4.7 Article

Change Detection in Synthetic Aperture Radar Images Using a Multiscale-Driven Approach

Journal

REMOTE SENSING
Volume 8, Issue 6, Pages -

Publisher

MDPI
DOI: 10.3390/rs8060482

Keywords

change detection; SAR; decision support; image decomposition; image analysis; Bayesian inferencing

Funding

  1. NASA EPSCoR program [NNX11AQ27A]
  2. NASA [138816, NNX11AQ27A] Funding Source: Federal RePORTER

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Despite the significant progress that was achieved throughout the recent years, to this day, automatic change detection and classification from synthetic aperture radar (SAR) images remains a difficult task. This is, in large part, due to (a) the high level of speckle noise that is inherent to SAR data; (b) the complex scattering response of SAR even for rather homogeneous targets; (c) the low temporal sampling that is often achieved with SAR systems, since sequential images do not always have the same radar geometry (incident angle, orbit path, etc.); and (d) the typically limited performance of SAR in delineating the exact boundary of changed regions. With this paper we present a promising change detection method that utilizes SAR images and provides solutions for these previously mentioned difficulties. We will show that the presented approach enables automatic and high-performance change detection across a wide range of spatial scales (resolution levels). The developed method follows a three-step approach of (i) initial pre-processing; (ii) data enhancement/filtering; and (iii) wavelet-based, multi-scale change detection. The stand-alone property of our approach is the high flexibility in applying the change detection approach to a wide range of change detection problems. The performance of the developed approach is demonstrated using synthetic data as well as a real-data application to wildfire progression near Fairbanks, Alaska.

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