wav2vec2-base-persian / src /ft /normalizer.py
m3hrdadfi's picture
Add scripts for later job ft
bab2747
raw
history blame contribute delete
No virus
7.54 kB
from parsivar import Normalizer
from parsivar import SpellCheck
import num2fawords
import re
import string
from dictionary import dictionary_mapping, fixator_dictionary
_normalizer = Normalizer(half_space_char="\u200c", statistical_space_correction=True)
_spell = SpellCheck()
chars_to_ignore = [
",", "?", ".", "!", "-", ";", ":", '""', "%", "'", '"', "�",
"#", "!", "؟", "?", "«", "»", "،", "(", ")", "؛", "'ٔ", "٬", 'ٔ', ",", "?",
".", "!", "-", ";", ":", '"', "“", "%", "‘", "”", "�", "–", "…", "_", "”", '“', '„',
'ā', 'š', 'ّ', 'ْ',
]
chars_to_ignore = chars_to_ignore + list(string.ascii_lowercase + string.digits)
chars_to_ignore = f"""[{"".join(chars_to_ignore)}]"""
zwnj = "\u200c"
silent_chars = ["ا", "د", "ذ", "ر", "ز", "و", "آ"] + [zwnj] + [" "]
def multiple_replace(text, chars_to_mapping):
pattern = "|".join(map(re.escape, chars_to_mapping.keys()))
return re.sub(pattern, lambda m: chars_to_mapping[m.group()], str(text))
def remove_special_characters(text, chars_to_ignore_regex):
text = re.sub(chars_to_ignore_regex, '', text).lower() + " "
return text
def convert_word_nums_to_text(word):
try:
word = int(word)
word = num2fawords.words(word)
except:
word = word
return word
def normalizer_at_word_level(text):
words = text.split()
_text = []
for word in words:
word = convert_word_nums_to_text(word)
word = fixator_dictionary.get(word, word)
_text.append(word)
return " ".join(_text) + " "
def finder(ss, s, starter=False):
found = []
for m in re.finditer(ss, s):
if starter:
found.append(m.start())
else:
found.append((m.start(), m.end()))
return found
def substring_replace(ss, s, start, end, stripped=True):
s_start = s[:start]
s_end = s[end:]
counter = 0
if stripped:
counter = 1 if s_start.endswith(" ") else counter
s_start = s_start.rstrip()
return s_start + ss + s_end, counter
def normalizer(
batch,
is_normalize=True,
is_spell_check=False,
return_dict=True,
filter_trivials=False,
remove_extra_space=False
):
text = batch["sentence"].lower().strip()
# Parsivar normalizer
if is_normalize:
text = _normalizer.normalize(text)
# Dictionary mapping
text = multiple_replace(text, dictionary_mapping)
text = re.sub(" +", " ", text)
# Remove specials
text = remove_special_characters(text, chars_to_ignore)
text = re.sub(" +", " ", text)
# Replace connected آ
special, pointer = "آ", int("0")
for f in sorted(finder(special, text, True)):
index = f + pointer - 1
if len(text) >= index:
if text[index] not in silent_chars:
new_text, extra_pointer = substring_replace(
f"{text[index]}{zwnj}", text, index, index + 1, stripped=True)
text = new_text
pointer += 1 + 1 - 1 - extra_pointer
# Replace connected ها
pointer = int("0")
special_list = [
# "ام", "ای", "است", "ایم", "اید", "اند",
"هایمان", "هایم", "هایت", "هایش",
"هایتان", "هایشان", "هام", "هات",
"هاتان", "هامون", "هامان", "هاش",
"هاتون", "هاشان", "هاشون",
"هایی", "های", "هاس", "ها"
]
for special in special_list:
pointer = 0
text = text
for f in sorted(finder(special, text, False)):
start, end = f[0] + pointer - 1, f[1] + pointer - 1
if len(text) >= (end + 1):
if len(text) == (end + 1):
new_text, extra_pointer = substring_replace(
f"{zwnj}{special}",
text,
start + 1,
end + 1,
stripped=True)
text = new_text
pointer += 1 + 1 - 1 - extra_pointer
else:
if text[end + 1] == " ":
new_text, extra_pointer = substring_replace(
f"{zwnj}{special}",
text,
start + 1,
end + 1,
stripped=True)
text = new_text
pointer += 1 + 1 - 1 - extra_pointer
special, pointer = "افزار", int("0")
for f in sorted(finder(special, text, False)):
start, end = f[0] + pointer - 1, f[1] + pointer - 1
if len(text) >= (end + 1):
new_text, extra_pointer = substring_replace(f"{zwnj}{special}", text, start + 1, end + 1, stripped=True)
text = new_text
pointer += 1 + 1 - 1 - extra_pointer
# Replace connected ها
pointer = int("0")
special_list = [
"ترین", "تر"
]
for special in special_list:
pointer = 0
text = text
for f in sorted(finder(special, text, False)):
start, end = f[0] + pointer - 1, f[1] + pointer - 1
if len(text) >= (end + 1):
if len(text) == (end + 1):
new_text, extra_pointer = substring_replace(
f"{zwnj}{special}",
text,
start + 1,
end + 1,
stripped=True)
text = new_text
pointer += 1 + 1 - 1 - extra_pointer
else:
if text[end + 1] == " ":
new_text, extra_pointer = substring_replace(
f"{zwnj}{special}",
text,
start + 1,
end + 1,
stripped=True)
text = new_text
pointer += 1 + 1 - 1 - extra_pointer
# Parsivar spell correction
if is_spell_check:
text = _normalizer.normalize(_spell.spell_corrector(text))
# Normalizer at word level
text = normalizer_at_word_level(text)
text = re.sub(" +", " ", text)
if remove_extra_space:
text = text.strip()
else:
text = text.strip() + " "
if filter_trivials:
if not len(text) > 2:
text = None
if not return_dict:
return text
batch["sentence"] = text
return batch
if __name__ == '__main__':
input_text = "سلام بر شما که میآیید و میآموزید که بیآرآیم"
print(normalizer({"sentence": input_text}, return_dict=False))
input_text = "کتابهایمان میدانی کجاها ماههاس که کیهامون و کیهان دنبالههاشون برای بهای هستند."
print(normalizer({"sentence": input_text}, return_dict=False))
input_text = " میانافزارهای امروزی نرمافزار سخت افزار امروز نوشتافزار ها"
print(normalizer({"sentence": input_text}, return_dict=False))
input_text = "این کتاب بهترین در نوع شتر آسانتر هست"
print(normalizer({"sentence": input_text}, return_dict=False))
input_text = "سه چیز هست که از پژوهش در این زمینه آموختهام"
print(normalizer({"sentence": input_text}, return_dict=False))