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Smoothed spectral subtraction for a frequency-weighted HMM in noisy speech recognition

机译:噪声语音识别中频率加权HMM的平滑频谱减法

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The paper proposes improved methods of smoothed spectral subtraction to enhance the recognition performance of a frequency weighted HMM (HMM-FW) in very noisy environments. The conventional spectral subtraction tends to produce discontinuity in estimated power spectra. This distortion is undesirable for HMM-FW which uses group delay spectra as feature vectors. In order to remove this distortion, the paper proposes two frequency smoothing methods in log spectral domain: (1) a low pass filtering by DCT; and (2) a weighted minimum mean square error method (WMSE) which fits cosine series to an estimated log power spectrum. The results show that the smoothers are very effective under very noisy conditions, especially for the frequency weighted HMM. The WMSE method combined with HMM-FW achieves the highest recognition accuracies, for instance, improving recognition rate from 68% to 88% at -6 dB SNR of car noise.
机译:本文提出了改进的平滑频谱减法方法,以增强在非常嘈杂的环境中频率加权HMM(HMM-FW)的识别性能。常规频谱相减趋于在估计的功率谱中产生不连续性。对于使用群时延频谱作为特征向量的HMM-FW,这种失真是不可取的。为了消除这种失真,本文提出了两种在对数频谱域中的频率平滑方法:(1)通过DCT进行低通滤波; (2)加权最小均方误差方法(WMSE),该方法将余弦序列拟合到估计的对数功率谱。结果表明,平滑器在非常嘈杂的条件下非常有效,尤其是对于频率加权的HMM。 WMSE方法与HMM-FW相结合可实现最高的识别精度,例如,在汽车噪音为-6 dB SNR的情况下,将识别率从68%提高到88%。

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