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Título: Karst depression detection using ASTER, ALOS/PRISM and SRTM-Derived digital elevation models in the Bambuí group, Brasil
Autor(es): Carvalho Júnior, Osmar Abílio de
Guimarães, Renato Fontes
Montgomery, David R.
Gillespie, Alan R.
Gomes, Roberto Arnaldo Trancoso
Martins, Éder de Souza
Silva, Nilton Correia
Assunto: Karst
Calcário
Modelo digital de terreno
Sistemas de informação geográfica
Sensoriamento remoto
Data de publicação: 2014
Editora: MDPI - Multidisciplinar Digital Publishing
Referência: CARVALHO JÚNIOR, Osmar Abílio de at al. Karst depression detection using ASTER, ALOS/PRISM and SRTM-Derived digital elevation models in the Bambuí group, Brasil. Remote Sensing, Basel, Suíça, v. 6, p. 330-351, 2014. Disponível em: <http://www.mdpi.com/2072-4292/6/1/330>. Acesso em: 18 ago. 2014.
Resumo: Remote sensing has been used in karst studies to identify limestone terrain, describe exokarst features, analyze karst depressions, and detect geological structures important to karst development. The aim of this work is to investigate the use of ASTER-, SRTM- and ALOS/PRISM-derived digital elevation models (DEMs) to detect and quantify natural karst depressions along the São Francisco River near Barreiras city, northeast Brazil. The study area is a karst landscape characterized by karst depressions (dolines), closed depressions in limestone, many of which contain standing water connected with the ground-water table. The base of dolines is typically sealed with an impermeable clay layer covered by standing water or herbaceous vegetation. We identify dolines by combining the extraction of sink depth from DEMs. morphometric analysis using GIS. and visual interpretation. Our methodology is a semi-automatic approach involving several steps: (a) DEM acquisition; (b) sink-depth calculation using the difference between the raw DEM and the corresponding DEM with sinks filled; and (c) elimination of falsely identified karst depressions using morphometric attributes. The advantages and limitations of the applied methodology using different DEMs are examined by comparison with a sinkhole map generated from traditional geomorphological investigations based on visual interpretation of the high-resolution remote sensing images and field surveys. The threshold values of the depth, area size and circularity index appropriate for distinguishing dolines were identified from the maximum overall accuracy obtained by comparison with a true doline map. Our results indicate that the best performance of the proposed methodology for meso-scale karst feature detection was using ALOS.PRISM data with a threshold depth > 2 m; areas > 13.125 nr and circularity indexes > 0.3 (overall accuracy of 0.53). The overall correct identification of around half of the true dolines suggests the potential to substantially improve doline identification using liigher-resolution LiDAR-generated DEMs.
Licença: Remote Sensing - © 2013 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/).
DOI: https://dx.doi.org/10.3390/rs6010330
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