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Projekt Druckansicht

Kombinierte Objektdetektion und physikalische Modell-Inversion für PolINSAR-Bilddaten

Fachliche Zuordnung Geodäsie, Photogrammetrie, Fernerkundung, Geoinformatik, Kartographie
Förderung Förderung von 2011 bis 2015
Projektkennung Deutsche Forschungsgemeinschaft (DFG) - Projektnummer 190378420
 
Erstellungsjahr 2015

Zusammenfassung der Projektergebnisse

In this work we have studied the combination of object detection and physical parameter inversion from PolInSAR (Polarimetric Interferometric SAR) data. We have demonstrated how to use physical parameters as features for object detection, as opposed to purely image processing methods that rely solely on image based features. We also have demonstrated how object detection methods could help refine previously estimated physical parameters by exploiting contextual information. Furthermore, we have considered the combination of different types of physical (polarimetric and interferometric) containing complementary physical information. As a preliminary step, a literature review and an examination of the available data allowed us to identify the physical parameters to invert and the type of objects to detect. Given our data, we have chosen to invert the height of scatterers from surfaces and to detect geometrical structures defined by building parts and ground. This analysis has been possible by the application of Multi-Baseline Polarimetric Interferometric spectral methods, also well-known as SAR tomography. Then, we have developed a tomographic processing chain allowing to perform three operations: - Application of the MUSIC algorithm to invert scatterer heights from PolInSAR images. - Design of a new algorithm called TomoSNI in order to retain only meaningful points leading to outlier free point clouds. - Development of a new algorithm called TomoSeed that performs automatically the object extraction by condidering locally planar geometric primitives describing ground and buildings. In order to complement this detection, we have considered the extraction of polarimetric features to improve the separation between buildings and ground. To do so, we have developed a new polarimetric speckle filter called PolSAR-BLF allowing an improved estimation of the polarimetric covariance in terms of noise reduction and edge preservation. This method has been shown to outperform other state-of-the-art methods and has been proven useful to obtain noise free semi-supervised classification of objects in PolSAR images. We have also studied the limitations of PolSAR data for the characterization of buildings allowing us to define lines for future research. The PolSAR-BLF filter has been released to the public in the form of an open-source package, available at https://github.com/odhondt/PolSAR-BLF. With the rise of new sensors such as SENTINEL1, TerraSAR-X and FSAR and the increase in size of new datasets, automatic pattern recognition methods are an essential tool to reduce the recquired human interaction. The results obtained are encouraging and open a new way in the combination of computer vision methods with physical inversion techniques from multidimensional SAR data.

Projektbezogene Publikationen (Auswahl)

 
 

Zusatzinformationen

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