使用声矢量传感器分离语音源

M. Shujau, C. Ritz, I. Burnett
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引用次数: 23

摘要

本文研究了如何利用声矢量传感器(AVS)的方向特性来分离语音源。这项工作中描述的技术利用频域到达方向估计来识别相对于AVS阵列的一组扬声器中的每个扬声器的位置,并相应地将它们分离为单个语音信号。本研究的结果表明,该技术可用于使用单个20ms语音帧的语音源的实时分离,此外,研究结果表明,与未处理的15.1 dB记录相比,该算法的信干扰比(SIR)平均提高,而在信失真比(SDR)方面,该算法比未处理的记录平均提高5.4 dB。除了SIR和SDR结果外,语音质量感知评估(PESQ)和听力测试都显示,与未处理的录音相比,1平均意见得分(MOS)的感知质量有所改善。
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Separation of speech sources using an Acoustic Vector Sensor
This paper investigates how the directional characteristics of an Acoustic Vector Sensor (AVS) can be used to separate speech sources. The technique described in this work takes advantage of the frequency domain direction of arrival estimates to identify the location, relative to the AVS array, of each individual speaker in a group of speakers and separate them accordingly into individual speech signals. Results presented in this work show that the technique can be used for real-time separation of speech sources using a single 20ms frame of speech, furthermore the results presented show that there is an average improvement in the Signal to Interference Ratio (SIR) for the proposed algorithm over the unprocessed recording of 15.1 dB and an average improvement of 5.4 dB in terms of Signal to Distortion Ratio (SDR) over the unprocessed recordings. In addition to the SIR and SDR results, Perceptual Evaluation of Speech Quality (PESQ) and listening tests both show an improvement in perceptual quality of 1 Mean Opinion Score (MOS) over unprocessed recordings.
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