Related references
Note: Only part of the references are listed.A calculation method of phenotypic traits based on three-dimensional reconstruction of tomato canopy
Tianyu Zhu et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2023)
Modeling leaf color dynamics of winter wheat in relation to growth stages and nitrogen rates
Zhang Yong-hui et al.
JOURNAL OF INTEGRATIVE AGRICULTURE (2022)
Implementation of an algorithm for automated phenotyping through plant 3D-modeling: A practical application on the early detection of water stress
Riccardo Rossi et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2022)
A method of calculating phenotypic traits for soybean canopies based on three-dimensional point cloud
Xiaodan Ma et al.
ECOLOGICAL INFORMATICS (2022)
Panicle-3D: A low-cost 3D-modeling method for rice panicles based on deep learning, shape from silhouette, and supervoxel clustering
Dan Wu et al.
CROP JOURNAL (2022)
3D foot scanning using multiple RealSense cameras
Munan Yuan et al.
MULTIMEDIA TOOLS AND APPLICATIONS (2021)
A field-based high-throughput method for acquiring canopy architecture using unmanned aerial vehicle images
Fusang Liu et al.
AGRICULTURAL AND FOREST METEOROLOGY (2021)
Spectral monitoring of wheat leaf nitrogen content based on canopy structure information compensation
Huaimin Li et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2021)
Detecting fake images by identifying potential texture difference
Jiachen Yang et al.
FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE (2021)
Optimization of 3D Point Clouds of Oilseed Rape Plants Based on Time-of-Flight Cameras
Zhihong Ma et al.
SENSORS (2021)
Point cloud registration algorithm based on curvature feature similarity
Zongwei Yao et al.
MEASUREMENT (2021)
Comparative transcriptome analysis of the peanut semi-dwarf mutant 1 reveals regulatory mechanism involved in plant height
Fengdan Guo et al.
GENE (2021)
Peanut yield, nutrient uptake and nutrient requirements in different regions of China
ZHAO Shi-cheng et al.
JOURNAL OF INTEGRATIVE AGRICULTURE (2021)
3D model processing for high throughput phenotype extraction - the case of corn
Dimitris Zermas et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2020)
An intensity, image-based method to estimate gap fraction, canopy openness and effective leaf area index from phase-shift terrestrial laser scanning
Mirko Grotti et al.
AGRICULTURAL AND FOREST METEOROLOGY (2020)
Crop Phenomics and High-Throughput Phenotyping: Past Decades, Current Challenges, and Future Perspectives
Wanneng Yang et al.
MOLECULAR PLANT (2020)
On-Ground Vineyard Reconstruction Using a LiDAR-Based Automated System
Hugo Moreno et al.
SENSORS (2020)
Non-Destructive Measurement of Three-Dimensional Plants Based on Point Cloud
Yawei Wang et al.
PLANTS-BASEL (2020)
Evaluation of low-cost depth cameras for agricultural applications
Isabella C. F. S. Condotta et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2020)
Real-time 3D unstructured environment reconstruction utilizing VR and Kinect-based immersive teleoperation for agricultural field robots
Yi Chen et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2020)
A RGB-D Based Real-Time Multiple Object Detection and Ranging System for Autonomous Driving
Jiachen Yang et al.
IEEE SENSORS JOURNAL (2020)
A Low-Cost 3D Phenotype Measurement Method of Leafy Vegetables Using Video Recordings from Smartphones
Zishang Yang et al.
SENSORS (2020)
Assessing the Performance of RGB-D Sensors for 3D Fruit Crop Canopy Characterization under Different Operating and Lighting Conditions
Jordi Gene-Mola et al.
SENSORS (2020)
Evaluation of Vineyard Cropping Systems Using On-Board RGB-Depth Perception
Hugo Moreno et al.
SENSORS (2020)
Blind assessment for stereo images considering binocular characteristics and deep perception map based on deep belief network
Jiachen Yang et al.
INFORMATION SCIENCES (2019)
Development of a Peanut Canopy Measurement System Using a Ground-Based LiDAR Sensor
Hongbo Yuan et al.
FRONTIERS IN PLANT SCIENCE (2019)
3D point cloud data to quantitatively characterize size and shape of shrub crops
Yu Jiang et al.
