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Landslide recognition using SVM, Random Forest, and Maximum Likelihood classifiers on high-resolution satellite images: A case study of Itaóca, southeastern Brazil

Abstract

Landslide identification is important for understanding their conditioning factors, and for constructing susceptibility, risk, and vulnerability maps. In remote sensing this can be accomplished manually or through classifiers. This study compares three image classifiers (Maximum Likelihood, Random Forest, and Support Vector Machines (SVM)) used in identifying landslides in Itaóca (São Paulo, Brazil). Two datasets were used: a RapidEye-5 (5 m) image and a Shuttle Radar Topography Mission (SRTM) digital elevation model (DEM) (12.5 m). Seven pixel-based classifications were produced, two for each classifier and a binary class that identified only landslides and non-landslides. One classification contained five spectral bands (5B), while the other contained six bands (6B) and included the slope derived from the DEM. The results were validated using Kappa index and F1 score. The SVM 6B classification achieved the best results among the validation indices used herein. It identified a landslide area of 399,325 m². The results contribute to landslide mapping in tropical environments using pixel-based classifiers. However, although the SVM classification was successful, only landslides with larger areas were captured by the algorithms, confirming the importance of conducting further analyses using images with finer spatial resolution.

KEYWORDS:
mass movement; pixel classification; supervised classification; RapidEye Multispectral image; digital elevation model

INTRODUCTION

Shallow landslides are very common in mountainous regions with steep slopes and in densely occupied cities. They are responsible for moving material from different origins and with different volumes and have long-range power, which can cause severe social and economic damage in a region. Shallow landslides can be defined as the movement of a cohesive mass in a sloping area with variable speed and planar rupture surface, which can be controlled by discontinuities or more fragile layers (Hungr et al. 2014Hungr O., Leroueil S., Picarelli L. 2014. The Varnes classification of landslide types, an update. Landslides, 11:167-194. https://doi.org/10.1007/s10346-013-0436-y
https://doi.org/https://doi.org/10.1007/...
). They occur frequently in Brazil because its climate and physical features are often reported to trigger landslides in some regions (IBGE, 2019Instituto Brasileiro de Geografia e Estatística (IBGE). 2019. Suscetibilidade a deslizamentos do Brasil: primeira aproximação. Rio de Janeiro: Coordenação de Recursos Naturais e Estudos Ambientais, 56 p.). The often-disordered occupation of some cities tends to increase the occurrence of landslides and cause damage to the residents (IBGE, 2019Instituto Brasileiro de Geografia e Estatística (IBGE). 2019. Suscetibilidade a deslizamentos do Brasil: primeira aproximação. Rio de Janeiro: Coordenação de Recursos Naturais e Estudos Ambientais, 56 p.). Landslides of large magnitude have been triggered in several cities and states in Brazil, such as Caraguatatuba, São Paulo (1967), Cubatão, São Paulo (1985), Angra dos Reis, Rio de Janeiro (2010), Nova Friburgo, Rio de Janeiro (2011), and Antonina, Paraná (2011) (Vieira and Gramani 2015Vieira B.C., Gramani M.F. 2015. Serra do Mar: the most “tormented” relief in Brazil. In: Vieira B.C., Salgado A.A.R., Santos L.J.C. (Eds.). Landscapes and landforms of Brazil: world geomorphological landscapes. Dordrecht: Springer, 403 p. http://dx.doi.org/10.1007/978-94-017-8023-0_26
https://doi.org/http://dx.doi.org/10.100...
).

Certain morphological, pedological, and geological conditions increase the susceptibility of regions to shallow landslides (Dias et al. 2017Dias H.C., Dias V.C., Vieira B.C. 2017. Condicionantes morfológicos e geológicos dos escorregamentos rasos na bacia do Rio Santo Antônio, Caraguatatuba / SP. Revista do Departamento de Geografia - USP, volume especial (8):157-163. https://doi.org/10.11606/rdg.v0ispe.132714
https://doi.org/https://doi.org/10.11606...
, Hussain et al. 2019Hussain Y., Cardenas-Soto M., Uagoda R., Martino S., Rodriguez-Rebolledo J., Hamza O., Martinez-Carvajal H. 2019. Monitoring of Sobradinho landslide (Brasília, Brazil) and a prototype vertical slope by time-lapse interferometry. Brazilian Journal of Geology, 49(2):1-11. https://doi.org/10.1590/2317-4889201920180085
https://doi.org/https://doi.org/10.1590/...
, Cerri et al. 2020Cerri R.I., Rosolen V., Reis F.A.G.V., Pereira Filho A.J., Vemado F., Giordano L.C., Gabelini B.M. 2020. The assessment of soil chemical, physical, and structural properties as landslide predisposing factors in the Serra do Mar mountain range (Caraguatatuba, Brazil). Bulletin of Engineering Geology and the Environment, 79:3307-3320. https://doi.org/10.1007/s10064-020-01791-1
https://doi.org/https://doi.org/10.1007/...
). Morphological constraints affect slope conditions that influence its stability (Sidle et al. 1985Sidle R.C., Pearce A.J., O’Loughlin C.L. 1985. Hillslope stability and land use. Washington, D.C.: John Wiley & Sons.). One of the most important constraints is slope angle. Shallow landslides are directly affected by gravity, and a higher occurrence and susceptibility to these processes has been observed in several locations with slope angles of more than 25° (Pachauri and Pant 1992Pachauri A.K., Pant M. 1992. Landslide hazard mapping based on geological attributes. Engineering Geology, 32(1-2):81-100. https://doi.org/10.1016/0013-7952(92)90020-Y
https://doi.org/https://doi.org/10.1016/...
, Fernandes et al. 2001Fernandes N.F., Guimarães R.F., Gomes R.A.T., Vieira B.C., Montgomery D.R., Greenberg H. 2001. Condicionantes geomorfológicos dos deslizamentos nas encostas: Avaliação de metodologias e aplicação de modelo de previsão de áreas susceptíveis. In: Revista Brasileira de Geomorfologia, 2(1):51-71. http://dx.doi.org/10.20502/rbg.v2i1.8
https://doi.org/http://dx.doi.org/10.205...
, Zhou et al. 2002Zhou C.H., Lee C.F., Li J., Xu Z.W. 2002. On the spatial relationship between landslides and causative factors on Lantau Island, Hong Kong. Geomorphology, 43(3-4):197-207. https://doi.org/10.1016/S0169-555X(01)00130-1
https://doi.org/https://doi.org/10.1016/...
, Nery and Vieira 2015Nery T.D., Vieira B.C. 2015. Susceptibility to shallow landslides in a drainage basin in the Serra do Mar, São Paulo, Brazil, predicted using the SINMAP mathematical model. In: Bulletin of Engineering Geology and the Environment, 74:369-378. https://doi.org/10.1007/s10064-014-0622-8
https://doi.org/https://doi.org/10.1007/...
, Dias et al. 2017Dias H.C., Dias V.C., Vieira B.C. 2017. Condicionantes morfológicos e geológicos dos escorregamentos rasos na bacia do Rio Santo Antônio, Caraguatatuba / SP. Revista do Departamento de Geografia - USP, volume especial (8):157-163. https://doi.org/10.11606/rdg.v0ispe.132714
https://doi.org/https://doi.org/10.11606...
).

