GPT-SoVITS/GPT_SoVITS/inference_webui.py
2025-08-26 05:24:20 +08:00

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import argparse
import contextlib
import json
import logging
import os
import random
import re
import traceback
import warnings
from pathlib import Path
from time import time as ttime
import gradio as gr
import librosa
import numpy as np
import psutil
import torch
import torchaudio
from peft import LoraConfig, get_peft_model
from transformers import AutoModelForMaskedLM, AutoTokenizer
from config import (
change_choices,
get_weights_names,
infer_device,
is_half,
name2gpt_path,
name2sovits_path,
pretrained_sovits_name,
)
from GPT_SoVITS.Accelerate import MLX, PyTorch, T2SRequest, backends
from GPT_SoVITS.feature_extractor import cnhubert
from GPT_SoVITS.module.mel_processing import mel_spectrogram_torch, spectrogram_torch
from GPT_SoVITS.module.models import Generator, SynthesizerTrn, SynthesizerTrnV3
from GPT_SoVITS.process_ckpt import get_sovits_version_from_path_fast, load_sovits_new
from GPT_SoVITS.sv import SV
from GPT_SoVITS.text import cleaned_text_to_sequence
from GPT_SoVITS.text.cleaner import clean_text
from GPT_SoVITS.text.LangSegmenter import LangSegmenter
from tools.assets import css, js, top_html
from tools.i18n.i18n import I18nAuto, scan_language_list
with contextlib.suppress(ImportError):
import mlx.core as mx
import mlx.utils as mxutils
logging.getLogger("markdown_it").setLevel(logging.ERROR)
logging.getLogger("urllib3").setLevel(logging.ERROR)
logging.getLogger("httpcore").setLevel(logging.ERROR)
logging.getLogger("httpx").setLevel(logging.ERROR)
logging.getLogger("asyncio").setLevel(logging.ERROR)
logging.getLogger("charset_normalizer").setLevel(logging.ERROR)
logging.getLogger("torchaudio._extension").setLevel(logging.ERROR)
logging.getLogger("multipart.multipart").setLevel(logging.ERROR)
warnings.simplefilter(action="ignore", category=FutureWarning)
os.environ["TOKENIZERS_PARALLELISM"] = "false"
def set_high_priority():
if os.name != "nt":
return
p = psutil.Process(os.getpid())
with contextlib.suppress(psutil.AccessDenied):
p.nice(psutil.HIGH_PRIORITY_CLASS)
print("已将进程优先级设为 High")
set_high_priority()
_LANG_RE = re.compile(r"^[a-z]{2}[_-][A-Z]{2}$")
def lang_type(text: str) -> str:
if text == "Auto":
return text
if not _LANG_RE.match(text):
raise argparse.ArgumentTypeError(f"Unspported Format: {text}, Expected ll_CC/ll-CC")
ll, cc = re.split(r"[_-]", text)
language = f"{ll}_{cc}"
if language in scan_language_list():
return language
else:
return "Auto"
def build_parser() -> argparse.ArgumentParser:
p = argparse.ArgumentParser(
prog="inference_webui",
description="python -s inference_webui.py zh_CN -i naive",
)
p.add_argument(
"language",
nargs="?",
default="Auto",
type=lang_type,
help="Language Code, Such as zh_CN, en-US",
)
p.add_argument(
"--backends",
"-b",
choices=backends,
default="naive",
help="AR Inference Backend",
required=False,
)
return p
args = build_parser().parse_args()
SoVITS_names, GPT_names = get_weights_names()
version = model_version = os.environ.get("version", "v2")
path_sovits_v3 = pretrained_sovits_name["v3"]
path_sovits_v4 = pretrained_sovits_name["v4"]
is_exist_s2gv3 = os.path.exists(path_sovits_v3)
is_exist_s2gv4 = os.path.exists(path_sovits_v4)
i18n = I18nAuto(language=args.language)
ar_backend: str = args.backends
dict_language_v1 = {
i18n("中文"): "all_zh", # 全部按中文识别
i18n("英文"): "en", # 全部按英文识别#######不变
i18n("日文"): "all_ja", # 全部按日文识别
i18n("中英混合"): "zh", # 按中英混合识别####不变
i18n("日英混合"): "ja", # 按日英混合识别####不变
i18n("多语种混合"): "auto", # 多语种启动切分识别语种
}
dict_language_v2 = {
i18n("中文"): "all_zh", # 全部按中文识别
i18n("英文"): "en", # 全部按英文识别#######不变
i18n("日文"): "all_ja", # 全部按日文识别
i18n("粤语"): "all_yue", # 全部按中文识别
i18n("韩文"): "all_ko", # 全部按韩文识别
i18n("中英混合"): "zh", # 按中英混合识别####不变
i18n("日英混合"): "ja", # 按日英混合识别####不变
i18n("粤英混合"): "yue", # 按粤英混合识别####不变
i18n("韩英混合"): "ko", # 按韩英混合识别####不变
i18n("多语种混合"): "auto", # 多语种启动切分识别语种
i18n("多语种混合(粤语)"): "auto_yue", # 多语种启动切分识别语种
}
dict_language = dict_language_v1 if version == "v1" else dict_language_v2
cnhubert_base_path = os.environ.get("cnhubert_base_path", "GPT_SoVITS/pretrained_models/chinese-hubert-base")
bert_path = os.environ.get("bert_path", "GPT_SoVITS/pretrained_models/chinese-roberta-wwm-ext-large")
infer_ttswebui = os.environ.get("infer_ttswebui", 9872)
infer_ttswebui = int(infer_ttswebui)
is_share = os.environ.get("is_share", "False")
is_share = eval(is_share)
punctuation = set(["!", "?", "", ",", ".", "-", " "])
splits = {"", "", "", "", ",", ".", "?", "!", "~", ":", "", "", ""}
v3v4set = {"v3", "v4"}
device = infer_device
if "_CUDA_VISIBLE_DEVICES" in os.environ:
