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import LangSegment |
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import numpy as np |
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import librosa |
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import torch |
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import re, os |
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import librosa |
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from transformers import AutoModelForMaskedLM, AutoTokenizer |
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import sys |
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sys.path.append('GPT_SoVITS/') |
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from text import cleaned_text_to_sequence |
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from text.cleaner import clean_text |
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from feature_extractor import cnhubert |
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from my_utils import load_audio |
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from module.mel_processing import spectrogram_torch |
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from module.models import SynthesizerTrn |
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from AR.models.t2s_lightning_module import Text2SemanticLightningModule |
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from scipy.io.wavfile import write |
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from time import time as ttime |
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if torch.cuda.is_available(): |
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device = "cuda" |
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elif torch.backends.mps.is_available(): |
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device = "mps" |
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else: |
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device = "cpu" |
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is_half = True |
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splits = {",", "。", "?", "!", ",", ".", "?", "!", "~", ":", ":", "—", "…", } |
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if device == "cuda": |
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gpu_name = torch.cuda.get_device_name(0) |
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if ( |
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("16" in gpu_name and "V100" not in gpu_name.upper()) |
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or "P40" in gpu_name.upper() |
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or "P10" in gpu_name.upper() |
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or "1060" in gpu_name |
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or "1070" in gpu_name |
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or "1080" in gpu_name |
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): |
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is_half=False |
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if device=="cpu": |
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is_half=False |
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dtype=torch.float16 if is_half == True else torch.float32 |
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bert_path = os.environ.get( |
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"bert_path", "GPT_SoVITS/pretrained_models/chinese-roberta-wwm-ext-large" |
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) |
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cnhubert_base_path = os.environ.get( |
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"cnhubert_base_path", "GPT_SoVITS/pretrained_models/chinese-hubert-base" |
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) |
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cnhubert.cnhubert_base_path = cnhubert_base_path |
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tokenizer = AutoTokenizer.from_pretrained(bert_path) |
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bert_model = AutoModelForMaskedLM.from_pretrained(bert_path) |
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if is_half == True: |
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bert_model = bert_model.half().to(device) |
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else: |
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bert_model = bert_model.to(device) |
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ssl_model = cnhubert.get_model() |
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if is_half == True: |
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ssl_model = ssl_model.half().to(device) |
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else: |
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ssl_model = ssl_model.to(device) |
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def get_spepc(hps, filename): |
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audio = load_audio(filename, int(hps.data.sampling_rate)) |
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audio = torch.FloatTensor(audio) |
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audio_norm = audio |
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audio_norm = audio_norm.unsqueeze(0) |
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spec = spectrogram_torch( |
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audio_norm, |
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hps.data.filter_length, |
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hps.data.sampling_rate, |
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hps.data.hop_length, |
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hps.data.win_length, |
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center=False, |
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) |
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return spec |
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def get_bert_feature(text, word2ph): |
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with torch.no_grad(): |
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inputs = tokenizer(text, return_tensors="pt") |
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for i in inputs: |
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inputs[i] = inputs[i].to(device) |
