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首页> 外文期刊>電子情報通信学会技術研究報告. 音声. Speech >The application of time series smoothing function and warping magnitude function to the noisy speech recognition using modification of the spectral shape
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The application of time series smoothing function and warping magnitude function to the noisy speech recognition using modification of the spectral shape

机译:时间序列平滑功能和翘曲幅度函数在频谱形状修改下的嘈杂语音识别

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摘要

The valleys of spectral envelopes are vanishing, and the spectral value on a low spectral level is rising under the noisy environment and these changes give bad influence to the performance of recognition systems. We proposed the method for the extraction of spectral features of signals using modification of spectral shapes by rules. However, the incorrect valleys are sometimes added in poor environment. In this paper, the weighting functions are defined for the time series of cepstral coefficients obtained from modified spectral envelopes for removing incorrect valleys added by rule. And we also proposed the method for evaluating spectrum on warped magnitude axis. In this method, local peaks at the low frequency area are emphasized. The cepstral parameters applied these methods are used for recognition experiment and performances of parameters are compared.
机译:光谱信封的山谷正在消失,并且低频频率的光谱值在嘈杂的环境下升高,这些变化对识别系统的性能产生了不良影响。 我们提出了使用规则的谱形状的修改来提取信号的光谱特征的方法。 然而,不正确的山谷有时会在糟糕的环境中添加。 在本文中,为从修改的频谱信封获得的时间序列定义了加权函数,用于通过规则添加不正确的谷谷物。 我们还提出了对翘曲幅度轴的评估频谱的方法。 在该方法中,强调了低频区域的局部峰。 应用这些方法的抗康斯兰参数用于识别实验,并比较参数的性能。

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