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Computational auditory models in predicting noise reduction performance for wideband telephony applications

机译:用于预测宽带电话应用的降噪性能的计算听觉模型

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摘要

The performance of several noise reduction algorithms intended for wideband telephony was evaluated both subjectively and objectively. The chosen algorithms were based on statistical modeling, spectral subtraction, Wiener filtering, or subspace modelling principles. A customized wideband noise reduction database containing speech samples corrupted by three types of background noises at three SNR levels, along with their enhanced versions was created. The overall quality of the speech samples in the database was subsequently rated by a group of listeners with normal hearing capabilities. Comprehensive statistical analyses were performed to assess the reliability of the subjective data, and to assess the performance of noise reduction algorithms across varied noisy conditions. The subjective quality ratings were then used to investigate the performance of several auditory model-based objective quality metrics. Key results from these investigations include: (a) there was a high degree of inter- and intra-subject reliability in the subjective ratings, (b) noise reduction algorithms enhance speech quality for only a subset of the noise conditions, and (c) auditory model-based metrics perform similarly in predicting speech quality ratings, when speech quality scores pertaining to a particular noise condition were averaged.
机译:主观和客观地评估了几种用于宽带电话的降噪算法的性能。选择的算法基于统计建模,频谱减法,维纳滤波或子空间建模原理。创建了一个定制的宽带降噪数据库,该数据库包含在三个SNR级别受三种类型的背景噪声破坏的语音样本及其增强版本。随后,由一组具有正常听力能力的听众对数据库中语音样本的总体质量进行评估。进行了全面的统计分析,以评估主观数据的可靠性,并评估各种噪声条件下降噪算法的性能。然后使用主观质量等级来调查几种基于听觉模型的客观质量指标的表现。这些调查的主要结果包括:(a)主观评分中的对象间和对象间可靠性很高;(b)降噪算法仅针对一部分噪声条件提高语音质量;(c)当将与特定噪音状况相关的语音质量得分平均时,基于听觉模型的度量标准在预测语音质量等级中的表现类似。

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