Multisensoral Topsoil Mapping in the Semiarid Lake Manyara Region, Northern Tanzania

This study pursues the mapping of the distribution of topsoils and surface substrates of the Lake Manyara area of northern Tanzania. The nine soil and lithological target classes were selected through fieldwork and laboratory analysis of soil samples. High-resolution WorldView-2 data, TerraSAR-X in...

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Main Authors: Felix Bachofer, Geraldine Quénéhervé, Volker Hochschild, Michael Maerker
Format: Article
Language:English
Published: MDPI AG 2015-07-01
Series:Remote Sensing
Subjects:
SAR
SVM
Online Access:http://www.mdpi.com/2072-4292/7/8/9563
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spelling doaj-877972ad098c406cafc43d4fce36d62a2020-11-24T23:02:00ZengMDPI AGRemote Sensing2072-42922015-07-01789563958610.3390/rs70809563rs70809563Multisensoral Topsoil Mapping in the Semiarid Lake Manyara Region, Northern TanzaniaFelix Bachofer0Geraldine Quénéhervé1Volker Hochschild2Michael Maerker3Institute of Geography, University of Tuebingen, Ruemelinstr. 19-23, 72070 Tuebingen, GermanyInstitute of Geography, University of Tuebingen, Ruemelinstr. 19-23, 72070 Tuebingen, GermanyInstitute of Geography, University of Tuebingen, Ruemelinstr. 19-23, 72070 Tuebingen, GermanyHeidelberg Academy of Sciences and Humanities, Ruemelinstr. 19-23, 72070 Tuebingen, GermanyThis study pursues the mapping of the distribution of topsoils and surface substrates of the Lake Manyara area of northern Tanzania. The nine soil and lithological target classes were selected through fieldwork and laboratory analysis of soil samples. High-resolution WorldView-2 data, TerraSAR-X intensity data, medium-resolution ASTER spectral bands and indices, as well as ENVISAT ASAR intensity and SRTM-X-derived topographic parameters served as input features. Objects were derived from image segmentation. The classification of the image objects was conducted applying a nonlinear support vector machine approach. With the recursive feature elimination approach, the most input-relevant features for separating the target classes were selected. Despite multiple target classes, an overall accuracy of 71.9% was achieved. Inaccuracies occurred between classes with high CaCO3 content and between classes of silica-rich substrates. The incorporation of different input feature datasets improved the classification accuracy. An in-depth interpretation of the classification result was conducted with three soil profile transects.http://www.mdpi.com/2072-4292/7/8/9563topsoil mappingASTERSARWorldView-2topographical indicesmultisensoralSVMmultiscale
collection DOAJ
language English
format Article
sources DOAJ
author Felix Bachofer
Geraldine Quénéhervé
Volker Hochschild
Michael Maerker
spellingShingle Felix Bachofer
Geraldine Quénéhervé
Volker Hochschild
Michael Maerker
Multisensoral Topsoil Mapping in the Semiarid Lake Manyara Region, Northern Tanzania
Remote Sensing
topsoil mapping
ASTER
SAR
WorldView-2
topographical indices
multisensoral
SVM
multiscale
author_facet Felix Bachofer
Geraldine Quénéhervé
Volker Hochschild
Michael Maerker
author_sort Felix Bachofer
title Multisensoral Topsoil Mapping in the Semiarid Lake Manyara Region, Northern Tanzania
title_short Multisensoral Topsoil Mapping in the Semiarid Lake Manyara Region, Northern Tanzania
title_full Multisensoral Topsoil Mapping in the Semiarid Lake Manyara Region, Northern Tanzania
title_fullStr Multisensoral Topsoil Mapping in the Semiarid Lake Manyara Region, Northern Tanzania
title_full_unstemmed Multisensoral Topsoil Mapping in the Semiarid Lake Manyara Region, Northern Tanzania
title_sort multisensoral topsoil mapping in the semiarid lake manyara region, northern tanzania
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2015-07-01
description This study pursues the mapping of the distribution of topsoils and surface substrates of the Lake Manyara area of northern Tanzania. The nine soil and lithological target classes were selected through fieldwork and laboratory analysis of soil samples. High-resolution WorldView-2 data, TerraSAR-X intensity data, medium-resolution ASTER spectral bands and indices, as well as ENVISAT ASAR intensity and SRTM-X-derived topographic parameters served as input features. Objects were derived from image segmentation. The classification of the image objects was conducted applying a nonlinear support vector machine approach. With the recursive feature elimination approach, the most input-relevant features for separating the target classes were selected. Despite multiple target classes, an overall accuracy of 71.9% was achieved. Inaccuracies occurred between classes with high CaCO3 content and between classes of silica-rich substrates. The incorporation of different input feature datasets improved the classification accuracy. An in-depth interpretation of the classification result was conducted with three soil profile transects.
topic topsoil mapping
ASTER
SAR
WorldView-2
topographical indices
multisensoral
SVM
multiscale
url http://www.mdpi.com/2072-4292/7/8/9563
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