device = torch.device(f"cuda:{os.environ['_CUDA_VISIBLE_DEVICES'][0]}") if torch.cuda.is_available() else device
dtype = torch.float32
if is_half is True:
dtype = torch.float16
tokenizer = AutoTokenizer.from_pretrained(bert_path)
bert_model = AutoModelForMaskedLM.from_pretrained(bert_path).to(device, dtype)
cnhubert.cnhubert_base_path = cnhubert_base_path
ssl_model = cnhubert.get_model().to(device, dtype)
spec_min = -12
spec_max = 2
def norm_spec(x):
return (x - spec_min) / (spec_max - spec_min) * 2 - 1
def denorm_spec(x):
return (x + 1) / 2 * (spec_max - spec_min) + spec_min
def mel_fn(x):
return mel_spectrogram_torch(
y=x,
n_fft=1024,
num_mels=100,
sampling_rate=24000,
hop_size=256,
win_size=1024,
fmin=0,
fmax=None,
center=False,
)
def mel_fn_v4(x):
return mel_spectrogram_torch(
y=x,
n_fft=1280,
num_mels=100,
sampling_rate=32000,
hop_size=320,
win_size=1280,
fmin=0,
fmax=None,
center=False,
)
if os.path.exists("./weight.json"):
pass
else:
with open("./weight.json", "w", encoding="utf-8") as file:
json.dump({"GPT": {}, "SoVITS": {}}, file)
with open("./weight.json", "r", encoding="utf-8") as file:
weight_data = file.read()
weight_data = json.loads(weight_data)
gpt_path = os.environ.get("gpt_path", weight_data.get("GPT", {}).get(version, GPT_names[-1]))
sovits_path = os.environ.get("sovits_path", weight_data.get("SoVITS", {}).get(version, SoVITS_names[0]))
if isinstance(gpt_path, list):
gpt_path = gpt_path[0]
if isinstance(sovits_path, list):
sovits_path = sovits_path[0]
def set_seed(seed):
if seed == -1:
seed = random.randint(0, 1000000)
seed = int(seed)
random.seed(seed)
os.environ["PYTHONHASHSEED"] = str(seed)
np.random.seed(seed)
torch.manual_seed(seed)
torch.cuda.manual_seed(seed)
def get_bert_feature(text, word2ph):
with torch.no_grad():
inputs = tokenizer(text, return_tensors="pt")
for i in inputs:
inputs[i] = inputs[i].to(device)
res = bert_model(**inputs, output_hidden_states=True)
res = torch.cat(res["hidden_states"][-3:-2], -1)[0].cpu()[1:-1]
assert len(word2ph) == len(text)
phone_level_feature = []
for i in range(len(word2ph)):
repeat_feature = res[i].repeat(word2ph[i], 1)
phone_level_feature.append(repeat_feature)
phone_level_feature = torch.cat(phone_level_feature, dim=0)
return phone_level_feature.T
class DictToAttrRecursive(dict):
def __init__(self, input_dict):
super().__init__(input_dict)
for key, value in input_dict.items():
if isinstance(value, dict):
value = DictToAttrRecursive(value)
self[key] = value
setattr(self, key, value)
def __getattr__(self, item):
try:
return self[item]
except KeyError:
raise AttributeError(f"Attribute {item} not found")
def __setattr__(self, key, value):
if isinstance(value, dict):
value = DictToAttrRecursive(value)
super(DictToAttrRecursive, self).__setitem__(key, value)
super().__setattr__(key, value)
def __delattr__(self, item):
try:
del self[item]
except KeyError:
raise AttributeError(f"Attribute {item} not found")
def change_sovits_weights(sovits_path, prompt_language=None, text_language=None):
if "" in sovits_path or "!" in sovits_path:
sovits_path = name2sovits_path[sovits_path]
global vq_model, hps, version, model_version, dict_language, if_lora_v3
version, model_version, if_lora_v3 = get_sovits_version_from_path_fast(sovits_path)
print(sovits_path, version, model_version, if_lora_v3)
is_exist = is_exist_s2gv3 if model_version == "v3" else is_exist_s2gv4
path_sovits = path_sovits_v3 if model_version == "v3" else path_sovits_v4
if if_lora_v3 is True and is_exist is False:
info = f"{path_sovits} SoVITS {model_version} {i18n('底模缺失,无法加载相应 LoRA 权重')}"
gr.Warning(info)
raise FileNotFoundError(info)
dict_language = dict_language_v1 if version == "v1" else dict_language_v2
if prompt_language is not None and text_language is not None:
if prompt_language in list(dict_language.keys()):
prompt_text_update, prompt_language_update = (
{"__type__": "update"},
{"__type__": "update", "value": prompt_language},
)
else:
prompt_text_update = {"__type__": "update", "value": ""}
prompt_language_update = {"__type__": "update", "value": i18n("中文")}
if text_language in list(dict_language.keys()):
text_update, text_language_update = {"__type__": "update"}, {"__type__": "update", "value": text_language}
else:
text_update = {"__type__": "update", "value": ""}
text_language_update = {"__type__": "update", "value": i18n("中文")}
if model_version in v3v4set:
visible_sample_steps = True
visible_inp_refs = False
else:
visible_sample_steps = False
visible_inp_refs = True
yield (
{"__type__": "update", "choices": list(dict_language.keys())},
{"__type__": "update", "choices": list(dict_language.keys())},
prompt_text_update,
