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首页> 外文期刊>Trends in Hearing >Objective Prediction of Hearing Aid Benefit Across Listener Groups Using Machine Learning: Speech Recognition Performance With Binaural Noise-Reduction Algorithms
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Objective Prediction of Hearing Aid Benefit Across Listener Groups Using Machine Learning: Speech Recognition Performance With Binaural Noise-Reduction Algorithms

机译:使用机器学习对听众群体的助听器益处进行客观预测:双耳降噪算法的语音识别性能

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The simulation framework for auditory discrimination experiments (FADE) was adopted and validated to predict the individual speech-in-noise recognition performance of listeners with normal and impaired hearing with and without a given hearing-aid algorithm. FADE uses a simple automatic speech recognizer (ASR) to estimate the lowest achievable speech reception thresholds (SRTs) from simulated speech recognition experiments in an objective way, independent from any empirical reference data. Empirical data from the literature were used to evaluate the model in terms of predicted SRTs and benefits in SRT with the German matrix sentence recognition test when using eight single- and multichannel binaural noise-reduction algorithms. To allow individual predictions of SRTs in binaural conditions, the model was extended with a simple better ear approach and individualized by taking audiograms into account. In a realistic binaural cafeteria condition, FADE explained about 90% of the variance of the empirical SRTs for a group of normal-hearing listeners and predicted the corresponding benefits with a root-mean-square prediction error of 0.6?dB. This highlights the potential of the approach for the objective assessment of benefits in SRT without prior knowledge about the empirical data. The predictions for the group of listeners with impaired hearing explained 75% of the empirical variance, while the individual predictions explained less than 25%. Possibly, additional individual factors should be considered for more accurate predictions with impaired hearing. A competing talker condition clearly showed one limitation of current ASR technology, as the empirical performance with SRTs lower than ?20?dB could not be predicted.
机译:采用了听觉歧视实验的仿真框架(FADE),并进行了验证,可以预测在有或没有给定助听算法的情况下,听力正常和听力受损的听众的个体语音噪声识别性能。 FADE使用一种简单的自动语音识别器(ASR),以客观的方式独立于任何经验参考数据,从模拟的语音识别实验中估计可达到的最低语音接收阈值(SRT)。当使用八种单声道和多声道双耳降噪算法时,来自文献的经验数据被用于评估模型的预测SRT和SRT的好处,以及德国矩阵语句识别测试。为了允许在双耳条件下对SRT进行单独预测,该模型通过简单的更好的入耳方法进行了扩展,并通过考虑听力图进行了个性化。在现实的双耳食堂条件下,FADE解释了一组正常听力的听众的经验SRT的大约90%的变化,并以0.6?dB的均方根预测误差预测了相应的好处。这突显了无需事先了解经验数据就可以客观评估SRT收益的方法的潜力。听觉受损的听众群体的预测解释了75%的经验方差,而单个预测的解释则少于25%。可能应考虑其他个体因素,以在听力受损的情况下进行更准确的预测。竞争性的讲话者条件清楚地表明了当前ASR技术的局限性,因为无法预测SRT低于20 dB的经验性能。

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