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Tree Species Classification Using Hyperion and Sentinel-2 Data with Machine Learning in South Korea and China
by
Jin, Ri
, Kim, Kyoung-Min
, Lim, Joongbin
in
Accuracy
/ Algorithms
/ Arboreta
/ Biosphere
/ China
/ Classification
/ Data
/ Discriminant analysis
/ Environmental information
/ Flowers & plants
/ Hyperion
/ hyperspectral image
/ hyperspectral imagery
/ Hyperspectral imaging
/ image spectroscopy
/ Imagery
/ Land degradation
/ Larix kaempferi
/ Learning algorithms
/ Machine learning
/ multispectral imagery
/ Neural networks
/ North Korea
/ Pinus koraiensis
/ Plant species
/ Rainforests
/ random forest
/ Regions
/ Remote monitoring
/ Remote sensing
/ Satellite imagery
/ Satellites
/ Sea level
/ South Korea
/ Species
/ Species classification
/ Spectral bands
/ support vector machine
/ Support vector machines
/ texture feature
/ Topography
/ Training
/ Trees
2019
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Tree Species Classification Using Hyperion and Sentinel-2 Data with Machine Learning in South Korea and China
by
Jin, Ri
, Kim, Kyoung-Min
, Lim, Joongbin
in
Accuracy
/ Algorithms
/ Arboreta
/ Biosphere
/ China
/ Classification
/ Data
/ Discriminant analysis
/ Environmental information
/ Flowers & plants
/ Hyperion
/ hyperspectral image
/ hyperspectral imagery
/ Hyperspectral imaging
/ image spectroscopy
/ Imagery
/ Land degradation
/ Larix kaempferi
/ Learning algorithms
/ Machine learning
/ multispectral imagery
/ Neural networks
/ North Korea
/ Pinus koraiensis
/ Plant species
/ Rainforests
/ random forest
/ Regions
/ Remote monitoring
/ Remote sensing
/ Satellite imagery
/ Satellites
/ Sea level
/ South Korea
/ Species
/ Species classification
/ Spectral bands
/ support vector machine
/ Support vector machines
/ texture feature
/ Topography
/ Training
/ Trees
2019
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Tree Species Classification Using Hyperion and Sentinel-2 Data with Machine Learning in South Korea and China
by
Jin, Ri
, Kim, Kyoung-Min
, Lim, Joongbin
in
Accuracy
/ Algorithms
/ Arboreta
/ Biosphere
/ China
/ Classification
/ Data
/ Discriminant analysis
/ Environmental information
/ Flowers & plants
/ Hyperion
/ hyperspectral image
/ hyperspectral imagery
/ Hyperspectral imaging
/ image spectroscopy
/ Imagery
/ Land degradation
/ Larix kaempferi
/ Learning algorithms
/ Machine learning
/ multispectral imagery
/ Neural networks
/ North Korea
/ Pinus koraiensis
/ Plant species
/ Rainforests
/ random forest
/ Regions
/ Remote monitoring
/ Remote sensing
/ Satellite imagery
/ Satellites
/ Sea level
/ South Korea
/ Species
/ Species classification
/ Spectral bands
/ support vector machine
/ Support vector machines
/ texture feature
/ Topography
/ Training
/ Trees
2019
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Tree Species Classification Using Hyperion and Sentinel-2 Data with Machine Learning in South Korea and China
Journal Article
Tree Species Classification Using Hyperion and Sentinel-2 Data with Machine Learning in South Korea and China
2019
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Overview
Remote sensing (RS) has been used to monitor inaccessible regions. It is considered a useful technique for deriving important environmental information from inaccessible regions, especially North Korea. In this study, we aim to develop a tree species classification model based on RS and machine learning techniques, which can be utilized for classification in North Korea. Two study sites were chosen, the Korea National Arboretum (KNA) in South Korea and Mt. Baekdu (MTB; a.k.a., Mt. Changbai in Chinese) in China, located in the border area between North Korea and China, and tree species classifications were examined in both regions. As a preliminary step in developing a classification algorithm that can be applied in North Korea, common coniferous species at both study sites, Korean pine (Pinus koraiensis) and Japanese larch (Larix kaempferi), were chosen as targets for investigation. Hyperion data have been used for tree species classification due to the abundant spectral information acquired from across more than 200 spectral bands (i.e., hyperspectral satellite data). However, it is impossible to acquire recent Hyperion data because the satellite ceased operation in 2017. Recently, Sentinel-2 satellite multispectral imagery has been used in tree species classification. Thus, it is necessary to compare these two kinds of satellite data to determine the possibility of reliably classifying species. Therefore, Hyperion and Sentinel-2 data were employed, along with machine learning techniques, such as random forests (RFs) and support vector machines (SVMs), to classify tree species. Three questions were answered, showing that: (1) RF and SVM are well established in the hyperspectral imagery for tree species classification, (2) Sentinel-2 data can be used to classify tree species with RF and SVM algorithms instead of Hyperion data, and (3) training data that were built in the KNA cannot be used for the tree classification of MTB. Random forests and SVMs showed overall accuracies of 0.60 and 0.51 and kappa values of 0.20 and 0.00, respectively. Moreover, combined training data from the KNA and MTB showed high classification accuracies in both regions; RF and SVM values exhibited accuracies of 0.99 and 0.97 and kappa values of 0.98 and 0.95, respectively.
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