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A deep learning based segregation algorithm to increase speech intelligibility for hearing-impaired listeners in reverberant-noisy conditions

机译:一种基于深度学习的分离算法可在混响嘈杂的情况下提高听力障碍听众的语音清晰度

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摘要

Recently, deep learning based speech segregation has been shown to improve human speech intelligibility in noisy environments. However, one important factor not yet considered is room reverberation, which characterizes typical daily environments. The combination of reverberation and background noise can severely degrade speech intelligibility for hearing-impaired (HI) listeners. In the current study, a deep learning based time-frequency masking algorithm was proposed to address both room reverberation and background noise. Specifically, a deep neural network was trained to estimate the ideal ratio mask, where anechoic-clean speech was considered as the desired signal. Intelligibility testing was conducted under reverberant-noisy conditions with reverberation time T60 = 0.6 s, plus speech-shaped noise or babble noise at various signal-to-noise ratios. The experiments demonstrated that substantial speech intelligibility improvements were obtained for HI listeners. The algorithm was also somewhat beneficial for normal-hearing (NH) listeners. In addition, sentence intelligibility scores for HI listeners with algorithm processing approached or matched those of young-adult NH listeners without processing. The current study represents a step toward deploying deep learning algorithms to help the speech understanding of HI listeners in everyday conditions.
机译:最近,基于深度学习的语音隔离已被证明可以改善嘈杂环境中的人类语音清晰度。但是,尚未考虑的一个重要因素是房间混响,它代表了典型的日常环境。混响和背景噪声的组合会严重降低听力障碍(HI)听众的语音清晰度。在当前的研究中,提出了一种基于深度学习的时频掩蔽算法,以解决房间混响和背景噪声的问题。具体来说,训练了一个深度神经网络来估计理想比率的遮罩,其中将无回声的清晰语音视为所需信号。可清晰度测试是在混响噪声条件下进行的,混响时间T60 = 0.6 s,以及各种信噪比下的语音形噪声或ba哑噪声。实验表明,HI收听者的语音清晰度得到了很大的提高。该算法对正常听(NH)的听众也有些好处。此外,采用算法处理的HI听众的句子清晰度得分接近或匹配未经处理的年轻NH听众的句子清晰度得分。当前的研究代表着朝着部署深度学习算法迈进的一步,该算法有助于在日常情况下对HI听众的语音理解。

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