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Use of a Deep Recurrent Neural Network to Reduce Wind Noise: Effects on Judged Speech Intelligibility and Sound Quality

机译:使用深度递归神经网络减少风噪声:对判断语音清晰度和声音质量的影响

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Despite great advances in hearing-aid technology, users still experience problems with noise in windy environments. The potential benefits of using a deep recurrent neural network (RNN) for reducing wind noise were assessed. The RNN was trained using recordings of the output of the two microphones of a behind-the-ear hearing aid in response to male and female speech at various azimuths in the presence of noise produced by wind from various azimuths with a velocity of 3?m/s, using the “clean” speech as a reference. A paired-comparison procedure was used to compare all possible combinations of three conditions for subjective intelligibility and for sound quality or comfort. The conditions were unprocessed noisy speech, noisy speech processed using the RNN, and noisy speech that was high-pass filtered (which also reduced wind noise). Eighteen native English-speaking participants were tested, nine with normal hearing and nine with mild-to-moderate hearing impairment. Frequency-dependent linear amplification was provided for the latter. Processing using the RNN was significantly preferred over no processing by both subject groups for both subjective intelligibility and sound quality, although the magnitude of the preferences was small. High-pass filtering (HPF) was not significantly preferred over no processing. Although RNN was significantly preferred over HPF only for sound quality for the hearing-impaired participants, for the results as a whole, there was a preference for RNN over HPF. Overall, the results suggest that reduction of wind noise using an RNN is possible and might have beneficial effects when used in hearing aids.
机译:尽管助听技术取得了巨大进步,但用户在大风环境中仍会遇到噪音问题。评估了使用深度递归神经网络(RNN)减少风噪声的潜在好处。 RNN是使用耳后助听器的两个麦克风的输出记录来训练的,该记录是在存在来自各种方位的风以3?m的速度产生的噪音的情况下,响应各种方位的男女语音的情况/ s,使用“干净”的语音作为参考。使用配对比较程序比较三种条件的所有可能组合,以实现主观清晰度,音质或舒适度。这些条件包括未处理的嘈杂语音,使用RNN处理过的嘈杂语音以及经过高通滤波(还可以减少风噪声)的嘈杂语音。测试了18名以英语为母语的参与者,其中9名听力正常,9名轻度至中度听力障碍。为后者提供了频率相关的线性放大。尽管主观可理解度和音质都不错,但对于两个主观群体而言,使用RNN进行处理比不进行两个处理都更可取。与没有处理相比,高通滤波(HPF)并不是很可取。尽管仅就听障参与者的声音质量而言,RNN比HPF更受青睐,但从总体上看,RNN优于HPF。总体而言,结果表明使用RNN减少风噪声是可能的,并且在助听器中使用时可能会产生有益的影响。

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