Identifying susceptibility, vulnerability, and risk of landslide processes is based on different datasets, including inventories (van Westen et al. 2008Van Westen C.J., Catellanos E., Kuriakone S.L. 2008. Spatial data for landslide susceptibility, hazard and vulnerability assessment: an overview. Engineering Geology, 102(3-4):112-131. http://dx.doi.org/10.1016/j.enggeo.2008.03.010
https://doi.org/http://dx.doi.org/10.101...
). Susceptibility mapping for shallow landslides is a very common approach for mass movements studies (Dou et al. 2020Dou J., Yunus A.P., Bui D.T., Merghadi A., Sahana M., Zhu Z., Chen C.W., Han Z., Pham B.T. 2020. Improved landslide assessment using support vector machine with bagging, boosting, and stacking ensemble machine learning framework in a mountainous watershed, Japan. Landslides, 17:641-658. https://doi.org/10.1007/s10346-019-01286-5
https://doi.org/https://doi.org/10.1007/...
, Merghadi et al. 2020Merghadi A., Yunus A.P., Dou J., Whiteley J., ThaiPham B., Bui D.T., Avtar R., Abderrahmane B. 2020. Machine learning methods for landslide susceptibility studies: A comparative overview of algorithm performance. Earth-Science Reviews, 207:103225. https://doi.org/10.1016/j.earscirev.2020.103225
https://doi.org/https://doi.org/10.1016/...
, Wang et al. 2020Wang W., He Z., Han Z., Li Y., Dou J., Huang J. 2020. Mapping the susceptibility to landslides based on the deep belief network: a case study in Sichuan Province, China. Natural Hazards, 103:3239-3261. https://doi.org/10.1007/s11069-020-04128-z
https://doi.org/https://doi.org/10.1007/...
, Dias et al. 2021Dias H.C., Gramani M.F., Grohmann C.H., Bateira C., Vieira B.C. 2021. Statistical-based shallow landslide susceptibility assessment for a tropical environment: a case study in the southeastern Brazilian coast. Natural Hazards, 108:205-223. https://doi.org/10.1007/s11069-021-04676-y
https://doi.org/https://doi.org/10.1007/...
). Landslide detection and mapping are the first steps to assess the susceptibility, vulnerability, and risk of this type of natural hazard. For example, susceptibility assessment methods are developed based on the premise that future landslides will occur under the same conditions that triggered landslides in the past (Aleotti and Chowdhury 1999Aleotti P., Chowdhury R. 1999. Landslide hazard assessment: summary review and new perspectives. Bulletin of Engineering Geology and the Environment, 58:21-44. https://doi.org/10.1007/s100640050066
https://doi.org/https://doi.org/10.1007/...
, Guzzetti et al. 2012Guzzetti F., Mondini A.C., Cardinali M., Fiorucci F., Santangelo M., Chang K.T. 2012. Landslide inventory maps: new tools for an old problem. Earth-Science Reviews, 112(1-2):42-66. https://doi.org/10.1016/j.earscirev.2012.02.001
https://doi.org/https://doi.org/10.1016/...
). Therefore, the use of inventories forms the basis for any predictive analysis of landslides. The landslide inventory is a crucial factor since mapping accuracy directly depends on its results, and inventories with errors can modify the susceptibility analyses to create distortions in the mapping (Steger et al. 2016Steger S., Brenning A., Bell R., Glade T. 2016. The propagation of inventory-based positional errors into statistical landslide susceptibility models. Natural Hazards and Earth System Sciences, 16:2729-2745. http://dx.doi.org/10.5194/nhess-2016-301
https://doi.org/http://dx.doi.org/10.519...
).

According to Guzzetti et al. (2012Guzzetti F., Mondini A.C., Cardinali M., Fiorucci F., Santangelo M., Chang K.T. 2012. Landslide inventory maps: new tools for an old problem. Earth-Science Reviews, 112(1-2):42-66. https://doi.org/10.1016/j.earscirev.2012.02.001
https://doi.org/https://doi.org/10.1016/...
), landslide inventories can be constructed with different objectives, from a geomorphological or a historical (e.g., event; seasonal; multi-temporal) perspective. Mapping shallow landslides in the landscape is crucial for the prevention and improved understanding of these processes’ dynamics. Scars on the landscape can be identified manually, semi-automatically, or automatically (Hölbling et al. 2017Hölbling D., Eisank C., Albrecht F., Vecchiotti F., Friedl B., Weinke E., Kociu A. 2017. Comparing Manual and Semi-Automated Landslide Mapping Based on Optical Satellite Images from Different Sensors. Geosciences, 7(2):37. https://doi.org/10.3390/geosciences7020037
https://doi.org/https://doi.org/10.3390/...
). Conventionally, geomorphological field mapping and visual interpretations of aerial photographs have also been used for landslide identification (Guzzetti et al. 2012Guzzetti F., Mondini A.C., Cardinali M., Fiorucci F., Santangelo M., Chang K.T. 2012. Landslide inventory maps: new tools for an old problem. Earth-Science Reviews, 112(1-2):42-66. https://doi.org/10.1016/j.earscirev.2012.02.001
https://doi.org/https://doi.org/10.1016/...
). Recently, high or very high-resolution satellite images have been frequently used for landslide mapping (Hölbling et al. 2017Hölbling D., Eisank C., Albrecht F., Vecchiotti F., Friedl B., Weinke E., Kociu A. 2017. Comparing Manual and Semi-Automated Landslide Mapping Based on Optical Satellite Images from Different Sensors. Geosciences, 7(2):37. https://doi.org/10.3390/geosciences7020037
https://doi.org/https://doi.org/10.3390/...
).

Although many studies on inventories have been conducted, the criteria for mapping are yet incipient and variable (Guzzetti et al. 2012Guzzetti F., Mondini A.C., Cardinali M., Fiorucci F., Santangelo M., Chang K.T. 2012. Landslide inventory maps: new tools for an old problem. Earth-Science Reviews, 112(1-2):42-66. https://doi.org/10.1016/j.earscirev.2012.02.001
https://doi.org/https://doi.org/10.1016/...
). Different methods have been used to analyze multispectral images aiming at landslide recognition, including the application of indices, such as pixel-based classifications (Marcelino et al. 2009Marcelino E.V., Formaggio A.R., Maeda E.E. 2009. Landslide inventory using image fusion techniques in Brazil. International Journal of Applied Earth Observation and Geoinformation, 11(3):181-191. https://doi.org/10.1016/j.jag.2009.01.003
https://doi.org/https://doi.org/10.1016/...
), object-based classifications (Stumpf and Kerle 2011Stumpf A., Kerle N. 2011. Object-oriented mapping of landslides using Random Forests. Remote Sensing of Environment, 115(10):2564-2577. https://doi.org/10.1016/j.rse.2011.05.013
https://doi.org/https://doi.org/10.1016/...
, Dou et al. 2015Dou J., Chang K.T., Chen S., Yunus A.P., Liu J.K., Xia H., Zhu Z. 2015. Automatic Case-Based Reasoning Approach for Landslide Detection: Integration of Object-Oriented Image Analysis and a Genetic Algorithm. In: Remote Sensing, 7(4):4318-4342. https://doi.org/10.3390/rs70404318
https://doi.org/https://doi.org/10.3390/...
, Comert et al. 2019Comert R., Avdan U., Gorum T., Nefeslioglu H.A. 2019. Mapping of shallow landslides with object-based image analysis from unmanned aerial vehicle data. Engineering Geology, 260:105264. https://doi.org/10.1016/j.enggeo.2019.105264
https://doi.org/https://doi.org/10.1016/...
), and convolution networks (Lei et al. 2019Lei T., Zhang Y., Lv Z., Li S., Liu S., Nandi A.K. 2019. Landslide Inventory Mapping from Bitemporal Images Using Deep Convolutional Neural Networks. IEEE, 16(6):982-986. http://dx.doi.org/10.1109/LGRS.2018.2889307
https://doi.org/http://dx.doi.org/10.110...
, Wang et al. 2021Wang H., Zhang L., Yin K., Luo H., Li J. 2021. Landslide identification using machine learning. Geoscience Frontiers, 12(1):351-364. http://dx.doi.org/10.1016/j.gsf.2020.02.012
https://doi.org/http://dx.doi.org/10.101...
). The objective of this study was to compare the performances of three image classifiers (Maximum Likelihood, Random Forest, and Support Vector Machines) in identifying shallow landslides generated during a 2014 high precipitation event in the city of Itaóca (São Paulo, southeastern Brazil).

