相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。A robust, high-throughput method for computing maize ear, cob, and kernel attributes automatically from images
Nathan D. Miller et al.
PLANT JOURNAL (2017)
Recent approaches for optical smartphone sensing in resource-limited settings: a brief review
Katherine E. McCracken et al.
ANALYTICAL METHODS (2016)
phenoSeeder - A Robot System for Automated Handling and Phenotyping of Individual Seeds
Siegfried Jahnke et al.
PLANT PHYSIOLOGY (2016)
Multimodal Imaging and Lighting Bias Correction for Improved μPAD-based Water Quality Monitoring via Smartphones
Katherine E. McCracken et al.
SCIENTIFIC REPORTS (2016)
3D Surface Reconstruction of Plant Seeds by Volume Carving: Performance and Accuracies
Johanna Roussel et al.
FRONTIERS IN PLANT SCIENCE (2016)
Portable smartphone quantitation of prostate specific antigen (PSA) in a fluoropolymer microfluidic device
Ana I. Barbosa et al.
BIOSENSORS & BIOELECTRONICS (2015)
Smartphone-based hierarchical crowdsourcing for weed identification
Mahbubur Rahman et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2015)
Automatic estimation of wheat grain morphometry from computed tomography data
Harry Strange et al.
FUNCTIONAL PLANT BIOLOGY (2015)
Leaf Doctor: A New Portable Application for Quantifying Plant Disease Severity
Sarah J. Pethybridge et al.
PLANT DISEASE (2015)
Review of seed quality and safety tests using optical sensing technologies
M. Huang et al.
SEED SCIENCE AND TECHNOLOGY (2015)
Using the mobile phone as Munsell soil-colour sensor: An experiment under controlled illumination conditions
Luis Gomez-Robledo et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2013)
Crop segmentation from images by morphology modeling in the CIE L*a*b* color space
X. D. Bai et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2013)
Comparison of digital image analysis using elliptic Fourier descriptors and major dimensions to phenotype seed shape in hexaploid wheat (Triticum aestivum L.)
Keith Williams et al.
EUPHYTICA (2013)
Phenotypic evaluation of flax seeds by image analysis
Smykalova Iva et al.
INDUSTRIAL CROPS AND PRODUCTS (2013)
Mapping Quantitative Trait Loci Affecting Arabidopsis thaliana Seed Morphology Features Extracted Computationally From Images
Candace R. Moore et al.
G3-GENES GENOMES GENETICS (2013)
Identification of nine Iranian wheat seed varieties by textural analysis with image processing
Alireza Pourreza et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2012)
SmartGrain: High-Throughput Phenotyping Software for Measuring Seed Shape through Image Analysis
Takanari Tanabata et al.
PLANT PHYSIOLOGY (2012)
Discrimination of wheat grain varieties using image analysis and neural networks. Part I. Single kernel texture
Piotr Zapotoczny
JOURNAL OF CEREAL SCIENCE (2011)
A novel machine-vision-based facility for the automatic evaluation of yield-related traits in rice
Lingfeng Duan et al.
PLANT METHODS (2011)
Rapid analysis of seed size in Arabidopsis for mutant and QTL discovery
Rowan P. Herridge et al.
PLANT METHODS (2011)
Combining discriminant analysis and neural networks for corn variety identification
Xiao Chen et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2010)
A Genetic Framework for Grain Size and Shape Variation in Wheat
Vasilis C. Gegas et al.
PLANT CELL (2010)
Computer image analysis of seed shape and seed color for flax cultivar description
Wiesnerova Dana et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2008)
Evaluation of the effect of moisture content on cereal grains by digital image analysis
A. R. Tahir et al.
FOOD RESEARCH INTERNATIONAL (2007)
Large-scale investigation of weed seed identification by machine vision
PM Granitto et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2005)
Image analysis of whole grains: A noninvasive method to predict semolina yield in durum wheat
P Novaro et al.
CEREAL CHEMISTRY (2001)