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PaddleSpeech/demos/text_to_speech
Hui Zhang caaa5cd502
more cli for speech demos
3 years ago
..
README.md Update usage and doc of cli executor. 3 years ago
README_cn.md Update usage and doc of cli executor. 3 years ago
run.sh more cli for speech demos 3 years ago

README.md

(简体中文|English)

TTS (Text To Speech)

Introduction

Text-to-speech (TTS) is a natural language modeling process that requires changing units of text into units of speech for audio presentation.

This demo is an implementation to generate audio from the given text. It can be done by a single command or a few lines in python using PaddleSpeech.

Usage

1. Installation

see installation.

You can choose one way from easy, meduim and hard to install paddlespeech.

2. Prepare Input

The input of this demo should be a text of the specific language that can be passed via argument.

3. Usage

  • Command Line (Recommended)

    • Chinese The default acoustic model is Fastspeech2, and the default vocoder is Parallel WaveGAN.

      paddlespeech tts --input "你好,欢迎使用百度飞桨深度学习框架!"
      
    • Batch Process

      echo -e "1 欢迎光临。\n2 谢谢惠顾。" | paddlespeech tts
      
    • Chinese, use SpeedySpeech as the acoustic model

      paddlespeech tts --am speedyspeech_csmsc --input "你好,欢迎使用百度飞桨深度学习框架!"
      
    • Chinese, multi-speaker

      You can change spk_id here.

      paddlespeech tts --am fastspeech2_aishell3 --voc pwgan_aishell3 --input "你好,欢迎使用百度飞桨深度学习框架!" --spk_id 0
      
    • English

      paddlespeech tts --am fastspeech2_ljspeech --voc pwgan_ljspeech --lang en --input "hello world"
      
    • English, multi-speaker

      You can change spk_id here.

      paddlespeech tts --am fastspeech2_vctk --voc pwgan_vctk --input "hello, boys" --lang en --spk_id 0
      

    Usage:

    paddlespeech tts --help
    

    Arguments:

    • input(required): Input text to generate..
    • am: Acoustic model type of tts task. Default: fastspeech2_csmsc.
    • am_config: Config of acoustic model. Use deault config when it is None. Default: None.
    • am_ckpt: Acoustic model checkpoint. Use pretrained model when it is None. Default: None.
    • am_stat: Mean and standard deviation used to normalize spectrogram when training acoustic model. Default: None.
    • phones_dict: Phone vocabulary file. Default: None.
    • tones_dict: Tone vocabulary file. Default: None.
    • speaker_dict: speaker id map file. Default: None.
    • spk_id: Speaker id for multi speaker acoustic model. Default: 0.
    • voc: Vocoder type of tts task. Default: pwgan_csmsc.
    • voc_config: Config of vocoder. Use deault config when it is None. Default: None.
    • voc_ckpt: Vocoder checkpoint. Use pretrained model when it is None. Default: None.
    • voc_stat: Mean and standard deviation used to normalize spectrogram when training vocoder. Default: None.
    • lang: Language of tts task. Default: zh.
    • device: Choose device to execute model inference. Default: default device of paddlepaddle in current environment.
    • output: Output wave filepath. Default: output.wav.

    Output:

    [2021-12-09 20:49:58,955] [    INFO] [log.py] [L57] - Wave file has been generated: output.wav
    
  • Python API

    import paddle
    from paddlespeech.cli.tts import TTSExecutor
    
    tts_executor = TTSExecutor()
    wav_file = tts_executor(
        text='今天的天气不错啊',
        output='output.wav',
        am='fastspeech2_csmsc',
        am_config=None,
        am_ckpt=None,
        am_stat=None,
        spk_id=0,
        phones_dict=None,
        tones_dict=None,
        speaker_dict=None,
        voc='pwgan_csmsc',
        voc_config=None,
        voc_ckpt=None,
        voc_stat=None,
        lang='zh',
        device=paddle.get_device())
    print('Wave file has been generated: {}'.format(wav_file))
    

    Output:

    Wave file has been generated: output.wav
    

4. Pretrained Models

Here is a list of pretrained models released by PaddleSpeech that can be used by command and python API:

  • Acoustic model

    Model Language
    speedyspeech_csmsc zh
    fastspeech2_csmsc zh
    fastspeech2_aishell3 zh
    fastspeech2_ljspeech en
    fastspeech2_vctk en
  • Vocoder

    Model Language
    pwgan_csmsc zh
    pwgan_aishell3 zh
    pwgan_ljspeech en
    pwgan_vctk en
    mb_melgan_csmsc zh