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在混响和噪声环境中使用未处理的双耳信号进行基于脑电图的听觉注意力解码?

EEG-based auditory attention decoding using unprocessed binaural signals in reverberant and noisy conditions?

作者信息

Aroudi Ali, Doclo Simon

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2017 Jul;2017:484-488. doi: 10.1109/EMBC.2017.8036867.

Abstract

To decode auditory attention from single-trial EEG recordings in an acoustic scenario with two competing speakers, a least-squares method has been recently proposed. This method however requires the clean speech signals of both the attended and the unattended speaker to be available as reference signals. Since in practice only the binaural signals consisting of a reverberant mixture of both speakers and background noise are available, in this paper we explore the potential of using these (unprocessed) signals as reference signals for decoding auditory attention in different acoustic conditions (anechoic, reverberant, noisy, and reverberant-noisy). In addition, we investigate whether it is possible to use these signals instead of the clean attended speech signal for filter training. The experimental results show that using the unprocessed binaural signals for filter training and for decoding auditory attention is feasible with a relatively large decoding performance, although for most acoustic conditions the decoding performance is significantly lower than when using the clean speech signals.

摘要

为了在有两个竞争说话者的声学场景中从单试次脑电图记录中解码听觉注意力,最近提出了一种最小二乘法。然而,该方法要求可获得被关注说话者和未被关注说话者的纯净语音信号作为参考信号。由于在实际中只有由两个说话者的混响混合以及背景噪声组成的双耳信号可用,因此在本文中,我们探索使用这些(未处理的)信号作为参考信号在不同声学条件(无回声、混响、有噪声以及混响有噪声)下解码听觉注意力的潜力。此外,我们研究是否有可能使用这些信号代替纯净的被关注语音信号进行滤波器训练。实验结果表明,使用未处理的双耳信号进行滤波器训练和解码听觉注意力是可行的,并且具有相对较高的解码性能,尽管在大多数声学条件下,解码性能明显低于使用纯净语音信号时的情况。

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