STUDY AREA

The city of Itaóca is located in the southern part of São Paulo State, in Brazil, and has a total area of 183 km² (Fig. 1). The city borders four municipalities: Apiaí (SP), Iporanga (SP), Ribeira (SP), and Adrianópolis (PR) and is part of the Ribeira do Iguape River Basin.

Figure 1.
Location of the city of Itaóca in relation to Brazil and the state of São Paulo.

The relief in this region is strongly undulating and mountainous, with steep slopes, high drainage density, and deep, narrow valleys. Local geology is characterized by Itaóca granite (80% of the area), metasedimentary rocks of the Serra da Boa Vista Hill and Betari Hill formations, and to a lesser extent by Quaternary contact metamorphic rocks (hornfels) and alluvial sediments (Brollo et al. 2015Brollo M.J., Santoro J., Penteado D.R., Fernandes P.C.S, Ribeiro R.R. 2015. Itaóca (SP): Histórico de acidentes e desastres relacionados a perigos geológicos. In: Simpósio de Geologia do Sudeste, 14., 2015, Campos do Jordão. Annals... p. 1-5.). The municipality has a humid subtropical climate (Cfa) with hot summers (Köppen 1936Köppen W. 1936. Das geographische System der Klimate. In: Köppen W., Geiger R. (eds.). Handbuch der Klimatologie. Berlin: Gerbrüder Bornträger, Part C, v. 1, p. C1-C44.). Temperatures are higher than 22°C during the summer and the area receives more than 30 mm of rain in the driest month.

In 2014, between January 12th and 13th, a large magnitude event occurred in the area, with high rainfall rates of 105 mm/h (Gramani and Martins 2015Gramani M.F., Martins V.T.S. 2015. Debris flows occurrence by intense rains at Itaoca city, São Paulo, Brazil: Field observations. In: Aversa F., Cascini L., Picarelli L., Scavia C. (Eds.). Landslides and engineered slopes: experience, theory and practice. Boca Raton: CRS Press, p. 1011-1019.). In the city, intense rain resulted in a sudden flood, generalized landslides, debris flows, and floods with large movements of material (Fig. 2). The event resulted in 25 deaths, 3 missing people, and left 203 homeless, in addition to the damage caused to local housing and infrastructure (Brollo et al. 2015Brollo M.J., Santoro J., Penteado D.R., Fernandes P.C.S, Ribeiro R.R. 2015. Itaóca (SP): Histórico de acidentes e desastres relacionados a perigos geológicos. In: Simpósio de Geologia do Sudeste, 14., 2015, Campos do Jordão. Annals... p. 1-5.).

Figure 2.
2014 mass movement event. Shallow landslides triggered in Itaóca, São Paulo.

IMAGE CLASSIFICATION

The image classification process consists of assigning each pixel of an image to one among a group of classes (Jensen 2007Jensen J.R. 2007. Remote sensing of environment: an earth resource perspective. Hoboken: Prentice Hall, 619 p., Meneses and Almeida 2012Meneses P.R., Almeida T. 2012. Introdução ao processamento de imagens de sensoriamento remoto. Brasília: Editora UnB, 277 p., Lillesand et al. 2015Lillesand T.M., Kiefer R.W., Chipman J.W. 2015. Remote sensing and image interpretation. 7ª ed. Chichester: John Wiley & Sons, 736 p.). The classification methods can be grouped according to different criteria, such as supervised or unsupervised classification, or classification by pixel and region. Pixel classification uses only the spectral information from each pixel to identify homogeneous areas based on distance measurements or the probability of a pixel belonging to a specific class (Meneses and Almeida 2012Meneses P.R., Almeida T. 2012. Introdução ao processamento de imagens de sensoriamento remoto. Brasília: Editora UnB, 277 p., Lillesand et al. 2015Lillesand T.M., Kiefer R.W., Chipman J.W. 2015. Remote sensing and image interpretation. 7ª ed. Chichester: John Wiley & Sons, 736 p.). In classification by region, the decision process uses a group of pixels as a classification unit. Supervised classification requires prior knowledge of the target classes to classify the image in pre-defined classes of interest. Unsupervised classification requires little or no participation of the user in the classification process, and is generally used when information is lacking on the number and nature of the target classes present at a site, or when an exploratory classification of the image is necessary to readily identify target classes in the image (Meneses and Almeida 2012Meneses P.R., Almeida T. 2012. Introdução ao processamento de imagens de sensoriamento remoto. Brasília: Editora UnB, 277 p.). In this study, three supervised and pixel classifiers were used to identify shallow landslides in the image, namely: Maximum Likelihood, Random Forest, and Support Vector Machines (SVM).

Maximum likelihood

Maximum likelihood is a classification tool that uses the weighted distances between the mean values of the pixel values of the classes, which are defined using statistical parameters (Meneses and Almeida 2012Meneses P.R., Almeida T. 2012. Introdução ao processamento de imagens de sensoriamento remoto. Brasília: Editora UnB, 277 p.). This method determines the probability of a pixel belonging to a certain class pre-defined by the user (Ahmad and Quegan 2012Ahmad A., Quegan S. 2012. Analysis of maximum likelihood classification on multispectral data. Applied Mathematical Sciences, 6(129):6425-6436. https://doi.org/10.1109/ICCSCE.2012.6487156
https://doi.org/https://doi.org/10.1109/...
, Meneses and Almeida 2012Meneses P.R., Almeida T. 2012. Introdução ao processamento de imagens de sensoriamento remoto. Brasília: Editora UnB, 277 p.). This classifier is widely used to identify features in satellite images due to its accessibility (Lu and Weng 2007Lu D., Weng Q. 2007. A survey of image classification methods and techniques for improving classification performance. International Journal of Remote Sensing, 28(5):823-870. http://dx.doi.org/10.1080/01431160600746456
https://doi.org/http://dx.doi.org/10.108...
) and previously obtained favorable results in the classification of landslides (Marcelino et al. 2009Marcelino E.V., Formaggio A.R., Maeda E.E. 2009. Landslide inventory using image fusion techniques in Brazil. International Journal of Applied Earth Observation and Geoinformation, 11(3):181-191. https://doi.org/10.1016/j.jag.2009.01.003
https://doi.org/https://doi.org/10.1016/...
, Pawluszek et al. 2018Pawluszek K., Borkowski A., Tarolli P. (2018). Sensitivity analysis of automatic landslide mapping: numerical experiments towards the best solution. Landslides, 15:1851-1865. https://doi.org/10.1007/s10346-018-0986-0
https://doi.org/https://doi.org/10.1007/...
).

Random forest

Random Forest classifier is a combination of decision trees where each tree provides a classification label, with most of the chosen classes being considered a decision. It consists of a collection of tree-structured classifiers that build rules through binary partitioning in regions that are homogeneous in relation to the variable class (Cutler et al. 2007Cutler D.R., Edwards Jr. T.C., Beard K.H., Cutler K., Hess K.T., Gibson J., Lawler J.J. 2007. Random Forest for classification in Ecology. Ecology, 88(11):2783-2792. https://doi.org/10.1890/07-0539.1
https://doi.org/https://doi.org/10.1890/...
). After generating a large number of trees, the most popular class is voted for. This method is widely applied to identify landslides (Stumpf and Kerle 2011Stumpf A., Kerle N. 2011. Object-oriented mapping of landslides using Random Forests. Remote Sensing of Environment, 115(10):2564-2577. https://doi.org/10.1016/j.rse.2011.05.013
https://doi.org/https://doi.org/10.1016/...
, Wang et al. 2021Wang H., Zhang L., Yin K., Luo H., Li J. 2021. Landslide identification using machine learning. Geoscience Frontiers, 12(1):351-364. http://dx.doi.org/10.1016/j.gsf.2020.02.012
https://doi.org/http://dx.doi.org/10.101...
).

