Stand types discrimination comparing machine-learning algorithms in Monteverde, Canary Islands.

Aim of study: The main objective is to determine the best machine-learning algorithm to classify the stand types of Monteverde forests combining LiDAR, orthophotography, and Sentinel-2 data, thus providing an easy and cheap method to classify Monteverde stand types. Area of study: 1500 ha forest in...

Full description

Bibliographic Details
Main Authors: Miguel Garcia-Hidalgo, Ángela Blázquez-Casado, Beatriz Águeda, Francisco Rodriguez
Format: Article
Language:English
Published: Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria 2018-12-01
Series:Forest Systems
Subjects:
Online Access:http://revistas.inia.es/index.php/fs/article/view/13686
id doaj-b349bb8049a040ce953da362d83b82f9
record_format Article
spelling doaj-b349bb8049a040ce953da362d83b82f92020-11-25T00:55:43ZengInstituto Nacional de Investigación y Tecnología Agraria y AlimentariaForest Systems2171-98452018-12-01273eSC03eSC0310.5424/fs/2018273-136862804Stand types discrimination comparing machine-learning algorithms in Monteverde, Canary Islands.Miguel Garcia-Hidalgo0Ángela Blázquez-Casado1Beatriz Águeda2Francisco Rodriguez3Área de Botánica. Departamento de Ciencias Agroforestales. Universidad de Valladolid. EiFAB. Campus Duques de Soria. 42004 Soria.föra forest technologies. C/ Eduardo Saavedra 38. 42004 Soria.föra forest technologies. C/ Eduardo Saavedra 38. 42004 Soria.föra forest technologies. C/ Eduardo Saavedra 38. 42004 Soria.Aim of study: The main objective is to determine the best machine-learning algorithm to classify the stand types of Monteverde forests combining LiDAR, orthophotography, and Sentinel-2 data, thus providing an easy and cheap method to classify Monteverde stand types. Area of study: 1500 ha forest in Monteverde, North Tenerife, Canary Islands. Material and methods: RF, SVML, SVMR and ANN algorithms are used to classify the three Monteverde stand types.  Before training the model, feature selection of LiDAR, orthophotography, and Sentinel-2 data through VSURF was carried out.  Comparison of its accuracy was performed. Main results: Five LiDAR variables were found to be the most efficient for classifying each object, while only one Sentinel-2 index and one Sentinel-2 band was valuable.  Additionally, standard deviation and mean of the Red orthophotography colour band, and ratio between Red and Green bands were also found to be suitable.  SVML is confirmed as the most accurate algorithm (0.904, 0.041 SD) while ANN showed the lowest value of 0.891 (0.073 SD).  SVMR and RF obtain 0.902 (0.060 SD) and 0.904 (0.056 SD) respectively.  SVML was found to be the best method given its low standard deviation. Research highlights: The similar high accuracy values among models confirm the importance of taking into account diverse machine-learning methods for stand types classification purposes and different explanatory variables.  Although differences between errors may not seem relevant at a first glance, due to the limited size of the study area with only three plus two categories, such differences could be highly important when working at large scales with more stand types. ADDITIONAL KEY WORDS RF algorithm, SVML algorithm, SVMR algorithm, ANN algorithm, LiDAR, orthophotography, Sentinel-2 ABBREVIATIONS USED ANN, artificial neural networks algorithm; Band04, Sentinel-2 band 04 image data; BR, brezal; DTHM, digital tree height model; DTHM-2016, digital tree height model based on 2016 LiDAR data; DTM, digital terrain model; DTM-2016, digital terrain model based on 2016 LiDAR data; FBA, fayal-brezal-acebiñal; FCC, canopy cover; HEIGHT-2009, maximum height based on 2009 LiDAR data; HGR, height growth based on 2009 and 2016 LiDAR data; LA, laurisilva; NDVI705, Sentinel-2 index image data; NMF, non-Monteverde forest; NMG, non-Monteverde ground; P95-2016, height percentile 95 based on 2016 LiDAR data; RATIO R/G, ratio between Red and Green bands orthophotograph data; RED, Red band orthophotograph data; Red-SD, standard deviation of the Red band orthophotograph data; RF, random forest algorithm; SVM, support vector machine algorithm; SVML, linear support vector machine algorithm; SVMR, radial support vector machine algorithm; VSURF, variable selection using random forest.http://revistas.inia.es/index.php/fs/article/view/13686RF algorithmSVML algorithmSVMR algorithmANN algorithmLiDARorthophotographySentinel-2
collection DOAJ
language English
format Article
sources DOAJ
author Miguel Garcia-Hidalgo
Ángela Blázquez-Casado
Beatriz Águeda
Francisco Rodriguez
spellingShingle Miguel Garcia-Hidalgo
