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Open AccessJournal ArticleDOI

Design and Comparison of Vector Quantization Codebooks for Narrowband Speech Coding

Hiba Faraj, +1 more
- 01 Jul 2019 - 
- Vol. 6, Iss: 3, pp 139-146
TLDR
When the performance measurements of multistage and split vector quantization codebook spectral distortion results are presented,Multistage codebooks gave better performance in each option, compared to split vectors quantization methods.
Abstract
Vector quantization codebook algorithms are used for coding of narrow band speech signals. Multi-stage vector quantization and split vector quantization methods are two important techniques used for coding of narrowband speech signals and these methods are very popular due to the high bit rate minimization during coding of the signals. This paper presents performance measurements of multistage vector quantization and split vector quantization methods. We used line spectral frequencies for coding of the speech signals in codebook tables so as to ensure filter stability after quantization. The codebooks were generated by using the Linde-Buzo-Gray (LBG) algorithm. The tests were performed by selecting large amount of input data in training and test stages and to evaluate noise robustness of the methods, both noisy and clean speech signals were used. As a result, different codebooks were designed and tested in many stages and different bit rates to measure quantization performance. It is measured in terms of spectral distortion evaluation. We obtained the best result in 24bit multistage vector quantization codebook with a spectral distortion less than 1 dB for clean speech training data input. When we compared multistage and split vector quantization codebook spectral distortion results, multistage codebooks gave better performance in each option.

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References
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Book

Introduction To Speech

Multi Switched Split Vector Quantizer

TL;DR: From results it is proved that Multi Switched Split Vector Quantization provides better trade off between bitrate and spectral distortion performance, computational complexity and memory requirements when compared to Switched split vector quantization, Multi stage vectorquantization, and Split vector Quantization techniques.

A new approach on compression of speech signals using MSVQ and its enhancement using spectral subtraction under noise free and noisy environment

TL;DR: From the results it can be proved that multistage vector quantization is having better spectral distortion performance, less computational complexity and memory requirements when compared to unconstrainedvector quantization.
Proceedings ArticleDOI

Tree structured vector quantization based technique for speech compression

TL;DR: The Tree-Structured Vector Quantization (TSVQ) method for proficient speech compression is presented and Shared codebook method described in this TSVQ algorithm achieves 3.6 reduced storage requirements of factor 5 to 3.2 dB.
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