Leida xuebao (Apr 2015)

Compressive Sensing in High-resolution 3D SAR Tomography of Urban Scenarios

  • Liao Ming-sheng,
  • Wei Lian-huan,
  • Wang Zi-yun,
  • Timo Balz,
  • Zhang Lu

DOI
https://doi.org/10.12000/JR15031
Journal volume & issue
Vol. 4, no. 2
pp. 123 – 129

Abstract

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In modern high resolution SAR data, due to the intrinsic side-looking geometry of SAR sensors, layover and foreshortening issues inevitably arise, especially in dense urban areas. SAR tomography provides a new way of overcoming these problems by exploiting the back-scattering property for each pixel. However, traditional non-parametric spectral estimators, e.g. Truncated Singular Value Decomposition (TSVD), are limited by their poor elevation resolution, which is not comparable to the azimuth and slant-range resolution. In this paper, the Compressive Sensing (CS) approach using Basis Pursuit (BP) and TWo-step Iterative Shrinkage/Thresholding (TWIST) are introduced. Experimental studies with real spotlight-mode TerraSAR-X dataset are carried out using both BP and TWIST, to demonstrate the merits of compressive sensing approaches in terms of robustness, computational efficiency, and super-resolution capability.

Keywords