes and machines
Pieruschka Roland, Poorter Hendrik
Functional Plant Biology. 2012 39(11). p.813
High-throughput proximal ground crop phenotyping systems – A comprehensive review
Rui Z., Zhang Z., Zhang M., Azizi A., Igathinathane C., Cen H., Vougioukas S., Li H., Zhang J., Jiang Y., Jiao X., Wang M., Ampatzidis Y., Oladele O.I., Ghasemi-Varnamkhasti M., Radi Radi
Computers and Electronics in Agriculture. 2024 224 p.109108
Exploiting the centimeter resolution of UAV multispectral imagery to improve remote-sensing estimates of canopy structure and biochemistry in sugar beet crops
Jay Sylvain, Baret Frédéric, Dutartre Dan, Malatesta Ghislain, Héno Stéphanie, Comar Alexis, Weiss Marie, Maupas Fabienne
Remote Sensing of Environment. 2019 231 p.110898
Speeding up 3D radiative transfer simulations: A physically based metamodel of canopy reflectance dependency on wavelength, leaf biochemical composition and soil reflectance
Jiang Jingyi, Weiss Marie, Liu Shouyang, Rochdi Nadia, Baret Frédéric
Remote Sensing of Environment. 2020 237 p.111614
Phenotyping approaches to evaluate nitrogen-use efficiency related traits of diverse wheat varieties under field conditions
Nguyen Giao N., Panozzo Joe, Spangenberg German, Kant Surya
Crop and Pasture Science. 2016 67(11). p.1139
Green area index from an unmanned aerial system over wheat and rapeseed crops
Verger Aleixandre, Vigneau Nathalie, Chéron Corentin, Gilliot Jean-Marc, Comar Alexis, Baret Frédéric
Remote Sensing of Environment. 2014 152 p.654
A Review of Imaging Techniques for Plant Phenotyping
Li Lei, Zhang Qin, Huang Danfeng
Sensors. 2014 14(11). p.20078
Adapting the High-Throughput Phenotyping Tool ALPHI® to Potatoes: First Results and Lessons
Degan F., Fournier A., Gierczak F., Beauchêne K., Thomas S., De Solan B., Hannon C., Cohan J. P.
Potato Research. 2024
Development and evaluation of a field-based high-throughput phenotyping platform
Andrade-Sanchez Pedro, Gore Michael A., Heun John T., Thorp Kelly R., Carmo-Silva A. Elizabete, French Andrew N., Salvucci Michael E., White Jeffrey W.
Functional Plant Biology. 2014 41(1). p.68
Methods of high-throughput plant phenotyping for large-scale breeding and genetic experiments
Afonnikov D. A., Genaev M. A., Doroshkov A. V., Komyshev E. G., Pshenichnikova T. A.
Russian Journal of Genetics. 2016 52(7). p.688
Modeling the spatial distribution of plants on the row for wheat crops: Consequences on the green fraction at the canopy level
Liu Shouyang, Baret Frédéric, Andrieu Bruno, Abichou Mariem, Allard Denis, de Solan Benoit, Burger Philippe
Computers and Electronics in Agriculture. 2017 136 p.147
Bread wheat: a role model for plant domestication and breeding
Venske Eduardo, dos Santos Railson Schreinert, Busanello Carlos, Gustafson Perry, Costa de Oliveira Antonio
Hereditas. 2019 156(1).
Data fusion of spectral, thermal and canopy height parameters for improved yield prediction of drought stressed spring barley
Rischbeck Pablo, Elsayed Salah, Mistele Bodo, Barmeier Gero, Heil Kurt, Schmidhalter Urs
European Journal of Agronomy. 2016 78 p.44
Interpreting canopy development and physiology using a European phenology camera network at flux sites
Wingate L., Ogée J., Cremonese E., Filippa G., Mizunuma T., Migliavacca M., Moisy C., Wilkinson M., Moureaux C., Wohlfahrt G., Hammerle A., Hörtnagl L., Gimeno C., Porcar-Castell A., Galvagno M., Nakaji T., Morison J., Kolle O., Knohl A., Kutsch W., Kolari P., Nikinmaa E., Ibrom A., Gielen B., Eugster W., Balzarolo M., Papale D., Klumpp K., Köstner B., Grünwald T., Joffre R., Ourcival J.-M., Hellstrom M., Lindroth A., George C., Longdoz B., Genty B., Levula J., Heinesch B., Sprintsin M., Yakir D., Manise T., Guyon D., Ahrends H., Plaza-Aguilar A., Guan J. H., Grace J.
