Title of article :
Extended fractal analysis for texture classification and segmentation
Author/Authors :
Kaplan، نويسنده , , L.M.
، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1999
Abstract :
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. Recently, extended self-similar (ESS)
processes were 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 natural textures where the roughness of
these textures is not necessarily scale-invariant. In this work,
we evaluate the effectiveness of multiscale Hurst parameters as
features for texture classification and segmentation. For texture
classification, the performance of the generalized Hurst features
is compared to traditional Hurst and Gabor features. Our experiments
show that classification accuracy for the generalized Hurst
and Gabor features are comparable even though the generalized
Hurst features lower the dimensionality by a factor of five. Next,
the segmentation accuracy using generalized and standard Hurst
features is evaluated on images of texture mosaics. For these
experiments, the performance is evaluated with and without
supplemental contrast and average grayscale features. Finally,
we investigate the effectiveness of the Hurst features to segment
real synthetic aperture radar (SAR) imagery.
Keywords :
Fractals , Image classification , image segmentation , image texture anlaysis , synthetic aperture radar.
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING