• DocumentCode
    929289
  • Title

    Design of absolutely optimal quantizers for a wide class of distortion measures

  • Author

    Sharma, Dhiraj K.

  • Volume
    24
  • Issue
    6
  • fYear
    1978
  • fDate
    11/1/1978 12:00:00 AM
  • Firstpage
    693
  • Lastpage
    702
  • Abstract
    In this paper designs of two types of quantizers are presented. The first type is designed to minimize a distortion measure under the constraint that the number of levels is fixed or the entropy of the output signal is bounded below a given value. The distortion measure is defined as E[f(x,\\eta)] , the expected value of an error weighting function f(x, \\eta) , where x is the quantizer input and \\eta is the corresponding quantization error. This paper departs from the quautization work reported in the literature heretofore in allowing f to be a function of x as well as \\eta . Algorithms to minimize such a distortion measure ander the constraints mentioned above are presented. They use a combination of dynamic programming and Fibonacci search. It is shown that if f(x,\\eta) is semiconvex in \\eta for all fixed values of x , Fibonacci search can be used in one of the steps of the minimization algorithm. This reduces the number of multiplications by a factor of M/(5 \\log M) when the range of input values is divided into M parts. Some examples are considered. The first deals with an f(x,\\eta) which is zero if \\eta is below a certain threshold T(x) and \\eta_{2}-T_{2}(x) otherwise. It arises in coding video signals by differential pulse-code modulation (PCM). The second deals with the minimum mean-square quantization of a truncated Laplacian input density. The step sizes of the near-optimal uniform quantizers are obtained under varions entropy constraints. The third example shows that the optimal quantizer can be asymmetric, even when the probability density and the error weighting function are symmetric. The second type of quantizer is designed to minimize the number of levels or the output entropy, when the quantization error is constrained not to exceed a threshold function. Methods to design them are presented that involve, respectively, a geometric construction and a dynamic programming algorithm in which the domain of search is modified according to the constraint mentioned above.
  • Keywords
    DPCM coding/decoding; Image coding; Quantization (signal); Signal quantization; Distortion measurement; Dynamic programming; Entropy; Minimization methods; Modulation coding; Phase change materials; Pulse modulation; Quantization; Signal design; Time of arrival estimation;
  • fLanguage
    English
  • Journal_Title
    Information Theory, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9448
  • Type

    jour

  • DOI
    10.1109/TIT.1978.1055961
  • Filename
    1055961