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使用语音和音乐评估助听器的深度边缘反馈消除。

Evaluation of deep marginal feedback cancellation for hearing aids using speech and music.

机构信息

Key Laboratory of Noise and Vibration Research, Institute of Acoustics, Chinese Academy of Sciences, Beijing, China.

University of Chinese Academy of Sciences, Beijing, China.

出版信息

Trends Hear. 2023 Jan-Dec;27:23312165231192290. doi: 10.1177/23312165231192290.

Abstract

Speech and music both play fundamental roles in daily life. Speech is important for communication while music is important for relaxation and social interaction. Both speech and music have a large dynamic range. This does not pose problems for listeners with normal hearing. However, for hearing-impaired listeners, elevated hearing thresholds may result in low-level portions of sound being inaudible. Hearing aids with frequency-dependent amplification and amplitude compression can partly compensate for this problem. However, the gain required for low-level portions of sound to compensate for the hearing loss can be larger than the maximum stable gain of a hearing aid, leading to acoustic feedback. Feedback control is used to avoid such instability, but this can lead to artifacts, especially when the gain is only just below the maximum stable gain. We previously proposed a deep-learning method called DeepMFC for controlling feedback and reducing artifacts and showed that when the sound source was speech DeepMFC performed much better than traditional approaches. However, its performance using music as the sound source was not assessed and the way in which it led to improved performance for speech was not determined. The present paper reveals how DeepMFC addresses feedback problems and evaluates DeepMFC using speech and music as sound sources with both objective and subjective measures. DeepMFC achieved good performance for both speech and music when it was trained with matched training materials. When combined with an adaptive feedback canceller it provided over 13 dB of additional stable gain for hearing-impaired listeners.

摘要

言语和音乐在日常生活中都起着重要的作用。言语对于交流很重要,而音乐对于放松和社交互动很重要。言语和音乐都有很大的动态范围。这对于听力正常的听众来说不成问题。然而,对于听力受损的听众来说,听力阈值的升高可能导致声音的低电平部分无法听到。具有频率依赖放大和幅度压缩的助听器可以部分补偿这个问题。然而,为了补偿听力损失而需要对低电平部分的声音进行增益补偿可能会大于助听器的最大稳定增益,从而导致声反馈。反馈控制用于避免这种不稳定性,但这可能会导致伪像,尤其是当增益仅略低于最大稳定增益时。我们之前提出了一种称为 DeepMFC 的深度学习方法来控制反馈并减少伪像,并表明当声源为语音时,DeepMFC 的性能明显优于传统方法。然而,尚未评估其使用音乐作为声源的性能,也未确定其导致语音性能提高的方式。本文揭示了 DeepMFC 如何解决反馈问题,并使用言语和音乐作为声源,通过客观和主观测量来评估 DeepMFC。当使用匹配的训练材料进行训练时,DeepMFC 对言语和音乐都能取得良好的性能。当与自适应反馈消除器结合使用时,它为听力受损的听众提供了超过 13dB 的额外稳定增益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fa29/10408330/802c796296ec/10.1177_23312165231192290-fig1.jpg

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