使用线性(0 - 1)规划的固定速率熵编码矢量量化

A. Khandani
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引用次数: 0

摘要

考虑两组点X, A和它们的n倍笛卡尔积{A}/sup n/, {X}n。A的每个元素都有一个非负的代价。在A的一个元素和x的一个元素之间定义了距离的度量。假设代价和n倍空间中的距离具有可加性。形集由代价最小的{a}/sup n/元素的子集组成。元素x/spl isin/{x}/sup n/的译码是在形集中寻找到x距离最小的元素的过程。利用代价测度和距离测度的可加性,将译码问题表述为线性规划。利用线性规划的广义上界技术,结合该问题的一些特殊特征,提出了大大降低相应单纯形搜索复杂度的方法。该方法用于高斯源的固定速率熵编码矢量量化。对于n=128(空间维度),每个维度使用8个点,对于2.5比特/维度的速率,我们需要每个维度大约52次加法,87次比较,0.2次除法和0.4次乘法才能实现信噪比=13.31 dB(从率失真曲线获得的界限为13.52 dB)。这比传统的基于动态规划的方法简单得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fixed-rate entropy-coded vector quantization using linear (zero-one) programming
Consider two sets of points X, A and their n-fold cartesian products {A}/sup n/, {X}n. A non-negative cost is associated with each element of A. A measure of distance is defined between an element of A and an element of X. It is assumed that the cost and also the distance in the n-fold space has an additive property. The shaped set is composed of a subset of elements of {A}/sup n/ of the least cost. Decoding of an element x/spl isin/{X}/sup n/ is the process of finding the element of the shaped set which has the minimum distance to x. Using the additivity property of cost and distance measures, the decoding problem is formulated as a linear program. Using the generalized upper bounding technique of linear programming in conjunction with some special features of the problem, we present methods to substantially reduce the complexity of the corresponding simplex search. The proposed method is used for the fixed-rate entropy-coded vector quantization of a Gaussian source. For n=128 (space dimensionality) using 8 points per dimension and for a rate of 2.5 bits/dimension, we need about 52 additions, 87 comparisons, 0.2 divisions, and 0.4 multiplications per dimension to achieve SNR=13.31 dB (the bound obtained from the rate-distortion curve is 13.52 dB). This is substantially less complex than the traditional methods based on the dynamic programming.
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