Remote Sensing (Feb 2021)

Multiple Kernel Graph Cut for SAR Image Change Detection

  • Lu Jia,
  • Tiantian Zhang,
  • Jing Fang,
  • Feibiao Dong

DOI
https://doi.org/10.3390/rs13040725
Journal volume & issue
Vol. 13, no. 4
p. 725

Abstract

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Complementary information between two difference images (DI’s) has great contribution to improve change detection performances. Based on the effectiveness and flexibility of the multiple kernel learning (MKL) in information fusion, we develop a multiple kernel graph cut (MKGC) algorithm for synthetic aperture radar (SAR) image change detection. An energy function containing a weighted summation kernel is proposed for fusing the complementary information between the subtraction image and the ratio image. By iteratively minimizing the energy function, the kernel weights, region parameters and region labels are estimated automatically and optimally. Besides of it avoids modeling, MKGC also has a complete description of the changed areas and the strong noise immunity. Experiments on real GaoFen-3 SAR data set demonstrate the effectiveness of the MKGC algorithm, and illustrate that it is a good candidate for SAR image change detection.

Keywords