Non-Parallel Voice Conversion Based on Free-Energy Minimization of Speaker-Conditional Restricted Boltzmann Machine

Takuya Kishida, Toru Nakashika
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Abstract

In this paper, we propose a non-parallel voice conversion method based on the minimization of the free energy of a restricted Boltzmann machine (RBM). The proposed method uses an RBM that learns the generative probability of acoustic features conditioned on a target speaker, and it iteratively updates the input acoustic features until their free energy reaches a local minimum to obtain converted features. Since it is based on the RBM, only a few hyperparameters need to be set, and the number of training parameters is very small. Therefore, training is stable. In determining the step size of the update formula in accordance with the Newton-Raphson method to obtain the feature that gives the local minimum of the free energy, we found that the Hesse matrix of the free energy can be approximated by a diagonal matrix, and the update can be performed efficiently with a small amount of calculation. In objective evaluation experiments, the proposed method outperforms StarGAN-VC in Mel-cepstral distortions. In subjective evaluation experiments, the performance of the proposed method is comparable to that of StarGAN-VC in similarity MOS.
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基于演讲者-条件受限玻尔兹曼机自由能量最小化的非并行语音转换
本文提出了一种基于受限玻尔兹曼机(RBM)自由能最小化的非并行语音转换方法。该方法使用RBM学习目标说话者条件声特征的生成概率,并迭代更新输入声特征,直到其自由能达到局部最小值以获得转换后的特征。由于它是基于RBM的,所以只需要设置很少的超参数,训练参数的数量非常少。因此,训练是稳定的。在根据Newton-Raphson方法确定更新公式的步长以获得给出自由能局部最小值的特征时,我们发现自由能的Hesse矩阵可以用对角矩阵近似,并且可以用少量的计算高效地进行更新。在客观评价实验中,该方法在mel -倒谱失真方面优于StarGAN-VC。在主观评价实验中,该方法的性能与相似MOS中的StarGAN-VC相当。
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