In this paper, we develop
an efficient bit allocation strategy for subband-based image coding systems.
More specifically, our objective is to design a new optimization algorithm based
on a rate-distortion optimality criterion. To this end, we consider the uniform
scalar quantization of a class of mixed distributed sources following a
Bernoulli-generalized Gaussian distribution. This model appears to be
particularly well-adapted for image data, which have a sparse representation in
a wavelet basis. In this paper, we propose new approximations of the entropy
and the distortion functions using piecewise affine and exponential forms,
respectively. Because of these approximations, bit allocation is reformulated
as a convex optimization problem. Solving the resulting problem allows us to
derive the optimalquantization step for each subband. Experimental results show
the benefits that can be drawn from the proposed bit allocation method in a
typical transform-based coding application.
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