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Frame permutation quantization

  • Massachusetts Institute of Technology

Research output: Contribution to journalArticlepeer-review

10 Scopus citations

Abstract

Frame permutation quantization (FPQ) is a new vector quantization technique using finite frames. In FPQ, a vector is encoded using a permutation source code to quantize its frame expansion. This means that the encoding is a partial ordering of the frame expansion coefficients. Compared to ordinary permutation source coding, FPQ produces a greater number of possible quantization rates and a higher maximum rate. Various representations for the partitions induced by FPQ are presented, and reconstruction algorithms based on linear programming, quadratic programming, and recursive orthogonal projection are derived. Implementations of the linear and quadratic programming algorithms for uniform and Gaussian sources show performance improvements over entropy-constrained scalar quantization for certain combinations of vector dimension and coding rate. Monte Carlo evaluation of the recursive algorithm shows that mean-squared error (MSE) decays as M-4 for an M-element frame, which is consistent with previous results on optimal decay of MSE. Reconstruction using the canonical dual frame is also studied, and several results relate properties of the analysis frame to whether linear reconstruction techniques provide consistent reconstructions.

Original languageEnglish
Pages (from-to)74-97
Number of pages24
JournalApplied and Computational Harmonic Analysis
Volume31
Issue number1
DOIs
StatePublished - Jul 2011

Keywords

  • Consistent reconstruction
  • Dual frame
  • Frame expansions
  • Linear programming
  • Partial orders
  • Permutation source codes
  • Quadratic programming
  • Recursive estimation
  • Vector quantization

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