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DARF:一种数据简化的 FADE 版本,用于使用真实助听器模拟语音识别阈值。

DARF: A data-reduced FADE version for simulations of speech recognition thresholds with real hearing aids.

机构信息

Medizinische Physik and Cluster of Excellence Hearing4all, CvO Universität Oldenburg, Oldenburg 26129, Germany.

Medizinische Physik and Cluster of Excellence Hearing4all, CvO Universität Oldenburg, Oldenburg 26129, Germany.

出版信息

Hear Res. 2021 May;404:108217. doi: 10.1016/j.heares.2021.108217. Epub 2021 Feb 22.

Abstract

Developing and selecting hearing aids is a time consuming process which is simplified by using objective models. Previously, the framework for auditory discrimination experiments (FADE) accurately simulated benefits of hearing aid algorithms with root mean squared prediction errors below 3 dB. One FADE simulation requires several hours of (un)processed signals, which is obstructive when the signals have to be recorded. We propose and evaluate a data-reduced FADE version (DARF) which facilitates simulations with signals that cannot be processed digitally, but that can only be recorded in real-time. DARF simulates one speech recognition threshold (SRT) with about 30 min of recorded and processed signals of the (German) matrix sentence test. Benchmark experiments were carried out to compare DARF and standard FADE exhibiting small differences for stationary maskers (1 dB), but larger differences with strongly fluctuating maskers (5 dB). Hearing impairment and hearing aid algorithms seemed to reduce the differences. Hearing aid benefits were simulated in terms of speech recognition with three pairs of real hearing aids in silence (≥8 dB), in stationary and fluctuating maskers in co-located (stat. 2 dB; fluct. 6 dB), and spatially separated speech and noise signals (stat. ≥8 dB; fluct. 8 dB). The simulations were plausible in comparison to data from literature, but a comparison with empirical data is still open. DARF facilitates objective SRT simulations with real devices with unknown signal processing in real environments. Yet, a validation of DARF for devices with unknown signal processing is still pending since it was only tested with three similar devices. Nonetheless, DARF could be used for improving as well as for developing or model-based fitting of hearing aids.

摘要

开发和选择助听器是一个耗时的过程,通过使用客观模型可以简化这个过程。以前,听觉辨别实验框架(FADE)能够以均方根预测误差低于 3dB 的精度模拟助听器算法的优势。一次 FADE 模拟需要几个小时的(未)处理信号,这在信号必须实时记录时会造成阻碍。我们提出并评估了一种数据简化的 FADE 版本(DARF),它可以方便地模拟无法进行数字处理但只能实时记录的信号。DARF 使用大约 30 分钟记录和处理的德语矩阵句子测试的信号来模拟一个言语识别阈值(SRT)。进行了基准实验以比较 DARF 和标准 FADE,对于固定掩蔽器(1dB),DARF 和标准 FADE 之间的差异较小,但对于强波动掩蔽器(5dB),差异较大。听力障碍和助听器算法似乎会减小这些差异。在静默环境中,使用三对真实助听器模拟了言语识别方面的助听器益处(≥8dB),在固定和波动掩蔽器中,在共定位情况下模拟了言语识别(stat. 2dB;fluct. 6dB),以及在空间分离的言语和噪声信号中模拟了言语识别(stat. ≥8dB;fluct. 8dB)。与文献中的数据相比,这些模拟是合理的,但与经验数据的比较仍在进行中。DARF 可以方便地在真实环境中使用未知信号处理的真实设备进行客观的 SRT 模拟。然而,由于仅对三个类似的设备进行了测试,因此对 DARF 进行用于未知信号处理设备的验证仍然悬而未决。尽管如此,DARF 可以用于改进助听器,也可以用于开发或基于模型的助听器适配。

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