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Efficient scalar quantization of exponential and Laplacian random variables

机译:指数和拉普拉斯随机变量的有效标量量化

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This paper presents solutions to the entropy-constrained scalar quantizer (ECSQ) design problem for two sources commonly encountered in image and speech compression applications: sources having the exponential and Laplacian probability density functions. We use the memoryless property of the exponential distribution to develop a new noniterative algorithm for obtaining the optimal quantizer design. We show how to obtain the optimal ECSQ either with or without an additional constraint on the number of levels in the quantizer. In contrast to prior methods, which require a multidimensional iterative solution of a large number of nonlinear equations, the new method needs only a single sequence of solutions to one-dimensional nonlinear equations (in some Laplacian cases, one additional two-dimensional solution is needed). As a result, the new method is orders of magnitude faster than prior ones. We show that as the constraint on the number of levels in the quantizer is relaxed, the optimal ECSQ becomes a uniform threshold quantizer (UTQ) for exponential, but not for Laplacian sources. We then further examine the performance of the UTQ and optimal ECSQ, and also investigate some interesting alternatives to the UTQ, including a uniform-reconstruction quantizer (URQ) and a constant dead-zone ratio quantizer (CDZRQ).
机译:本文针对图像和语音压缩应用中常见的两种来源,提出了熵约束标量量化器(ECSQ)设计问题的解决方案:具有指数和拉普拉斯概率密度函数的来源。我们使用指数分布的无记忆特性来开发一种新的非迭代算法,以获得最佳量化器设计。我们展示了如何获得最佳ECSQ,无论是否对量化器中的级别数施加额外约束。与需要大量非线性方程的多维迭代解的现有方法相比,新方法只需要一维非线性方程的单个解序列(在某些拉普拉斯情况下,还需要一个二维解决方案) )。结果,新方法比以前的方法快几个数量级。我们显示,随着对量化器中级别数量的约束的放宽,最优ECSQ成为指数的统一阈值量化器(UTQ),但不适用于拉普拉斯信源。然后,我们进一步检查UTQ和最佳ECSQ的性能,并研究一些有趣的UTQ替代方案,包括统一重建量化器(URQ)和恒定死区比率量化器(CDZRQ)。

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