Image Compression via Joint Statistical
Characterization in the Wavelet Domain
Robert W Buccigrossi
and
Eero P Simoncelli
Published in:
IEEE Transactions on Image Processing
vol 8, num 12, pp 1688-1701, December 1999.
© IEEE Signal Processing Society
Originally published as:
GRASP Laboratory Technical Report #414,
University of Pennsylvania.
May 30, 1997
We develop a probability model for natural images, based on empirical
observation of their statistics in the wavelet transform domain.
Pairs of wavelet coefficients, corresponding to basis functions at
adjacent spatial locations, orientations, and scales, are found to be
non-Gaussian in both their marginal and joint statistical
properties. Specifically, their marginals are heavy-tailed, and
although they are typically decorrelated,
their magnitudes are highly correlated. We propose a Markov model that
explains these dependencies using a linear predictor
for magnitude coupled with both multiplicative and additive
uncertainties, and show that it accounts for the statistics of a wide
variety of images including photographic images, graphical images, and
medical images. In order to directly demonstrate the power of the
model, we construct an image coder called EPWIC (Embedded Predictive
Wavelet Image Coder), in which subband coefficients are encoded one
bitplane at a time using a non-adaptive arithmetic encoder that
utilizes conditional probabilities calculated from the model.
Bitplanes are ordered using a greedy algorithm that considers the MSE
reduction per encoded bit. The decoder uses the statistical model to
predict coefficient values based on the bits it has received. Despite
the simplicity of the model, the rate-distortion performance of the
coder is roughly comparable to the best image coders in the
literature.
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