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Linearization of Optimal Compressor Function and Design of Piecewise Linear Compandor for Gaussian Source

机译:最佳压缩器函数的线性化和高斯源分段线性扩展器的设计

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The constraints on the quantizer model are usually related to how complex the model can be designed and implemented. For the given bit rate, it is desirable to provide the highest possible signal to quantization noise ratio (SQNR) with reasonable complexity of a quantizer model. In order to avoid the influence of compressor function nonlinearity and the difficulties appearing in implementing and designing, especially in the Gaussian probability density function case, in this paper we linearize the optimal compressor function within the segments. We take advantage of piecewise linearization of the optimal compressor function, as a convenient solution for less complex designing compared to the asymptotically optimal compandor, and we provide performances close to the ones of the asymptotically optimal compandor. This makes our model useful in applications where the design and implementation complexity is a decisive factor. We propose a piecewise linear compandor (PLC) with an equal number of reproduction levels per nonuniformly spaced segments, where the segment thresholds are allotted to the equidistant optimal compressor function values. We study how the number of segments affects SQNR of the PLC. Features of the proposed PLC indicate its theoretical and practical significance in quantization of Gaussian source signals.
机译:量化模型的约束通常与模型的设计和实现复杂程度有关。对于给定的比特率,希望以合理的量化器模型复杂度提供尽可能高的信噪比(SQNR)。为了避免压缩机功能非线性的影响以及在实施和设计中出现的困难,尤其是在高斯概率密度函数情况下,本文将线性优化段内的最佳压缩机功能线性化。与渐近最优压扩器相比,我们利用最优压缩器功能的分段线性化作为不那么复杂的设计的便捷解决方案,并且提供的性能接近渐近最优压扩器。这使得我们的模型在设计和实现复杂性是决定性因素的应用中很有用。我们提出了一个分段线性压缩扩展器(PLC),每个非均匀间隔的段具有相同数量的再现级别,其中段阈值分配给等距的最佳压缩机功能值。我们研究了段数如何影响PLC的SQNR。拟议中的PLC的特点表明了其在高斯源信号量化中的理论和实践意义。

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