Title :
A cascaded ensemble classifier for object segmentation in high resolution polarimetric SAR data
Author :
Jager, Marc ; Reigber, Andreas ; Hellwich, Olaf
Author_Institution :
Dept. of SAR Technol., Microwaves & Radar Inst., Oberpfaffenhofen, Germany
Abstract :
The paper proposes a novel approach to object classification and segmentation in multi-channel (e.g. polarimetric) SAR data. The classifier is intended for particularly difficult problems, where objects of interest exhibit a high degree of radiometric, polarimetric and geometric heterogeneity, both within individual object instances and across the object category as a whole. Classification is based on a non-parametric characterization of scene contents that avoids model assumptions liable to fail in this scenario. The classifier structure is based on a combination of techniques developed for related problems in computer vision: the cascade architecture helps breaking down the problem into manageable stages while random forests provide a powerful framework for learning and combining discriminative classification rules. In addition, scale space techniques explicitly introduce non-local, contextual and geometric information into the classification process. Preliminary results illustrate the potential of the proposed approach with respect to the task of building segmentation in dual-polarized TerraSAR-X data.
Keywords :
geometry; radar polarimetry; radiometry; synthetic aperture radar; vegetation; cascade architecture; cascaded ensemble classifier; classification process; classifier structure; computer vision problem; contextual information; discriminative classification rule; dual-polarized TerraSAR-X data segmentation; geometric heterogeneity; geometric information; high radiometric degree; high resolution polarimetric SAR data; individual object instance; manageable stage; model assumption; multichannel SAR data; nonlocal information; nonparametric scene content characterization; object category; object classification; object segmentation; polarimetric heterogeneity; powerful learning framework; random forest; scale space technique; technique combination; Buildings; Computer architecture; Computer vision; Decision trees; Feature extraction; Synthetic aperture radar; Training; Classification; SAR Polarimetry; Synthetic Aperture Radar; Texture;
Conference_Titel :
Geoscience and Remote Sensing Symposium (IGARSS), 2014 IEEE International
Conference_Location :
Quebec City, QC
DOI :
10.1109/IGARSS.2014.6946603