prompt_language_update,
text_update,
text_language_update,
{
"__type__": "update",
"visible": visible_sample_steps,
"value": 32 if model_version == "v3" else 8,
"choices": [4, 8, 16, 32, 64, 128] if model_version == "v3" else [4, 8, 16, 32],
},
{"__type__": "update", "visible": visible_inp_refs},
{"__type__": "update", "value": False, "interactive": True if model_version not in v3v4set else False},
{"__type__": "update", "visible": True if model_version == "v3" else False},
{"__type__": "update", "value": i18n("模型加载中,请等待"), "interactive": False},
)
dict_s2 = load_sovits_new(sovits_path)
hps = dict_s2["config"]
hps = DictToAttrRecursive(hps)
hps.model.semantic_frame_rate = "25hz"
if "enc_p.text_embedding.weight" not in dict_s2["weight"]:
hps.model.version = "v2" # v3model,v2sybomls
elif dict_s2["weight"]["enc_p.text_embedding.weight"].shape[0] == 322:
hps.model.version = "v1"
else:
hps.model.version = "v2"
version = hps.model.version
# print("sovits版本:",hps.model.version)
if model_version not in v3v4set:
if "Pro" not in model_version: # type: ignore
model_version = version
else:
hps.model.version = model_version
vq_model = SynthesizerTrn(
hps.data.filter_length // 2 + 1,
hps.train.segment_size // hps.data.hop_length,
n_speakers=hps.data.n_speakers,
**hps.model,
)
else:
hps.model.version = model_version
vq_model = SynthesizerTrnV3(
hps.data.filter_length // 2 + 1,
hps.train.segment_size // hps.data.hop_length,
n_speakers=hps.data.n_speakers,
**hps.model,
).eval()
if "pretrained" not in sovits_path:
try:
del vq_model.enc_q
finally:
pass
if if_lora_v3 is False:
print(f">> loading sovits_{model_version}", vq_model.load_state_dict(dict_s2["weight"], strict=False))
else:
path_sovits = path_sovits_v3 if model_version == "v3" else path_sovits_v4
print(
">> loading sovits_%spretrained_G" % model_version,
vq_model.load_state_dict(load_sovits_new(path_sovits)["weight"], strict=False),
)
lora_rank = dict_s2["lora_rank"]
lora_config = LoraConfig(
target_modules=["to_k", "to_q", "to_v", "to_out.0"],
r=lora_rank,
lora_alpha=lora_rank,
init_lora_weights=True,
)
vq_model.cfm = get_peft_model(vq_model.cfm, lora_config) # type: ignore
print(f">> loading sovits_{model_version}_lora{model_version}")
vq_model.load_state_dict(dict_s2["weight"], strict=False)
vq_model.cfm = vq_model.cfm.merge_and_unload() # pyright: ignore[reportAttributeAccessIssue, reportCallIssue]
# torch.save(vq_model.state_dict(),"merge_win.pth")
vq_model.eval()
vq_model = vq_model.to(device, dtype)
yield (
{"__type__": "update", "choices": list(dict_language.keys())},
{"__type__": "update", "choices": list(dict_language.keys())},
prompt_text_update, # type: ignore
prompt_language_update, # type: ignore
text_update, # type: ignore
text_language_update, # type: ignore
{
"__type__": "update",
"visible": visible_sample_steps, # type: ignore
"value": 32 if model_version == "v3" else 8,
"choices": [4, 8, 16, 32, 64, 128] if model_version == "v3" else [4, 8, 16, 32],
},
{"__type__": "update", "visible": visible_inp_refs}, # type: ignore
{"__type__": "update", "value": False, "interactive": True if model_version not in v3v4set else False},
{"__type__": "update", "visible": True if model_version == "v3" else False},
{"__type__": "update", "value": i18n("合成语音"), "interactive": True},
)
with open("./weight.json") as f:
data = f.read()
data = json.loads(data)
data["SoVITS"][version] = sovits_path
with open("./weight.json", "w") as f:
f.write(json.dumps(data))
with contextlib.suppress(UnboundLocalError):
next(change_sovits_weights(sovits_path))
def change_gpt_weights(gpt_path):
if "" in gpt_path or "!" in gpt_path:
gpt_path = name2gpt_path[gpt_path]
global t2s_engine, config
if "mlx" in ar_backend.lower():
t2s_engine = MLX.T2SEngineMLX(
MLX.T2SEngineMLX.load_decoder(Path(gpt_path), backend=ar_backend),
"mx.gpu",
dtype=dtype,
)
# t2s_engine.decoder_model.compile()
total = sum((p[-1].size for p in mxutils.tree_flatten(t2s_engine.decoder_model.parameters()))) # type: ignore
else:
t2s_engine = PyTorch.T2SEngineTorch(
PyTorch.T2SEngineTorch.load_decoder(Path(gpt_path), backend=ar_backend),
device,
dtype=dtype,
)
# t2s_engine.decoder_model.compile()
total = sum(p.numel() for p in t2s_engine.decoder_model.parameters())
print(">> Number of parameter: %.2fM" % (total / 1e6))
with open("./weight.json") as f:
data = f.read()
data = json.loads(data)
data["GPT"][version] = gpt_path
with open("./weight.json", "w") as f:
f.write(json.dumps(data))
change_gpt_weights(gpt_path)
def clean_hifigan_model():
global hifigan_model
if hifigan_model:
hifigan_model = hifigan_model.cpu()
del hifigan_model
if torch.cuda.is_available():