Biogeosciences. 2015 12(20). p.5995
The field phenotyping platform's next darling: Dicotyledons
Li Xiuni, Xu Xiangyao, Chen Menggen, Xu Mei, Wang Wenyan, Liu Chunyan, Yu Liang, Liu Weiguo, Yang Wenyu
Frontiers in Plant Science. 2022 13
Efficient in‐field plant phenomics for row‐crops with an autonomous ground vehicle
Underwood James, Wendel Alexander, Schofield Brooke, McMurray Larn, Kimber Rohan
Journal of Field Robotics. 2017 34(6). p.1061
A Physio-Morphological Trait-Based Approach for Breeding Drought Tolerant Wheat
Khadka Kamal, Earl Hugh J., Raizada Manish N., Navabi Alireza
Frontiers in Plant Science. 2020 11
Applications of Genetic and Genomic Research in Cereals (2019)
Würschum Tobias
A Semi-Automated Method to Extract Green and Non-Photosynthetic Vegetation Cover from RGB Images in Mixed Grasslands
Xu Dandan, Pu Yihan, Guo Xulin
Sensors. 2020 20(23). p.6870
A Systematic Review on the Detection and Classification of Plant Diseases Using Machine Learning
Munjal Deepkiran, Singh Laxman, Pandey Mrinal, Lakra Sachin
International Journal of Software Innovation. 2022 11(1). p.1
Estimates of Maize Plant Density from UAV RGB Images Using Faster-RCNN Detection Model: Impact of the Spatial Resolution
Velumani K., Lopez-Lozano R., Madec S., Guo W., Gillet J., Comar A., Baret F.
Plant Phenomics. 2021 2021
Potential of thermal image analysis for screening salt stress-tolerant soybean (Glycine max)
Kim Jin-Won, Lee Tae-Young, Nah Gyoungju, Kim Do-Soon
Plant Genetic Resources. 2014 12(S1). p.S134
Phenomics in Crop Plants: Trends, Options and Limitations (2015)
Ruckelshausen Arno, Busemeyer Lucas
Multispectral airborne imagery in the field reveals genetic determinisms of morphological and transpiration traits of an apple tree hybrid population in response to water deficit
Virlet Nicolas, Costes Evelyne, Martinez Sébastien, Kelner Jean-Jacques, Regnard Jean-Luc
Journal of Experimental Botany. 2015 66(18). p.5453
Field phenotyping for African crops: overview and perspectives
Cudjoe Daniel K., Virlet Nicolas, Castle March, Riche Andrew B., Mhada Manal, Waine Toby W., Mohareb Fady, Hawkesford Malcolm J.
Frontiers in Plant Science. 2023 14
SegVeg: Segmenting RGB Images into Green and Senescent Vegetation by Combining Deep and Shallow Methods
Serouart Mario, Madec Simon, David Etienne, Velumani Kaaviya, Lopez Lozano Raul, Weiss Marie, Baret Frédéric
Plant Phenomics. 2022 2022
Phenomics in Crop Plants: Trends, Options and Limitations (2015)
Pratap Aditya, Tomar Rakhi, Kumar Jitendra, Pandey Vankat Raman, Mehandi Suhel, Katiyar Pradeep Kumar
Development of a field-based high-throughput mobile phenotyping platform
Barker Jared, Zhang Naiqian, Sharon Joshua, Steeves Ryan, Wang Xu, Wei Yong, Poland Jesse
Computers and Electronics in Agriculture. 2016 122 p.74
Estimation of Wheat Plant Density at Early Stages Using High Resolution Imagery
Liu Shouyang, Baret Fred, Andrieu Bruno, Burger Philippe, Hemmerlé Matthieu
Frontiers in Plant Science. 2017 8
A data workflow to support plant breeding decisions from a terrestrial field-based high-throughput plant phenotyping system
Thompson Alison L., Thorp Kelly R., Conley Matthew M., Roybal Michael, Moller David, Long Jacob C.
