基于超帧特征空间的深度神经网络语音转换

Wei Ye, Yibiao Yu
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引用次数: 4

摘要

本文提出了一种利用深度神经网络(dnn)将源说话人的频谱包络映射到目标说话人的频谱包络的语音转换技术。用线性预测倒谱系数(LPCC)参数表示短时谱包络,并将相邻帧聚到一起形成超帧。然后利用深度神经网络由3个受限玻尔兹曼机(rbm)组成的五层结构的强大映射能力推导出谱转换函数。对深度神经网络模型和传统高斯混合模型的语音转换进行了比较研究。实验结果表明,转换语音的说话人识别率达到97.5%,比GMM方法提高了0.8%;平均倒谱失真值为0.87,比GMM方法提高了5.4%。ABX和MOS评价表明,在平行语料库条件下,该方法的转换性能优于传统的GMM方法。
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Voice conversion using deep neural network in super-frame feature space
This paper presents a voice conversion technique using deep neural networks (DNNs) to map the spectral envelopes of a source speaker to that of a target speaker. Short-time spectral envelopes are represented by the linear predication cepstrum coefficients (LPCC) parameters, and neighbor frames are gathered to form super-frames. Then the powerful mapping ability of DNN which has a five-layer architecture consisting of three restricted Boltzmann machines (RBMs) was exploited to derive the spectral conversion function. A comparative study of voice conversion using a DNN model and the conventional Gaussian mixture model (GMM) is conducted. Experimental results show the speaker identification rate of conversion speech achieves 97.5% which is 0.8% higher than the performance of GMM method, and the value of average cepstrum distortion is 0.87 which is 5.4% higher than the performance of GMM method. ABX and MOS evaluations indicate that the conversion performance is better than the traditional GMM method under the parallel corpora condition.
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