torch.cuda.empty_cache()
hifigan_model = None
def clean_bigvgan_model():
global bigvgan_model
if bigvgan_model:
bigvgan_model = bigvgan_model.cpu()
del bigvgan_model
if torch.cuda.is_available():
torch.cuda.empty_cache()
bigvgan_model = None
def clean_sv_cn_model():
global sv_cn_model
if sv_cn_model:
sv_cn_model.embedding_model = sv_cn_model.embedding_model.cpu()
del sv_cn_model
if torch.cuda.is_available():
torch.cuda.empty_cache()
sv_cn_model = None
def init_bigvgan():
global bigvgan_model, hifigan_model, sv_cn_model
from BigVGAN import bigvgan
bigvgan_model = bigvgan.BigVGAN.from_pretrained(
"./GPT_SoVITS/pretrained_models/models--nvidia--bigvgan_v2_24khz_100band_256x",
use_cuda_kernel=False,
) # if True, RuntimeError: Ninja is required to load C++ extensions
# remove weight norm in the model and set to eval mode
bigvgan_model.remove_weight_norm()
bigvgan_model = bigvgan_model.to(device, dtype).eval()
clean_hifigan_model()
clean_sv_cn_model()
def init_hifigan():
global hifigan_model, bigvgan_model, sv_cn_model
hifigan_model = Generator(
initial_channel=100,
resblock="1",
resblock_kernel_sizes=[3, 7, 11],
resblock_dilation_sizes=[[1, 3, 5], [1, 3, 5], [1, 3, 5]],
upsample_rates=[10, 6, 2, 2, 2],
upsample_initial_channel=512,
upsample_kernel_sizes=[20, 12, 4, 4, 4],
gin_channels=0,
is_bias=True,
)
hifigan_model.eval()
hifigan_model.remove_weight_norm()
state_dict_g = torch.load(
"./GPT_SoVITS/pretrained_models/gsv-v4-pretrained/vocoder.pth",
map_location="cpu",
weights_only=False,
)
print(">> loading vocoder", hifigan_model.load_state_dict(state_dict_g))
clean_bigvgan_model()
clean_sv_cn_model()
hifigan_model = hifigan_model.to(device, dtype)
def init_sv_cn():
global hifigan_model, bigvgan_model, sv_cn_model
sv_cn_model = SV(device, is_half)
clean_bigvgan_model()
clean_hifigan_model()
bigvgan_model = hifigan_model = sv_cn_model = None
if model_version == "v3":
init_bigvgan()
if model_version == "v4":
init_hifigan()
if model_version in {"v2Pro", "v2ProPlus"}:
init_sv_cn()
resample_transform_dict = {}
def resample(audio_tensor, sr0, sr1, device):
global resample_transform_dict
key = f"{sr0}-{sr1}-{str(device)}"
if key not in resample_transform_dict:
resample_transform_dict[key] = torchaudio.transforms.Resample(sr0, sr1).to(device)
return resample_transform_dict[key](audio_tensor)
def get_spepc(hps, filename, dtype, device, is_v2pro=False):
sr1 = int(hps.data.sampling_rate)
audio, sr0 = torchaudio.load(filename)
if sr0 != sr1:
audio = audio.to(device)
if audio.shape[0] == 2:
audio = audio.mean(0).unsqueeze(0)
audio = resample(audio, sr0, sr1, device)
else:
audio = audio.to(device)
if audio.shape[0] == 2:
audio = audio.mean(0).unsqueeze(0)
maxx = float(audio.abs().max())
if maxx > 1:
audio /= min(2, maxx)
spec = spectrogram_torch(
audio,
hps.data.filter_length,
hps.data.sampling_rate,
hps.data.hop_length,
hps.data.win_length,
center=False,
)
spec = spec.to(dtype)
if is_v2pro is True:
audio = resample(audio, sr1, 16000, device).to(dtype)
return spec, audio
def clean_text_inf(text, language, version):
language = language.replace("all_", "")
phones, word2ph, norm_text = clean_text(text, language, version)
phones = cleaned_text_to_sequence(phones, version)
return phones, word2ph, norm_text
def get_bert_inf(phones, word2ph, norm_text, language):
language = language.replace("all_", "")
if language == "zh":
bert = get_bert_feature(norm_text, word2ph).to(device) # .to(dtype)
else:
bert = torch.zeros(
(1024, len(phones)),
dtype=torch.float16 if is_half is True else torch.float32,
).to(device)
return bert
def get_first(text):
pattern = "[" + "".join(re.escape(sep) for sep in splits) + "]"
text = re.split(pattern, text)[0].strip()
return text
def get_phones_and_bert(text, language, version, final=False):
text = re.sub(r" {2,}", " ", text)
textlist = []
langlist = []
if language == "all_zh":
for tmp in LangSegmenter.getTexts(text, "zh"):
langlist.append(tmp["lang"])
textlist.append(tmp["text"])
elif language == "all_yue":
for tmp in LangSegmenter.getTexts(text, "zh"):
if tmp["lang"] == "zh":
tmp["lang"] = "yue"
langlist.append(tmp["lang"])
textlist.append(tmp["text"])
elif language == "all_ja":
for tmp in LangSegmenter.getTexts(text, "ja"):
langlist.append(tmp["lang"])
textlist.append(tmp["text"])
elif language == "all_ko":
for tmp in LangSegmenter.getTexts(text, "ko"):
langlist.append(tmp["lang"])
textlist.append(tmp["text"])
elif language == "en":
langlist.append("en")
textlist.append(text)
elif language == "auto":
for tmp in LangSegmenter.getTexts(text):
langlist.append(tmp["lang"])
textlist.append(tmp["text"])
elif language == "auto_yue":
for tmp in LangSegmenter.getTexts(text):