Plant Methods. 2020 16(1).
Opportunities and challenges in phenotyping row crops using drone‐based RGB imaging
Sweet Dorothy D., Tirado Sara B., Springer Nathan M., Hirsch Candice N., Hirsch Cory D.
The Plant Phenome Journal. 2022 5(1).
Proximal Remote Sensing Buggies and Potential Applications for Field-Based Phenotyping
Deery David, Jimenez-Berni Jose, Jones Hamlyn, Sirault Xavier, Furbank Robert
Agronomy. 2014 4(3). p.349
Linkage disequilibrium mapping of high-throughput image-derived descriptors of plant architecture traits under field conditions
Breitzman Matthew W., Bao Yin, Tang Lie, Schnable Patrick S., Salas-Fernandez Maria G.
Field Crops Research. 2019 244 p.107619
Estimating leaf nitrogen and chlorophyll content in wheat by correcting canopy structure effect through multi-angular remote sensing
Pan Yuanyuan, Wu Wenxuan, Zhang Jiawen, Zhao Yuejiao, Zhang Jiayi, Gu Yangyang, Yao Xia, Cheng Tao, Zhu Yan, Cao Weixing, Tian Yongchao
Computers and Electronics in Agriculture. 2023 208 p.107769
Maturity estimation of mangoes using hyperspectral imaging from a ground based mobile platform
Wendel Alexander, Underwood James, Walsh Kerry
Computers and Electronics in Agriculture. 2018 155 p.298
Proximal hyperspectral sensing and data analysis approaches for field-based plant phenomics
Thorp K.R., Gore M.A., Andrade-Sanchez P., Carmo-Silva A.E., Welch S.M., White J.W., French A.N.
Computers and Electronics in Agriculture. 2015 118 p.225
Imaging technologies for plant high-throughput phenotyping: a review
ZHANG Yong, ZHANG Naiqian
Frontiers of Agricultural Science and Engineering. 2018 0(0). p.0
The role of phenomics and genomics in delineating the genetic basis of complex traits in millets
Jadhav Yashoda, Thakur Niranjan Ravindra, Ingle Krishnananda Pralhad, Ceasar Stanislaus Antony
Physiologia Plantarum. 2024 176(3).
Evaluation of active and passive sensor systems in the field to phenotype maize hybrids with high-throughput
Winterhalter Loïc, Mistele Bodo, Schmidhalter Urs
Field Crops Research. 2013 154 p.236
Unraveling the Role of Red:Blue LED Lights on Resource Use Efficiency and Nutritional Properties of Indoor Grown Sweet Basil
Pennisi Giuseppina, Blasioli Sonia, Cellini Antonio, Maia Lorenzo, Crepaldi Andrea, Braschi Ilaria, Spinelli Francesco, Nicola Silvana, Fernandez Juan A., Stanghellini Cecilia, Marcelis Leo F. M., Orsini Francesco, Gianquinto Giorgio
Frontiers in Plant Science. 2019 10
Advances in the Application of Small Unoccupied Aircraft Systems (sUAS) for High-Throughput Plant Phenotyping
Ayankojo Ibukun T., Thorp Kelly R., Thompson Alison L.
Remote Sensing. 2023 15(10). p.2623
Multispectral imaging and unmanned aerial systems for cotton plant phenotyping
Xu Rui, Li Changying, Paterson Andrew H., Jung Jinha
PLOS ONE. 2019 14(2). p.e0205083
Phenomics (2015)
Araus José Luis, Elazab Abdelhalim, Vergara Omar, Cabrera-Bosquet Llorenç, Serret Maria Dolors, Zaman-Allah Mainassara, Cairns Jill E.
