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

Hyperspectral imaging reveals the effect of sugar beet quantitative trait loci on Cercospora leaf spot resistance

Marlene Leucker A D , Mirwaes Wahabzada A , Kristian Kersting B , Madlaina Peter C , Werner Beyer C , Ulrike Steiner A , Anne-Katrin Mahlein A and Erich-Christian Oerke A
+ Author Affiliations
- Author Affiliations

A Institute for Crop Science and Resource Conservation (INRES) – Phytomedicine, University of Bonn, Meckenheimer Allee 166a, 53115 Bonn, Germany.

B Department of Computer Science, TU Dortmund University, Otto-Hahn-Str. 14, 44227 Dortmund, Germany.

C KWS SAAT SE, Grimsehlstrasse 31, 37555 Einbeck, Germany.

D Corresponding author. Email: mleucker@uni-bonn.de

Functional Plant Biology 44(1) 1-9 https://doi.org/10.1071/FP16121
Submitted: 31 March 2016  Accepted: 2 August 2016   Published: 14 September 2016



35 articles found in Crossref database.

Sensory assessment of Cercospora beticola sporulation for phenotyping the partial disease resistance of sugar beet genotypes
Oerke Erich-Christian, Leucker Marlene, Steiner Ulrike
Plant Methods. 2019 15(1).
Benefits of hyperspectral imaging for plant disease detection and plant protection: a technical perspective
Thomas Stefan, Kuska Matheus Thomas, Bohnenkamp David, Brugger Anna, Alisaac Elias, Wahabzada Mirwaes, Behmann Jan, Mahlein Anne-Katrin
Journal of Plant Diseases and Protection. 2018 125(1). p.5
Close range hyperspectral imaging of plants: A review
Mishra Puneet, Asaari Mohd Shahrimie Mohd, Herrero-Langreo Ana, Lohumi Santosh, Diezma Belén, Scheunders Paul
Biosystems Engineering. 2017 164 p.49
Discovering coherency of specific gene expression and optical reflectance properties of barley genotypes differing for resistance reactions against powdery mildew
Kuska Matheus Thomas, Behmann Jan, Namini Mahsa, Oerke Erich-Christian, Steiner Ulrike, Mahlein Anne-Katrin, Sarrocco Sabrina
PLOS ONE. 2019 14(3). p.e0213291
Remote Sensing of Diseases
Oerke Erich-Christian
Annual Review of Phytopathology. 2020 58(1). p.225
Hyperspectral Sensing of Plant Diseases: Principle and Methods
Wan Long, Li Hui, Li Chengsong, Wang Aichen, Yang Yuheng, Wang Pei
Agronomy. 2022 12(6). p.1451
Scoring Cercospora Leaf Spot on Sugar Beet: Comparison of UGV and UAV Phenotyping Systems
Jay S., Comar A., Benicio R., Beauvois J., Dutartre D., Daubige G., Li W., Labrosse J., Thomas S., Henry N., Weiss M., Baret F.
Plant Phenomics. 2020 2020
Identification of a bio-signature for barley resistance against Pyrenophora teres infection based on physiological, molecular and sensor-based phenotyping
Pandey Chandana, Großkinsky Dominik K., Westergaard Jesper Cairo, Jørgensen Hans J.L., Svensgaard Jesper, Christensen Svend, Schulz Alexander, Roitsch Thomas
Plant Science. 2021 313 p.111072
Plant phenotyping: increasing throughput and precision at multiple scales
Hawkesford Malcolm J., Lorence Argelia
Functional Plant Biology. 2017 44(1). p.v
Proximal and remote sensing in plant phenomics: 20 years of progress, challenges, and perspectives
Tao Haiyu, Xu Shan, Tian Yongchao, Li Zhaofeng, Ge Yan, Zhang Jiaoping, Wang Yu, Zhou Guodong, Deng Xiong, Zhang Ze, Ding Yanfeng, Jiang Dong, Guo Qinghua, Jin Shichao
