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首页> 外文期刊>IEEE Transactions on Speech and Audio Proceessing >Use of spectral autocorrelation in spectral envelope linearprediction for speech recognition
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Use of spectral autocorrelation in spectral envelope linearprediction for speech recognition

机译:频谱自相关在频谱包络线性预测中的语音识别应用

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This paper proposes a linear predictive (LP) analysis method where sample autocorrelations are estimated from the spectral envelope of a speech signal on the basis of the spectral autocorrelation. The spectral autocorrelation is defined as discrete quantities of speech spectrum with spectral resolution identical to the discrete Fourier transform (DFT) used to obtain the speech spectrum. From analytical and empirical derivation of its properties, we can estimate the fundamental frequency and the maximally correlated frequency for voiced and unvoiced speech, respectively, and then obtain the spectral envelope by sampling at a rate of the estimated frequency. A frequency normalization can be applied to the estimated spectral envelope because the number of samples of the spectral envelope usually differs from frame to frame. The spectral envelope is warped into the mel-frequency scale and the inverse DFT is applied to extract the estimate of sample autocorrelations. From the result of LP analysis on the sample autocorrelations, we finally obtain the spectral envelope cepstral coefficients (SECC). Hidden Markov model (HMM) recognition experiments show that SECC significantly improves the performance of a recognizer at low signal-to-noise ratios (SNRs) over several other representations
机译:本文提出了一种线性预测(LP)分析方法,其中基于频谱自相关从语音信号的频谱包络估计样本自相关。频谱自相关定义为语音频谱的离散量,其频谱分辨率与用于获取语音频谱的离散傅立叶变换(DFT)相同。从其特性的分析和经验推导中,我们可以分别估计有声和无声语音的基本频率和最大相关频率,然后通过以估计频率的速率采样来获得频谱包络。频率归一化可以应用于估计的频谱包络,因为频谱包络的​​样本数量通常逐帧不同。将频谱包络扭曲到mel频率范围,然后应用逆DFT提取样本自相关的估计。从样本自相关的LP分析结果,我们最终获得了频谱包络倒谱系数(SECC)。隐马尔可夫模型(HMM)识别实验表明,与其他几种表示相比,SECC在低信噪比(SNR)下可显着提高识别器的性能

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