将小波语音压缩与其他语音压缩方案进行比较

Abdulmawla M. A. Najih, A. Ramli, A. Ibrahim, A. Syed
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引用次数: 21

摘要

语音压缩是数字信号处理的一个领域,其重点是在不显著损失质量的情况下降低语音信号的传输或存储的比特率。近年来,人们提出了一种用于信号分析的新技术——小波变换。该算法已成功应用于图像压缩中。目前,基于小波变换的语音压缩研究较少。本文试图对语音信号的小波压缩技术进行评价。采用不同的小波滤波器,在低比特率和低计算复杂度的条件下选择最适合语音信号的滤波器。我们的实现基于PSNR、SNR、NRMSE和压缩比在8 kHz 8位语音信号上进行了测试。将该算法与线性预测编码(LPC)和全球移动系统(GSM)两种语音压缩方案进行了比较,前者将传输数据减少了12倍以上,后者将传输数据减少了5倍。研究结果表明,小波语音压缩比其他技术具有更高的信噪比和更好的语音质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing speech compression using wavelets with other speech compression schemes
Speech compression is one area of digital signal processing that focuses on reducing the bit rate of the speech signal for transmission or storage without significant loss of quality. In recent years a new technique called wavelet transform has been proposed for signal analysis. It has been successfully used in image compression application. So far, less attention has been paid to the research in the speech compression using wavelet. This paper attempts to evaluate the wavelet compression technique on speech signals. Different wavelet filters were used to select the best filter suitable for speech signal in providing low bit rate and low computation complexity. Our implementation was evaluated based on PSNR, SNR, NRMSE and compression ratio tested on 8 kHz 8-bit speech signals. This algorithm was also compared to the following speech compression schemes: linear predictive coding (LPC) which reduces the transmitted data by factor of more than twelve, and global system mobile (GSM) which reduces the transmitted data by factor of five As a result from this study, wavelet speech compression gives higher SNR and better speech quality than the other techniques.
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