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首页> 外文期刊>ETRI journal >Filtering of Filter-Bank Energies for Robust Speech Recognition
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Filtering of Filter-Bank Energies for Robust Speech Recognition

机译:滤波器组能量的滤波以实现可靠的语音识别

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摘要

We propose a novel feature processing technique which can provide a cepstral liftering effect in the log-spectral domain. Cepstral liftering aims at the equalization of variance of cepstral coefficients for the distance-based speech recognizer, and as a result, provides the robustness for additive noise and speaker variability. However, in the popular hidden Markov model based framework, cepstral liftering has no effect in recognition performance. We derive a filtering method in log-spectral domain corresponding to the cepstral liftering. The proposed method performs a high-pass filtering based on the decorrelanon of filter-bank energies. We show that in noisy speech recognition, the proposed method reduces the error rate by 52.7% to conventional feature.
机译:我们提出了一种新颖的特征处理技术,该技术可以在对数谱域中提供倒谱提升效果。倒频谱提升的目的在于使基于距离的语音识别器的倒频谱系数的方差相等,从而为附加噪声和说话者可变性提供鲁棒性。但是,在流行的基于隐马尔可夫模型的隐藏框架中,倒谱提升对识别性能没有影响。我们推导了对应于倒谱提升的对数谱域的滤波方法。所提出的方法基于滤波器组能量的去相关来执行高通滤波。我们表明,在嘈杂的语音识别中,该方法将错误率降低了52.7%,达到了传统特征。

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