Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing

As computer and space technologies have been developed, geoscience information systems (GIS) and remote sensing (RS) technologies, which deal with the geospatial information, have been rapidly maturing. Moreover, over the last few decades, machine learning techniques including artificial neural netw...

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Year of Publication:2019
Language:English
Physical Description:1 electronic resource (438 p.)
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ctrlnum (CKB)4100000010106105
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(EXLCZ)994100000010106105
collection bib_alma
record_format marc
spelling Lee, Saro auth
Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing
MDPI - Multidisciplinary Digital Publishing Institute 2019
1 electronic resource (438 p.)
text txt rdacontent
computer c rdamedia
online resource cr rdacarrier
As computer and space technologies have been developed, geoscience information systems (GIS) and remote sensing (RS) technologies, which deal with the geospatial information, have been rapidly maturing. Moreover, over the last few decades, machine learning techniques including artificial neural network (ANN), deep learning, decision tree, and support vector machine (SVM) have been successfully applied to geospatial science and engineering research fields. The machine learning techniques have been widely applied to GIS and RS research fields and have recently produced valuable results in the areas of geoscience, environment, natural hazards, and natural resources. This book is a collection representing novel contributions detailing machine learning techniques as applied to geoscience information systems and remote sensing.
English
artificial neural network
model switching
sensitivity analysis
neural networks
logit boost
Qaidam Basin
land subsidence
land use/land cover (LULC)
naïve Bayes
multilayer perceptron
convolutional neural networks
single-class data descriptors
logistic regression
feature selection
mapping
particulate matter 10 (PM10)
Bayes net
gray-level co-occurrence matrix
multi-scale
Logistic Model Trees
classification
Panax notoginseng
large scene
coarse particle
grayscale aerial image
Gaofen-2
environmental variables
variable selection
spatial predictive models
weights of evidence
landslide prediction
random forest
boosted regression tree
convolutional network
Vietnam
model validation
colorization
data mining techniques
spatial predictions
SCAI
unmanned aerial vehicle
high-resolution
texture
spatial sparse recovery
landslide susceptibility map
machine learning
reproducible research
constrained spatial smoothing
support vector machine
random forest regression
model assessment
information gain
ALS point cloud
bagging ensemble
one-class classifiers
leaf area index (LAI)
landslide susceptibility
landsat image
ionospheric delay constraints
spatial spline regression
remote sensing image segmentation
panchromatic
Sentinel-2
remote sensing
optical remote sensing
materia medica resource
GIS
precise weighting
change detection
TRMM
traffic CO
crop
training sample size
convergence time
object detection
gully erosion
deep learning
classification-based learning
transfer learning
landslide
traffic CO prediction
hybrid model
winter wheat spatial distribution
logistic
alternating direction method of multipliers
hybrid structure convolutional neural networks
geoherb
predictive accuracy
real-time precise point positioning
spectral bands
3-03921-215-X
Jung, Hyung-Sup auth
language English
format eBook
author Lee, Saro
spellingShingle Lee, Saro
Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing
author_facet Lee, Saro
Jung, Hyung-Sup
author_variant s l sl
author2 Jung, Hyung-Sup
author2_variant h s j hsj
author_sort Lee, Saro
title Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing
title_full Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing
title_fullStr Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing
title_full_unstemmed Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing
title_auth Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing
title_new Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing
title_sort machine learning techniques applied to geoscience information system and remote sensing
publisher MDPI - Multidisciplinary Digital Publishing Institute
publishDate 2019
physical 1 electronic resource (438 p.)
isbn 3-03921-216-8
3-03921-215-X
illustrated Not Illustrated
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AT junghyungsup machinelearningtechniquesappliedtogeoscienceinformationsystemandremotesensing
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carrierType_str_mv cr
is_hierarchy_title Machine Learning Techniques Applied to Geoscience Information System and Remote Sensing
author2_original_writing_str_mv noLinkedField
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