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res = bert_model(**inputs, output_hidden_states=True) |
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res = torch.cat(res["hidden_states"][-3:-2], -1)[0].cpu()[1:-1] |
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assert len(word2ph) == len(text) |
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phone_level_feature = [] |
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for i in range(len(word2ph)): |
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repeat_feature = res[i].repeat(word2ph[i], 1) |
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phone_level_feature.append(repeat_feature) |
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phone_level_feature = torch.cat(phone_level_feature, dim=0) |
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return phone_level_feature.T |
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class DictToAttrRecursive(dict): |
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def __init__(self, input_dict): |
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super().__init__(input_dict) |
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for key, value in input_dict.items(): |
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if isinstance(value, dict): |
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value = DictToAttrRecursive(value) |
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self[key] = value |
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setattr(self, key, value) |
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def __getattr__(self, item): |
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try: |
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return self[item] |
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except KeyError: |
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raise AttributeError(f"Attribute {item} not found") |
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def __setattr__(self, key, value): |
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if isinstance(value, dict): |
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value = DictToAttrRecursive(value) |
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super(DictToAttrRecursive, self).__setitem__(key, value) |
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super().__setattr__(key, value) |
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def __delattr__(self, item): |
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try: |
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del self[item] |
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except KeyError: |
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raise AttributeError(f"Attribute {item} not found") |
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def clean_text_inf(text, language): |
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phones, word2ph, norm_text = clean_text(text, language.replace("all_","")) |
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phones = cleaned_text_to_sequence(phones) |
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return phones, word2ph, norm_text |
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def get_bert_inf(phones, word2ph, norm_text, language): |
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language=language.replace("all_","") |
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if language == "zh": |
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bert = get_bert_feature(norm_text, word2ph).to(device) |
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else: |
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bert = torch.zeros( |
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(1024, len(phones)), |
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dtype=torch.float16 if is_half == True else torch.float32, |
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).to(device) |
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return bert |
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def splite_en_inf(sentence, language): |
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pattern = re.compile(r'[a-zA-Z ]+') |
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textlist = [] |
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langlist = [] |
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pos = 0 |
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for match in pattern.finditer(sentence): |
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start, end = match.span() |
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if start > pos: |
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textlist.append(sentence[pos:start]) |
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langlist.append(language) |
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textlist.append(sentence[start:end]) |
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langlist.append("en") |
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pos = end |
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if pos < len(sentence): |
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textlist.append(sentence[pos:]) |
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langlist.append(language) |
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for i in range(len(textlist)-1, 0, -1): |
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if re.match(r'^[\W_]+$', textlist[i]): |
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textlist[i-1] += textlist[i] |
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del textlist[i] |
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del langlist[i] |
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i = 0 |
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while i < len(langlist) - 1: |
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if langlist[i] == langlist[i+1]: |
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textlist[i] += textlist[i+1] |
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del textlist[i+1] |
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del langlist[i+1] |
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else: |
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i += 1 |
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return textlist, langlist |
