2007 IEEE International Conference on Image Processing - San Antonio, Texas, U.S.A. - September 16-19, 2007

Technical Program

Paper Detail

Paper:TP-L6.7
Session:Image Coding III
Time:Tuesday, September 18, 16:50 - 17:10
Presentation: Lecture
Title: HIGH DIMENSION LATTICE VECTOR QUANTIZER DESIGN FOR GENERALIZED GAUSSIAN DISTRIBUTIONS
Authors: Leonardo Fonteles; I3S Laboratory 
 Marc Antonini; I3S Laboratory 
Abstract: LVQ is a simple but powerful tool for vector quantization and can be viewed as a vector generalization of uniform scalar quantization. Like VQ, LVQ is able to take into account spatial dependencies between adjacent pixels as well as to take advantage of the n-dimensional space filling gain. However, the design of a lattice vector quantizer is not trivial particularly when one wants to use vectors with high dimensions. Indeed, using high dimensions involves lattice codebooks with a huge population that makes indexing difficult. On the other hand, in the framework of wavelet transform, a bit allocation across the subbands must be done in an optimal way. The use of VQ and the lack of non asymptotical distortion-rate models for this kind of quantizers make this operation difficult. In this work we focus on the problem of efficient indexing and optimal bit allocation and propose efficient solutions.



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