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PaddleSpeech/demos/speech_server
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README.md

(简体中文|English)

Speech Server

Introduction

This demo is an implementation of starting the voice service and accessing the service. It can be achieved with a single command using paddlespeech_server and paddlespeech_client or a few lines of code in python.

Usage

1. Installation

see installation.

It is recommended to use paddlepaddle 2.2.1 or above. You can choose one way from meduim and hard to install paddlespeech.

2. Prepare config File

The configuration file can be found in conf/application.yaml . Among them, engine_list indicates the speech engine that will be included in the service to be started, in the format of _. At present, the speech tasks integrated by the service include: asr (speech recognition) and tts (speech synthesis). Currently the engine type supports two forms: python and inference (Paddle Inference)

The input of ASR client demo should be a WAV file(.wav), and the sample rate must be the same as the model.

Here are sample files for thisASR client demo that can be downloaded:

wget -c https://paddlespeech.bj.bcebos.com/PaddleAudio/zh.wav https://paddlespeech.bj.bcebos.com/PaddleAudio/en.wav

3. Server Usage

  • Command Line (Recommended)

    # start the service
    paddlespeech_server start --config_file ./conf/application.yaml
    

    Usage:

    paddlespeech_server start --help
    

    Arguments:

    • config_file: yaml file of the app, defalut: ./conf/application.yaml
    • log_file: log file. Default: ./log/paddlespeech.log

    Output:

    [2022-02-23 11:17:32] [INFO] [server.py:64] Started server process [6384]
    INFO:     Waiting for application startup.
    [2022-02-23 11:17:32] [INFO] [on.py:26] Waiting for application startup.
    INFO:     Application startup complete.
    [2022-02-23 11:17:32] [INFO] [on.py:38] Application startup complete.
    INFO:     Uvicorn running on http://0.0.0.0:8090 (Press CTRL+C to quit)
    [2022-02-23 11:17:32] [INFO] [server.py:204] Uvicorn running on http://0.0.0.0:8090 (Press CTRL+C to quit)
    
    
  • Python API

    from paddlespeech.server.bin.paddlespeech_server import ServerExecutor
    
    server_executor = ServerExecutor()
    server_executor(
        config_file="./conf/application.yaml", 
        log_file="./log/paddlespeech.log")
    

    Output:

    INFO:     Started server process [529]
    [2022-02-23 14:57:56] [INFO] [server.py:64] Started server process [529]
    INFO:     Waiting for application startup.
    [2022-02-23 14:57:56] [INFO] [on.py:26] Waiting for application startup.
    INFO:     Application startup complete.
    [2022-02-23 14:57:56] [INFO] [on.py:38] Application startup complete.
    INFO:     Uvicorn running on http://0.0.0.0:8090 (Press CTRL+C to quit)
    [2022-02-23 14:57:56] [INFO] [server.py:204] Uvicorn running on http://0.0.0.0:8090 (Press CTRL+C to quit)
    
    

4. ASR Client Usage

Note: The response time will be slightly longer when using the client for the first time

  • Command Line (Recommended)

    paddlespeech_client asr --server_ip 127.0.0.1 --port 8090 --input ./zh.wav
    

    Usage:

    paddlespeech_client asr --help
    

    Arguments:

    • server_ip: server ip. Default: 127.0.0.1
    • port: server port. Default: 8090
    • input(required): Audio file to be recognized.
    • sample_rate: Audio ampling rate, default: 16000.
    • lang: Language. Default: "zh_cn".
    • audio_format: Audio format. Default: "wav".

    Output:

    [2022-02-23 18:11:22,819] [    INFO] - {'success': True, 'code': 200, 'message': {'description': 'success'}, 'result': {'transcription': '我认为跑步最重要的就是给我带来了身体健康'}}
    [2022-02-23 18:11:22,820] [    INFO] - time cost 0.689145 s.
    
