Comparing UAV-Based Technologies and RGB-D Reconstruction Methods for Plant Height and Biomass Monitoring on Grass Ley
暂无分享,去创建一个
José M. Bengochea-Guevara | Dionisio Andújar | José M. Peña | Victor Rueda-Ayala | Mats Höglind | J. Peña | D. Andújar | M. Höglind | V. Rueda-Ayala | J. Bengochea-Guevara
[1] Simon Bennertz,et al. Combining UAV-based plant height from crop surface models, visible, and near infrared vegetation indices for biomass monitoring in barley , 2015, Int. J. Appl. Earth Obs. Geoinformation.
[2] Scott D. Roth,et al. Ray casting for modeling solids , 1982, Comput. Graph. Image Process..
[3] Marc Levoy,et al. A volumetric method for building complex models from range images , 1996, SIGGRAPH.
[4] Yuhong He,et al. Species classification using Unmanned Aerial Vehicle (UAV)-acquired high spatial resolution imagery in a heterogeneous grassland , 2017 .
[5] José Dorado,et al. An Approach to the Use of Depth Cameras for Weed Volume Estimation , 2016, Sensors.
[6] E. Thiessen,et al. Sensing of Crop Properties , 2013 .
[7] Jorge Torres-Sánchez,et al. High-Throughput 3-D Monitoring of Agricultural-Tree Plantations with Unmanned Aerial Vehicle (UAV) Technology , 2015, PloS one.
[8] R. Dubayah,et al. Integrating waveform lidar with hyperspectral imagery for inventory of a northern temperate forest , 2008 .
[9] Jonathon J. Donager,et al. UAV lidar and hyperspectral fusion for forest monitoring in the southwestern USA , 2017 .
[10] Jacinto Gil Sierra,et al. Usando Kinect como sensor para una pulverización inteligente. , 2013 .
[11] Eija Honkavaara,et al. Estimating Biomass and Nitrogen Amount of Barley and Grass Using UAV and Aircraft Based Spectral and Photogrammetric 3D Features , 2018, Remote. Sens..
[12] Jose A. Jiménez-Berni,et al. High Throughput Determination of Plant Height, Ground Cover, and Above-Ground Biomass in Wheat with LiDAR , 2018, Front. Plant Sci..
[13] Lei Zhang,et al. A LIDAR-based crop height measurement system for Miscanthus giganteus , 2012 .
[14] Changying Li,et al. Size estimation of sweet onions using consumer-grade RGB-depth sensor , 2014 .
[15] Juha Suomalainen,et al. Estimating Plant Traits of Grasslands from UAV-Acquired Hyperspectral Images: A Comparison of Statistical Approaches , 2015, ISPRS Int. J. Geo Inf..
[16] Georg Bareth,et al. Replacing Manual Rising Plate Meter Measurements with Low-cost UAV-Derived Sward Height Data in Grasslands for Spatial Monitoring , 2018, PFG – Journal of Photogrammetry, Remote Sensing and Geoinformation Science.
[17] Angela Ribeiro,et al. A Low-Cost Approach to Automatically Obtain Accurate 3D Models of Woody Crops , 2017, Sensors.
[18] Roland Gerhards,et al. Potential use of ground-based sensor technologies for weed detection. , 2014, Pest management science.
[19] Alexandre Escolà,et al. Weed discrimination using ultrasonic sensors , 2011 .
[20] Jorge Torres-Sánchez,et al. An Automatic Random Forest-OBIA Algorithm for Early Weed Mapping between and within Crop Rows Using UAV Imagery , 2018, Remote. Sens..
[21] Michael J. Hill,et al. Quantitative mapping of pasture biomass using satellite imagery , 2011 .
[22] J. R. Rosell-Polo,et al. Advances in Structured Light Sensors Applications in Precision Agriculture and Livestock Farming , 2015 .
[23] Dirk Hoffmeister,et al. A Comparison of UAV- and TLS-derived Plant Height for Crop Monitoring: Using Polygon Grids for the Analysis of Crop Surface Models (CSMs) , 2016 .
[24] G. Fitzgerald. Characterizing vegetation indices derived from active and passive sensors , 2010 .
[25] S. G. Nelson,et al. Relationship Between Remotely-sensed Vegetation Indices, Canopy Attributes and Plant Physiological Processes: What Vegetation Indices Can and Cannot Tell Us About the Landscape , 2008, Sensors.
[26] Yu Jiang,et al. High throughput phenotyping of cotton plant height using depth images under field conditions , 2016, Comput. Electron. Agric..
[27] Roland Gerhards,et al. A Non-Chemical System for Online Weed Control , 2015, Sensors.
[28] J. Hodgson. Grass: its production and utilization. , 1990 .
[29] Werner Creixell,et al. Object detection on aerial image using cascaded binary classifier , 2016, 2016 IEEE Applied Imagery Pattern Recognition Workshop (AIPR).
[30] Hermann J Heege,et al. Precision in Crop Farming: Site Specific Concepts and Sensing Methods Applications and Results , 2018 .
[31] Frederik Coppens,et al. Unlocking the potential of plant phenotyping data through integration and data-driven approaches , 2017, Current opinion in systems biology.
[32] Malia A. Gehan,et al. Lights, camera, action: high-throughput plant phenotyping is ready for a close-up. , 2015, Current opinion in plant biology.
[33] José Dorado,et al. Application note: Potential of a terrestrial LiDAR-based system to characterise weed vegetation in maize crops , 2013 .
[34] Alexandre Escolà,et al. Discriminating Crop, Weeds and Soil Surface with a Terrestrial LIDAR Sensor , 2013, Sensors.
[35] Herbert Edelsbrunner,et al. Three-dimensional alpha shapes , 1992, VVS.
[36] Pablo Prieto,et al. LiDAR and thermal images fusion for ground-based 3D characterisation of fruit trees , 2016 .
[37] Cornelius Senf,et al. A Bayesian hierarchical model for estimating spatial and temporal variation in vegetation phenology from Landsat time series , 2017 .