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On the use of Bayesian modeling for predicting noise reduction performance

机译:关于使用贝叶斯模型预测降噪性能

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In speech enhancement applications, a validated metric of noise reduction performance is vital in the relative ranking of noise reduction algorithms and in enhancing the performance of a noise reduction algorithm. subjective scores of enhanced speech remain the yardstick for performance, but objective metrics that emulate subjective evaluations are preferred for cost- and time-effectiveness. In this paper, we analyze the performance of two objective methods for predicting the quality of enhanced speech. The first method employs the coherence-based speech intelligibility index, while the second method uses features derived from the Moore-Glasberg auditory model. In both cases, the features are mapped to a quality score using the Bayesian modeling approach. Results show that the combination of the auditory model-based feature set and the Bayesian modeling provides the best performance in predicting the quality scores of enhanced speech.
机译:在语音增强应用中,经过验证的降噪性能指标对于降噪算法的相对排名和增强降噪算法的性能至关重要。增强语音的主观分数仍然是性能的标准,但是模仿主观评估的客观指标对于成本和时间效率是首选。在本文中,我们分析了两种用于预测增强语音质量的客观方法的性能。第一种方法使用基于相干性的语音清晰度指数,而第二种方法使用从Moore-Glasberg听觉模型得出的特征。在这两种情况下,都使用贝叶斯建模方法将特征映射到质量得分。结果表明,基于听觉模型的特征集和贝叶斯模型的组合在预测增强语音的质量得分方面提供了最佳性能。

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