• DocumentCode
    1022517
  • Title

    Predictive residual vector quantization [image coding]

  • Author

    Rizvi, Syed A. ; Nasrabadi, Nasser M.

  • Author_Institution
    Dept. of Electr. & Comput. Eng., State Univ. of New York, Buffalo, NY, USA
  • Volume
    4
  • Issue
    11
  • fYear
    1995
  • fDate
    11/1/1995 12:00:00 AM
  • Firstpage
    1482
  • Lastpage
    1495
  • Abstract
    This paper presents a new vector quantization technique called predictive residual vector quantization (PRVQ). It combines the concepts of predictive vector quantization (PVQ) and residual vector quantization (RVQ) to implement a high performance VQ scheme with low search complexity. The proposed PRVQ consists of a vector predictor, designed by a multilayer perceptron, and an RVQ that is designed by a multilayer competitive neural network. A major task in our proposed PRVQ design is the joint optimization of the vector predictor and the RVQ codebooks. In order to achieve this, a new design based on the neural network learning algorithm is introduced. This technique is basically a nonlinear constrained optimization where each constituent component of the PRVQ scheme is optimized by minimizing an appropriate stage error function with a constraint on the overall error. This technique makes use of a Lagrangian formulation and iteratively solves a Lagrangian error function to obtain a locally optimal solution. This approach is then compared to a jointly designed and a closed-loop design approach. In the jointly designed approach, the predictor and quantizers are jointly optimized by minimizing only the overall error. In the closed-loop design, however, a predictor is first implemented; then the stage quantizers are optimized for this predictor in a stage-by-stage fashion. Simulation results show that the proposed PRVQ scheme outperforms the equivalent RVQ (operating at the same bit rate) and the unconstrained VQ by 2 and 1.7 dB, respectively. Furthermore, the proposed PRVQ outperforms the PVQ in the rate-distortion sense with significantly lower codebook search complexity
  • Keywords
    image coding; learning (artificial intelligence); multilayer perceptrons; optimisation; prediction theory; vector quantisation; Lagrangian error function; Lagrangian formulation; PRVQ; closed-loop design; codebooks; data compression; high performance VQ scheme; image coding; locally optimal solution; low search complexity; multilayer competitive neural network; multilayer perceptron; neural network learning algorithm; nonlinear constrained optimization; predictive residual vector quantization; predictive vector quantization; rate-distortion; residual vector quantization; stage error function; Algorithm design and analysis; Constraint optimization; Design optimization; Image coding; Iterative algorithms; Lagrangian functions; Multi-layer neural network; Multilayer perceptrons; Neural networks; Vector quantization;
  • fLanguage
    English
  • Journal_Title
    Image Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1057-7149
  • Type

    jour

  • DOI
    10.1109/83.469930
  • Filename
    469930