if tmp["lang"] == "zh":
tmp["lang"] = "yue"
langlist.append(tmp["lang"])
textlist.append(tmp["text"])
else:
for tmp in LangSegmenter.getTexts(text):
if langlist:
if (tmp["lang"] == "en" and langlist[-1] == "en") or (tmp["lang"] != "en" and langlist[-1] != "en"):
textlist[-1] += tmp["text"]
continue
if tmp["lang"] == "en":
langlist.append(tmp["lang"])
else:
# 因无法区别中日韩文汉字,以用户输入为准
langlist.append(language)
textlist.append(tmp["text"])
print(textlist)
print(langlist)
phones_list = []
bert_list = []
norm_text_list = []
for i in range(len(textlist)):
lang = langlist[i]
phones, word2ph, norm_text = clean_text_inf(textlist[i], lang, version)
bert = get_bert_inf(phones, word2ph, norm_text, lang)
phones_list.append(phones)
norm_text_list.append(norm_text)
bert_list.append(bert)
bert = torch.cat(bert_list, dim=1)
phones = sum(phones_list, [])
norm_text = "".join(norm_text_list)
if not final and len(phones) < 6:
return get_phones_and_bert("." + text, language, version, final=True)
return phones, bert.to(dtype), norm_text
def merge_short_text_in_array(texts, threshold):
if (len(texts)) < 2:
return texts
result = []
text = ""
for ele in texts:
text += ele
if len(text) >= threshold:
result.append(text)
text = ""
if len(text) > 0:
if len(result) == 0:
result.append(text)
else:
result[len(result) - 1] += text
return result
sr_model = None
def audio_sr(audio, sr):
global sr_model
if sr_model is None:
from tools.audio_sr import AP_BWE
try:
sr_model = AP_BWE(device, DictToAttrRecursive)
except FileNotFoundError:
gr.Warning(i18n("你没有下载超分模型的参数,因此不进行超分。如想超分请先参照教程把文件下载好"))
return audio.cpu().detach().numpy(), sr
return sr_model(audio, sr)
cache = {}
def get_tts_wav(
ref_wav_path,
prompt_text,
prompt_language,
text,
text_language,
how_to_cut=i18n("不切"),
top_k=20,
top_p=0.6,
temperature=0.6,
ref_free=False,
speed=1,
if_freeze=False,
inp_refs=None,
sample_steps=8,
if_sr=False,
pause_second=0.3,
):
global cache
if ref_wav_path:
pass
else:
gr.Warning(i18n("请上传参考音频"))
if text:
pass
else:
gr.Warning(i18n("请填入推理文本"))
t = []
if prompt_text is None or len(prompt_text) == 0:
ref_free = True
if model_version in v3v4set:
ref_free = False # s2v3暂不支持ref_free
else:
if_sr = False
if model_version not in {"v3", "v4", "v2Pro", "v2ProPlus"}:
clean_bigvgan_model()
clean_hifigan_model()
clean_sv_cn_model()
t0 = ttime()
prompt_language = dict_language[prompt_language]
text_language = dict_language[text_language]
if not ref_free:
prompt_text = prompt_text.strip("\n")
if prompt_text[-1] not in splits:
prompt_text += "" if prompt_language != "en" else "."
print(">>", i18n("实际输入的参考文本:"), prompt_text)
text = text.strip("\n")
# if (text[0] not in splits and len(get_first(text)) < 4): text = "。" + text if text_language != "en" else "." + text
print(">>", i18n("实际输入的目标文本:"), text)
zero_wav = np.zeros(
int(hps.data.sampling_rate * pause_second),
dtype=np.float16 if is_half is True else np.float32,
)
zero_wav_torch = torch.from_numpy(zero_wav)
if is_half is True:
zero_wav_torch = zero_wav_torch.half().to(device)
else:
zero_wav_torch = zero_wav_torch.to(device)
if not ref_free:
with torch.no_grad():
wav16k, sr = librosa.load(ref_wav_path, sr=16000)
if wav16k.shape[0] > 160000 or wav16k.shape[0] < 48000:
gr.Warning(i18n("参考音频在3~10秒范围外请更换"))
raise OSError(i18n("参考音频在3~10秒范围外请更换"))
wav16k = torch.from_numpy(wav16k)
if is_half is True:
wav16k = wav16k.half().to(device)
else:
wav16k = wav16k.to(device)
wav16k = torch.cat([wav16k, zero_wav_torch])
ssl_content = ssl_model.model(wav16k.unsqueeze(0))["last_hidden_state"].transpose(1, 2) # .float()
codes = vq_model.extract_latent(ssl_content)
prompt_semantic = codes[0, 0]
prompt = prompt_semantic.unsqueeze(0).to(device)
else:
prompt = torch.zeros((1, 0)).to(device, torch.int32)
t1 = ttime()
t.append(t1 - t0)
if how_to_cut == i18n("凑四句一切"):
text = cut1(text)
elif how_to_cut == i18n("凑50字一切"):
text = cut2(text)
elif how_to_cut == i18n("按中文句号。切"):
text = cut3(text)
elif how_to_cut == i18n("按英文句号.切"):
text = cut4(text)
elif how_to_cut == i18n("按标点符号切"):
text = cut5(text)
while "\n\n" in text:
text = text.replace("\n\n", "\n")
print(">>", i18n("实际输入的目标文本(切句后):"), text)
texts = text.split("\n")
texts = process_text(texts)
texts = merge_short_text_in_array(texts, 5)
audio_opt = []
###s2v3暂不支持ref_free
if not ref_free:
phones1, bert1, _ = get_phones_and_bert(prompt_text, prompt_language, version)
else:
phones1, bert1 = [], torch.zeros(1024, 0)
infer_len: list[int] = []
infer_time: list[float] = []
for i_text, text in enumerate(texts):
# 解决输入目标文本的空行导致报错的问题
if len(text.strip()) == 0:
continue
if text[-1] not in splits:
text += "" if text_language != "en" else "."
