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首页> 外文期刊>The Journal of the Acoustical Society of America >Predicting speech intelligibility based on the signal-to-noise envelope power ratio after modulation-frequency selective processing
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Predicting speech intelligibility based on the signal-to-noise envelope power ratio after modulation-frequency selective processing

机译:调制频率选择性处理后基于信噪包络功率比的语音清晰度预测

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摘要

A model for predicting the intelligibility of processed noisy speech is proposed. The speech-based envelope power spectrum model has a similar structure as the model of Ewert and Dau [(2000). J. Acoust. Soc. Am. 108, 1181-1196], developed to account for modulation detection and masking data. The model estimates the speech-to-noise envelope power ratio, SNR env, at the output of a modulation filterbank and relates this metric to speech intelligibility using the concept of an ideal observer. Predictions were compared to data on the intelligibility of speech presented in stationary speech-shaped noise. The model was further tested in conditions with noisy speech subjected to reverberation and spectral subtraction. Good agreement between predictions and data was found in all cases. For spectral subtraction, an analysis of the model's internal representation of the stimuli revealed that the predicted decrease of intelligibility was caused by the estimated noise envelope power exceeding that of the speech. The classical concept of the speech transmission index fails in this condition. The results strongly suggest that the signal-to-noise ratio at the output of a modulation frequency selective process provides a key measure of speech intelligibility.
机译:提出了一种预测处理后的语音清晰度的模型。基于语音的包络功率谱模型具有与Ewert和Dau [(2000)]相似的结构。 J. Acoust。 Soc。上午。 108,1181-1196],以解决调制检测和屏蔽数据问题。该模型估计调制滤波器组输出处的语音噪声包络功率比SNR env,并使用理想观察者的概念将此度量与语音清晰度相关联。将预测结果与以固定语音形噪声呈现的语音的清晰度数据进行比较。在带有混响和频谱减法的嘈杂语音条件下进一步测试了该模型。在所有情况下,预测和数据之间都具有良好的一致性。对于频谱减法,对模型的内部刺激表示的分析表明,可预测的清晰度下降是由于估计的噪声包络功率超过语音的功率而引起的。在这种情况下,语音传输索引的经典概念失败了。结果强烈表明,调制频率选择过程输出的信噪比是语音清晰度的关键指标。

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