Support vector machines

SVM is a classifier that features learning algorithms and analyzes the data used for classification and regression (Boser et al. 1992Boser B.E., Guyon I.M., Vapnik V.N. 1992. A training algorithm for optimal margin classifiers. In: The Workshop on Computational Learning Theory, p. 144-152.). SVM uses sample data for training to create a reliable model that accurately classifies the samples in each class. In the case of a two-class pattern recognition problem in which the classes are linearly separated, SVM selects the result from an infinite number of linear decision limits which minimizes the generalization error (Pal and Mather 2005Pal M., Mather P.M. 2005. Support vector machines for classification in remote sensing. International Journal of Remote Sensing, 26(5):1007-1011. https://doi.org/10.1080/01431160512331314083
https://doi.org/https://doi.org/10.1080/...
). SVM is currently considered to be a stable and accurate classifier, with superior performance compared to traditional pattern recognition techniques (Chunhui et al. 2018Chunhui Z., Bing G., Lejun Z., Xiaoqing W. 2018. Classification of Hyperspectral Imagery based on spectral gradient, SVM and spatial random forest. Infrared Physics & Technology, 95:61-69. https://doi.org/10.1016/j.infrared.2018.10.012
https://doi.org/https://doi.org/10.1016/...
), and has been widely applied to identify landslides (Pawluszek et al. 2018Pawluszek K., Borkowski A., Tarolli P. (2018). Sensitivity analysis of automatic landslide mapping: numerical experiments towards the best solution. Landslides, 15:1851-1865. https://doi.org/10.1007/s10346-018-0986-0
https://doi.org/https://doi.org/10.1007/...
, Wang et al. 2021Wang H., Zhang L., Yin K., Luo H., Li J. 2021. Landslide identification using machine learning. Geoscience Frontiers, 12(1):351-364. http://dx.doi.org/10.1016/j.gsf.2020.02.012
https://doi.org/http://dx.doi.org/10.101...
).

METHODS

Identification and evaluation of landslides were performed in five steps:

  • Database acquisition;

  • Definition of criteria for landslide identification;

  • Definition of classes mapped by the classifiers;

  • Application of the three classifiers (Maximum Likelihood, Random Forest, and SVM);

  • Validation;

  • Analysis and comparison of the results.

Database

A RapidEye Analytic Ortho Tile multispectral image collected by the RapidEye-5 satellite on August 22nd, 2014 was used. The image has a spatial resolution of 5 m, radiometric resolution of 16 bits, and contains five spectral bands (blue, red, green, red edge, and near infrared) (Planet 2020Planet. 2020. Planet Imagery product specifications. 100 p.). Before the image was made available to the user, it was pre-processed to obtain a radiometrically and geometrically corrected image (Planet 2020Planet. 2020. Planet Imagery product specifications. 100 p.). Morphological information (slope angle) was derived from a digital elevation model (DEM) from the SRTM mission (Farr et al. 2007Farr T.G., Rosen P.A., Caro E., Crippen R., Duren R., Hensley S., Kobrick M., Paller M., Rodriguez E., Roth L., Seal D., Shaffer S., Shimada J., Umland J., Werner M., Oskin M., Burbank D., Alsdorf D. 2007. The Shuttle Radar Topography Mission. Review of Geophysics, 45(2). http://dx.doi.org/10.1029/2005RG000183
https://doi.org/http://dx.doi.org/10.102...
), processed to remove outlier data, re-sampled to a 12.5 m spatial resolution, and distributed by the Alaska Satellite Facility (ASF DAAC 2020ASF DAAC. 2020. ALOS PALSAR_Radiometric_Terrain_Corrected_high_res; Includes Material JAXA/METI 2011.).

Criteria for the identification of landslide scars

The identification of scars from shallow landslides was based on two visual criteria: the absence of vegetation and the shape of the slope features. These two criteria were used due to the characteristics of shallow landslide processes, as shallow landslides are the gravitational movement of a mass of rock, debris, or earth down a slope (Hungr et al. 2014Hungr O., Leroueil S., Picarelli L. 2014. The Varnes classification of landslide types, an update. Landslides, 11:167-194. https://doi.org/10.1007/s10346-013-0436-y
https://doi.org/https://doi.org/10.1007/...
) that has an elliptical or conical signature. These visual criteria were also used by Lopes et al. (2007Lopes E.S.S., Riedel P.S., Bentz C.M., Ferreira M.V., Naleto J.L.C. 2007. Inventário de escorregamentos naturais em banco de dados geográfico - análise dos fatores condicionantes na região da Serra de Cubatão - SP. In: Simpósio Brasileiro de Sensoriamento Remoto, 13., 2007, Florianópolis, Brazil. Annals... p. 2785-2796.) and Carou et al. (2017Carou C.B., Vieira B.C., Martins T.D., Gramani M.F. 2017. Inventário dos Escorregamentos da Bacia do Rio Gurutuba, Vale do Ribeira (SP). Revista do Departamento de Geografia, 172-179.). Training samples were collected manually and randomly. An example of landslide scar used as sample is presented on Fig. 3.

Figure 3.
Shallow landslides (orange/red) used as training samples. Satellite image: RapidEye (5m) - 08/22/2014.

Definitions of the classes to be mapped

Five classes were selected for mapping by the classifiers: landslides, hydrography, vegetation, pastures, and clouds (Tab. 1). These classes were selected based on visual observations of the land cover pattern in the study area. A binary classification was also performed to evaluate the impact of using only two classes (landslides and non-landslides).

Table 1.
Classes used for classification and their respective characteristics.

Classifiers

Three pixel-based supervised multispectral image classifiers were applied in QGIS 3.14 (QGIS 2020QGIS. 2020. QGIS Geographic Information System, v.3.14. Open Source Geospatial Foundation Project. Available at: Available at: http://qgis.org . Accessed on: Oct. 2020.
http://qgis.org...
): Maximum Likelihood, using the SCP plugin (Luca 2016Luca C. 2016. Semi-Automatic Classification Plugin Documentation.), and Random Forest and SVM using the Dzetsaka plugin (Karasiak 2016Karasiak N. 2016. Dzetsaka QGIS Classification plugin. https://doi.org/10.5281/zenodo.2552284.
https://doi.org/https://doi.org/10.5281/...
). Six classifications were made, two for each classifier: one that contained five bands (5B) and another that contained six bands (6B), including slope information.

Furthermore, a binary classification was performed using maximum likelihood (6B) where only two classes were identified, landslides and non-landslides. Maximum likelihood was selected to the binary analysis as it presented good results in the multiclass classifications.

Validation

Validation was carried out using 502 random points. First, the classifications were validated using the Kappa index (K), a method used to evaluate classification results, with values ranging from 0 (null agreement) to 1 (perfect agreement) (Meneses and Almeida 2012Meneses P.R., Almeida T. 2012. Introdução ao processamento de imagens de sensoriamento remoto. Brasília: Editora UnB, 277 p., Lillesand et al. 2015Lillesand T.M., Kiefer R.W., Chipman J.W. 2015. Remote sensing and image interpretation. 7ª ed. Chichester: John Wiley & Sons, 736 p.).

