2023
DOI: 10.1088/1755-1315/1190/1/012012
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Landslide inventory mapping derived from multispectral imagery by Support Vector Machine (SVM) algorithm

Abstract: Indonesia is located right on the equator, which receives a lot of heat from the sun and rainfall. Therefore, Indonesia is prone to hydro meteorological natural disasters such as droughts, large sea waves, erosion, floods and landslides. The National Disaster Management Agency (BNPB) noted that floods are followed by landslides of the total hydro-meteorological disasters that most often occur in Indonesia. An inventory of the distribution of multi-year landslides is essential as a basis for disaster mitigation… Show more

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Cited by 2 publications
(2 citation statements)
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“…The Landsat image was then classified using Support Vector Machines (SVM) algorithm as Supervised Classification method. This SVM algorithm is susceptible to distinguishing objects and requires simple training data [13]. For the classification classes, we took GPS of training sites from different land cover samples.…”
Section: Fig 1 Flowchart Landslide Mappingmentioning
confidence: 99%
“…The Landsat image was then classified using Support Vector Machines (SVM) algorithm as Supervised Classification method. This SVM algorithm is susceptible to distinguishing objects and requires simple training data [13]. For the classification classes, we took GPS of training sites from different land cover samples.…”
Section: Fig 1 Flowchart Landslide Mappingmentioning
confidence: 99%
“…These region images are then converted into feature vectors and passed to a classifier for training. Finally, classifiers such as SVM [12], Bayesian networks, random forests, BP neural networks, etc., are employed to compare these extracted features with a set of existing standard features to determine whether the image contains fire. Qiu et al [13] proposed a new algorithm to clearly and continuously define the edges of flames and fire spots.…”
Section: Introductionmentioning
confidence: 99%