Bone-conducted Speech Enhancement Using Vector-quantized Variational Autoencoder and Gammachirp Filterbank Cepstral Coefficients

Q. Nguyen, M. Unoki
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引用次数: 1

Abstract

Bone-conducted (BC) speech potentially avoids the undesired effects on recorded speech due to background noise or reverberation; however, BC speech has lower quality and intelligibility than air-conducted (AC) speech. Since a large-scale BC speech database is hard to obtain (low-resource), current BC speech enhancement methods hardly improve the speech of speakers outside the training dataset. We proposed a method for enhancing BC speech from speakers outside of the training dataset in such a low-resource scenario. The proposed method contained a feature conversion model based on a vector-quantized variational autoencoder incorporating the gammachirp filterbank cepstral coefficients. The proposed method exploited the large-scale clean AC speech database to improve the quality of the BC speech. We conducted three evaluations to determine the effectiveness of the proposed method: perceptual evaluation of speech quality, short-time objective intelligibility, and the syllable error rate of the automatic speech recognition system. The results indicated that the proposed method could improve the sound quality and intelligibility of the BC speech from speakers outside of the training dataset.
使用矢量量化变分自编码器和Gammachirp滤波器组倒谱系数的骨传导语音增强
骨传导(BC)语音潜在地避免了由于背景噪声或混响对录制语音的不良影响;然而,与空气传导(AC)语音相比,空气传导语音的质量和可理解性较低。由于大规模的BC语音数据库难以获得(低资源),目前的BC语音增强方法很难改善训练数据集之外的说话者的语音。我们提出了一种在这种低资源场景下增强来自训练数据集之外的演讲者的BC语音的方法。该方法包含一种基于矢量量化变分自编码器的特征转换模型,该模型结合了gamma machirp滤波器组倒谱系数。该方法利用大规模干净的交流语音数据库来提高BC语音的质量。我们进行了三个评估来确定所提出方法的有效性:语音质量的感知评估、短时客观可理解性和自动语音识别系统的音节错误率。结果表明,该方法可以提高来自训练数据集之外的说话者的BC语音的音质和可理解性。
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