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Speech enhancement for hearing-impaired listeners using deep neural networks with auditory-model based features

机译:使用具有听觉模型特征的深度神经网络为听力受损的听众提供语音增强

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Speech understanding in adverse acoustic environments is still a major problem for users of hearing-instruments. Recent studies on supervised speech segregation show good promise to alleviate this problem by separating speech-dominated from noise-dominated spectro-temporal regions with estimated time-frequency masks. The current study compared a previously proposed feature set to a novel auditory-model based feature set using a common deep neural network based speech enhancement framework. The performance of both feature extraction methods was evaluated with objective measurements and a subjective listening test to measure speech perception scores in terms of intelligibility and quality with 17 hearing-impaired listeners. Significant improvements in speech intelligibility and quality ratings were found for both feature extraction systems. However, the auditory-model based feature set showed superior performance compared to the comparison feature set indicating that auditory-model based processing could provide further improvements for supervised speech segregation systems and their potential applications in hearing instruments.
机译:不利的声学环境中的语音理解对于听力仪器的用户来说仍然是一个主要问题。监督语音隔离的最新研究表明,通过用估计的时频掩码将语音为主的区域与噪声为主的频谱时域区域隔离,可以缓解该问题。当前的研究使用一种常见的基于深度神经网络的语音增强框架,将先前提出的特征集与基于新颖听觉模型的特征集进行了比较。这两种特征提取方法的性能均通过客观测量和主观听力测试进行了评估,以测量17位听力受损的听众在清晰度和质量方面的语音感知得分。对于这两种特征提取系统,语音清晰度和质量评级都得到了显着改善。但是,与比较功能集相比,基于听觉模型的功能集显示出更出色的性能,这表明基于听觉模型的处理可以为有监督的语音隔离系统及其在助听器中的潜在应用提供进一步的改进。

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