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Recognition of noisy speech using dynamic spectral subband centroids

机译:使用动态频谱子带质心识别嘈杂的语音

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摘要

Despite their widespread popularity as front-end parameters for speech recognition, the cepstral coefficients derived from either linear prediction analysis or a filter-bank are found to be sensitive to additive noise. In this letter, we discuss the use of spectral subband centroids for robust speech recognition. We show that centroids, if properly selected, can achieve recognition performance comparable to that of the mel-frequency cepstral coefficients (MFCCs) in clean speech, while delivering better performance than MFCC in noisy environments. A procedure is proposed to construct the dynamic centroid feature vector that essentially embodies the transitional spectral information. We discuss some properties of the proposed dynamic features.
机译:尽管它们广泛用作语音识别的前端参数,但发现从线性预测分析或滤波器组导出的倒谱系数对加性噪声敏感。在这封信中,我们讨论了使用频谱子带质心进行鲁棒的语音识别。我们显示,如果选择适当的质心,则可以在纯净语音中实现与梅尔频率倒谱系数(MFCC)相当的识别性能,同时在嘈杂的环境中提供比MFCC更好的性能。提出了一种构建动态质心特征向量的方法,该向量本质上体现了过渡光谱信息。我们讨论了提出的动态特征的一些属性。

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