In addition to the K value, user accuracy was determined, which considers inclusion or commission errors (Hord and Brooner 1976Hord R.M., Brooner W. 1976. Land use map-accuracy criteria. Photogrammetric Engineering and Remote Sensing, 42(5):671-677., Rosenfield et al. 1982Rosenfield G.H., Fitzptrik-Lins K.A., Ling S.H. 1982. Sampling for thematic map accuracy testing. Photogrammetric Engineering and Remote Sensing, 48(1):131-137., Rosenfield and Fitzpatrick-Lins 1986Rosenfield G.H., Fitzpatrik-Lins K.A. 1986. Coefficient of agreement as measure of thematic classification accuracy. Photogrammetric Engineering and Remote Sensing, 52(2):223-227., Congalton 1991Congalton R. 1991. A review of assessing the accuracy of classification remotely sensed data. Remote Sensing of Environment, 37(1):35-36. https://doi.org/10.1016/0034-4257(91)90048-B
https://doi.org/https://doi.org/10.1016/...
). User accuracy (also called sensitivity) indicates the probability that a classified class (map/image) actually represents the same category. Producer accuracy (or accuracy) was also evaluated, which considers exclusion or omission errors. Accuracy indicates the probability that a given class has been correctly classified according to the training data (Rosenfield et al. 1982Rosenfield G.H., Fitzptrik-Lins K.A., Ling S.H. 1982. Sampling for thematic map accuracy testing. Photogrammetric Engineering and Remote Sensing, 48(1):131-137., Story and Congalton 1986Story M., Congalton R. 1986. Accuracy assessment: a user’s perspective. Photogrammetric Engineering and Remote Sensing, 52(3):379-399.). The relationship between producer accuracy (accuracy) and user accuracy (sensitivity) was calculated using the F1 score, according to Equations 1, 2, and 3:

A c c u r a c y = T P / ( T P + F P ) (1)

S e n s i v i t y = T P / ( T P + F N ) (2)

F 1 S c o r e = 2 * A c c u r a c y * S e n s i v i t y ( A c c u r a c y + S e n s i v i t y ) (3)

where:

  • TP:  the pixels that were correctly identified by the classifier (true positive);
  • FP:  the pixels that were classified incorrectly (false positive);
  • FN:  the pixels that belong to the class and were not classified correctly (false negative).

RESULTS AND DISCUSSION

Shallow landslides were identified in two datasets using the three aforementioned supervised pixel-based classifiers, one being the multispectral image (RapidEye) and the other including slope as a sixth band (RapidEye + SRTM slope). Morphological characteristics are important and should be considered for landslides recognition. In this paper, 6B classifications considered slope information, which is one of the most important predisposing factors to landslides (Sidle et al. 1985Sidle R.C., Pearce A.J., O’Loughlin C.L. 1985. Hillslope stability and land use. Washington, D.C.: John Wiley & Sons.). Slope provides information about the angle of the slope, some angles can be more prone to landslides than others and directly influence their occurrence. Additionally, a binary classification was performed to analyze the differences in the identification of only two classes, landslides, and non-landslides. Fig. 4 presents a visual comparison of the classifiers with the RapidEye (5B), RapidEye + SRTM slope (6B), and binary classification datasets only for those areas of the image where the landslides are visible.

Figure 4.
Classifications generated by the three classifiers. (A) Maximum Likelihood classification of the 5-band image (5B - RapidEye); (B) Maximum Likelihood classification of the 6-band image (6B - RapidEye + SRTM slope); (C) Random Forest classification of the 5-band image; (D) Random Forest classification of the 6-band image; (E) SVM classification of the 5-band image; (F) SVM classification of the 5-band image; (G) Maximum Likelihood classifier (Binary classification)- 6B; (H) RapidEye satellite image.

The classifications defined different areas for each class (Tab. 2). The Maximum Likelihood, SVM, and Random Forest classifiers applied to the 5B image identified areas for the landslide class of 679,100 m², 327,475 m², and 423,975 m², respectively. For the 6B image, these classifiers identified areas of 1,151,150 m², 443,375 m², and 399,325 m², respectively. For the binary classification (6B), an area of 549,075 m² was identified for landslides. The large differences in the values reflected the randomness of the classifiers used for the identification process.

Table 2.
Areas (m2) identified for each class in each multi-class classification.

The Kappa index (K) was then determined to validate the results (Tab. 3). The best classifications were found to be those of the Random Forest 5B (75.6%) and SVM 5B (75.5%), followed by the Maximum Likelihood 5B (74.2%). The binary classification had the lowest K value (3.75%). The first three classifications produced good results in the study area. The overall accuracies were 90.2% for the Random Forest 5B and SVM 5B classifications, 88.2% for the Maximum Likelihood 5B classification, and 60.8% for the binary classification. When observing the user accuracy for the landslide class (Tab. 3), the highest value (83.3%) was obtained by the SVM classification of the 6-band image and the lowest value (37.5%) was obtained for Maximum Likelihood from the 6-band image. The other classifications varied between 60 and 66.7% for both images. Moreover, the landslide class had a producer accuracy of 30.8% for both the Random Forest (5B and 6B) and SVM 5B classifications. The highest accuracy was 46.2% for the Maximum Likelihood 5B and 6B classifications.

Table 3.
Accuracies of the three classifications in the landslide class images.

The classifications of the 5B image obtained K values higher than those of the 6B image. Although the same was true for overall accuracy, there was a significant increase in user accuracy (83.3%) in the SVM 6B, compared to the SVM 5B (66.7%). According to the F1 score, the classification with the highest overall accuracy was the SVM 6B at 52.6%, followed by the Maximum Likelihood 5B at 52.2%. The binary classification exhibited low K values (3.8%) and overall accuracy (60.8%). These results could be attributed to the classification of a large number of non-landslides areas, such as clouds and rivers, as landslides. In the binary classification, classes with similar spectral response could not be distinguished, which may have led to further errors.

A detailed analysis of three sectors with different characteristics was also conducted. The aim of this analysis was to demonstrate the difficulty in identifying classes using the selected classifiers. According to the sectors defined in Fig. 4H, Sector 1 is the area with the highest concentration of landslides (Fig. 5). Although the Maximum Likelihood 6B classifier defined the landslide class in considerably wider areas than the other classifiers, several areas corresponding to other classes were classified as false positives (FP). The SVM 6B classifier identified areas corresponding to landslides more accurately and did not include areas of other classes to the highest possible extent (Fig. 5). Sector 2 was selected because the classifiers identified pastures as landslides in this region (Fig. 6). There were no landslide scars in this area; therefore, all of the classifiers identified FP. The most consistent result for this sector was the SVM 5B, as this was the classification that least defined FP. Furthermore, Sector 3 was selected because it included exposed soil and rocky surfaces classified as clouds, primarily using the Maximum Likelihood 5B and 6B methods, and the Random Forest 6B (Fig. 7).

Figure 5.
Classifications of shallow landslides (red) generated by the three classifiers applied to Sector 1, where SVM 6B (subfigure F) achieved the best results. (A) Maximum Likelihood classifier of the 5B image; (B) Random Forest classifier of the 5B image; (C) SVM classifier of the 5B image; (D) Maximum Likelihood classifier of the 6B image; (E) Random Forest classifier of the 6B image; (F) SVM classifier of the 6B image; (G) Maximum Likelihood classifier (Binary classification) 6B.

Figure 6.
Classifications of shallow landslides (red) generated by the three classifiers applied to Sector 2, where SVM 5B (subfigure C) produced the lowest number of FPs. (A) Maximum Likelihood classifier of the 5B image; (B) Random Forest classifier of the 5B image; (C) SVM classifier of the 5B image; (D) Maximum Likelihood classifier of the 6B image; (E) Random Forest classifier of the 6B image; (F) SVM classifier of the 6B image; (G) Maximum Likelihood classifier (Binary classification) 6B.