print(">>", i18n("实际输入的目标文本(每句):"), text)
phones2, bert2, norm_text2 = get_phones_and_bert(text, text_language, version)
print(">>", i18n("前端处理后的文本(每句):"), norm_text2)
bert = torch.cat([bert1, bert2], 1)
all_phoneme_ids = torch.LongTensor(phones1 + phones2).to(device).unsqueeze(0)
bert = bert.to(device).unsqueeze(0)
all_phoneme_len = torch.tensor([all_phoneme_ids.shape[-1]]).to(device)
t2 = ttime()
if i_text in cache and if_freeze is True:
pred_semantic = cache[i_text]
else:
t2s_request = T2SRequest(
[all_phoneme_ids.squeeze(0)],
all_phoneme_len,
prompt,
[bert.squeeze(0)],
valid_length=1,
top_k=top_k,
top_p=top_p,
temperature=temperature,
early_stop_num=1500,
use_cuda_graph=torch.cuda.is_available(),
# debug=True,
)
t2s_result = t2s_engine.generate(t2s_request)
if t2s_result.exception is not None:
print(t2s_result.traceback)
raise RuntimeError()
pred_semantic_list = t2s_result.result
assert pred_semantic_list, t2s_result.traceback
pred_semantic = pred_semantic_list[0].unsqueeze(0)
infer_len.append(pred_semantic.shape[-1])
infer_time.append(t2s_result.infer_speed[-1])
cache[i_text] = pred_semantic
t3 = ttime()
is_v2pro = model_version in {"v2Pro", "v2ProPlus"}
###v3不存在以下逻辑和inp_refs
sv_emb = []
if model_version not in v3v4set:
refers = []
if is_v2pro and sv_cn_model is None:
init_sv_cn()
if inp_refs:
for path in inp_refs:
try: #####这里加上提取sv的逻辑要么一堆sv一堆refer要么单个sv单个refer
refer, audio_tensor = get_spepc(hps, path.name, dtype, device, is_v2pro)
refers.append(refer)
if is_v2pro:
assert sv_cn_model
sv_emb.append(sv_cn_model.compute_embedding3(audio_tensor))
except Exception as e:
print(e)
traceback.print_exc()
if len(refers) == 0:
refers, audio_tensor = get_spepc(hps, ref_wav_path, dtype, device, is_v2pro)
refers = [refers]
if is_v2pro:
assert sv_cn_model
sv_emb = [sv_cn_model.compute_embedding3(audio_tensor)]
if is_v2pro:
audio = vq_model.decode(
pred_semantic,
torch.LongTensor(phones2).to(device).unsqueeze(0),
refers,
speed=speed,
sv_emb=sv_emb,
)[0][0] # type: ignore
else:
audio = vq_model.decode(
pred_semantic,
torch.LongTensor(phones2).to(device).unsqueeze(0),
refers,
speed=speed,
)[0][0] # type: ignore
else:
refer, audio_tensor = get_spepc(hps, ref_wav_path, dtype, device)
phoneme_ids0 = torch.LongTensor(phones1).to(device).unsqueeze(0)
phoneme_ids1 = torch.LongTensor(phones2).to(device).unsqueeze(0)
fea_ref, ge = vq_model.decode_encp(prompt.unsqueeze(0), phoneme_ids0, refer) # type: ignore
ref_audio, sr = torchaudio.load(ref_wav_path)
ref_audio = ref_audio.to(device).float()
if ref_audio.shape[0] == 2:
ref_audio = ref_audio.mean(0).unsqueeze(0)
tgt_sr = 24000 if model_version == "v3" else 32000
if sr != tgt_sr:
ref_audio = resample(ref_audio, sr, tgt_sr, device)
mel2 = mel_fn(ref_audio) if model_version == "v3" else mel_fn_v4(ref_audio)
mel2 = norm_spec(mel2)
T_min = min(mel2.shape[2], fea_ref.shape[2])
mel2 = mel2[:, :, :T_min]
fea_ref = fea_ref[:, :, :T_min]
Tref = 468 if model_version == "v3" else 500
Tchunk = 934 if model_version == "v3" else 1000
if T_min > Tref:
mel2 = mel2[:, :, -Tref:]
fea_ref = fea_ref[:, :, -Tref:]
T_min = Tref
chunk_len = Tchunk - T_min
mel2 = mel2.to(dtype)
fea_todo, ge = vq_model.decode_encp(pred_semantic, phoneme_ids1, refer, ge, speed) # type: ignore
cfm_resss = []
idx = 0
while 1:
fea_todo_chunk = fea_todo[:, :, idx : idx + chunk_len]
if fea_todo_chunk.shape[-1] == 0:
break
idx += chunk_len
fea = torch.cat([fea_ref, fea_todo_chunk], 2).transpose(2, 1)
cfm_res = vq_model.cfm.inference( # type: ignore
fea, torch.LongTensor([fea.size(1)]).to(fea.device), mel2, sample_steps, inference_cfg_rate=0
)
cfm_res = cfm_res[:, :, mel2.shape[2] :]
mel2 = cfm_res[:, :, -T_min:]
fea_ref = fea_todo_chunk[:, :, -T_min:]
cfm_resss.append(cfm_res)
cfm_res = torch.cat(cfm_resss, 2)
cfm_res = denorm_spec(cfm_res)
if model_version == "v3":
if bigvgan_model == None:
init_bigvgan()
else: # v4
if hifigan_model == None:
init_hifigan()
vocoder_model = bigvgan_model if model_version == "v3" else hifigan_model
with torch.inference_mode():
wav_gen = vocoder_model(cfm_res) # type: ignore
audio = wav_gen[0][0] # .cpu().detach().numpy()
max_audio = torch.abs(audio).max() # 简单防止16bit爆音
if max_audio > 1:
audio = audio / max_audio
audio_opt.append(audio)
