Improving Tree Species Classification Using UAS Multispectral Images and Texture Measures
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Livio Pinto | Giulia Ronchetti | Giovanna Sona | Rossana Gini | Daniele Passoni | Giulia Ronchetti | G. Sona | D. Passoni | L. Pinto | Rossana Gini
[1] Zhong-Ren Peng,et al. A study of vertical distribution patterns of PM2.5 concentrations based on ambient monitoring with unmanned aerial vehicles: A case in Hangzhou, China , 2015 .
[2] R. Dunford,et al. Potential and constraints of Unmanned Aerial Vehicle technology for the characterization of Mediterranean riparian forest , 2009 .
[3] Arko Lucieer,et al. An adaptive texture selection framework for ultra-high resolution UAV imagery , 2013, 2013 IEEE International Geoscience and Remote Sensing Symposium - IGARSS.
[4] P. Atkinson,et al. Random Forest classification of Mediterranean land cover using multi-seasonal imagery and multi-seasonal texture , 2012 .
[5] Salah Sukkarieh,et al. A Rotary-wing Unmanned Air Vehicle for Aquatic Weed Surveillance and Management , 2010, J. Intell. Robotic Syst..
[6] Min Jiang,et al. Estimates of rice lodging using indices derived from UAV visible and thermal infrared images , 2018 .
[7] Mark S. Nixon,et al. Feature Extraction and Image Processing , 2002 .
[8] Arko Lucieer,et al. Texture-based classification of sub-Antarctic vegetation communities on Heard Island , 2010, Int. J. Appl. Earth Obs. Geoinformation.
[9] Sandra Johnson,et al. Unmanned Aerial Vehicles (UAVs) and Artificial Intelligence Revolutionizing Wildlife Monitoring and Conservation , 2016, Sensors.
[10] Albert Rango,et al. Texture and Scale in Object-Based Analysis of Subdecimeter Resolution Unmanned Aerial Vehicle (UAV) Imagery , 2009, IEEE Transactions on Geoscience and Remote Sensing.
[11] Alejandro H. Ballado,et al. Vegetation indices and textures in object-based weed detection from UAV imagery , 2016, 2016 6th IEEE International Conference on Control System, Computing and Engineering (ICCSCE).
[12] A. Lucieer,et al. Using a micro-UAV for ultra-high resolution multi-sensor observations of Antarctic moss beds , 2012 .
[13] Dimitrios Moshou,et al. Evaluation of UAV imagery for mapping Silybum marianum weed patches , 2017 .
[14] Russell G. Congalton,et al. Assessing the accuracy of remotely sensed data : principles and practices , 1998 .
[15] Sharon A. Robinson,et al. Spatial Co-Registration of Ultra-High Resolution Visible, Multispectral and Thermal Images Acquired with a Micro-UAV over Antarctic Moss Beds , 2014, Remote. Sens..
[16] H. Kaiser. The Application of Electronic Computers to Factor Analysis , 1960 .
[17] Oliver Q. Whaley,et al. Identifying species from the air: UAVs and the very high resolution challenge for plant conservation , 2017, PloS one.
[18] Jeffrey E. Herrick,et al. Unmanned aerial vehicle-based remote sensing for rangeland assessment, monitoring, and management , 2009 .
[19] Fuan Tsai,et al. Texture augmented analysis of high resolution satellite imagery in detecting invasive plant species , 2006 .
[20] María Flor Álvarez-Taboada,et al. Mapping of the Invasive Species Hakea sericea Using Unmanned Aerial Vehicle (UAV) and WorldView-2 Imagery and an Object-Oriented Approach , 2017, Remote. Sens..
[21] D. Passoni,et al. Use of Unmanned Aerial Systems for multispectral survey and tree classification: a test in a park area of northern Italy , 2014 .
[22] I. Colomina,et al. Unmanned aerial systems for photogrammetry and remote sensing: A review , 2014 .
[23] Livio Pinto,et al. Experimental analysis of different software packages for orientation and digital surface modelling from UAV images , 2014, Earth Science Informatics.
[24] J. A. Schell,et al. Monitoring vegetation systems in the great plains with ERTS , 1973 .
[25] Jianhua Gong,et al. UAV Remote Sensing for Urban Vegetation Mapping Using Random Forest and Texture Analysis , 2015, Remote. Sens..
[26] Albert Rango,et al. Multispectral Remote Sensing from Unmanned Aircraft: Image Processing Workflows and Applications for Rangeland Environments , 2011, Remote. Sens..
[27] Arko Lucieer,et al. apping invasive Fallopia japonica by combined spectral , spatial , and temporal nalysis of digital orthophotos , 2012 .
[28] Vishvjit S. Nalwa,et al. A guided tour of computer vision , 1993 .
[29] Qian Zhang,et al. Classification of Ultra-High Resolution Orthophotos Combined with DSM Using a Dual Morphological Top Hat Profile , 2015, Remote. Sens..
[30] Craig A. Coburn,et al. A multiscale texture analysis procedure for improved forest stand classification , 2004 .
[31] Robert M. Haralick,et al. Textural Features for Image Classification , 1973, IEEE Trans. Syst. Man Cybern..
[32] R. Hall,et al. Incorporating texture into classification of forest species composition from airborne multispectral images , 2000 .
[33] Daniela Stroppiana,et al. Early season weed mapping in rice crops using multi-spectral UAV data , 2018 .
[34] Geoffrey J. Hay,et al. An object-specific image-texture analysis of H-resolution forest imagery☆ , 1996 .
[35] R. Cattell. The Scree Test For The Number Of Factors. , 1966, Multivariate behavioral research.
[36] Duane C. Brown,et al. Close-Range Camera Calibration , 1971 .
[37] Richard E. Brazier,et al. Water resource management at catchment scales using lightweight UAVs: current capabilities and future perspectives , 2016 .
[38] P. Hardin,et al. Detecting Squarrose Knapweed (Centaurea virgata Lam. Ssp. squarrosa Gugl.) Using a Remotely Piloted Vehicle: A Utah Case Study , 2007 .