| 12345678910111213141516171819202122232425262728293031323334353637383940414243444546474849505152535455565758596061626364656667686970717273747576777879808182838485 |
- #!/usr/bin/env python
- import re
- import numpy as np
- from funasr.datasets.large_datasets.utils.hotword_utils import sample_hotword
- def forward_segment(text, seg_dict):
- word_list = []
- i = 0
- while i < len(text):
- longest_word = text[i]
- for j in range(i + 1, len(text) + 1):
- word = text[i:j]
- if word in seg_dict:
- if len(word) > len(longest_word):
- longest_word = word
- word_list.append(longest_word)
- i += len(longest_word)
- return word_list
- def seg_tokenize(txt, seg_dict):
- pattern = re.compile(r'^[\u4E00-\u9FA50-9]+$')
- out_txt = ""
- for word in txt:
- word = word.lower()
- if word in seg_dict:
- out_txt += seg_dict[word] + " "
- else:
- if pattern.match(word):
- for char in word:
- if char in seg_dict:
- out_txt += seg_dict[char] + " "
- else:
- out_txt += "<unk>" + " "
- else:
- out_txt += "<unk>" + " "
- return out_txt.strip().split()
- def tokenize(data,
- vocab=None,
- seg_dict=None,
- punc_dict=None,
- bpe_tokenizer=None,
- hw_config=None):
- assert "text" in data
- assert isinstance(vocab, dict)
- text = data["text"]
- token = []
- vad = -2
- if bpe_tokenizer is not None:
- text = bpe_tokenizer.text2tokens(" ".join(text))
- if seg_dict is not None:
- assert isinstance(seg_dict, dict)
- text = seg_tokenize(text, seg_dict)
- length = len(text)
- if 'hw_tag' in data:
- hotword_indxs = sample_hotword(length, **hw_config)
- data['hotword_indxs'] = hotword_indxs
- del data['hw_tag']
- for i in range(length):
- x = text[i]
- if i == length-1 and "punc" in data and x.startswith("vad:"):
- vad = x[4:]
- if len(vad) == 0:
- vad = -1
- else:
- vad = int(vad)
- elif x in vocab:
- token.append(vocab[x])
- else:
- token.append(vocab['<unk>'])
- if "punc" in data and punc_dict is not None:
- punc_token = []
- for punc in data["punc"]:
- if punc in punc_dict:
- punc_token.append(punc_dict[punc])
- else:
- punc_token.append(punc_dict["_"])
- data["punc"] = np.array(punc_token)
- data["text"] = np.array(token)
- if vad is not -2:
- data["vad_indexes"]=np.array([vad], dtype=np.int64)
- return data
|