audio_opt.append(zero_wav_torch) # zero_wav
t4 = ttime()
t.extend([t2 - t1, t3 - t2, t4 - t3])
t1 = ttime()
audio_opt = torch.cat(audio_opt, 0) # np.concatenate
if model_version in {"v1", "v2", "v2Pro", "v2ProPlus"}:
opt_sr = 32000
elif model_version == "v3":
opt_sr = 24000
else:
opt_sr = 48000 # v4
if if_sr is True and opt_sr == 24000:
print(">>", i18n("音频超分中"))
audio_opt, opt_sr = audio_sr(audio_opt.unsqueeze(0), opt_sr)
max_audio = np.abs(audio_opt).max()
if max_audio > 1:
audio_opt /= max_audio
else:
audio_opt = audio_opt.cpu().detach().numpy()
t0 = t[0]
t1 = sum(t[1::3])
t2 = sum(t[2::3])
t3 = sum(t[3::3])
infer_speed_avg = sum(infer_len) / sum(infer_time)
rtf_value = sum(t) / (audio_opt.__len__() / opt_sr)
print(f">> Time Stamps: {t0:.3f}\t{t1:.3f}\t{t2:.3f}\t{t3:.3f}")
print(f">> Infer Speed: {infer_speed_avg:.2f} Token/s")
print(f">> RTF: {rtf_value:.2f}")
gr.Info(f"{infer_speed_avg:.2f} Token/s", title="Infer Speed")
gr.Info(f"{rtf_value:.2f}", title="RTF")
yield opt_sr, (audio_opt * 32767).astype(np.int16)
def split(todo_text):
todo_text = todo_text.replace("……", "").replace("——", "")
if todo_text[-1] not in splits:
todo_text += ""
i_split_head = i_split_tail = 0
len_text = len(todo_text)
todo_texts = []
while 1:
if i_split_head >= len_text:
break # 结尾一定有标点,所以直接跳出即可,最后一段在上次已加入
if todo_text[i_split_head] in splits:
i_split_head += 1
todo_texts.append(todo_text[i_split_tail:i_split_head])
i_split_tail = i_split_head
else:
i_split_head += 1
return todo_texts
def cut1(inp):
inp = inp.strip("\n")
inps = split(inp)
split_idx = list(range(0, len(inps), 4))
split_idx[-1] = None
if len(split_idx) > 1:
opts = []
for idx in range(len(split_idx) - 1):
opts.append("".join(inps[split_idx[idx] : split_idx[idx + 1]]))
else:
opts = [inp]
opts = [item for item in opts if not set(item).issubset(punctuation)]
return "\n".join(opts)
def cut2(inp):
inp = inp.strip("\n")
inps = split(inp)
if len(inps) < 2:
return inp
opts = []
summ = 0
tmp_str = ""
for i in range(len(inps)):
summ += len(inps[i])
tmp_str += inps[i]
if summ > 50:
summ = 0
opts.append(tmp_str)
tmp_str = ""
if tmp_str != "":
opts.append(tmp_str)
if len(opts) > 1 and len(opts[-1]) < 50: ##如果最后一个太短了,和前一个合一起
opts[-2] = opts[-2] + opts[-1]
opts = opts[:-1]
opts = [item for item in opts if not set(item).issubset(punctuation)]
return "\n".join(opts)
def cut3(inp):
inp = inp.strip("\n")
opts = inp.strip("").split("")
opts = [item for item in opts if not set(item).issubset(punctuation)]
return "\n".join(opts)
def cut4(inp):
inp = inp.strip("\n")
opts = re.split(r"(?<!\d)\.(?!\d)", inp.strip("."))
opts = [item for item in opts if not set(item).issubset(punctuation)]
return "\n".join(opts)
# contributed by https://github.com/AI-Hobbyist/GPT-SoVITS/blob/main/GPT_SoVITS/inference_webui.py
def cut5(inp):
inp = inp.strip("\n")
punds = {",", ".", ";", "?", "!", "", "", "", "", "", ";", "", ""}
mergeitems = []
items = []
for i, char in enumerate(inp):
if char in punds:
if char == "." and i > 0 and i < len(inp) - 1 and inp[i - 1].isdigit() and inp[i + 1].isdigit():
items.append(char)
else:
items.append(char)
mergeitems.append("".join(items))
items = []
else:
items.append(char)
if items:
mergeitems.append("".join(items))
opt = [item for item in mergeitems if not set(item).issubset(punds)]
return "\n".join(opt)
def custom_sort_key(s):
# 使用正则表达式提取字符串中的数字部分和非数字部分
parts = re.split("(\d+)", s)
# 将数字部分转换为整数,非数字部分保持不变
parts = [int(part) if part.isdigit() else part for part in parts]
return parts
def process_text(texts):
_text = []
if all(text in [None, " ", "\n", ""] for text in texts):
raise ValueError(i18n("请输入有效文本"))
for text in texts:
if text in [None, " ", ""]:
pass
else:
_text.append(text)
return _text
def html_center(text, label="p"):
return f"""<div style="text-align: center; margin: 100; padding: 50;">
<{label} style="margin: 0; padding: 0;">{text}</{label}>
</div>"""
def html_left(text, label="p"):
return f"""<div style="text-align: left; margin: 0; padding: 0;">
<{label} style="margin: 0; padding: 0;">{text}</{label}>
</div>"""
with gr.Blocks(title="GPT-SoVITS WebUI", analytics_enabled=False, js=js, css=css) as app:
gr.HTML(
top_html.format(
i18n("本软件以MIT协议开源, 作者不对软件具备任何控制力, 使用软件者、传播软件导出的声音者自负全责.")
+ i18n("如不认可该条款, 则不能使用或引用软件包内任何代码和文件. 详见根目录LICENSE.")