Figure 7.
Classifications of shallow landslides (red) generated by the three classifiers applied to Sector 3, where Maximum Likelihood 5B and 6B and Random Forest 6B had more difficulties defining the correct classes in an environment where several classes coexisted. (A) Maximum Likelihood classifier of the 5B image; (B) Random Forest classifier of the 5B image; (C) SVM classifier of the 5B image; (D) Maximum Likelihood classifier of the 6B image; (E) Random Forest classifier of the 6B image; (F) SVM classifier of the 6B image; (G) Maximum Likelihood classifier (Binary classification) 6B.

Maximum Likelihood 5B and SVM 6B were found to be the best classifications for detecting shallow landslides in the study area, in agreement with previous studies in other areas (Marapareddy et al. 2017Marapareddy R., Aanstoos J.V., Younan N.H. 2017. Accuracy analysis comparison of supervised classification methods for anomaly detection on levees using SAR imagery. Electronics, 6(4):83. http://dx.doi.org/10.3390/electronics6040083
https://doi.org/http://dx.doi.org/10.339...
, Uehara et al. 2020Uehara T.D.T, Corrêa S.P.L.P, Quevedo R.P., Körting T.S, Dutra L.V., Rennó C.D. 2020. Landslide scars detection using remote sensing and pattern recognition techniques: comparison among artificial neural networks, gaussian maximum likelihood, random forest, and support vector machine classifiers. Revista Brasileira de Cartografia, 72(4):665-680. https://doi.org/10.14393/rbcv72n4-54037
https://doi.org/https://doi.org/10.14393...
). Although DEM derivatives are commonly applied to landslides recognition worldwide (Kurtz et al. 2014Kurtz C., Stumpf A., Malet J.P., Gançarski P., Puissant A., Passat N. 2014. Hierarchical extraction of landslides from multiresolution remotely sensed optical images. ISPRS Journal Photogrammetry Remote Sensing, 87:122-136. https://doi.org/10.1016/j.isprsjprs.2013.11.003
https://doi.org/https://doi.org/10.1016/...
, Mezaal et al. 2017Mezaal M.R., Pradhan B., Sameen M.I., Mohd Shafri H.Z., Yusoff Z.M. 2017. Optimized neural architecture for automatic landslide detection from high-resolution airborne laser scanning data. Applied Sciences, 7(7):730. https://doi.org/10.3390/app7070730
https://doi.org/https://doi.org/10.3390/...
), in this case only SVM presented an improvement in performance with the addition of slope information.

SVM was the best classifier for application to the image comprising multispectral bands and the slope (6B), as it was the classifier with the best results determined by the various validation indices. The SVM 6B classifier identified an area of 399,325 m² that contained landslides. This classifier can be considered as the most suitable for identifying shallow landslides when spectral information is used with a DEM (Pawluszek et al. 2018Pawluszek K., Borkowski A., Tarolli P. (2018). Sensitivity analysis of automatic landslide mapping: numerical experiments towards the best solution. Landslides, 15:1851-1865. https://doi.org/10.1007/s10346-018-0986-0
https://doi.org/https://doi.org/10.1007/...
). The SVM classifier for the 6B image had a higher number of TPs compared to FN. This method had the highest validation index improvements with the inclusion of the slope band and achieved the best results in this initial analysis. The Maximum Likelihood 5B classifier obtained validation indices similar to those of SVM 6B and identified sectors with an area of 679,100 m² that contained landslides. From the perspective of natural disaster prevention, this is an important finding that requires further consideration for city planning and prevention of natural hazards.

CONCLUSIONS

This study verified that the method of applying pixel-based supervised classifiers to multispectral images with high spatial resolutions was successful and effective in identifying shallow landslides. A comparison of the three classifiers enabled us to observe the behavior of each classifier in identifying landslides across the selected landscape in Itaóca, São Paulo, southeastern Brazil. Thus, we conclude that the three classifiers (Random Forest, SVM, and Maximum Likelihood) achieved good results. Maximum Likelihood 5B and SVM 6B were found to produce the best classifications for shallow landslide detection in the study area. Adding DEM (slope) information only improved the results in SVM classifier. However, this study has some limitations. Although landslides were identified in the studied landscape, only the scars with sufficiently large areas were captured by the algorithm. This confirmed the need for additional analyses on multispectral images with finer spatial resolutions, which may be conducted in future studies.

ACKNOWLEDGEMENTS

This study was supported by the São Paulo Research Foundation (FAPESP) grants #2019/17261-8 (HCD) and #2019/26568-0 (CHG), and by Brazil’s National Council of Scientific and Technological Development CNPq grants #423481/2018-5, #304413/2018-6 (CHG) and # 305188/2020-8 (JAQ). This study was partially funded by CAPES Brasil - Finance Code 001. The authors thank the Institute of Energy and Environment and the Graduate Program in Environmental Science, Universidade de São Paulo, Brazil and the Planet Company. This is a SPAMLab contribution (https://spamlab.github.io/publications/). The authors also thank the Editor-in-Chief, the Associate Editor, and the anonymous reviewers for their criticism and suggestions, which helped to improve this paper.

