二叉搜索矢量量化

Ning-Yun Ku, Shun-Chieh Chang, Sha-Hwa Hwang
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引用次数: 1

摘要

提出了一种基于二进制搜索空间(BSS-VQ)的矢量量化快速搜索算法。采用权衡和学习的方法对G.729标准的线谱对(LSP)编码器进行了改进。在权衡方面,量化质量略有损失;但是,实现了大量的计算节省。在学习方面,利用学习过程开发了二叉搜索空间,该学习过程以全搜索VQ (FSVQ)作为推断函数。实验结果表明,该方法节省了86.19%的计算量,量化精度达到98.15%,验证了BSS-VQ方法的优异性能。
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Binary Search Vector Quantization

This paper proposes a fast search algorithm for vector quantization (VQ) based on a binary search space (BSS-VQ). The trade-off and learning aspects (TLA) were used to enhance the line spectrum pair (LSP) encoder of the G.729 standard. In the trade-off aspect, a slight loss occurred in the quantization quality; however, substantial computational savings were achieved. In the learning aspect, the binary search space was developed using he learning process, which uses full search VQ (FSVQ) as an inferred function. In the experiment, computational savings of 86.19% and a quantization accuracy of 98.15% were achieved, which confirmed the excellent performance of the BSS-VQ approach.

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