),
elem_classes="markdown",
)
with gr.Group():
gr.Markdown(html_center(i18n("模型切换"), "h3"))
with gr.Row(equal_height=True):
GPT_dropdown = gr.Dropdown(
label=i18n("GPT模型列表"),
choices=sorted(GPT_names, key=custom_sort_key),
value=gpt_path,
interactive=True,
scale=14,
)
SoVITS_dropdown = gr.Dropdown(
label=i18n("SoVITS模型列表"),
choices=sorted(SoVITS_names, key=custom_sort_key),
value=sovits_path,
interactive=True,
scale=14,
)
refresh_button = gr.Button(i18n("刷新模型路径"), variant="primary", scale=14)
refresh_button.click(fn=change_choices, inputs=[], outputs=[SoVITS_dropdown, GPT_dropdown])
gr.Markdown(html_center(i18n("*请上传并填写参考信息"), "h3"))
with gr.Row(equal_height=True):
inp_ref = gr.Audio(
label=i18n("请上传3~10秒内参考音频超过会报错"),
type="filepath",
sources="upload",
scale=13,
editable=False,
waveform_options={"show_recording_waveform": False},
)
with gr.Column(scale=13):
ref_text_free = gr.Checkbox(
label=i18n("开启无参考文本模式。不填参考文本亦相当于开启。")
+ i18n("v3暂不支持该模式使用了会报错。"),
value=False,
interactive=True if model_version not in v3v4set else False,
show_label=True,
scale=1,
)
gr.Markdown(
html_left(
i18n("使用无参考文本模式时建议使用微调的GPT")
+ "<br>"
+ i18n("听不清参考音频说的啥(不晓得写啥)可以开。开启后无视填写的参考文本。")
)
)
prompt_text = gr.Textbox(label=i18n("参考音频的文本"), value="", lines=5, max_lines=5, scale=1)
with gr.Column(scale=14):
prompt_language = gr.Dropdown(
label=i18n("参考音频的语种"),
choices=list(dict_language.keys()),
value=i18n("中文"),
)
inp_refs = (
gr.File(
label=i18n(
"可选项:通过拖拽多个文件上传多个参考音频(建议同性),平均融合他们的音色。如不填写此项,音色由左侧单个参考音频控制。如是微调模型,建议参考音频全部在微调训练集音色内,底模不用管。"
),
file_count="multiple",
)
if model_version not in v3v4set
else gr.File(
label=i18n(
"可选项:通过拖拽多个文件上传多个参考音频(建议同性),平均融合他们的音色。如不填写此项,音色由左侧单个参考音频控制。如是微调模型,建议参考音频全部在微调训练集音色内,底模不用管。"
),
file_count="multiple",
visible=False,
)
)
sample_steps = (
gr.Radio(
label=i18n("采样步数,如果觉得电,提高试试,如果觉得慢,降低试试"),
value=32 if model_version == "v3" else 8,
choices=[4, 8, 16, 32, 64, 128] if model_version == "v3" else [4, 8, 16, 32],
visible=True,
)
if model_version in v3v4set
else gr.Radio(
label=i18n("采样步数,如果觉得电,提高试试,如果觉得慢,降低试试"),
choices=[4, 8, 16, 32, 64, 128] if model_version == "v3" else [4, 8, 16, 32],
visible=False,
value=32 if model_version == "v3" else 8,
)
)
if_sr_Checkbox = gr.Checkbox(
label=i18n("v3输出如果觉得闷可以试试开超分"),
value=False,
interactive=True,
show_label=True,
visible=False if model_version != "v3" else True,
)
gr.Markdown(html_center(i18n("*请填写需要合成的目标文本和语种模式"), "h3"))
with gr.Row(equal_height=True):
with gr.Column(scale=13):
text = gr.Textbox(label=i18n("需要合成的文本"), value="", lines=26, max_lines=26)
with gr.Column(scale=7):
text_language = gr.Dropdown(
label=i18n("需要合成的语种") + i18n(".限制范围越小判别效果越好。"),
choices=list(dict_language.keys()),
value=i18n("中文"),
scale=1,
)
how_to_cut = gr.Dropdown(
label=i18n("怎么切"),
choices=[
i18n("不切"),
i18n("凑四句一切"),
i18n("凑50字一切"),
i18n("按中文句号。切"),
i18n("按英文句号.切"),
i18n("按标点符号切"),
],
value=i18n("凑四句一切"),
interactive=True,
scale=1,
)
gr.Markdown(value=html_center(i18n("语速调整,高为更快")))
if_freeze = gr.Checkbox(
label=i18n("是否直接对上次合成结果调整语速和音色。防止随机性。"),
value=False,
interactive=True,
show_label=True,
scale=1,
)
with gr.Row(equal_height=True):
speed = gr.Slider(
minimum=0.6, maximum=1.65, step=0.05, label=i18n("语速"), value=1, interactive=True, scale=1
)
pause_second_slider = gr.Slider(
minimum=0.1,
maximum=0.5,
step=0.01,
label=i18n("句间停顿秒数"),
value=0.3,
interactive=True,
scale=1,
)
gr.Markdown(html_center(i18n("GPT采样参数(无参考文本时不要太低。不懂就用默认)")))
top_k = gr.Slider(
minimum=1, maximum=100, step=1, label=i18n("top_k"), value=15, interactive=True, scale=1
)
top_p = gr.Slider(
minimum=0, maximum=1, step=0.05, label=i18n("top_p"), value=1, interactive=True, scale=1
)
temperature = gr.Slider(
minimum=0, maximum=1, step=0.05, label=i18n("temperature"), value=1, interactive=True, scale=1
)
with gr.Row(equal_height=True):
inference_button = gr.Button(value=i18n("合成语音"), variant="primary", size="lg", scale=25)
output = gr.Audio(
label=i18n("输出的语音"),
scale=14,
waveform_options={"show_recording_waveform": False},
editable=False,
)
inference_button.click(
get_tts_wav,
[
inp_ref,
prompt_text,
prompt_language,
text,
text_language,
how_to_cut,
top_k,
top_p,
temperature,
ref_text_free,
speed,
if_freeze,
inp_refs,
sample_steps,
if_sr_Checkbox,
pause_second_slider,
],
[output],
)
SoVITS_dropdown.change(
change_sovits_weights,
[SoVITS_dropdown, prompt_language, text_language],
[
prompt_language,
text_language,
prompt_text,
prompt_language,
text,
text_language,
sample_steps,
inp_refs,
ref_text_free,
if_sr_Checkbox,
inference_button,
],
)
GPT_dropdown.change(change_gpt_weights, [GPT_dropdown], [])
if __name__ == "__main__":
app.queue(api_open=False, default_concurrency_limit=511).launch( # concurrency_count=511, max_size=1022
server_name="0.0.0.0",
inbrowser=True,
share=is_share,
server_port=infer_ttswebui,
# quiet=True,
)