Proximal Phenotyping and Machine Learning Methods to Identify Septoria Tritici Blotch Disease Symptoms in Wheat
Published 2018 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Proximal Phenotyping and Machine Learning Methods to Identify Septoria Tritici Blotch Disease Symptoms in Wheat
Authors
Keywords
-
Journal
Frontiers in Plant Science
Volume 9, Issue -, Pages -
Publisher
Frontiers Media SA
Online
2018-05-23
DOI
10.3389/fpls.2018.00685
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- A transnational and holistic breeding approach is needed for sustainable wheat production in the Baltic Sea region
- (2018) Aakash Chawade et al. PHYSIOLOGIA PLANTARUM
- Affordable Imaging Lab for Noninvasive Analysis of Biomass and Early Vigour in Cereal Crops
- (2018) Rita Armoniené et al. Biomed Research International
- Observation of plant–pathogen interaction by simultaneous hyperspectral imaging reflection and transmission measurements
- (2017) Stefan Thomas et al. FUNCTIONAL PLANT BIOLOGY
- Hyperspectral image analysis techniques for the detection and classification of the early onset of plant disease and stress
- (2017) Amy Lowe et al. Plant Methods
- Strawberry foliar anthracnose assessment by hyperspectral imaging
- (2016) Yu-Hui Yeh et al. COMPUTERS AND ELECTRONICS IN AGRICULTURE
- Spatial prediction of wheat septoria leaf blotch ( Septoria tritici ) disease severity in Central Ethiopia
- (2016) Tewodros T. Wakie et al. Ecological Informatics
- Targeted Proteomics Approach for Precision Plant Breeding
- (2016) Aakash Chawade et al. JOURNAL OF PROTEOME RESEARCH
- Plant Disease Detection by Imaging Sensors – Parallels and Specific Demands for Precision Agriculture and Plant Phenotyping
- (2016) Anne-Katrin Mahlein PLANT DISEASE
- Machine Learning for High-Throughput Stress Phenotyping in Plants
- (2016) Arti Singh et al. TRENDS IN PLANT SCIENCE
- Dissecting the Molecular Interactions between Wheat and the Fungal Pathogen Zymoseptoria tritici
- (2016) Graeme J. Kettles et al. Frontiers in Plant Science
- Is Zymoseptoria tritici a hemibiotroph?
- (2015) Andrea Sánchez-Vallet et al. FUNGAL GENETICS AND BIOLOGY
- The impact of Septoria tritici Blotch disease on wheat: An EU perspective
- (2015) Helen Fones et al. FUNGAL GENETICS AND BIOLOGY
- Genetics of resistance to Zymoseptoria tritici and applications to wheat breeding
- (2015) James K.M. Brown et al. FUNGAL GENETICS AND BIOLOGY
- Cell biology of Zymoseptoria tritici : Pathogen cell organization and wheat infection
- (2015) Gero Steinberg FUNGAL GENETICS AND BIOLOGY
- Hyperspectral phenotyping on the microscopic scale: towards automated characterization of plant-pathogen interactions
- (2015) Matheus Kuska et al. Plant Methods
- Transcriptome and Metabolite Profiling of the Infection Cycle ofZymoseptoria triticion Wheat Reveals a Biphasic Interaction with Plant Immunity Involving Differential Pathogen Chromosomal Contributions and a Variation on the Hemibiotrophic Lifestyle Definition
- (2015) Jason J. Rudd et al. PLANT PHYSIOLOGY
- Hyperspectral and Thermal Imaging of Oilseed Rape (Brassica napus) Response to Fungal Species of the Genus Alternaria
- (2015) Piotr Baranowski et al. PLoS One
- Detection of Powdery Mildew in Two Winter Wheat Plant Densities and Prediction of Grain Yield Using Canopy Hyperspectral Reflectance
- (2015) Xueren Cao et al. PLoS One
- Hyperspectral and molecular analysis of Stagonospora nodorum blotch disease in durum wheat
- (2014) A. Iori et al. EUROPEAN JOURNAL OF PLANT PATHOLOGY
- Fusion of sensor data for the detection and differentiation of plant diseases in cucumber
- (2014) C. A. Berdugo et al. PLANT PATHOLOGY
- Developing Two Spectral Disease Indices for Detection of Wheat Leaf Rust (Pucciniatriticina)
- (2014) Davoud Ashourloo et al. Remote Sensing
- Evaluating the Effect of Different Wheat Rust Disease Symptoms on Vegetation Indices Using Hyperspectral Measurements
- (2014) Davoud Ashourloo et al. Remote Sensing
- Detecting powdery mildew of winter wheat using leaf level hyperspectral measurements
- (2012) Jing-Cheng Zhang et al. COMPUTERS AND ELECTRONICS IN AGRICULTURE
- Recent advances in sensing plant diseases for precision crop protection
- (2012) Anne-Katrin Mahlein et al. EUROPEAN JOURNAL OF PLANT PATHOLOGY
- Hyperspectral imaging for small-scale analysis of symptoms caused by different sugar beet diseases
- (2012) Anne-Katrin Mahlein et al. Plant Methods
- Carotenoid content estimation in a heterogeneous conifer forest using narrow-band indices and PROSPECT+DART simulations
- (2012) Rocío Hernández-Clemente et al. REMOTE SENSING OF ENVIRONMENT
- Evaluation of Broadband and Narrowband Vegetation Indices for the Identification of Archaeological Crop Marks
- (2012) Athos Agapiou et al. Remote Sensing
- Finished Genome of the Fungal Wheat Pathogen Mycosphaerella graminicola Reveals Dispensome Structure, Chromosome Plasticity, and Stealth Pathogenesis
- (2011) Stephen B. Goodwin et al. PLoS Genetics
- Plant Disease Severity Estimated Visually, by Digital Photography and Image Analysis, and by Hyperspectral Imaging
- (2010) C. H. Bock et al. CRITICAL REVIEWS IN PLANT SCIENCES
- Contributions of disease resistance and escape to the control of septoria tritici blotch of wheat
- (2009) L. S. Arraiano et al. PLANT PATHOLOGY
- Estimating chlorophyll content from hyperspectral vegetation indices: Modeling and validation
- (2008) Chaoyang Wu et al. AGRICULTURAL AND FOREST METEOROLOGY
- Temporal and spatial changes of chlorophyll fluorescence as a basis for early and precise detection of leaf rust and powdery mildew infections in wheat leaves
- (2008) Jan Kuckenberg et al. PRECISION AGRICULTURE
- Evaluating ten spectral vegetation indices for identifying rust infection in individual wheat leaves
- (2008) R. Devadas et al. PRECISION AGRICULTURE
Find the ideal target journal for your manuscript
Explore over 38,000 international journals covering a vast array of academic fields.
SearchCreate your own webinar
Interested in hosting your own webinar? Check the schedule and propose your idea to the Peeref Content Team.
Create Now