Convolutional Sequence Learning

نویسندگان

  • Wei Ping
  • Kainan Peng
  • Andrew Gibiansky
  • Sercan Ö. Arık
  • Ajay Kannan
  • Sharan Narang
  • Jonathan Raiman
  • John Miller
چکیده

We present Deep Voice 3, a fully-convolutional attention-based neural textto-speech (TTS) system. Deep Voice 3 matches state-of-the-art neural speech synthesis systems in naturalness while training an order of magnitude faster. We scale Deep Voice 3 to dataset sizes unprecedented for TTS, training on more than eight hundred hours of audio from over two thousand speakers. In addition, we identify common error modes of attention-based speech synthesis networks, demonstrate how to mitigate them, and compare several different waveform synthesis methods. We also describe how to scale inference to ten million queries per day on a single GPU server.

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تاریخ انتشار 2018