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Original Articles

Information fusion approach for the data classification: an example for ERS‐1/2 InSAR data

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Pages 4689-4703 | Received 05 May 2006, Accepted 06 Aug 2007, Published online: 23 Jul 2008
 

Abstract

A huge amount of various remote sensing data have been acquired and archived during recent years. Information extraction from these data is still a challenging task, for example using the data classification. We propose the Bayesian approach to image classification using information fusion from different sources of data. The method of classification is based on the three processing steps: (1) information fission by feature extraction, (2) data and dimensionality reduction by unsupervised clustering, and (3) supervised classification with information fusion. The potential of the classification method is illustrated by the examples on ERS‐1/2 Tandem interferometric synthetic aperture radar data. The continuity of tandem pairs of SAR images is ensured by already started or future missions such as TerraSAR‐X, TanDEM‐X, and COSMO‐SkyMed.

Acknowledgements

Thanks to our colleague Dr P. Reinartz for reading the manuscript and valuable comments on it. Part of this work was based on results obtained in cooperation of DLR with the Swiss Federal Institute of Technology—ETH Zurich.

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