Plant Communications. 2022 3(6). p.100344
Hyperspectral Sensors and Imaging Technologies in Phytopathology: State of the Art
Mahlein A.-K., Kuska M.T., Behmann J., Polder G., Walter A.
Annual Review of Phytopathology. 2018 56(1). p.535
Quantitative and qualitative phenotyping of disease resistance of crops by hyperspectral sensors: seamless interlocking of phytopathology, sensors, and machine learning is needed!
Mahlein Anne-Katrin, Kuska Matheus Thomas, Thomas Stefan, Wahabzada Mirwaes, Behmann Jan, Rascher Uwe, Kersting Kristian
Current Opinion in Plant Biology. 2019 50 p.156
Monitoring the southern corn rust based on hyperspectral remote sensing
Fourth International Conference on Geology, Mapping, and Remote Sensing (ICGMRS 2023) (2024)
He Jia, Zhang Yan, Wang Laigang, Zhang Hongli, Guo Yan, Yang Xiuzhong, Wang Yi, Chen Tao
Close Range Spectral Imaging for Disease Detection in Plants Using Autonomous Platforms: a Review on Recent Studies
Mishra Puneet, Polder Gerrit, Vilfan Nastassia
Current Robotics Reports. 2020 1(2). p.43
Advances in Emerging Trends and Technologies (2021)
Cuervo-Bejarano William Javier, Lopez-Espinosa Jeisson Andres
Plant disease detection by hyperspectral imaging: from the lab to the field
Mahlein A.K., Kuska M.T., Thomas S., Bohnenkamp D., Alisaac E., Behmann J., Wahabzada M., Kersting K.
Advances in Animal Biosciences. 2017 8(2). p.238
Early Detection of Magnaporthe oryzae-Infected Barley Leaves and Lesion Visualization Based on Hyperspectral Imaging
Zhou Rui-Qing, Jin Juan-Juan, Li Qing-Mian, Su Zhen-Zhu, Yu Xin-Jie, Tang Yu, Luo Shao-Ming, He Yong, Li Xiao-Li
Frontiers in Plant Science. 2019 9
Extending the CSM-CERES-Beet Model to Simulate Impact of Observed Leaf Disease Damage on Sugar Beet Yield
Memic Emir, Graeff-Hönninger Simone, Hensel Oliver, Batchelor William D.
Agronomy. 2020 10(12). p.1930
Comparison and Combination of Thermal, Fluorescence, and Hyperspectral Imaging for Monitoring Fusarium Head Blight of Wheat on Spikelet Scale
Mahlein Anne-Katrin, Alisaac Elias, Al Masri Ali, Behmann Jan, Dehne Heinz-Wilhelm, Oerke Erich-Christian
Sensors. 2019 19(10). p.2281
Applications of hyperspectral imaging in plant phenotyping
Sarić Rijad, Nguyen Viet D., Burge Timothy, Berkowitz Oliver, Trtílek Martin, Whelan James, Lewsey Mathew G., Čustović Edhem
Trends in Plant Science. 2022 27(3). p.301
Enhancing host-pathogen phenotyping dynamics: early detection of tomato bacterial diseases using hyperspectral point measurement and predictive modeling
Reis Pereira Mafalda, Santos Filipe Neves dos, Tavares Fernando, Cunha Mário
Frontiers in Plant Science. 2023 14
Monitoring wound healing in a 3D wound model by hyperspectral imaging and efficient clustering
Wahabzada Mirwaes, Besser Manuela, Khosravani Milad, Kuska Matheus Thomas, Kersting Kristian, Mahlein Anne-Katrin, Stürmer Ewa, Ljubimov Alexander V.
PLOS ONE. 2017 12(12). p.e0186425
Using Hyperspectral Imagery to Detect an Invasive Fungal Pathogen and Symptom Severity in Pinus strobiformis Seedlings of Different Genotypes
Haagsma Marja, Page Gerald F. M., Johnson Jeremy S., Still Christopher, Waring Kristen M., Sniezko Richard A., Selker John S.
Remote Sensing. 2020 12(24). p.4041