Ángela Blázquez-Casado
Beatriz Águeda
Francisco Rodriguez
Stand types discrimination comparing machine-learning algorithms in Monteverde, Canary Islands.
Forest Systems
RF algorithm
SVML algorithm
SVMR algorithm
ANN algorithm
LiDAR
orthophotography
Sentinel-2
author_facet Miguel Garcia-Hidalgo
Ángela Blázquez-Casado
Beatriz Águeda
Francisco Rodriguez
author_sort Miguel Garcia-Hidalgo
title Stand types discrimination comparing machine-learning algorithms in Monteverde, Canary Islands.
title_short Stand types discrimination comparing machine-learning algorithms in Monteverde, Canary Islands.
title_full Stand types discrimination comparing machine-learning algorithms in Monteverde, Canary Islands.
title_fullStr Stand types discrimination comparing machine-learning algorithms in Monteverde, Canary Islands.
title_full_unstemmed Stand types discrimination comparing machine-learning algorithms in Monteverde, Canary Islands.
title_sort stand types discrimination comparing machine-learning algorithms in monteverde, canary islands.
publisher Instituto Nacional de Investigación y Tecnología Agraria y Alimentaria
series Forest Systems
issn 2171-9845
publishDate 2018-12-01
description Aim of study: The main objective is to determine the best machine-learning algorithm to classify the stand types of Monteverde forests combining LiDAR, orthophotography, and Sentinel-2 data, thus providing an easy and cheap method to classify Monteverde stand types. Area of study: 1500 ha forest in Monteverde, North Tenerife, Canary Islands. Material and methods: RF, SVML, SVMR and ANN algorithms are used to classify the three Monteverde stand types.  Before training the model, feature selection of LiDAR, orthophotography, and Sentinel-2 data through VSURF was carried out.  Comparison of its accuracy was performed. Main results: Five LiDAR variables were found to be the most efficient for classifying each object, while only one Sentinel-2 index and one Sentinel-2 band was valuable.  Additionally, standard deviation and mean of the Red orthophotography colour band, and ratio between Red and Green bands were also found to be suitable.  SVML is confirmed as the most accurate algorithm (0.904, 0.041 SD) while ANN showed the lowest value of 0.891 (0.073 SD).  SVMR and RF obtain 0.902 (0.060 SD) and 0.904 (0.056 SD) respectively.  SVML was found to be the best method given its low standard deviation. Research highlights: The similar high accuracy values among models confirm the importance of taking into account diverse machine-learning methods for stand types classification purposes and different explanatory variables.  Although differences between errors may not seem relevant at a first glance, due to the limited size of the study area with only three plus two categories, such differences could be highly important when working at large scales with more stand types. ADDITIONAL KEY WORDS RF algorithm, SVML algorithm, SVMR algorithm, ANN algorithm, LiDAR, orthophotography, Sentinel-2 ABBREVIATIONS USED ANN, artificial neural networks algorithm; Band04, Sentinel-2 band 04 image data; BR, brezal; DTHM, digital tree height model; DTHM-2016, digital tree height model based on 2016 LiDAR data; DTM, digital terrain model; DTM-2016, digital terrain model based on 2016 LiDAR data; FBA, fayal-brezal-acebiñal; FCC, canopy cover; HEIGHT-2009, maximum height based on 2009 LiDAR data; HGR, height growth based on 2009 and 2016 LiDAR data; LA, laurisilva; NDVI705, Sentinel-2 index image data; NMF, non-Monteverde forest; NMG, non-Monteverde ground; P95-2016, height percentile 95 based on 2016 LiDAR data; RATIO R/G, ratio between Red and Green bands orthophotograph data; RED, Red band orthophotograph data; Red-SD, standard deviation of the Red band orthophotograph data; RF, random forest algorithm; SVM, support vector machine algorithm; SVML, linear support vector machine algorithm; SVMR, radial support vector machine algorithm; VSURF, variable selection using random forest.
topic RF algorithm
SVML algorithm
SVMR algorithm
ANN algorithm
LiDAR
orthophotography
Sentinel-2
url http://revistas.inia.es/index.php/fs/article/view/13686
work_keys_str_mv AT miguelgarciahidalgo standtypesdiscriminationcomparingmachinelearningalgorithmsinmonteverdecanaryislands
AT angelablazquezcasado standtypesdiscriminationcomparingmachinelearningalgorithmsinmonteverdecanaryislands
AT beatrizagueda standtypesdiscriminationcomparingmachinelearningalgorithmsinmonteverdecanaryislands
AT franciscorodriguez standtypesdiscriminationcomparingmachinelearningalgorithmsinmonteverdecanaryislands
_version_ 1725229731883778048