Related references
Note: Only part of the references are listed.Aerial and Ground Based Sensing of Tolerance to Beet Cyst Nematode in Sugar Beet
Samuel Joalland et al.
REMOTE SENSING (2018)
weedNet: Dense Semantic Weed Classification Using Multispectral Images and MAV for Smart Farming
Inkyu Sa et al.
IEEE ROBOTICS AND AUTOMATION LETTERS (2018)
The ETH field phenotyping platform FIP: a cable-suspended multi-sensor system
Norbert Kirchgessner et al.
FUNCTIONAL PLANT BIOLOGY (2017)
Comparison of visible imaging, thermography and spectrometry methods to evaluate the effect of Heterodera schachtii inoculation on sugar beets
Samuel Joalland et al.
PLANT METHODS (2017)
A real-time phenotyping framework using machine learning for plant stress severity rating in soybean
Hsiang Sing Naik et al.
PLANT METHODS (2017)
Machine Learning for High-Throughput Stress Phenotyping in Plants
Arti Singh et al.
TRENDS IN PLANT SCIENCE (2016)
Utilization of a high-throughput shoot imaging system to examine the dynamic phenotypic responses of a C4 cereal crop plant to nitrogen and water deficiency over time
E. H. Neilson et al.
JOURNAL OF EXPERIMENTAL BOTANY (2015)
Plant phenotyping: from bean weighing to image analysis
Achim Walter et al.
PLANT METHODS (2015)
Automated phenotyping of plant shoots using imaging methods for analysis of plant stress responses - a review
Jan F. Humplik et al.
PLANT METHODS (2015)
Multivariate genetic analysis of plant responses to water deficit and high temperature revealed contrasting adaptive strategies
Francois Vasseur et al.
JOURNAL OF EXPERIMENTAL BOTANY (2014)
Expression of the Arabidopsis vacuolar H plus - pyrophosphatase gene (AVP1) improves the shoot biomass of transgenic barley and increases grain yield in a saline field
Rhiannon K. Schilling et al.
PLANT BIOTECHNOLOGY JOURNAL (2014)
Image-based phenotyping for non-destructive screening of different salinity tolerance traits in rice
Aris Hairmansis et al.
RICE (2014)
Illumination invariant segmentation of vegetation for time series wheat images based on decision tree model
Wei Guo et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2013)
Yield response of sugar beets to water stress under Western European conditions
Nirman Shrestha et al.
AGRICULTURAL WATER MANAGEMENT (2010)
Can differences of nitrogen nutrition level among Medicago truncatula genotypes be assessed non-destructively?
Delphine Moreau et al.
PLANT SIGNALING & BEHAVIOR (2009)
Verification of color vegetation indices for automated crop imaging applications
George E. Meyer et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2008)
Stereo processing by Semiglobal Matching and Mutual Information
Heiko Hirschmueller
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE (2008)
Regularized linear discriminant analysis and its application in microarrays
Yaqian Guo et al.
BIOSTATISTICS (2007)
Robotized thermal and chlorophyll fluorescence imaging of pepper mild mottle virus infection in Nicotiana benthamiana
Laury Chaerle et al.
PLANT AND CELL PHYSIOLOGY (2006)
PHENOPSIS, an automated platform for reproducible phenotyping of plant responses to soil water deficit in Arabidopsis thaliana permitted the identification of an accession with low sensitivity to soil water deficit
C Granier et al.
NEW PHYTOLOGIST (2006)
Changes in N composition of sugar beet varieties in response to increasing N supply
CM Hoffmann
JOURNAL OF AGRONOMY AND CROP SCIENCE (2005)
Effect of water-deficit stress on germination and early seedling growth in sugar beet
SY Sadeghian et al.
JOURNAL OF AGRONOMY AND CROP SCIENCE (2004)
Economic feasibility of variable-rate nitrogen application utilizing site-specific management zones
B Koch et al.
AGRONOMY JOURNAL (2004)
Environmental situation and yield performance of the sugar beet crop in Germany:: Heading for sustainable development
B Märländer et al.
JOURNAL OF AGRONOMY AND CROP SCIENCE (2003)
Integrated narrow-band vegetation indices for prediction of crop chlorophyll content for application to precision agriculture
D Haboudane et al.
REMOTE SENSING OF ENVIRONMENT (2002)