    
  • Python API

    from paddlespeech.server.bin.paddlespeech_client import ASRClientExecutor
    import json
    
    asrclient_executor = ASRClientExecutor()
    res = asrclient_executor(
        input="./zh.wav",
        server_ip="127.0.0.1",
        port=8090,
        sample_rate=16000,
        lang="zh_cn",
        audio_format="wav")
    print(res.json())
    

    Output:

    {'success': True, 'code': 200, 'message': {'description': 'success'}, 'result': {'transcription': '我认为跑步最重要的就是给我带来了身体健康'}}
    

5. TTS Client Usage

Note: The response time will be slightly longer when using the client for the first time

  • Command Line (Recommended)

    paddlespeech_client tts --server_ip 127.0.0.1 --port 8090 --input "您好,欢迎使用百度飞桨语音合成服务。" --output output.wav
    

    Usage:

    paddlespeech_client tts --help
    

    Arguments:

    • server_ip: server ip. Default: 127.0.0.1
    • port: server port. Default: 8090
    • input(required): Input text to generate.
    • spk_id: Speaker id for multi-speaker text to speech. Default: 0
    • speed: Audio speed, the value should be set between 0 and 3. Default: 1.0
    • volume: Audio volume, the value should be set between 0 and 3. Default: 1.0
    • sample_rate: Sampling rate, choice: [0, 8000, 16000], the default is the same as the model. Default: 0
    • output: Output wave filepath. Default: None, which means not to save the audio to the local.

    Output:

    [2022-02-23 15:20:37,875] [    INFO] - {'description': 'success.'}
    [2022-02-23 15:20:37,875] [    INFO] - Save synthesized audio successfully on output.wav.
    [2022-02-23 15:20:37,875] [    INFO] - Audio duration: 3.612500 s.
    [2022-02-23 15:20:37,875] [    INFO] - Response time: 0.348050 s.
    
    
  • Python API

    from paddlespeech.server.bin.paddlespeech_client import TTSClientExecutor
    import json
    
    ttsclient_executor = TTSClientExecutor()
    res = ttsclient_executor(
        input="您好,欢迎使用百度飞桨语音合成服务。",
        server_ip="127.0.0.1",
        port=8090,
        spk_id=0,
        speed=1.0,
        volume=1.0,
        sample_rate=0,
        output="./output.wav")
    
    response_dict = res.json()
    print(response_dict["message"])
    print("Save synthesized audio successfully on %s." % (response_dict['result']['save_path']))
    print("Audio duration: %f s." %(response_dict['result']['duration']))
    

    Output:

    {'description': 'success.'}
    Save synthesized audio successfully on ./output.wav.
    Audio duration: 3.612500 s.
    
    

6. CLS Client Usage

Note: The response time will be slightly longer when using the client for the first time

  • Command Line (Recommended)

    paddlespeech_client cls --server_ip 127.0.0.1 --port 8090 --input ./zh.wav
    

    Usage:

    paddlespeech_client cls --help
    

    Arguments:

    • server_ip: server ip. Default: 127.0.0.1
    • port: server port. Default: 8090
    • input(required): Audio file to be classified.
    • topk: topk scores of classification result.

    Output:

    [2022-03-09 20:44:39,974] [    INFO] - {'success': True, 'code': 200, 'message': {'description': 'success'}, 'result': {'topk': 1, 'results': [{'class_name': 'Speech', 'prob': 0.9027184844017029}]}}
    [2022-03-09 20:44:39,975] [    INFO] - Response time 0.104360 s.
    
    
    
  • Python API

    from paddlespeech.server.bin.paddlespeech_client import CLSClientExecutor
    import json
    
    clsclient_executor = CLSClientExecutor()
    res = clsclient_executor(
        input="./zh.wav",
        server_ip="127.0.0.1",
        port=8090,
        topk=1)
    print(res.json())
    

    Output:

    {'success': True, 'code': 200, 'message': {'description': 'success'}, 'result': {'topk': 1, 'results': [{'class_name': 'Speech', 'prob': 0.9027184844017029}]}}
    
    

Models supported by the service

ASR model

Get all models supported by the ASR service via paddlespeech_server stats --task asr, where static models can be used for paddle inference inference.

TTS model

Get all models supported by the TTS service via paddlespeech_server stats --task tts, where static models can be used for paddle inference inference.

CLS model

Get all models supported by the CLS service via paddlespeech_server stats --task cls, where static models can be used for paddle inference inference.