2017
DOI: 10.2208/jscejer.73.i_239
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Landslide Detection Analysis in North Vietnam Base on Satellite Images and Digital Geographical Information - Landsat 8 Satellite and Historical Data Approaches -

Abstract: Mountainous area in North Vietnam is considered as one of the most prone region to landslide in Vietnam. Landslides in this area often occurs under the influences of heavy rainfall or tropical storms, steep slopes on mountainous sides and human activities such as road or house constructions. This paper applied Landsat satellite images and calculated Normalized Difference Indexes (NDIs) to evaluate the condition of vegetation, soil and water and detected 43 landslide points in Bac Kan, Ha Giang, Thai Nguyen and… Show more

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Cited by 4 publications
(3 citation statements)
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“…However, our results emphasize on the application of some Sentinel-2-based soil and water indices for mapping landslides as well. While soil brightness indices were proposed [16] for detecting landslide-disturbed vegetation, and NDWI for detecting landslide-opened water bodies [6,19,21], the adjusted BI and NDWI (i.e., BI2 and NDWI2) derived from Sentinel-2A were superior for mapping landslides in this study. Moreover, this study suggests a high performance of some vegetation indices that are less sensitive to the atmospheric effects, such as the ARVI and PVI for landslide mapping in forest areas.…”
Section: The Importance Of Object Features For Mapping New Landslidesmentioning
confidence: 77%
See 1 more Smart Citation
“…However, our results emphasize on the application of some Sentinel-2-based soil and water indices for mapping landslides as well. While soil brightness indices were proposed [16] for detecting landslide-disturbed vegetation, and NDWI for detecting landslide-opened water bodies [6,19,21], the adjusted BI and NDWI (i.e., BI2 and NDWI2) derived from Sentinel-2A were superior for mapping landslides in this study. Moreover, this study suggests a high performance of some vegetation indices that are less sensitive to the atmospheric effects, such as the ARVI and PVI for landslide mapping in forest areas.…”
Section: The Importance Of Object Features For Mapping New Landslidesmentioning
confidence: 77%
“…There is a high contrast in spectral, geometrical, textural, and contextual characteristics of landslide-caused forest-loss objects, and their surrounding undisturbed-forest objects, within satellite images [8][9][10]. Landslide mapping was conducted by incorporating the first-order statistics of satellite-derived features such as the spectral information of main bands [11][12][13], spectral indices [6,10,[14][15][16][17][18][19][20][21][22], or the second-order statistics of satellite-derived features, such as geometry [12,15,23], mean difference to neighbors [11,12,15,23], and textures derived from the gray-level co-occurrence matrix (GLCM) [6,9,10,12,[23][24][25][26][27][28][29][30] of images-ranging from optical [8,9,11,[31][32][33] to radar [18,[34][35][36]…”
Section: Introductionmentioning
confidence: 99%
“…En la identificación visual de los deslizamientos según [36], el apoyo prestado por las composiciones de color verdadero, falso color y NDVI en la imagen RapidEye jugó un papel importante, lo cual es consecuente con las conclusiones brindadas por otros autores [41], [42], [43], [44], al igual que la resolución espacial de las imágenes, hecho coherente con las afirmaciones realizadas por [45], [46], [47]. Cabe señalar que, si bien la resolución espacial de las imágenes es un factor altamente influyente para la delimitación de los deslizamientos, una menor resolución espacial puede ser compensada con una mayor resolución espectral, que brinda la posibilidad de emplear otras técnicas como el NDVI y las composiciones de bandas para complementar su análisis.…”
Section: Discussionunclassified