HORTICULTURE RESEARCH (2019)
Measuring crops in 3D: using geometry for plant phenotyping
Stefan Paulus
PLANT METHODS (2019)
Three-Dimensional Point Cloud Reconstruction and Morphology Measurement Method for Greenhouse Plants Based on the Kinect Sensor Self-Calibration
Guoxiang Sun et al.
AGRONOMY-BASEL (2019)
Field-based robotic phenotyping of sorghum plant architecture using stereo vision
Yin Bao et al.
JOURNAL OF FIELD ROBOTICS (2019)
High-throughput phenotyping for crop improvement in the genomics era
Reyazul Rouf Mir et al.
PLANT SCIENCE (2019)
Scandinavian perspectives on plant gene technology: applications, policies and progress
Dennis Eriksson et al.
PHYSIOLOGIA PLANTARUM (2018)
Image-based dynamic quantification and high-accuracy 3D evaluation of canopy structure of plant populations
Fang Hui et al.
ANNALS OF BOTANY (2018)
Plant genetic resources for food and agriculture: opportunities and challenges emerging from the science and information technology revolution
Michael Halewood et al.
NEW PHYTOLOGIST (2018)
Automatic Non-Destructive Growth Measurement of Leafy Vegetables Based on Kinect
Yang Hu et al.
SENSORS (2018)
A Novel LiDAR-Based Instrument for High-Throughput, 3D Measurement of Morphological Traits in Maize and Sorghum
Suresh Thapa et al.
SENSORS (2018)
Translating High-Throughput Phenotyping into Genetic Gain
Jose Luis Araus et al.
TRENDS IN PLANT SCIENCE (2018)
Development of a Ground-Based Peanut Canopy Phenotyping System
Hongbo Yuan et al.
IFAC PAPERSONLINE (2018)
Plant phenotyping: increasing throughput and precision at multiple scales
Malcolm J. Hawkesford et al.
FUNCTIONAL PLANT BIOLOGY (2017)
Developing a low-cost 3D plant morphological traits characterization system
Ji Li et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2017)
PocketPlant3D: Analysing canopy structure using a smartphone
Roberto Confalonieri et al.
BIOSYSTEMS ENGINEERING (2017)
Bringing New Plant Varieties to Market: Plant Breeding and Selection Practices Advance Beneficial Characteristics while Minimizing Unintended Changes
Kevin C. Glenn et al.
CROP SCIENCE (2017)
Using depth cameras to extract structural parameters to assess the growth state and yield of cauliflower crops
Dionisio Andujar et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2016)
High throughput phenotyping of cotton plant height using depth images under field conditions
Yu Jiang et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2016)
Automated registration of multi-view point clouds using sphere targets
Dongho Yun et al.
ADVANCED ENGINEERING INFORMATICS (2015)
Practical and accurate calibration of RGB-D cameras using spheres
Aaron N. Staranowicz et al.
COMPUTER VISION AND IMAGE UNDERSTANDING (2015)
Improvement of a ground-LiDAR-based corn plant population and spacing measurement system
Y. Shi et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2015)
Evaluating and Improving the Depth Accuracy of Kinect for Windows v2
Lin Yang et al.
IEEE SENSORS JOURNAL (2015)
Calibration of Kinect for Xbox One and Comparison between the Two Generations of Microsoft Sensors
Diana Pagliari et al.
SENSORS (2015)
3D Maize Plant Reconstruction Based on Georeferenced Overlapping LiDAR Point Clouds
Miguel Garrido et al.
REMOTE SENSING (2015)
A flexible method for multi-view point clouds alignment of small-size object
Zhou Langming et al.
MEASUREMENT (2014)
Retrieval of Gap Fraction and Effective Plant Area Index from Phase-Shift Terrestrial Laser Scans
Pyare Pueschel et al.
REMOTE SENSING (2014)
Cell to whole-plant phenotyping: the best is yet to come
Stijn Dhondt et al.
TRENDS IN PLANT SCIENCE (2013)
On the use of depth camera for 3D phenotyping of entire plants
Yann Chene et al.
COMPUTERS AND ELECTRONICS IN AGRICULTURE (2012)