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Next-state functions for finite-state vector quantization

机译:用于有限状态矢量量化的下一状态函数

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摘要

The finite-state vector quantization scheme called dynamic finite-state vector quantization (DFSVQ) is investigated with regard to its subcodebook construction. In the DFSVQ, each input block is encoded by a small codebook called the subcodebook which is created from a much larger codebook called supercodebook. Each subcodebook is constructed by selecting, using a reordering procedure, a set of appropriate code-vectors from the supercodebook. The performance of the DFSVQ depends on this reordering procedure; therefore, several reordering procedures are introduced and their performance are evaluated. The reordering procedures investigated, are based on the conditional histogram of the code-vectors, index prediction, vector prediction, nearest neighbor design, and the frequency usage of the code-vectors. The performance of the reordering procedures are evaluated by comparing their hit ratios (the number of blocks encoded by the subcodebook) and their computational complexity. Experimental results are presented and it is found that the reordering procedure based on the vector prediction performs the best when compared with the other reordering procedures.
机译:关于子码本的构造,研究了一种称为动态有限状态矢量量化(DFSVQ)的有限状态矢量量化方案。在DFSVQ中,每个输入块由一个称为子码本的小码本编码,该子码本是从一个更大的名为超级码本的码本中创建的。通过使用重排序过程从超级码本中选择一组适当的代码向量来构造每个子码本。 DFSVQ的性能取决于此重新排序过程。因此,引入了几种重新排序程序并评估了它们的性能。所研究的重排序过程基于代码向量的条件直方图,索引预测,向量预测,最近邻设计以及代码向量的频率使用情况。通过比较命中率(子码本编码的块数)及其计算复杂度来评估重排序过程的性能。实验结果表明,与其他重排序过程相比,基于矢量预测的重排序过程表现最佳。

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