Applications of Remote Image Capture System in Agriculture

Remote image capture systems are a key element in efficient and sustainable agriculture nowadays. They are increasingly being used to obtain information of interest from the crops, the soil and the environment. It includes different types of capturing devices: from satellites and drones, to in-field...

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Bibliographic Details
Other Authors: Molina Martínez, José Miguel (Editor), García-Mateos, Ginés (Editor)
Format: Electronic Book Chapter
Language:English
Published: Basel, Switzerland MDPI - Multidisciplinary Digital Publishing Institute 2020
Subjects:
SVM
UAV
ICP
n/a
Online Access:DOAB: download the publication
DOAB: description of the publication
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520 |a Remote image capture systems are a key element in efficient and sustainable agriculture nowadays. They are increasingly being used to obtain information of interest from the crops, the soil and the environment. It includes different types of capturing devices: from satellites and drones, to in-field devices; different types of spectral information, from visible RGB images, to multispectral images; different types of applications; and different types of techniques in the areas of image processing, computer vision, pattern recognition and machine learning. This book covers all these aspects, through a series of chapters that describe specific recent applications of these techniques in interesting problems of agricultural engineering. 
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650 7 |a History of engineering & technology  |2 bicssc 
653 |a SVM 
653 |a budding rate 
653 |a UAV 
653 |a geometric consistency 
653 |a radiometric consistency 
653 |a point clouds 
653 |a ICP 
653 |a reflectance maps 
653 |a vegetation indices 
653 |a Parrot Sequoia 
653 |a artificial intelligence 
653 |a precision agriculture 
653 |a agricultural robot 
653 |a optimization algorithm 
653 |a online operation 
653 |a segmentation 
653 |a coffee leaf rust 
653 |a machine learning 
653 |a deep learning 
653 |a remote sensing 
653 |a Fourth Industrial Revolution 
653 |a Agriculture 4.0 
653 |a failure strain 
653 |a sandstone 
653 |a digital image correlation 
653 |a Hill-Tsai failure criterion 
653 |a finite element method 
653 |a reference evapotranspiration 
653 |a moisture sensors 
653 |a machine learning regression 
653 |a frequency-domain reflectometry 
653 |a randomizable filtered classifier 
653 |a convolutional neural network 
653 |a U-Net 
653 |a land use 
653 |a banana plantation 
653 |a Panama TR4 
653 |a aerial photography 
653 |a remote images 
653 |a systematic mapping study 
653 |a agriculture 
653 |a applications 
653 |a total leaf area 
653 |a mixed pixels 
653 |a Cabernet Sauvignon 
653 |a NDVI 
653 |a Normalized Difference Vegetation Index 
653 |a precision viticulture 
653 |a 3D model 
653 |a spatial vision 
653 |a fertirrigation 
653 |a teaching-learning 
653 |a spectrometry 
653 |a Sentinel-2 
653 |a pasture quality index 
653 |a normalized difference vegetation index 
653 |a normalized difference water index 
653 |a supplementation 
653 |a decision making 
653 |a digital agriculture 
653 |a grape yield estimate 
653 |a berries counting 
653 |a Dilated CNN 
653 |a machine learning algorithms 
653 |a classification performance 
653 |a winter wheat mapping 
653 |a large-scale 
653 |a water stress 
653 |a Prunus avium L. 
653 |a stem water potential 
653 |a low-cost thermography 
653 |a thermal indexes 
653 |a canopy temperature 
653 |a non-water-stressed baselines 
653 |a non-transpiration baseline 
653 |a soil moisture 
653 |a andosols 
653 |a image processing 
653 |a greenhouse 
653 |a automatic tomato harvesting 
653 |a n/a 
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