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Modelling the Effects of Hearing Aid Algorithms on Speech and Speaker Intelligibility as Perceived by Listeners with Simulated Sensorineural Hearing Impairment

机译:以模拟感官听力障碍的侦听器所感知聆听辅助算法对致辞和扬声器可懂度的建模

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The hearing-aid (HA) is the primary device used to improve sound perception for the sensorineural hearing-impaired (SHI) listener. However, despite the improvement of HA over the years, users continue to complain about their performance, especially in noisy environments; and the long time it takes to fit HAs. Testing and fitting HAs require evaluation by human subjects, which can take days or weeks. This study proposes replacing listeners with a computational model (CM) during the initial testing of HA algorithms or the fitting of HA. The aim is for the CM to predict listeners' speech and speaker intelligibility judgement and help reduce the time for testing and fitting HAs. The CM consists of a signal processing front end configured with the SHI listener's audiogram to mimic auditory threshold shifts and loudness recruitment of the HA wearer. The backend consists of a microscopic intelligibility model, that uses statistical speech models and knowledge of the background noise to make specific predictions about the words the listener perceived. Experiments were conducted using Grid corpus utterances, mixed with speech shaped noise (SSN) at a signal to noise ratio (SNR) of 0 dB. NAL-RP and a spectral envelope decimation (SED) frequency lowering HA algorithms were evaluated. Twenty normal-hearing listeners participated in the experiment. Two high-frequency hearing loss profiles were simulated, gently sloping, hi1, and steeply sloping, hi2. The CM's and listeners' performances were compared using different intelligibility measures. Statistically significant outcomes were obtained for average keyword intelligibility across HA algorithms for hi1 and hi2 simulated HI. Statistically significant results were also obtained for some individual keywords, and speakers' intelligibility using different HA algorithms and hi1 and hi2. The model also made a modest prediction of the NAL-RP and SED algorithms' performance in some of the tests. These results indicate that the CM has room for improvement; however, its success in some of the tests indicates the methodology used in its implementation may inform the development of a commercial application to conduct rapid testing and fitting of HAs
机译:助听器(HA)是用于改善感官听力障碍(SHI)听众的声音感知的主要设备。然而,尽管多年来,尽管有了HA的改善,但用户继续抱怨他们的表现,特别是在嘈杂的环境中;它需要很长时间。测试和拟合需要通过人类受试者进行评估,这可能需要数天或数周。本研究提出在HA算法的初始测试期间用计算模型(CM)替换听众或HA的拟合。目的是为了预测听众的语音和扬声器可明智性判断,并帮助减少测试和拟合的时间。 CM由信号处理前端组成,配置有SHI侦听器的AudioGram以模仿听觉阈值偏移和HA佩戴者的响度招募。后端由微观可懂度模型组成,它使用统计语音模型和背景噪声的知识,以便对听众感知的单词进行具体预测。使用栅格致言语进行实验,与噪声比(SNR)的信号形噪声(SSN)混合0 dB。评估NAL-RP和光谱包络抽取(SED)频率降低HA算法。二十天正常听力听众参加了实验。模拟了两个高频听力损失型材,轻轻倾斜,高1,陡峭倾斜,Hi2。使用不同的可懂度措施进行比较CM和倾听的表演。在HI1和Hi2模拟HI的HA算法中获得统计学显着的结果。对于一些单独的关键字,以及使用不同的HA算法和Hi1和Hi2的一些单独的关键字,以及扬声器的可懂度也获得了统计显着的结果。该模型还对一些测试中的NAL-RP和SED算法进行了适度预测。这些结果表明CM有改进的空间;然而,它在一些测试中的成功表明其实施中使用的方法可以告知开发商业应用程序,以便进行快速测试和配合

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