The differential box-counting algorithm is introduced to calculate a new discriminating feature named Lacunarity
which is used to distinguish vehicle target from natural clutter in high-resolution SAR imagery in this paper. Lacunarity feature can be used to estimate quantitatively the variation
irregularity and gap size of pixel’s intensity of candidate targets. Based on the theory of scattering center
it can be shown that the vehicle image presents more irregularity and larger gaps than natural terrain’s image. Moreover
lacunarity is robust to speckle noise and is stable under changes in intensity. Finally
the real vehicle target data and natural terrain’s data in MSTAR database are applied to test the above algorithm. The discrimination performance using lacunarity is compared with Hausdorff dimension. The result shows that lacunarity is a good discriminating feature
which can eliminate most false alarms from natural terrains and most interference from the man-made targets with low false alarm probability.
关键词
SAR图像目标鉴别散射中心分形间隙度
Keywords
SAR imagerytarget discriminationscattering centerFractallacunarity