Poster
ClariNet: Parallel Wave Generation in End-to-End Text-to-Speech
Wei Ping · Kainan Peng · Jitong Chen
Great Hall BC #26
Keywords: [ deep generative models ] [ text-to-speech ] [ text to waveform ] [ end-to-end training ]
In this work, we propose a new solution for parallel wave generation by WaveNet. In contrast to parallel WaveNet (van Oord et al., 2018), we distill a Gaussian inverse autoregressive flow from the autoregressive WaveNet by minimizing a regularized KL divergence between their highly-peaked output distributions. Our method computes the KL divergence in closed-form, which simplifies the training algorithm and provides very efficient distillation. In addition, we introduce the first text-to-wave neural architecture for speech synthesis, which is fully convolutional and enables fast end-to-end training from scratch. It significantly outperforms the previous pipeline that connects a text-to-spectrogram model to a separately trained WaveNet (Ping et al., 2018). We also successfully distill a parallel waveform synthesizer conditioned on the hidden representation in this end-to-end model.
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