Exemplar-based voice conversion in noisy environment

R. Takashima, T. Takiguchi, Y. Ariki
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引用次数: 139

Abstract

This paper presents a voice conversion (VC) technique for noisy environments, where parallel exemplars are introduced to encode the source speech signal and synthesize the target speech signal. The parallel exemplars (dictionary) consist of the source exemplars and target exemplars, having the same texts uttered by the source and target speakers. The input source signal is decomposed into the source exemplars, noise exemplars obtained from the input signal, and their weights (activities). Then, by using the weights of the source exemplars, the converted signal is constructed from the target exemplars. We carried out speaker conversion tasks using clean speech data and noise-added speech data. The effectiveness of this method was confirmed by comparing its effectiveness with that of a conventional Gaussian Mixture Model (GMM)-based method.
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噪声环境下基于样本的语音转换
本文提出了一种噪声环境下的语音转换技术,该技术采用并行示例对源语音信号进行编码,并对目标语音信号进行合成。平行范例(词典)由源范例和目标范例组成,源范例和目标范例具有相同的文本。将输入源信号分解为源样例、从输入信号中得到的噪声样例及其权值(活动)。然后,利用源样例的权重,从目标样例构造转换后的信号。我们使用干净的语音数据和添加噪声的语音数据进行说话人转换任务。通过与基于高斯混合模型(GMM)的传统方法的有效性比较,验证了该方法的有效性。
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