使用树结构矢量量化的语音压缩

M. V. Makwana, A. B. Nandurbarkar, K. R. Parmar
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引用次数: 1

摘要

在保持所有必要信息的同时获得信号的紧凑表示的科学被称为压缩,基本上可以分为两种类型,无损压缩和有损压缩。有损压缩可进一步分为标量量化(SQ)和矢量量化(VQ)两种类型。SQ涉及到使用一些失真度量单独处理输入样本,而VQ涉及到使用一些定义的失真度量将组输入样本处理成一组定义良好的向量。自1980年以来,VQ成为一种流行的图像和语音数据源编码技术[1]。直接使用VQ存在严重的复杂性障碍。经典的树结构矢量量化技术由Buzo等人[2]引入。本文阐述了基于紧凑码本的语音压缩TSVQ设计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speech compression using tree structured Vector Quantization
The science of obtaining a compact representation of a signal while maintaining all the necessary information is known as Compression which can be basically classified in two types, Lossless and Lossy compression. Lossy compression can be further classified in two types, namely Scalar Quantization (SQ) and Vector Quantization (VQ). SQ involves processing the input samples individually using some distortion measure while VQ involves processing the input samples in groups into a set of well-defined vectors using some defined distortion measure. VQ since about 1980 became a popular technique for source coding of image and speech data [1]. The direct use of VQ suffers from a serious complexity barrier. The classical technique of Tree Structured Vector Quantization was introduced by Buzo et al. [2]. This paper explains the TSVQ design approach for speech compression with compact codebook.
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