Extended fractal analysis for texture classification and segmentation

@article{Kaplan1999ExtendedFA,
  title={Extended fractal analysis for texture classification and segmentation},
  author={Lance M. Kaplan},
  journal={IEEE transactions on image processing : a publication of the IEEE Signal Processing Society},
  year={1999},
  volume={8 11},
  pages={
          1572-85
        }
}
  • Lance M. Kaplan
  • Published 1 November 1999
  • Mathematics
  • IEEE transactions on image processing : a publication of the IEEE Signal Processing Society
The Hurst parameter for two-dimensional (2-D) fractional Brownian motion (fBm) provides a single number that completely characterizes isotropic textured surfaces whose roughness is scale-invariant. Extended self-similar (ESS) processes were previously introduced in order to provide a generalization of fBm. These new processes are described by a number of multiscale Hurst parameters. In contrast to the single Hurst parameter, the extended parameters are able to characterize a greater variety of… 

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