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Object-oriented mapping of landslides using Random Forests
Authors:André Stumpf  Norman Kerle
Affiliation:
  • a ITC-Faculty of Geo-Information Science and Earth Observation of the University of Twente, Department of Earth Systems Analysis, Hengelosestraat 99, P.O. Box 6, Enschede, 7500 AA, The Netherlands
  • b École et Observatoire des Sciences de la Terre, Institut de Physique du Globe de Strasbourg, UMR 7516 CNRS, Université de Strasbourg, 5, rue René Descartes, 67084 Strasbourg Cedex, France
  • Abstract:Landslide inventory mapping is an indispensable prerequisite for reliable hazard and risk analysis, and with the increasing availability of very high resolution (VHR) remote sensing imagery the creation and updating of such inventories on regular bases and directly after major events is becoming possible. The diversity of landslide processes and spectral similarities of affected areas with other landscape elements pose major challenges for automated image processing, and time-consuming manual image interpretation and field surveys are still the most commonly applied mapping techniques. Taking advantage of recent advances in object-oriented image analysis (OOA) and machine learning algorithms, a supervised workflow is proposed in this study to reduce manual labor and objectify the choice of significant object features and classification thresholds. A sequence of image segmentation, feature selection, object classification and error balancing was developed and tested on a variety of sample datasets (Quickbird, IKONOS, Geoeye-1, aerial photographs) of four sites in the northern hemisphere recently affected by landslides (Haiti, Italy, China, France). Besides object metrics, such as band ratios and slope, newly introduced topographically-guided texture measures were found to enhance significantly the classification, and also feature selection revealed positive influence on the overall performance. With an iterative procedure to examine the class-imbalance within the training sample it was furthermore possible to compensate spurious effects of class-imbalance and class-overlap on the balance of the error rates. Employing approximately 20% of the data for training, the proposed workflow resulted in accuracies between 73% and 87% for the affected areas, and approximately balanced commission and omission errors.
    Keywords:Landslide mapping  VHR satellite images  Image segmentation  Object-oriented  Random Forest
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