Impact of the reproductive organs on crop BRDF as observed from a UAV
Li Wenjuan, Jiang Jingyi, Weiss Marie, Madec Simon, Tison Franck, Philippe Burger, Comar Alexis, Baret Frédéric
Remote Sensing of Environment. 2021 259 p.112433
Estimating leaf chlorophyll content in sugar beet canopies using millimeter- to centimeter-scale reflectance imagery
Jay Sylvain, Gorretta Nathalie, Morel Julien, Maupas Fabienne, Bendoula Ryad, Rabatel Gilles, Dutartre Dan, Comar Alexis, Baret Frédéric
Remote Sensing of Environment. 2017 198 p.173
Development of a Mobile Multispectral Imaging Platform for Precise Field Phenotyping
Svensgaard Jesper, Roitsch Thomas, Christensen Svend
Agronomy. 2014 4(3). p.322
Phenomics in Crop Plants: Trends, Options and Limitations (2015)
Kumar Jitendra, Pratap Aditya, Kumar Shiv
Deploying a Proximal Sensing Cart to Identify Drought-Adaptive Traits in Upland Cotton for High-Throughput Phenotyping
Thompson Alison L., Thorp Kelly R., Conley Matthew, Andrade-Sanchez Pedro, Heun John T., Dyer John M., White Jeffery W.
Frontiers in Plant Science. 2018 9
Preliminary Approach for UAV-Based Multi-Sensor Platforms for Reconnaissance and Surveillance applications
Amézquita-Gómez Nicolás, González-Bautista Sergio Ramiro, Teran Marco, Salazar Camilo, Corredor John, Corzo Germán Darío
Ingeniería. 2023 28(3). p.e21035
The application of hyperspectral imaging for wheat biotic and abiotic stress analysis: A review
Zhang Kun, Yan Fangfang, Liu Ping
Computers and Electronics in Agriculture. 2024 221 p.109008
Field Scanalyzer: An automated robotic field phenotyping platform for detailed crop monitoring
Virlet Nicolas, Sabermanesh Kasra, Sadeghi-Tehran Pouria, Hawkesford Malcolm J.
Functional Plant Biology. 2017 44(1). p.143
A Review of High-Throughput Field Phenotyping Systems: Focusing on Ground Robots
Xu Rui, Li Changying
Plant Phenomics. 2022 2022
High-Throughput Phenotyping: A Platform to Accelerate Crop Improvement
Jangra Sumit, Chaudhary Vrantika, Yadav Ram C., Yadav Neelam R.
Phenomics. 2021 1(2). p.31
A Flexible, Low‐Cost Cart for Proximal Sensing
White Jeffrey W., Conley Matthew M.
Crop Science. 2013 53(4). p.1646
Field Phenomics: Will It Enable Crop Improvement?
Deery David M., Jones Hamlyn G.
Plant Phenomics. 2021 2021
Applying remote sensing expertise to crop improvement: progress and challenges to scale up high throughput field phenotyping from research to industry
Autonomous Air and Ground Sensing Systems for Agricultural Optimization and Phenotyping (2016)
Valasek John, Thomasson J. Alex, Gouache David, Beauchêne Katia, Mini Agathe, Fournier Antoine, de Solan Benoit, Baret Fred, Comar Alexis
High‐Throughput Phenotyping of Cotton in Multiple Irrigation Environments
Sharma Bablu, Ritchie Glen L.
Crop Science. 2015 55(2). p.958
Benchmarking electrical methods for rapid estimation of root biomass
Postic François, Doussan Claude
Plant Methods. 2016 12(1).
Food Security and Safety Volume 2 (2023)
Mu’az Abdullahi Wajiha, Mu’az Sanah Abdullahi, Togola Abou, Mohammed Sanusi Gaya, Umar Muhammad Lawan, Ongom Patrick Obia, Echekwu Candidus, Boukar Ousmane
Plant phenomics and the need for physiological phenotyping across scales to narrow the genotype-to-phenotype knowledge gap
Großkinsky Dominik K., Svensgaard Jesper, Christensen Svend, Roitsch Thomas
Journal of Experimental Botany. 2015 66(18). p.5429
Retrieving LAI, chlorophyll and nitrogen contents in sugar beet crops from multi-angular optical remote sensing: Comparison of vegetation indices and PROSAIL inversion for field phenotyping
Jay Sylvain, Maupas Fabienne, Bendoula Ryad, Gorretta Nathalie
Field Crops Research. 2017 210 p.33
Design and field evaluation of a ground robot for high-throughput phenotyping of energy sorghum
Young Sierra N., Kayacan Erkan, Peschel Joshua M.