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def nonen_clean_text_inf(text, language): |
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if(language!="auto"): |
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textlist, langlist = splite_en_inf(text, language) |
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else: |
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textlist=[] |
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langlist=[] |
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for tmp in LangSegment.getTexts(text): |
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langlist.append(tmp["lang"]) |
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textlist.append(tmp["text"]) |
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print(textlist) |
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print(langlist) |
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phones_list = [] |
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word2ph_list = [] |
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norm_text_list = [] |
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for i in range(len(textlist)): |
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lang = langlist[i] |
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phones, word2ph, norm_text = clean_text_inf(textlist[i], lang) |
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phones_list.append(phones) |
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if lang == "zh": |
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word2ph_list.append(word2ph) |
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norm_text_list.append(norm_text) |
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print(word2ph_list) |
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phones = sum(phones_list, []) |
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word2ph = sum(word2ph_list, []) |
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norm_text = ' '.join(norm_text_list) |
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return phones, word2ph, norm_text |
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def nonen_get_bert_inf(text, language): |
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if(language!="auto"): |
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textlist, langlist = splite_en_inf(text, language) |
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else: |
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textlist=[] |
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langlist=[] |
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for tmp in LangSegment.getTexts(text): |
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langlist.append(tmp["lang"]) |
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textlist.append(tmp["text"]) |
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print(textlist) |
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print(langlist) |
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bert_list = [] |
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for i in range(len(textlist)): |
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text = textlist[i] |
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lang = langlist[i] |
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phones, word2ph, norm_text = clean_text_inf(text, lang) |
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bert = get_bert_inf(phones, word2ph, norm_text, lang) |
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bert_list.append(bert) |
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bert = torch.cat(bert_list, dim=1) |
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return bert |
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def get_first(text): |
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pattern = "[" + "".join(re.escape(sep) for sep in splits) + "]" |
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text = re.split(pattern, text)[0].strip() |
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return text |
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def get_cleaned_text_fianl(text,language): |
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if language in {"en","all_zh","all_ja"}: |
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phones, word2ph, norm_text = clean_text_inf(text, language) |
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elif language in {"zh", "ja","auto"}: |
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phones, word2ph, norm_text = nonen_clean_text_inf(text, language) |
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return phones, word2ph, norm_text |
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def get_bert_final(phones, word2ph, norm_text, text_language, device, text): |
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if text_language == "en": |
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bert = get_bert_inf(phones, word2ph, norm_text, text_language) |
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elif text_language in {"zh", "ja","auto"}: |
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bert = nonen_get_bert_inf(text, text_language) |
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elif text_language == "all_zh": |
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bert = get_bert_feature(norm_text, word2ph).to(device) |
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else: |
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bert = torch.zeros((1024, len(phones))).to(device) |
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return bert |
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def split(todo_text): |
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todo_text = todo_text.replace("……", "。").replace("——", ",") |
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if todo_text[-1] not in splits: |
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todo_text += "。" |
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i_split_head = i_split_tail = 0 |
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len_text = len(todo_text) |
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todo_texts = [] |
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while 1: |
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if i_split_head >= len_text: |
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break |
