Operationalization of Remote Sensing Solutions for Sustainable Forest Management

The great potential of remote sensing technologies for operational use in sustainable forest management is addressed in this book, which is the reprint of papers published in the Remote Sensing Special Issue “Operationalization of Remote Sensing Solutions for Sustainable Forest Management”. The stud...

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Year of Publication:2021
Language:English
Physical Description:1 electronic resource (296 p.)
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spelling Mozgeris, Gintautas edt
Operationalization of Remote Sensing Solutions for Sustainable Forest Management
Basel, Switzerland MDPI - Multidisciplinary Digital Publishing Institute 2021
1 electronic resource (296 p.)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
The great potential of remote sensing technologies for operational use in sustainable forest management is addressed in this book, which is the reprint of papers published in the Remote Sensing Special Issue “Operationalization of Remote Sensing Solutions for Sustainable Forest Management”. The studies come from three continents and cover multiple remote sensing systems (including terrestrial mobile laser scanning, unmanned aerial vehicles, airborne laser scanning, and satellite data acquisition) and a diversity of data processing algorithms, with a focus on machine learning approaches. The focus of the studies ranges from identification and characterization of individual trees to deriving national- or even continental-level forest attributes and maps. There are studies carefully describing exercises on the case study level, and there are also studies introducing new methodologies for transdisciplinary remote sensing applications. Even though most of the authors look forward to continuing their research, nearly all studies introduced are ready for operational use or have already been implemented in practical forestry.
English
Research & information: general bicssc
forest road inventory
total station
global navigation satellite system
point cloud
precision density
positional accuracy
efficiency
mangrove sustainability
deforestation depletion
anthropogenic
natural water balance
Southeast Asia
Phoracantha spp.
unmanned aerial vehicle (UAV)
multispectral imagery
vegetation index
thresholding analysis
Large Scale Mean-Shift Segmentation (LSMS)
Random Forest (RF)
forest mask
validation
probability sampling
remote sensing
earth observations
forestry
accuracy assessment
forest classification
forested catchment
hydrological modeling
SWAT model
DEM
airborne laser scanning
deep learning
Landsat
national forest inventory
stand volume
bark beetle
Ips typographus L.
pest
change detection
forest damage
spruce
Sentinel-2
damage mapping
multi-temporal regression
mangrove
replanting
restoration
analytic hierarchy process
UAV
DJI drone
machine learning
forest canopy
canopy gaps
canopy openings percentage
satellite indices
Elastic Net
beech-fir forests
pixel-based supervised classification
random forest
support vector machine
gray level cooccurrence matrix (GLCM)
principal component analysis (PCA)
WorldView-3
wildfires
MaxENT
risk modeling
GIS
multi-scale analysis
Yakutia
Artic
Siberia
phenology modelling
forest disturbance
forest monitoring
bark beetle infestation
forest management
time series analysis
satellite imagery
landsat time series
growing stock volume
forest inventory
harmonic regression
3-0365-0982-8
3-0365-0983-6
Balenović, Ivan edt
Mozgeris, Gintautas oth
Balenović, Ivan oth
language English
format eBook
author2 Balenović, Ivan
Mozgeris, Gintautas
Balenović, Ivan
author_facet Balenović, Ivan
Mozgeris, Gintautas
Balenović, Ivan
author2_variant g m gm
i b ib
author2_role HerausgeberIn
Sonstige
Sonstige
title Operationalization of Remote Sensing Solutions for Sustainable Forest Management
spellingShingle Operationalization of Remote Sensing Solutions for Sustainable Forest Management
title_full Operationalization of Remote Sensing Solutions for Sustainable Forest Management
title_fullStr Operationalization of Remote Sensing Solutions for Sustainable Forest Management
title_full_unstemmed Operationalization of Remote Sensing Solutions for Sustainable Forest Management
title_auth Operationalization of Remote Sensing Solutions for Sustainable Forest Management
title_new Operationalization of Remote Sensing Solutions for Sustainable Forest Management
title_sort operationalization of remote sensing solutions for sustainable forest management
publisher MDPI - Multidisciplinary Digital Publishing Institute
publishDate 2021
physical 1 electronic resource (296 p.)
isbn 3-0365-0982-8
3-0365-0983-6
illustrated Not Illustrated
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