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首页> 外文期刊>The Journal of the Acoustical Society of America >Large-scale training to increase speech intelligibility for hearing-impaired listeners in novel noises
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Large-scale training to increase speech intelligibility for hearing-impaired listeners in novel noises

机译:大规模培训可提高听觉障碍者在新噪音中的语音清晰度

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摘要

Supervised speech segregation has been recently shown to improve human speech intelligibility in noise, when trained and tested on similar noises. However, a major challenge involves the ability to generalize to entirely novel noises. Such generalization would enable hearing aid and cochlear implant users to improve speech intelligibility in unknown noisy environments. This challenge is addressed in the current study through large-scale training. Specifically, a deep neural network (DNN) was trained on 10 000 noises to estimate the ideal ratio mask, and then employed to separate sentences from completely new noises (cafeteria and babble) at several signal-to-noise ratios (SNRs). Although the DNN was trained at the fixed SNR of -2 dB, testing using hearing-impaired listeners demonstrated that speech intelligibility increased substantially following speech segregation using the novel noises and unmatched SNR conditions of 0 dB and 5 dB. Sentence intelligibility benefit was also observed for normal-hearing listeners in most noisy conditions. The results indicate that DNN-based supervised speech segregation with large-scale training is a very promising approach for generalization to new acoustic environments. (C) 2016 Acoustical Society of America.
机译:当对相似的噪声进行训练和测试时,最近已证明有监督的语音隔离可以改善人类语音在噪声中的清晰度。但是,一个主要的挑战涉及到将噪声泛化为全新噪声的能力。这样的概括将使助听器和人工耳蜗使用者能够改善未知噪声环境中的语音清晰度。本研究通过大规模培训解决了这一挑战。具体来说,对一个深度神经网络(DNN)进行了10000种噪声的训练,以估计理想比率的遮罩,然后将其与以几种信噪比(SNR)的全新噪声(自助餐和胡言乱语)分开的句子。尽管DNN是在-2 dB的固定SNR下训练的,但使用有听力障碍的听众进行的测试表明,使用新颖的噪声和0 dB和5 dB的不匹配SNR条件,语音清晰度在语音分离后会大大提高。在大多数嘈杂的条件下,对于听力正常的听众,还可以提高句子清晰度。结果表明,基于DNN的大规模语音监督分离是一种非常有希望的方法,可以推广到新的声学环境。 (C)2016年美国声学学会。

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