Precision Agriculture. 2019 20(4). p.697
A High-Throughput Model-Assisted Method for Phenotyping Maize Green Leaf Area Index Dynamics Using Unmanned Aerial Vehicle Imagery
Blancon Justin, Dutartre Dan, Tixier Marie-Hélène, Weiss Marie, Comar Alexis, Praud Sébastien, Baret Frédéric
Frontiers in Plant Science. 2019 10
Principal variable selection to explain grain yield variation in winter wheat from features extracted from UAV imagery
Li Jiating, Veeranampalayam-Sivakumar Arun-Narenthiran, Bhatta Madhav, Garst Nicholas D., Stoll Hannah, Stephen Baenziger P., Belamkar Vikas, Howard Reka, Ge Yufeng, Shi Yeyin
Plant Methods. 2019 15(1).
Evaluating RGB Imaging and Multispectral Active and Hyperspectral Passive Sensing for Assessing Early Plant Vigor in Winter Wheat
Prey Lukas, Von Bloh Malte, Schmidhalter Urs
Sensors. 2018 18(9). p.2931
Marker-assisted selection strategy to pyramid two or more QTLs for quantitative trait-grain yield under drought
Kumar Arvind, Sandhu Nitika, Dixit Shalabh, Yadav Shailesh, Swamy B. P. M., Shamsudin Noraziyah Abd Aziz
Rice. 2018 11(1).
Infra-Red Thermography as a High-Throughput Tool for Field Phenotyping
Prashar Ankush, Jones Hamlyn
Agronomy. 2014 4(3). p.397
Phenomics (2015)
Palanichamy Dhyaneswaran, Cobb Joshua N.
Optoelectronic proximal sensing vehicle-mounted technologies in precision agriculture: A review
Pallottino Federico, Antonucci Francesca, Costa Corrado, Bisaglia Carlo, Figorilli Simone, Menesatti Paolo
Computers and Electronics in Agriculture. 2019 162 p.859
Potentials and Limits of Vegetation Indices With BRDF Signatures for Soil-Noise Resistance and Estimation of Leaf Area Index
Zhen Zhijun, Chen Shengbo, Qin Wenhan, Yan Guangjian, Gastellu-Etchegorry Jean-Philippe, Cao Lisai, Murefu Mike, Li Jian, Han Bingbing
IEEE Transactions on Geoscience and Remote Sensing. 2020 58(7). p.5092
Estimation of leaf nitrogen content and photosynthetic nitrogen use efficiency in wheat using sun-induced chlorophyll fluorescence at the leaf and canopy scales
Jia Min, Colombo Roberto, Rossini Micol, Celesti Marco, Zhu Jie, Cogliati Sergio, Cheng Tao, Tian Yongchao, Zhu Yan, Cao Weixing, Yao Xia
European Journal of Agronomy. 2021 122 p.126192
Field high-throughput phenotyping: the new crop breeding frontier
Araus José Luis, Cairns Jill E.
Trends in Plant Science. 2014 19(1). p.52
High Throughput Field Phenotyping of Wheat Plant Height and Growth Rate in Field Plot Trials Using UAV Based Remote Sensing
Holman Fenner, Riche Andrew, Michalski Adam, Castle March, Wooster Martin, Hawkesford Malcolm
Remote Sensing. 2016 8(12). p.1031
Roadmap to High Throughput Phenotyping for Plant Breeding
Kim James Y.
Journal of Biosystems Engineering. 2020 45(1). p.43
High‐Throughput Precision Phenotyping of the Oil Content of Single Seeds of Various Oilseed Crops
Melchinger A. E., Böhm J., Utz H. F., Müller J., Munder S., Mauch F. J.
Crop Science. 2018 58(2). p.670
High-throughput phenotyping of a large tomato collection under water deficit: Combining UAVs’ remote sensing with conventional leaf-level physiologic and agronomic measurements
Fullana-Pericàs Mateu, Conesa Miquel À., Gago Jorge, Ribas-Carbó Miquel, Galmés Jeroni
Agricultural Water Management. 2022 260 p.107283
An automatic method based on daily in situ images and deep learning to date wheat heading stage
Velumani Kaaviya, Madec Simon, de Solan Benoit, Lopez-Lozano Raul, Gillet Jocelyn, Labrosse Jeremy, Jezequel Stephane, Comar Alexis, Baret Frédéric
Field Crops Research. 2020 252 p.107793
Towards a global characterization of winter wheat cultivars behavior in response to stressful environments during grain-filling
Bancal M.O., Collin F., Gate P., Gouache D., Bancal P.
