基于小波变换的线性预测系数多级扬声器特征跟踪识别系统

K. Daqrouq, A. Al-Qawasmi, W. Al-Sawalmeh, T. A. Hilal
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引用次数: 4

摘要

本文利用连续和离散两种形式的小波变换,建立了基于文本的鲁棒噪声说话人识别系统。本研究旨在探讨一种高准确度的非平稳极难识别语音信号的识别方法。采用连续、离散小波变换和线性预测系数三种方法提取说话人的基本特征。为了获得更好的识别率,采用了三种测量方法:rms差百分比(PRD)、相关系数(CC)和静态变形确定系数(SDDC)。识别率达95%。本文提出的系统基于多阶段特征提取,具有较好的准确率。该系统在噪声较大(信噪比为- 32dB)的情况下也能保持良好的特征跟踪能力。这是因为基于多阶段特征跟踪的系统采用小波变换,适合于非平稳信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet Transform based multistage speaker feature tracking identification system using Linear Prediction Coefficient
In this paper Wavelet Transform (WT) in its two forms Continuous and Discrete are used to create text-dependent robust to noise speaker recognition system. The research intends to investigate a high accuracy of identification the speech signal of very difficult nature that is non- stationary. Three methods are used to extract the essential speaker features based on Continuous, Discrete Wavelet Transform and Linear Prediction Coefficient (LPC). To have better identification rate three measurement methods are used: Percentage rms Difference (PRD), Correlation Coefficient (CC), and Statically Deformation Determination Coefficient (SDDC). 95% identification rate is accomplished. The presented system in this paper depends on multi-stage features extracting due to its better accuracy. The system works with excellent capability of features tracking even when the tested signals are very noisy with −32dB SNR. This is accomplished because of multistage features tracking based system using Wavelet Transform, which is suitable for non-stationary signal.
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