首页> 外文期刊>EURASIP journal on advances in signal processing >Influence of Acoustic Feedback on the Learning Strategies of Neural Network-Based Sound Classifiers in Digital Hearing Aids
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Influence of Acoustic Feedback on the Learning Strategies of Neural Network-Based Sound Classifiers in Digital Hearing Aids

机译:声反馈对数字助听器中基于神经网络的声音分类器学习策略的影响

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摘要

Sound classifiers embedded in digital hearing aids are usually designed by using sound databases that do not include the distortions associated to the feedback that often occurs when these devices have to work at high gain and low gain margin to oscillation. The consequence is that the classifier learns inappropriate sound patterns. In this paper we explore the feasibility of using different sound databases (generated according to 18 configurations of real patients), and a variety of learning strategies for neural networks in the effort of reducing the probability of erroneous classification. The experimental work basically points out that the proposed methods assist the neural network-based classifier in reducing its error probability in more than 18%. This helps enhance the elderly user's comfort: the hearing aid automatically selects, with higher success probability, the program that is best adapted to the changing acoustic environment the user is facing.
机译:嵌入在数字助听器中的声音分类器通常是通过使用声音数据库来设计的,这些声音数据库不包括与反馈相关的失真,这些失真通常在这些设备必须以高增益和低增益裕量工作才能产生振荡时发生。结果是分类器学习了不合适的声音模式。在本文中,我们探索了使用不同的声音数据库(根据实际患者的18种配置生成的声音)的可行性,以及各种神经网络学习策略,以减少错误分类的可能性。实验工作基本上指出,所提出的方法有助于基于神经网络的分类器将错误概率降低超过18%。这有助于提高老年人的舒适度:助听器会以较高的成功概率自动选择最适合用户所面对的不断变化的声学环境的程序。

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