Application of a Graphical Model to Investigate the Utility of Cross-channel Information for Mitigating Reverberation in Cochlear Implants.

Lidea K Shahidi, Leslie M Collins, Boyla O Mainsah
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Abstract

Individuals with cochlear implants (CIs) experience more difficulty understanding speech in reverberant environ-ments than normal hearing listeners. As a result, recent research has targeted mitigating the effects of late reverberant signal reflections in CIs by using a machine learning approach to detect and delete affected segments in the CI stimulus pattern. Previous work has trained electrode-specific classification models to mitigate late reverberant signal reflections based on features extracted from only the acoustic activity within the electrode of interest. Since adjacent CI electrodes tend to be activated concurrently during speech, we hypothesized that incorporating additional information from the other electrode channels, termed cross-channel information, as features could improve classification performance. Cross-channel information extracted in real-world conditions will likely contain errors that will impact classification performance. To simulate extracting cross-channel information in realistic conditions, we developed a graphical model based on the Ising model to systematically introduce errors to specific types of cross-channel information. The Ising-like model allows us to add errors while maintaining the important geometric information contained in cross-channel information, which is due to the spectro-temporal structure of speech. Results suggest the potential utility of leveraging cross-channel information to improve the performance of the reverberation mitigation algorithm from the baseline channel-based features, even when the cross-channel information contains errors.

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应用图形模型研究人工耳蜗中跨通道信息对减轻混响的效用。
植入人工耳蜗的个体在混响环境中比正常听力的听者更难以理解言语。因此,最近的研究旨在通过使用机器学习方法来检测和删除CI刺激模式中受影响的片段,从而减轻CI中晚期混响信号反射的影响。以前的工作已经训练了特定于电极的分类模型,以减轻基于仅从感兴趣的电极内的声学活动提取的特征的晚期混响信号反射。由于相邻的CI电极在讲话时往往同时被激活,我们假设将来自其他电极通道的附加信息(称为跨通道信息)作为特征可以提高分类性能。在实际条件下提取的跨通道信息可能包含影响分类性能的错误。为了模拟在现实条件下提取跨通道信息,我们开发了一个基于Ising模型的图形模型,系统地引入特定类型跨通道信息的误差。类ising模型允许我们在保留跨信道信息中包含的重要几何信息的同时添加误差,这是由于语音的光谱-时间结构。结果表明,即使在跨通道信息包含错误的情况下,利用跨通道信息来改善基于基线通道特征的混响缓解算法的性能也具有潜在的效用。
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