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A noise robust feature extraction algorithm using joint wavelet packet subband decomposition and AR modeling of speech signals

机译:联合小波包子带分解和语音信号AR建模的噪声鲁棒特征提取算法

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This paper presents a noise robust feature extraction algorithm NRFE using joint wavelet packet decomposition (WPD) and autoregressive (AR) modeling of a speech signal. In opposition to the short time Fourier transform (STFT)-based time-frequency signal representation, wavelet packet decomposition can lead to better representation of non-stationary parts of the speech signal (e.g. consonants). The vowels are well described with an AR model as in LPC analysis. The proposed Root-Log compression scheme is used to perform the computation of the wavelet packet parameters. The separately extracted WPD and AR-based parameters are combined together and then transformed with the usage of linear discriminant analysis (LDA) to finally produce a lower dimensional output feature vector. The noise robustness is improved with the application of proposed wavelet-based denoising algorithm with a modified soft thresholding procedure and time-frequency adaptive threshold. The proposed voice activity detector based on a skewness-to-kurtosis ratio of the LPC residual signal is used to effectively perform a frame-dropping principle. The speech recognition results achieved on Aurora 2 and Aurora 3 databases show overall performance improvement of 44.7% and 48.2% relative to the baseline MFCC front-end, respectively.
机译:本文提出了一种基于语音信号的联合小波包分解(WPD)和自回归(AR)建模的噪声鲁棒特征提取算法NRFE。与基于短时间傅立叶变换(STFT)的时频信号表示相反,小波包分解可以更好地表示语音信号的非平稳部分(例如辅音)。如在LPC分析中一样,用AR模型很好地描述了元音。提出的Root-Log压缩方案用于执行小波包参数的计算。将分别提取的WPD和基于AR的参数组合在一起,然后使用线性判别分析(LDA)进行转换,以最终生成较低维的输出特征向量。提出的基于小波的去噪算法具有改进的软阈值过程和时频自适应阈值,从而提高了噪声的鲁棒性。提出的基于LPC残余信号的偏度与峰度之比的语音活动检测器用于有效地执行丢帧原理。在Aurora 2和Aurora 3数据库上获得的语音识别结果显示,相对于基线MFCC前端,整体性能分别提高了44.7%和48.2%。

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