kantts docker化

kan-tts docker本地化

环境安装

下载docker镜像(python3.8的)

registry.cn-hangzhou.aliyuncs.com/modelscope-repo/modelscope:ubuntu20.04-cuda11.8.0-py38-torch2.0.1-tf2.13.0-1.9.2

安装基础模型

pip install modelscope

安装语音模型

pip install "modelscope[audio]" -f https://modelscope.oss-cn-beijing.aliyuncs.com/releases/repo.html

自动标注

安装最新版tts-autolabel

# 运行此代码块安装

tts-autolabel import sys !{sys.executable} -m pip install -U tts-autolabel -f https://modelscope.oss-cn-beijing.aliyuncs.com/releases/repo.html

如果网不行,指定阿里镜像源

!{sys.executable} -m pip config set global.index-url https://mirrors.aliyun.com/pypi/simple/

自动标注

kantts docker化_第1张图片

from modelscope.tools import run_auto_label

input_wav = "./test_wavs/"
output_data = "./output_training_data/"

ret, report = run_auto_label(input_wav=input_wav, work_dir=output_data, resource_revision="v1.0.7")

微调

kantts docker化_第2张图片

from modelscope.metainfo import Trainers
from modelscope.trainers import build_trainer
from modelscope.utils.audio.audio_utils import TtsTrainType

pretrained_model_id = 'damo/speech_personal_sambert-hifigan_nsf_tts_zh-cn_pretrain_16k'

dataset_id = "./output_training_data/"
pretrain_work_dir = "./pretrain_work_dir/"
        
# 训练信息,用于指定需要训练哪个或哪些模型,这里展示AM和Vocoder模型皆进行训练
# 目前支持训练:TtsTrainType.TRAIN_TYPE_SAMBERT, TtsTrainType.TRAIN_TYPE_VOC
# 训练SAMBERT会以模型最新step作为基础进行finetune
train_info = {
    TtsTrainType.TRAIN_TYPE_SAMBERT: {  # 配置训练AM(sambert)模型
        'train_steps': 202,               # 训练多少个step 
        'save_interval_steps': 200,       # 每训练多少个step保存一次checkpoint
        'log_interval': 10               # 每训练多少个step打印一次训练日志
    }
}

# 配置训练参数,指定数据集,临时工作目录和train_info
kwargs = dict(
    model=pretrained_model_id,                  # 指定要finetune的模型
    model_revision = "v1.0.6",
    work_dir=pretrain_work_dir,                 # 指定临时工作目录
    train_dataset=dataset_id,                   # 指定数据集id
    train_type=train_info                       # 指定要训练类型及参数
)

trainer = build_trainer(Trainers.speech_kantts_trainer,
                        default_args=kwargs)

trainer.train()

其中

pretrained_model_id = 'damo/speech_personal_sambert-hifigan_nsf_tts_zh-cn_pretrain_16k'

要下载下来

最好提取下载,然后pretrained_model_id后面就等于下面下载的地址

# 克隆预训练模型

git clone https://www.modelscope.cn/damo/speech_personal_sambert-hifigan_nsf_tts_zh-cn_pretrain_16k.git

拉取下来,然后合成

合成模型

kantts docker化_第3张图片

import os
from modelscope.models.audio.tts import SambertHifigan
from modelscope.pipelines import pipeline
from modelscope.utils.constant import Tasks

model_dir = os.path.abspath("./pretrain_work_dir")

custom_infer_abs = {
    'voice_name':
    'F7',
    'am_ckpt':
    os.path.join(model_dir, 'tmp_am', 'ckpt'),
    'am_config':
    os.path.join(model_dir, 'tmp_am', 'config.yaml'),
    'voc_ckpt':
    os.path.join(model_dir, 'orig_model', 'basemodel_16k', 'hifigan', 'ckpt'),
    'voc_config':
    os.path.join(model_dir, 'orig_model', 'basemodel_16k', 'hifigan',
             'config.yaml'),
    'audio_config':
    os.path.join(model_dir, 'data', 'audio_config.yaml'),
    'se_file':
    os.path.join(model_dir, 'data', 'se', 'se.npy')
}
kwargs = {'custom_ckpt': custom_infer_abs}

model_id = SambertHifigan(os.path.join(model_dir, "orig_model"), **kwargs)

inference = pipeline(task=Tasks.text_to_speech, model=model_id)
output = inference(input="今天的天气真不错")

import IPython.display as ipd
ipd.Audio(output["output_wav"], rate=16000)

参考地址:

环境安装

SambertHifigan个性化语音合成-中文-预训练-16k

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