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Robust Feature Vector Set Using Higher Order Autocorrelation Coefficients

机译:使用高阶自相关系数的鲁棒特征向量集

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In this paper, a feature extraction method that is robust to additive background noise is proposed for automatic speech recognition. Since the background noise corrupts the autocorrelation coefficients of the speech signal mostly at the lower orders, while the higher-order autocorrelation coefficients are least affected, this method discards the lower order autocorrelation coefficients and uses only the higher-order autocorrelation coefficients for spectral estimation. The magnitude spectrum of the windowed higher-order autocorrelation sequence is used here as an estimate of the power spectrum of the speech signal. This power spectral estimate is processed further by the Mel filter bank; a log operation and the discrete cosine transform to get the cepstral coefficients. These cepstral coefficients are referred to as the Differentiated Relative Higher Order Autocorrelation Coefficient Sequence Spectrum (DRHOASS). The authors evaluate the speech recognition performance of the DRHOASS features and show that they perform as well as the MFCC features for clean speech and their recognition performance is better than the MFCC features for noisy speech.
机译:针对自动语音识别,提出了一种对加性背景噪声具有鲁棒性的特征提取方法。由于背景噪声主要在较低阶上破坏语音信号的自相关系数,而对高阶自相关系数的影响最小,因此此方法将舍弃较低阶自相关系数,而仅将较高阶自相关系数用于频谱估计。窗口化的高阶自相关序列的幅度谱在这里用作语音信号的功率谱的估计。该功率谱估计值由梅尔滤波器组进一步处理;对数运算和离散余弦变换以获得倒频谱系数。这些倒频谱系数称为微分相对高阶自相关系数序列谱(DRHOASS)。作者评估了DRHOASS功能的语音识别性能,并证明了它们在干净语音方面的性能与MFCC功能相同,并且其识别性能优于在嘈杂语音方面的MFCC功能。

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