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if todo_text[i_split_head] in splits: |
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i_split_head += 1 |
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todo_texts.append(todo_text[i_split_tail:i_split_head]) |
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i_split_tail = i_split_head |
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else: |
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i_split_head += 1 |
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return todo_texts |
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def cut1(inp): |
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inp = inp.strip("\n") |
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inps = split(inp) |
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split_idx = list(range(0, len(inps), 4)) |
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split_idx[-1] = None |
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if len(split_idx) > 1: |
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opts = [] |
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for idx in range(len(split_idx) - 1): |
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opts.append("".join(inps[split_idx[idx]: split_idx[idx + 1]])) |
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else: |
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opts = [inp] |
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return "\n".join(opts) |
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def cut2(inp): |
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inp = inp.strip("\n") |
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inps = split(inp) |
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if len(inps) < 2: |
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return inp |
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opts = [] |
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summ = 0 |
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tmp_str = "" |
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for i in range(len(inps)): |
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summ += len(inps[i]) |
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tmp_str += inps[i] |
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if summ > 50: |
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summ = 0 |
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opts.append(tmp_str) |
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tmp_str = "" |
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if tmp_str != "": |
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opts.append(tmp_str) |
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if len(opts) > 1 and len(opts[-1]) < 50: |
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opts[-2] = opts[-2] + opts[-1] |
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opts = opts[:-1] |
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return "\n".join(opts) |
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def cut3(inp): |
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inp = inp.strip("\n") |
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return "\n".join(["%s" % item for item in inp.strip("。").split("。")]) |
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def cut4(inp): |
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inp = inp.strip("\n") |
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return "\n".join(["%s" % item for item in inp.strip(".").split(".")]) |
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def cut5(inp): |
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inp = inp.strip("\n") |
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punds = r'[,.;?!、,。?!;:]' |
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items = re.split(f'({punds})', inp) |
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items = ["".join(group) for group in zip(items[::2], items[1::2])] |
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opt = "\n".join(items) |
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return opt |
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class GPT_SoVITS: |
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def __init__(self): |
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self.model = None |
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def load_model(self, gpt_path, sovits_path): |
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self.hz = 50 |
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dict_s1 = torch.load(gpt_path, map_location="cpu") |
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self.config = dict_s1["config"] |
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self.max_sec = self.config["data"]["max_sec"] |
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t2s_model = Text2SemanticLightningModule(self.config, "****", is_train=False) |
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t2s_model.load_state_dict(dict_s1["weight"]) |
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if is_half == True: |
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t2s_model = t2s_model.half() |
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self.t2s_model = t2s_model.to(device) |
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self.t2s_model.eval() |
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total = sum([param.nelement() for param in t2s_model.parameters()]) |
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print("Number of parameter: %.2fM" % (total / 1e6)) |
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|
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dict_s2 = torch.load(sovits_path, map_location="cpu") |
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self.hps = dict_s2["config"] |
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self.hps = DictToAttrRecursive(self.hps) |
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self.hps.model.semantic_frame_rate = "25hz" |
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vq_model = SynthesizerTrn( |
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self.hps.data.filter_length // 2 + 1, |
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self.hps.train.segment_size // self.hps.data.hop_length, |
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n_speakers=self.hps.data.n_speakers, |