European Journal of Agronomy. 2022 133 p.126421
Plant Breeding Reviews (2022)
Chen Chunpeng James, Rutkoski Jessica, Schnable James C., Murray Seth C., Wang Lizhi, Jin Xiuliang, Stich Benjamin, Crossa Jose, Hayes Ben J., Zhang Zhiwu
Breeding for Economically and Environmentally Sustainable Wheat Varieties: An Integrated Approach from Genomics to Selection
Paux Etienne, Lafarge Stéphane, Balfourier François, Derory Jérémy, Charmet Gilles, Alaux Michael, Perchet Geoffrey, Bondoux Marion, Baret Frédéric, Barillot Romain, Ravel Catherine, Sourdille Pierre, Le Gouis Jacques
Biology. 2022 11(1). p.149
High‐throughput estimation of incident light, light interception and radiation‐use efficiency of thousands of plants in a phenotyping platform
Cabrera‐Bosquet Llorenç, Fournier Christian, Brichet Nicolas, Welcker Claude, Suard Benoît, Tardieu François
New Phytologist. 2016 212(1). p.269
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).
Annual Plant Reviews online (2018)
Atkinson Jonathan A., Jackson Robert J., Bentley Alison R., Ober Eric, Wells Darren M.
A multi-sensor system for high throughput field phenotyping in soybean and wheat breeding
Bai Geng, Ge Yufeng, Hussain Waseem, Baenziger P. Stephen, Graef George
Computers and Electronics in Agriculture. 2016 128 p.181
High-Throughput Crop Phenotyping (2021)
Crain Jared, Wang Xu, Lucas Mark, Poland Jesse
A High Throughput Integrated Hyperspectral Imaging and 3D Measurement System
Zhao Huijie, Xu Lunbao, Shi Shaoguang, Jiang Hongzhi, Chen Da
Sensors. 2018 18(4). p.1068
Estimation of leaf traits from reflectance measurements: comparison between methods based on vegetation indices and several versions of the PROSPECT model
Jiang Jingyi, Comar Alexis, Burger Philippe, Bancal Pierre, Weiss Marie, Baret Frédéric
Plant Methods. 2018 14(1).
High-Throughput Estimation of Crop Traits: A Review of Ground and Aerial Phenotyping Platforms
Jin Xiuliang, Zarco-Tejada Pablo J., Schmidhalter Urs, Reynolds Matthew P., Hawkesford Malcolm J., Varshney Rajeev K., Yang Tao, Nie Chengwei, Li Zhenhai, Ming Bo, Xiao Yonggui, Xie Yongdun, Li Shaokun
IEEE Geoscience and Remote Sensing Magazine. 2021 9(1). p.200
Non-destructive Phenotyping to Identify Brachiaria Hybrids Tolerant to Waterlogging Stress under Field Conditions
Jiménez Juan de la Cruz, Cardoso Juan A., Leiva Luisa F., Gil Juanita, Forero Manuel G., Worthington Margaret L., Miles John W., Rao Idupulapati M.
Frontiers in Plant Science. 2017 8
Plant phenomics: an overview of image acquisition technologies and image data analysis algorithms
Perez-Sanz Fernando, Navarro Pedro J, Egea-Cortines Marcos
GigaScience. 2017 6(11).
Deployment of Lidar from a Ground Platform: Customizing a Low-Cost, Information-Rich and User-Friendly Application for Field Phenomics Research
Heun John T., Attalah Said, French Andrew N., Lehner Kevin R., McKay John K., Mullen Jack L., Ottman Michael J., Andrade-Sanchez Pedro
Sensors. 2019 19(24). p.5358
Functional mapping of N deficiency‐induced response in wheat yield‐component traits by implementing high‐throughput phenotyping
Jiang Libo, Sun Lidan, Ye Meixia, Wang Jing, Wang Yaqun, Bogard Matthieu, Lacaze Xavier, Fournier Antoine, Beauchêne Katia, Gouache David, Wu Rongling
The Plant Journal. 2019 97(6). p.1105

Committee on Publication Ethics


Abstract Export Citation Get Permission