Abstract

Abstract. Persistent Scatterer Interferometry (PSI) is a technique to extract subtle surface deformation from sets of scatterers identified in time-series of SAR images which feature temporally stable and strong radar signal (i.e., Persistent Scatterers, PS). Because of the preferred rectangular and regular structure of man-made objects, PSI works particularly well for monitoring of settlements. Usually, in PSI it is assumed that except for surface motion the scene is steady. In case this is not given, corresponding PS candidates are discarded during PSI processing. On the other hand, pixel-based change detection relying on local comparison of multi-temporal images typically highlights scene modifications of larger size rather than detail level. In this paper, we propose a method to combine these two types of change detection approaches. First, we introduce a local change-index based on PSI, which basically looks for PS candidates that remain stable over a certain period of time, but then break down suddenly. In addition, for the remaining PS candidates we apply common PSI processing which yields attributes like velocity in line-of-sight. In order to consider context, we apply now spatial filtering according to the derived attributes and morphology to exclude outliers and extract connect components of similar regions at the same time. We demonstrate our approach for test site Berlin, Germany, where, firstly, deformation-velocities on man-made structures are estimated and, secondly, some construction-sites are correctly recognized.

Highlights

  • Synthetic Aperture Radar (SAR) is a remote sensing technique providing radar images

  • These big change" (BC)-points are marked as big changes in a deformation-velocity image (I-Persistent Scatterer Interferometry (PSI) case) to form a new-style of change detection image (CD-image)

  • All Persistent Scatterers (PS)-points in the F-PSI case are selected as BC-points if their change-indices exceed 0.3

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Summary

INTRODUCTION

Synthetic Aperture Radar (SAR) is a remote sensing technique providing radar images. Due to the active sensor principle and signal wavelength in centimeter scale, SAR is capable for night vision and independent from weather conditions, respectively. PSI has proven to be useful to monitor surface deformation in cities in the order of some millimeter per year (Crosetto et al, 2008; Gernhardt and Bamler, 2012; Perissin and Ferretti, 2007) Such deformation may be triggered by physical processes of various kinds leading to different motion behaviour such as linear longterm subsidence (Dixon et al, 2006; Liu et al, 2011; Osmanoğlu et al, 2011) or even sinusoidal pattern due to seasonal expansion of steel construction (Colesanti et al, 2003; Gernhardt et al, 2010; Monserrat et al, 2011) Even though a PS network is processed, standard PSI can be regarded as a local method because apart from post-processing like spatial low-pass filtering (e.g., according to a correlation length derived from some geophysical model of the underlying deformation process) the PS are essentially treated individually.

CHANGE DETECTION BASED ON PERSISTENT SCATTERER INTERFEROMETRY
Change Index
Materials and Study Area
OUTLIER-FILTERS
Change-index Image
New-style Change-detection Image
Examples of Different Applications over Berlin
Non-red colors
CONCLUSIONS AND FUTURE WORK
Full Text
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