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**self.hps.model |
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) |
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if ("pretrained" not in sovits_path): |
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del vq_model.enc_q |
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|
if is_half == True: |
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self.vq_model = vq_model.half().to(device) |
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|
else: |
|
|
self.vq_model = vq_model.to(device) |
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|
self.vq_model.eval() |
|
|
print(self.vq_model.load_state_dict(dict_s2["weight"], strict=False)) |
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|
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def predict(self, ref_wav_path, prompt_text, prompt_language, text, text_language, how_to_cut="不切", save_path = 'vits_res.wav'): |
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print(ref_wav_path, prompt_text, prompt_language, text, text_language, how_to_cut) |
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|
return self.get_tts_wav(ref_wav_path, prompt_text, prompt_language, text, text_language, how_to_cut, save_path) |
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|
|
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|
def get_tts_wav(self, ref_wav_path, prompt_text, prompt_language, text, text_language, how_to_cut="不切", save_path = 'vits_res.wav'): |
|
|
t0 = ttime() |
|
|
prompt_text = prompt_text.strip("\n") |
|
|
if (prompt_text[-1] not in splits): prompt_text += "。" if prompt_language != "en" else "." |
|
|
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("实际输入的参考文本:", prompt_text) |
|
|
print("实际输入的目标文本:", text) |
|
|
zero_wav = np.zeros( |
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int(self.hps.data.sampling_rate * 0.3), |
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|
dtype=np.float16 if is_half == True else np.float32, |
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|
) |
|
|
with torch.no_grad(): |
|
|
wav16k, sr = librosa.load(ref_wav_path, sr=16000) |
|
|
if (wav16k.shape[0] > 160000 or wav16k.shape[0] < 48000): |
|
|
raise OSError("参考音频在3~10秒范围外,请更换!") |
|
|
wav16k = torch.from_numpy(wav16k) |
|
|
zero_wav_torch = torch.from_numpy(zero_wav) |
|
|
if is_half == True: |
|
|
wav16k = wav16k.half().to(device) |
|
|
zero_wav_torch = zero_wav_torch.half().to(device) |
|
|
else: |
|
|
wav16k = wav16k.to(device) |
|
|
zero_wav_torch = zero_wav_torch.to(device) |
|
|
wav16k = torch.cat([wav16k, zero_wav_torch]) |
|
|
ssl_content = ssl_model.model(wav16k.unsqueeze(0))[ |
|
|
"last_hidden_state" |
|
|
].transpose( |
|
|
1, 2 |
|
|
) |
|
|
codes = self.vq_model.extract_latent(ssl_content) |
|
|
prompt_semantic = codes[0, 0] |
|
|
t1 = ttime() |
|
|
|
|
|
dict_language = { |
|
|
"中文": "all_zh", |
|
|
"英文": "en", |
|
|
"日文": "all_ja", |
|
|
"中英混合": "zh", |
|
|
"日英混合": "ja", |
|
|
"多语种混合": "auto", |
|
|
} |
|
|
prompt_language = dict_language[prompt_language] |
|
|
text_language = dict_language[text_language] |
|
|
|
|
|
phones1, word2ph1, norm_text1=get_cleaned_text_fianl(prompt_text, prompt_language) |
|
|
|
|
|
if (how_to_cut == "凑四句一切"): |
|
|
text = cut1(text) |
|
|
elif (how_to_cut == "凑50字一切"): |
|
|
text = cut2(text) |
|
|
elif (how_to_cut == "按中文句号。切"): |
|
|
text = cut3(text) |
|
|
elif (how_to_cut == "按英文句号.切"): |
|
|
text = cut4(text) |
|
|
elif (how_to_cut == "按标点符号切"): |
|
|
text = cut5(text) |
|
|
text = text.replace("\n\n", "\n").replace("\n\n", "\n").replace("\n\n", "\n") |
|
|
print("实际输入的目标文本(切句后):", text) |
|
|
texts = text.split("\n") |
|
|
audio_opt = [] |
|
|
bert1=get_bert_final(phones1, word2ph1, norm_text1, prompt_language, device, text).to(dtype) |
|
|
|
|
|
for text in texts: |
|
|
|
|
|
if (len(text.strip()) == 0): |
|
|
continue |
|
|
if (text[-1] not in splits): text += "。" if text_language != "en" else "." |
|
|
print("实际输入的目标文本(每句):", text) |
|
|
phones2, word2ph2, norm_text2 = get_cleaned_text_fianl(text, text_language) |
|
|
bert2 = get_bert_final(phones2, word2ph2, norm_text2, text_language, device, text).to(dtype) |
|
|
|
|
|
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) |
|
|
prompt = prompt_semantic.unsqueeze(0).to(device) |
|
|
t2 = ttime() |
|
|
with torch.no_grad(): |
|
|
|
|
|
pred_semantic, idx = self.t2s_model.model.infer_panel( |
|
|
all_phoneme_ids, |
|
|
all_phoneme_len, |
|
|
prompt, |
|
|
bert, |
|
|
|
|
|
top_k=self.config["inference"]["top_k"], |
|
|
early_stop_num=self.hz * self.max_sec, |
|
|
) |
|
|
t3 = ttime() |
|
|
|
|
|
pred_semantic = pred_semantic[:, -idx:].unsqueeze( |
|
|
0 |
|
|
) |
|
|
refer = get_spepc(self.hps, ref_wav_path) |
|
|
if is_half == True: |
|
|
refer = refer.half().to(device) |
|
|
else: |
|
|
refer = refer.to(device) |
|
|
|
|
|
audio = ( |
|
|
self.vq_model.decode( |
|
|
pred_semantic, torch.LongTensor(phones2).to(device).unsqueeze(0), refer |
|
|
) |
|
|
.detach() |
|
|
.cpu() |
|
|
.numpy()[0, 0] |
|
|
) |
|
|
max_audio=np.abs(audio).max() |
|
|
if max_audio>1:audio/=max_audio |
|
|
audio_opt.append(audio) |
|
|
audio_opt.append(zero_wav) |
|
|
t4 = ttime() |
|
|
print("%.3f\t%.3f\t%.3f\t%.3f" % (t1 - t0, t2 - t1, t3 - t2, t4 - t3)) |
|
|
print("%.3f\t%.3f\t%.3f\t%.3f" % (t1 - t0, t2 - t1, t3 - t2, t4 - t3)) |
|
|
|
|
|
|
|
|
|
|
|
write(save_path, self.hps.data.sampling_rate, (np.concatenate(audio_opt, 0) * 32768).astype(np.int16)) |
|
|
return save_path |
|
|
if __name__ == "__main__": |
|
|
GPT_SoVITS_inference = GPT_SoVITS() |
|
|
gpt_path = "GPT_SoVITS/pretrained_models/Gnews-e15.ckpt" |
|
|
sovits_path = "GPT_SoVITS/pretrained_models/Gnews_e8_s96.pth" |
|
|
GPT_SoVITS_inference.load_model(gpt_path, sovits_path) |
|
|
ref_wav_path = "GPT_SoVITS/reference_wav/Gnews/Gnews.mp3_0000270720_0000424960.wav" |
|
|
|
|
|
from ASR import WhisperASR, FunASR |
|
|
asr = FunASR() |
|
|
prompt_text = "" |
|
|
prompt_text = asr.transcribe(ref_wav_path) |
|
|
prompt_language = "中文" |
|
|
text = "大家好,这是我语音克隆的声音,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.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." |
|
|
text_language = "中英混合" |
|
|
how_to_cut = "不切" |
|
|
print("参考音频文本:", prompt_text) |
|
|
print("目标文本:", text) |
|
|
save_audio_file = "./result.wav" |
|
|
GPT_SoVITS_inference.predict(ref_wav_path, prompt_text, prompt_language, text, text_language, how_to_cut, save_audio_file) |