REFERENCES

  • Ahmad A., Quegan S. 2012. Analysis of maximum likelihood classification on multispectral data. Applied Mathematical Sciences, 6(129):6425-6436. https://doi.org/10.1109/ICCSCE.2012.6487156
    » https://doi.org/https://doi.org/10.1109/ICCSCE.2012.6487156
  • Aleotti P., Chowdhury R. 1999. Landslide hazard assessment: summary review and new perspectives. Bulletin of Engineering Geology and the Environment, 58:21-44. https://doi.org/10.1007/s100640050066
    » https://doi.org/https://doi.org/10.1007/s100640050066
  • ASF DAAC. 2020. ALOS PALSAR_Radiometric_Terrain_Corrected_high_res; Includes Material JAXA/METI 2011
  • Boser B.E., Guyon I.M., Vapnik V.N. 1992. A training algorithm for optimal margin classifiers. In: The Workshop on Computational Learning Theory, p. 144-152.
  • Brollo M.J., Santoro J., Penteado D.R., Fernandes P.C.S, Ribeiro R.R. 2015. Itaóca (SP): Histórico de acidentes e desastres relacionados a perigos geológicos. In: Simpósio de Geologia do Sudeste, 14., 2015, Campos do Jordão. Annals.. p. 1-5.
  • Carou C.B., Vieira B.C., Martins T.D., Gramani M.F. 2017. Inventário dos Escorregamentos da Bacia do Rio Gurutuba, Vale do Ribeira (SP). Revista do Departamento de Geografia, 172-179.
  • Cerri R.I., Rosolen V., Reis F.A.G.V., Pereira Filho A.J., Vemado F., Giordano L.C., Gabelini B.M. 2020. The assessment of soil chemical, physical, and structural properties as landslide predisposing factors in the Serra do Mar mountain range (Caraguatatuba, Brazil). Bulletin of Engineering Geology and the Environment, 79:3307-3320. https://doi.org/10.1007/s10064-020-01791-1
    » https://doi.org/https://doi.org/10.1007/s10064-020-01791-1
  • Chunhui Z., Bing G., Lejun Z., Xiaoqing W. 2018. Classification of Hyperspectral Imagery based on spectral gradient, SVM and spatial random forest. Infrared Physics & Technology, 95:61-69. https://doi.org/10.1016/j.infrared.2018.10.012
    » https://doi.org/https://doi.org/10.1016/j.infrared.2018.10.012
  • Comert R., Avdan U., Gorum T., Nefeslioglu H.A. 2019. Mapping of shallow landslides with object-based image analysis from unmanned aerial vehicle data. Engineering Geology, 260:105264. https://doi.org/10.1016/j.enggeo.2019.105264
    » https://doi.org/https://doi.org/10.1016/j.enggeo.2019.105264
  • Congalton R. 1991. A review of assessing the accuracy of classification remotely sensed data. Remote Sensing of Environment, 37(1):35-36. https://doi.org/10.1016/0034-4257(91)90048-B
    » https://doi.org/https://doi.org/10.1016/0034-4257(91)90048-B
  • Cutler D.R., Edwards Jr. T.C., Beard K.H., Cutler K., Hess K.T., Gibson J., Lawler J.J. 2007. Random Forest for classification in Ecology. Ecology, 88(11):2783-2792. https://doi.org/10.1890/07-0539.1
    » https://doi.org/https://doi.org/10.1890/07-0539.1
  • Dias H.C., Dias V.C., Vieira B.C. 2017. Condicionantes morfológicos e geológicos dos escorregamentos rasos na bacia do Rio Santo Antônio, Caraguatatuba / SP. Revista do Departamento de Geografia - USP, volume especial (8):157-163. https://doi.org/10.11606/rdg.v0ispe.132714
    » https://doi.org/https://doi.org/10.11606/rdg.v0ispe.132714
  • Dias H.C., Gramani M.F., Grohmann C.H., Bateira C., Vieira B.C. 2021. Statistical-based shallow landslide susceptibility assessment for a tropical environment: a case study in the southeastern Brazilian coast. Natural Hazards, 108:205-223. https://doi.org/10.1007/s11069-021-04676-y
    » https://doi.org/https://doi.org/10.1007/s11069-021-04676-y
  • Dou J., Chang K.T., Chen S., Yunus A.P., Liu J.K., Xia H., Zhu Z. 2015. Automatic Case-Based Reasoning Approach for Landslide Detection: Integration of Object-Oriented Image Analysis and a Genetic Algorithm. In: Remote Sensing, 7(4):4318-4342. https://doi.org/10.3390/rs70404318
    » https://doi.org/https://doi.org/10.3390/rs70404318
  • Dou J., Yunus A.P., Bui D.T., Merghadi A., Sahana M., Zhu Z., Chen C.W., Han Z., Pham B.T. 2020. Improved landslide assessment using support vector machine with bagging, boosting, and stacking ensemble machine learning framework in a mountainous watershed, Japan. Landslides, 17:641-658. https://doi.org/10.1007/s10346-019-01286-5
    » https://doi.org/https://doi.org/10.1007/s10346-019-01286-5
  • Farr T.G., Rosen P.A., Caro E., Crippen R., Duren R., Hensley S., Kobrick M., Paller M., Rodriguez E., Roth L., Seal D., Shaffer S., Shimada J., Umland J., Werner M., Oskin M., Burbank D., Alsdorf D. 2007. The Shuttle Radar Topography Mission. Review of Geophysics, 45(2). http://dx.doi.org/10.1029/2005RG000183
    » https://doi.org/http://dx.doi.org/10.1029/2005RG000183
  • Fernandes N.F., Guimarães R.F., Gomes R.A.T., Vieira B.C., Montgomery D.R., Greenberg H. 2001. Condicionantes geomorfológicos dos deslizamentos nas encostas: Avaliação de metodologias e aplicação de modelo de previsão de áreas susceptíveis. In: Revista Brasileira de Geomorfologia, 2(1):51-71. http://dx.doi.org/10.20502/rbg.v2i1.8
    » https://doi.org/http://dx.doi.org/10.20502/rbg.v2i1.8
  • Gramani M.F., Martins V.T.S. 2015. Debris flows occurrence by intense rains at Itaoca city, São Paulo, Brazil: Field observations. In: Aversa F., Cascini L., Picarelli L., Scavia C. (Eds.). Landslides and engineered slopes: experience, theory and practice. Boca Raton: CRS Press, p. 1011-1019.
  • Guzzetti F., Mondini A.C., Cardinali M., Fiorucci F., Santangelo M., Chang K.T. 2012. Landslide inventory maps: new tools for an old problem. Earth-Science Reviews, 112(1-2):42-66. https://doi.org/10.1016/j.earscirev.2012.02.001
    » https://doi.org/https://doi.org/10.1016/j.earscirev.2012.02.001
  • Hölbling D., Eisank C., Albrecht F., Vecchiotti F., Friedl B., Weinke E., Kociu A. 2017. Comparing Manual and Semi-Automated Landslide Mapping Based on Optical Satellite Images from Different Sensors. Geosciences, 7(2):37. https://doi.org/10.3390/geosciences7020037
    » https://doi.org/https://doi.org/10.3390/geosciences7020037
  • Hord R.M., Brooner W. 1976. Land use map-accuracy criteria. Photogrammetric Engineering and Remote Sensing, 42(5):671-677.
  • Hungr O., Leroueil S., Picarelli L. 2014. The Varnes classification of landslide types, an update. Landslides, 11:167-194. https://doi.org/10.1007/s10346-013-0436-y
    » https://doi.org/https://doi.org/10.1007/s10346-013-0436-y
  • Hussain Y., Cardenas-Soto M., Uagoda R., Martino S., Rodriguez-Rebolledo J., Hamza O., Martinez-Carvajal H. 2019. Monitoring of Sobradinho landslide (Brasília, Brazil) and a prototype vertical slope by time-lapse interferometry. Brazilian Journal of Geology, 49(2):1-11. https://doi.org/10.1590/2317-4889201920180085
    » https://doi.org/https://doi.org/10.1590/2317-4889201920180085
  • Instituto Brasileiro de Geografia e Estatística (IBGE). 2019. Suscetibilidade a deslizamentos do Brasil: primeira aproximação. Rio de Janeiro: Coordenação de Recursos Naturais e Estudos Ambientais, 56 p.
  • Jensen J.R. 2007. Remote sensing of environment: an earth resource perspective. Hoboken: Prentice Hall, 619 p.
  • Lopes E.S.S., Riedel P.S., Bentz C.M., Ferreira M.V., Naleto J.L.C. 2007. Inventário de escorregamentos naturais em banco de dados geográfico - análise dos fatores condicionantes na região da Serra de Cubatão - SP. In: Simpósio Brasileiro de Sensoriamento Remoto, 13., 2007, Florianópolis, Brazil. Annals.. p. 2785-2796.
  • Karasiak N. 2016. Dzetsaka QGIS Classification plugin https://doi.org/10.5281/zenodo.2552284.
    » https://doi.org/https://doi.org/10.5281/zenodo.2552284
