Title of article :
Successive refinement lattice vector quantization
Author/Authors :
Mukherjee، نويسنده , , D.، نويسنده , , Mitra، نويسنده , , S.K.
، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
Lattice Vector Quantization (LVQ) solves the complexity
problem of LBG based vector quantizers, yielding very
general codebooks. However, a single stage LVQ, when applied
to high resolution quantization of a vector, may result in very
large and unwieldy indices, making it unsuitable for applications
requiring successive refinement. The goal of this work is to
develop a unified framework for progressive uniform quantization
of vectors without having to sacrifice the mean- squared-error
advantage of lattice quantization. A successive refinement uniform
vector quantization methodology is developed, where the
codebooks in successive stages are all lattice codebooks, each in
the shape of the Voronoi regions of the lattice at the previous stage.
Such Voronoi shaped geometric lattice codebooks are named
Voronoi lattice VQs (VLVQ). Measures of efficiency of successive
refinement are developed based on the entropy of the indices
transmitted by the VLVQs. Additionally, a constructive method
for asymptotically optimal uniform quantization is developed
using tree-structured subset VLVQs in conjunction with entropy
coding. The methodology developed here essentially yields the
optimal vector counterpart of scalar “bitplane-wise” refinement.
Unfortunately it is not as trivial to implement as in the scalar case.
Furthermore, the benefits of asymptotic optimality in tree-structured
subset VLVQs remain elusive in practical nonasymptotic
situations. Nevertheless, because scalar bitplane- wise refinement
is extensively used in modern wavelet image coders, we have
applied the VLVQ techniques to successively refine vectors of
wavelet coefficients in the vector set-partitioning (VSPIHT)
framework. The results are compared against SPIHT and the
previous Successive Approximation Wavelet Vector Quantization
(SA-W-VQ) results of Sampson, da Silva, and Ghanbari.
Keywords :
Entropy coding , vector SPIHT , Voronoi region , wavelets , zerotree. , Lattice vector quantization
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING