Creating Clarity in Noisy Environments by Using Deep Learning in Hearing Aids.

Q2 Health Professions Seminars in Hearing Pub Date : 2021-08-01 Epub Date: 2021-09-24 DOI:10.1055/s-0041-1735134
Asger Heidemann Andersen, Sébastien Santurette, Michael Syskind Pedersen, Emina Alickovic, Lorenz Fiedler, Jesper Jensen, Thomas Behrens
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引用次数: 15

Abstract

Hearing aids continue to acquire increasingly sophisticated sound-processing features beyond basic amplification. On the one hand, these have the potential to add user benefit and allow for personalization. On the other hand, if such features are to benefit according to their potential, they require clinicians to be acquainted with both the underlying technologies and the specific fitting handles made available by the individual hearing aid manufacturers. Ensuring benefit from hearing aids in typical daily listening environments requires that the hearing aids handle sounds that interfere with communication, generically referred to as "noise." With this aim, considerable efforts from both academia and industry have led to increasingly advanced algorithms that handle noise, typically using the principles of directional processing and postfiltering. This article provides an overview of the techniques used for noise reduction in modern hearing aids. First, classical techniques are covered as they are used in modern hearing aids. The discussion then shifts to how deep learning, a subfield of artificial intelligence, provides a radically different way of solving the noise problem. Finally, the results of several experiments are used to showcase the benefits of recent algorithmic advances in terms of signal-to-noise ratio, speech intelligibility, selective attention, and listening effort.

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在助听器中使用深度学习在嘈杂环境中创造清晰度。
助听器在基本的扩音功能之外,继续获得越来越复杂的声音处理功能。一方面,这些有可能增加用户利益并允许个性化。另一方面,如果这些功能要发挥其潜力,就需要临床医生熟悉基础技术和各个助听器制造商提供的具体安装手柄。确保在典型的日常听力环境中使用助听器,需要助听器处理干扰交流的声音,通常称为“噪音”。为了实现这一目标,学术界和工业界的大量努力已经导致越来越先进的算法来处理噪声,通常使用定向处理和后滤波的原理。本文概述了用于现代助听器降噪的技术。首先,经典技术被用于现代助听器。然后,讨论转向人工智能的一个子领域——深度学习如何提供一种完全不同的解决噪音问题的方法。最后,几个实验的结果被用来展示在信噪比、语音可理解性、选择性注意力和听力努力方面的最新算法进展的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Seminars in Hearing
Seminars in Hearing Health Professions-Speech and Hearing
CiteScore
3.30
自引率
0.00%
发文量
29
期刊介绍: Seminars in Hearing is a quarterly review journal that publishes topic-specific issues in the field of audiology including areas such as hearing loss, auditory disorders and psychoacoustics. The journal presents the latest clinical data, new screening and assessment techniques, along with suggestions for improving patient care in a concise and readable forum. Technological advances with regards to new auditory devices are also featured. The journal"s content is an ideal reference for both the practicing audiologist as well as an excellent educational tool for students who require the latest information on emerging techniques and areas of interest in the field.
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Errata: Unleashing the Power of Test Box and Real-Ear Probe Microphone Measurement. Chapter 3: Setting the Hearing Aid Response and Verifying Signal Processing and Features in the Test Box Chapter 5: Setting the Hearing Aid Response and Verifying Signal Processing and Features with Real-Ear Probe Microphone Measures Chapter 2: My Hearing Aid Isn't Working Like It Used to… How to Use This Workbook.
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