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首页> 外文期刊>EURASIP journal on applied signal processing >Reduced-complexity deterministic annealing for vector quantizer design
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Reduced-complexity deterministic annealing for vector quantizer design

机译:用于矢量量化器设计的降低复杂度的确定性退火

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This paper presents a reduced-complexity deterministic annealing (DA) approach for vector quantizer (VQ) design by using soft information processing with simplified assignment measures. Low-complexity distributions are designed to mimic the Gibbs distribution, where the latter is the optimal distribution used in the standard DA method. These low-complexity distributions are simple enough to facilitate fast computation, but at the same time they can closely approximate the Gibbs distribution to result in near-optimal performance. We have also derived the theoretical performance loss at a given system entropy due to using the simple soft measures instead of the optimal Gibbs measure. We use the derived result to obtain optimal annealing schedules for the simple soft measures that approximate the annealing schedule for the optimal Gibbs distribution. The proposed reduced-complexity DA algorithms have significantly improved the quality of the final codebooks compared to the generalized Lloyd algorithm and standard stochastic relaxation techniques, both with and without the pairwise nearest neighbor (PNN) codebook initialization. The proposed algorithms are able to evade the local minima and the results show that they are not sensitive to the choice of the initial codebook. Compared to the standard DA approach, the reduced-complexity DA algorithms can operate over 100 times faster With negligible performance difference. For example, for the design of a 16-dimensional vector quantizer having a rate of 0.4375 bit/sample for Gaussian source, the standard DA algorithm achieved 3.60 dB performance in 16 483 CPU seconds, whereas the reduced-complexity DA algorithm achieved the same performance in 136 CPU seconds. Other than VQ design, the DA techniques are applicable to problems such as classification, clustering, and resource allocation.
机译:本文提出了一种简化的确定性退火(DA)方法,该方法通过使用具有简化分配措施的软信息处理来进行矢量量化(VQ)设计。低复杂度分布旨在模拟吉布斯分布,其中吉布斯分布是标准DA方法中使用的最佳分布。这些低复杂度的分布足够简单,可以促进快速计算,但同​​时它们可以紧密近似吉布斯分布,从而获得接近最佳的性能。由于使用简单的软度量而不是最优的吉布斯度量,我们还得出了给定系统熵下的理论性能损失。我们使用导出的结果来获得用于简单软测量的最佳退火计划,该软测量近似于最佳Gibbs分布的退火计划。与广义的Lloyd算法和标准随机松弛技术相比,无论有没有成对最近邻居(PNN)码本初始化,提出的降低复杂度的DA算法都显着提高了最终码本的质量。所提出的算法能够规避局部最小值,并且结果表明它们对初始码本的选择不敏感。与标准DA方法相比,降低复杂度的DA算法可以将运行速度提高100倍以上,而性能差异却可以忽略不计。例如,对于高斯源的速率为0.4375位/样本的16维矢量量化器的设计,标准DA算法在16483 CPU秒内实现了3.60 dB的性能,而复杂度降低的DA算法则实现了相同的性能。在136 CPU秒内。除了VQ设计之外,DA技术还适用于分类,聚类和资源分配等问题。

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