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import regex as re | |
import config | |
from .utils import check_is_none | |
from logger import logger | |
# 读取配置选择语种识别库 | |
clf = getattr(config, "LANGUAGE_IDENTIFICATION_LIBRARY", "fastlid") | |
def clasify_lang(text, speaker_lang): | |
pattern = r'[\!\"\#\$\%\&\'\(\)\*\+\,\-\.\/\:\;\<\>\=\?\@\[\]\{\}\\\\\^\_\`' \ | |
r'\!?。"#$%&'()*+,-/:;<=>@[\]^_`{|}~⦅⦆「」、、〃》「」' \ | |
r'『』【】〔〕〖〗〘〙〚〛〜〝〞〟〰〾〿–—‘\'\‛\“\”\„\‟…‧﹏.]+' | |
words = re.split(pattern, text) | |
pre = "" | |
p = 0 | |
if clf.upper() == "FASTLID" or clf.upper() == "FASTTEXT": | |
from fastlid import fastlid | |
detect = fastlid | |
if speaker_lang != None: fastlid.set_languages = speaker_lang | |
elif clf.upper() == "LANGID": | |
import langid | |
detect = langid.classify | |
if speaker_lang != None: langid.set_languages(speaker_lang) | |
else: | |
raise ValueError(f"Wrong LANGUAGE_IDENTIFICATION_LIBRARY in config.py") | |
for word in words: | |
if check_is_none(word): continue | |
lang = detect(word)[0] | |
if pre == "": | |
text = text[:p] + text[p:].replace(word, f'[{lang.upper()}]' + word, 1) | |
p += len(f'[{lang.upper()}]') | |
elif pre != lang: | |
text = text[:p] + text[p:].replace(word, f'[{pre.upper()}][{lang.upper()}]' + word, 1) | |
p += len(f'[{pre.upper()}][{lang.upper()}]') | |
pre = lang | |
p += text[p:].index(word) + len(word) | |
text += f"[{pre.upper()}]" | |
return text | |
def cut(text, max): | |
pattern = r'[!(),—+\-.:;??。,、;:]+' | |
sentences = re.split(pattern, text) | |
discarded_chars = re.findall(pattern, text) | |
sentence_list, count, p = [], 0, 0 | |
# 按被分割的符号遍历 | |
for i, discarded_chars in enumerate(discarded_chars): | |
count += len(sentences[i]) + len(discarded_chars) | |
if count >= max: | |
sentence_list.append(text[p:p + count].strip()) | |
p += count | |
count = 0 | |
# 加入最后剩余的文本 | |
if p < len(text): | |
sentence_list.append(text[p:]) | |
return sentence_list | |
def sentence_split(text, max=50, lang="auto", speaker_lang=None): | |
# 如果该speaker只支持一种语言 | |
if speaker_lang is not None and len(speaker_lang) == 1: | |
if lang.upper() not in ["AUTO", "MIX"] and lang.lower() != speaker_lang[0]: | |
logger.debug( | |
f"lang \"{lang}\" is not in speaker_lang {speaker_lang},automatically set lang={speaker_lang[0]}") | |
lang = speaker_lang[0] | |
sentence_list = [] | |
if lang.upper() != "MIX": | |
if max <= 0: | |
sentence_list.append( | |
clasify_lang(text, | |
speaker_lang) if lang.upper() == "AUTO" else f"[{lang.upper()}]{text}[{lang.upper()}]") | |
else: | |
for i in cut(text, max): | |
if check_is_none(i): continue | |
sentence_list.append( | |
clasify_lang(i, | |
speaker_lang) if lang.upper() == "AUTO" else f"[{lang.upper()}]{i}[{lang.upper()}]") | |
else: | |
sentence_list.append(text) | |
for i in sentence_list: | |
logger.debug(i) | |
return sentence_list | |