Understanding the ramifications of quantitative ordinal scales on accuracy of estimates of disease severity and data analysis in plant pathology
Chiang Kuo-Szu, Bock Clive H.
Tropical Plant Pathology. 2021 47(1). p.58
From visual estimates to fully automated sensor-based measurements of plant disease severity: status and challenges for improving accuracy
Bock Clive H., Barbedo Jayme G. A., Del Ponte Emerson M., Bohnenkamp David, Mahlein Anne-Katrin
Phytopathology Research. 2020 2(1).
Screening of Barley Resistance Against Powdery Mildew by Simultaneous High-Throughput Enzyme Activity Signature Profiling and Multispectral Imaging
Kuska Matheus T., Behmann Jan, Großkinsky Dominik K., Roitsch Thomas, Mahlein Anne-Katrin
Frontiers in Plant Science. 2018 9
Observation of plant–pathogen interaction by simultaneous hyperspectral imaging reflection and transmission measurements
Thomas Stefan, Wahabzada Mirwaes, Kuska Matheus Thomas, Rascher Uwe, Mahlein Anne-Katrin
Functional Plant Biology. 2017 44(1). p.23
Hyperspectral Imaging in the UV Range Allows for Differentiation of Sugar Beet Diseases Based on Changes in Secondary Plant Metabolites
Brugger Anna, Yamati Facundo Ispizua, Barreto Abel, Paulus Stefan, Schramowsk Patrick, Kersting Kristian, Steiner Ulrike, Neugart Susanne, Mahlein Anne-Katrin
Phytopathology®. 2023 113(1). p.44
Fingerprint Spectral Signatures Revealing the Spatiotemporal Dynamics of Bipolaris Spot Blotch Progression for Presymptomatic Diagnosis
Zhu Fengle, Su Zhenzhu, Sanaeifar Alireza, Babu Perumal Anand, Gouda Mostafa, Zhou Ruiqing, Li Xiaoli, He Yong
Engineering. 2023 22 p.171
Comparison of the Efficiency of Hyperspectral and Pulse Amplitude Modulation Imaging Methods in Pre-Symptomatic Virus Detection in Tobacco Plants
Grishina Alyona, Sherstneva Oksana, Zhavoronkova Anna, Ageyeva Maria, Zdobnova Tatiana, Lysov Maxim, Brilkina Anna, Vodeneev Vladimir
Plants. 2023 12(22). p.3831
Tackling microbial threats in agriculture with integrative imaging and computational approaches
Singh Nikhil Kumar, Dutta Anik, Puccetti Guido, Croll Daniel
Computational and Structural Biotechnology Journal. 2021 19 p.372
Improved classification accuracy of powdery mildew infection levels of wine grapes by spatial-spectral analysis of hyperspectral images
Knauer Uwe, Matros Andrea, Petrovic Tijana, Zanker Timothy, Scott Eileen S., Seiffert Udo
Plant Methods. 2017 13(1).
Development of Spectral Disease Indices for Southern Corn Rust Detection and Severity Classification
Meng Ran, Lv Zhengang, Yan Jianbing, Chen Gengshen, Zhao Feng, Zeng Linglin, Xu Binyuan
Remote Sensing. 2020 12(19). p.3233
Evaluation of the benefits of combined reflection and transmission hyperspectral imaging data through disease detection and quantification in plant–pathogen interactions
Thomas Stefan, Behmann Jan, Rascher Uwe, Mahlein Anne-Katrin
Journal of Plant Diseases and Protection. 2022 129(3). p.505
Plant Disease Diagnosis Based on Hyperspectral Sensing: Comparative Analysis of Parametric Spectral Vegetation Indices and Nonparametric Gaussian Process Classification Approaches
Reis Pereira Mafalda, Verrelst Jochem, Tosin Renan, Rivera Caicedo Juan Pablo, Tavares Fernando, Neves dos Santos Filipe, Cunha Mário
Agronomy. 2024 14(3). p.493

Committee on Publication Ethics


Abstract Export Citation Get Permission