  • Köppen W. 1936. Das geographische System der Klimate. In: Köppen W., Geiger R. (eds.). Handbuch der Klimatologie Berlin: Gerbrüder Bornträger, Part C, v. 1, p. C1-C44.
  • Kurtz C., Stumpf A., Malet J.P., Gançarski P., Puissant A., Passat N. 2014. Hierarchical extraction of landslides from multiresolution remotely sensed optical images. ISPRS Journal Photogrammetry Remote Sensing, 87:122-136. https://doi.org/10.1016/j.isprsjprs.2013.11.003
    » https://doi.org/https://doi.org/10.1016/j.isprsjprs.2013.11.003
  • Lei T., Zhang Y., Lv Z., Li S., Liu S., Nandi A.K. 2019. Landslide Inventory Mapping from Bitemporal Images Using Deep Convolutional Neural Networks. IEEE, 16(6):982-986. http://dx.doi.org/10.1109/LGRS.2018.2889307
    » https://doi.org/http://dx.doi.org/10.1109/LGRS.2018.2889307
  • Lillesand T.M., Kiefer R.W., Chipman J.W. 2015. Remote sensing and image interpretation 7ª ed. Chichester: John Wiley & Sons, 736 p.
  • Lu D., Weng Q. 2007. A survey of image classification methods and techniques for improving classification performance. International Journal of Remote Sensing, 28(5):823-870. http://dx.doi.org/10.1080/01431160600746456
    » https://doi.org/http://dx.doi.org/10.1080/01431160600746456
  • Luca C. 2016. Semi-Automatic Classification Plugin Documentation
  • Marapareddy R., Aanstoos J.V., Younan N.H. 2017. Accuracy analysis comparison of supervised classification methods for anomaly detection on levees using SAR imagery. Electronics, 6(4):83. http://dx.doi.org/10.3390/electronics6040083
    » https://doi.org/http://dx.doi.org/10.3390/electronics6040083
  • Marcelino E.V., Formaggio A.R., Maeda E.E. 2009. Landslide inventory using image fusion techniques in Brazil. International Journal of Applied Earth Observation and Geoinformation, 11(3):181-191. https://doi.org/10.1016/j.jag.2009.01.003
    » https://doi.org/https://doi.org/10.1016/j.jag.2009.01.003
  • Meneses P.R., Almeida T. 2012. Introdução ao processamento de imagens de sensoriamento remoto Brasília: Editora UnB, 277 p.
  • Merghadi A., Yunus A.P., Dou J., Whiteley J., ThaiPham B., Bui D.T., Avtar R., Abderrahmane B. 2020. Machine learning methods for landslide susceptibility studies: A comparative overview of algorithm performance. Earth-Science Reviews, 207:103225. https://doi.org/10.1016/j.earscirev.2020.103225
    » https://doi.org/https://doi.org/10.1016/j.earscirev.2020.103225
  • Mezaal M.R., Pradhan B., Sameen M.I., Mohd Shafri H.Z., Yusoff Z.M. 2017. Optimized neural architecture for automatic landslide detection from high-resolution airborne laser scanning data. Applied Sciences, 7(7):730. https://doi.org/10.3390/app7070730
    » https://doi.org/https://doi.org/10.3390/app7070730
  • Nery T.D., Vieira B.C. 2015. Susceptibility to shallow landslides in a drainage basin in the Serra do Mar, São Paulo, Brazil, predicted using the SINMAP mathematical model. In: Bulletin of Engineering Geology and the Environment, 74:369-378. https://doi.org/10.1007/s10064-014-0622-8
    » https://doi.org/https://doi.org/10.1007/s10064-014-0622-8
  • Pachauri A.K., Pant M. 1992. Landslide hazard mapping based on geological attributes. Engineering Geology, 32(1-2):81-100. https://doi.org/10.1016/0013-7952(92)90020-Y
    » https://doi.org/https://doi.org/10.1016/0013-7952(92)90020-Y
  • Pal M., Mather P.M. 2005. Support vector machines for classification in remote sensing. International Journal of Remote Sensing, 26(5):1007-1011. https://doi.org/10.1080/01431160512331314083
    » https://doi.org/https://doi.org/10.1080/01431160512331314083
  • Pawluszek K., Borkowski A., Tarolli P. (2018). Sensitivity analysis of automatic landslide mapping: numerical experiments towards the best solution. Landslides, 15:1851-1865. https://doi.org/10.1007/s10346-018-0986-0
    » https://doi.org/https://doi.org/10.1007/s10346-018-0986-0
  • Planet. 2020. Planet Imagery product specifications 100 p.
  • QGIS. 2020. QGIS Geographic Information System, v.3.14 Open Source Geospatial Foundation Project. Available at: Available at: http://qgis.org Accessed on: Oct. 2020.
    » http://qgis.org
  • Rosenfield G.H., Fitzpatrik-Lins K.A. 1986. Coefficient of agreement as measure of thematic classification accuracy. Photogrammetric Engineering and Remote Sensing, 52(2):223-227.
  • Rosenfield G.H., Fitzptrik-Lins K.A., Ling S.H. 1982. Sampling for thematic map accuracy testing. Photogrammetric Engineering and Remote Sensing, 48(1):131-137.
  • Sidle R.C., Pearce A.J., O’Loughlin C.L. 1985. Hillslope stability and land use Washington, D.C.: John Wiley & Sons.
  • Steger S., Brenning A., Bell R., Glade T. 2016. The propagation of inventory-based positional errors into statistical landslide susceptibility models. Natural Hazards and Earth System Sciences, 16:2729-2745. http://dx.doi.org/10.5194/nhess-2016-301
    » https://doi.org/http://dx.doi.org/10.5194/nhess-2016-301
  • Story M., Congalton R. 1986. Accuracy assessment: a user’s perspective. Photogrammetric Engineering and Remote Sensing, 52(3):379-399.
  • Stumpf A., Kerle N. 2011. Object-oriented mapping of landslides using Random Forests. Remote Sensing of Environment, 115(10):2564-2577. https://doi.org/10.1016/j.rse.2011.05.013
    » https://doi.org/https://doi.org/10.1016/j.rse.2011.05.013
  • Uehara T.D.T, Corrêa S.P.L.P, Quevedo R.P., Körting T.S, Dutra L.V., Rennó C.D. 2020. Landslide scars detection using remote sensing and pattern recognition techniques: comparison among artificial neural networks, gaussian maximum likelihood, random forest, and support vector machine classifiers. Revista Brasileira de Cartografia, 72(4):665-680. https://doi.org/10.14393/rbcv72n4-54037
    » https://doi.org/https://doi.org/10.14393/rbcv72n4-54037
  • Van Westen C.J., Catellanos E., Kuriakone S.L. 2008. Spatial data for landslide susceptibility, hazard and vulnerability assessment: an overview. Engineering Geology, 102(3-4):112-131. http://dx.doi.org/10.1016/j.enggeo.2008.03.010
    » https://doi.org/http://dx.doi.org/10.1016/j.enggeo.2008.03.010
  • Vieira B.C., Gramani M.F. 2015. Serra do Mar: the most “tormented” relief in Brazil. In: Vieira B.C., Salgado A.A.R., Santos L.J.C. (Eds.). Landscapes and landforms of Brazil: world geomorphological landscapes. Dordrecht: Springer, 403 p. http://dx.doi.org/10.1007/978-94-017-8023-0_26
    » https://doi.org/http://dx.doi.org/10.1007/978-94-017-8023-0_26
  • Wang H., Zhang L., Yin K., Luo H., Li J. 2021. Landslide identification using machine learning. Geoscience Frontiers, 12(1):351-364. http://dx.doi.org/10.1016/j.gsf.2020.02.012
    » https://doi.org/http://dx.doi.org/10.1016/j.gsf.2020.02.012
  • Wang W., He Z., Han Z., Li Y., Dou J., Huang J. 2020. Mapping the susceptibility to landslides based on the deep belief network: a case study in Sichuan Province, China. Natural Hazards, 103:3239-3261. https://doi.org/10.1007/s11069-020-04128-z
    » https://doi.org/https://doi.org/10.1007/s11069-020-04128-z
  • Zhou C.H., Lee C.F., Li J., Xu Z.W. 2002. On the spatial relationship between landslides and causative factors on Lantau Island, Hong Kong. Geomorphology, 43(3-4):197-207. https://doi.org/10.1016/S0169-555X(01)00130-1
    » https://doi.org/https://doi.org/10.1016/S0169-555X(01)00130-1

ARTICLE INFORMATION

  • 1
    Manuscript ID: 20200105.

Publication Dates

  • Publication in this collection
    17 Dec 2021
  • Date of issue
    2021

History

  • Received
    03 Oct 2020
  • Accepted
    03 Aug 2021
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