| import logging |
| import os.path |
| from pathlib import Path |
| from typing import Tuple, Union |
|
|
| import numpy as np |
|
|
| from cttpunctuator.src.utils.OrtInferSession import (ONNXRuntimeError, |
| OrtInferSession) |
| from cttpunctuator.src.utils.text_post_process import (TokenIDConverter, |
| code_mix_split_words, |
| read_yaml, |
| split_to_mini_sentence) |
|
|
|
|
| class CT_Transformer: |
| """ |
| Author: Speech Lab, Alibaba Group, China |
| CT-Transformer: Controllable time-delay transformer |
| for real-time punctuation prediction and disfluency detection |
| https://arxiv.org/pdf/2003.01309.pdf |
| """ |
|
|
| def __init__( |
| self, |
| model_dir: Union[str, Path] = None, |
| batch_size: int = 1, |
| device_id: Union[str, int] = "-1", |
| quantize: bool = False, |
| intra_op_num_threads: int = 4, |
| ): |
| model_dir = model_dir or os.path.join(os.path.dirname(__file__), "onnx") |
| if model_dir is None or not Path(model_dir).exists(): |
| raise FileNotFoundError(f"{model_dir} does not exist.") |
|
|
| model_file = os.path.join(model_dir, "punc.onnx") |
| if quantize: |
| model_file = os.path.join(model_dir, "model_quant.onnx") |
| config_file = os.path.join(model_dir, "punc.yaml") |
| config = read_yaml(config_file) |
|
|
| self.converter = TokenIDConverter(config["token_list"]) |
| self.ort_infer = OrtInferSession( |
| model_file, device_id, intra_op_num_threads=intra_op_num_threads |
| ) |
| self.batch_size = 1 |
| self.punc_list = config["punc_list"] |
| self.period = 0 |
| for i in range(len(self.punc_list)): |
| if self.punc_list[i] == ",": |
| self.punc_list[i] = "," |
| elif self.punc_list[i] == "?": |
| self.punc_list[i] = "?" |
| elif self.punc_list[i] == "。": |
| self.period = i |
|
|
| def __call__(self, text: Union[list, str], split_size=20): |
| split_text = code_mix_split_words(text) |
| split_text_id = self.converter.tokens2ids(split_text) |
| mini_sentences = split_to_mini_sentence(split_text, split_size) |
| mini_sentences_id = split_to_mini_sentence(split_text_id, split_size) |
| assert len(mini_sentences) == len(mini_sentences_id) |
| cache_sent = [] |
| cache_sent_id = [] |
| new_mini_sentence = "" |
| new_mini_sentence_punc = [] |
| cache_pop_trigger_limit = 200 |
| for mini_sentence_i in range(len(mini_sentences)): |
| mini_sentence = mini_sentences[mini_sentence_i] |
| mini_sentence_id = mini_sentences_id[mini_sentence_i] |
| mini_sentence = cache_sent + mini_sentence |
| mini_sentence_id = np.array(cache_sent_id + mini_sentence_id, dtype="int64") |
| data = { |
| "text": mini_sentence_id[None, :], |
| "text_lengths": np.array([len(mini_sentence_id)], dtype="int32"), |
| } |
| try: |
| outputs = self.infer(data["text"], data["text_lengths"]) |
| y = outputs[0] |
| punctuations = np.argmax(y, axis=-1)[0] |
| assert punctuations.size == len(mini_sentence) |
| except ONNXRuntimeError: |
| logging.warning("error") |
|
|
| |
| if mini_sentence_i < len(mini_sentences) - 1: |
| sentenceEnd = -1 |
| last_comma_index = -1 |
| for i in range(len(punctuations) - 2, 1, -1): |
| if ( |
| self.punc_list[punctuations[i]] == "。" |
| or self.punc_list[punctuations[i]] == "?" |
| ): |
| sentenceEnd = i |
| break |
| if last_comma_index < 0 and self.punc_list[punctuations[i]] == ",": |
| last_comma_index = i |
|
|
| if ( |
| sentenceEnd < 0 |
| and len(mini_sentence) > cache_pop_trigger_limit |
| and last_comma_index >= 0 |
| ): |
| |
| sentenceEnd = last_comma_index |
| punctuations[sentenceEnd] = self.period |
| cache_sent = mini_sentence[sentenceEnd + 1 :] |
| cache_sent_id = mini_sentence_id[sentenceEnd + 1 :].tolist() |
| mini_sentence = mini_sentence[0 : sentenceEnd + 1] |
| punctuations = punctuations[0 : sentenceEnd + 1] |
|
|
| new_mini_sentence_punc += [int(x) for x in punctuations] |
| words_with_punc = [] |
| for i in range(len(mini_sentence)): |
| if i > 0: |
| if ( |
| len(mini_sentence[i][0].encode()) == 1 |
| and len(mini_sentence[i - 1][0].encode()) == 1 |
| ): |
| mini_sentence[i] = " " + mini_sentence[i] |
| words_with_punc.append(mini_sentence[i]) |
| if self.punc_list[punctuations[i]] != "_": |
| words_with_punc.append(self.punc_list[punctuations[i]]) |
| new_mini_sentence += "".join(words_with_punc) |
| |
| new_mini_sentence_out = new_mini_sentence |
| new_mini_sentence_punc_out = new_mini_sentence_punc |
| if mini_sentence_i == len(mini_sentences) - 1: |
| if new_mini_sentence[-1] == "," or new_mini_sentence[-1] == "、": |
| new_mini_sentence_out = new_mini_sentence[:-1] + "。" |
| new_mini_sentence_punc_out = new_mini_sentence_punc[:-1] + [ |
| self.period |
| ] |
| elif new_mini_sentence[-1] != "。" and new_mini_sentence[-1] != "?": |
| new_mini_sentence_out = new_mini_sentence + "。" |
| new_mini_sentence_punc_out = new_mini_sentence_punc[:-1] + [ |
| self.period |
| ] |
| return new_mini_sentence_out, new_mini_sentence_punc_out |
|
|
| def infer( |
| self, feats: np.ndarray, feats_len: np.ndarray |
| ) -> Tuple[np.ndarray, np.ndarray]: |
| outputs = self.ort_infer([feats, feats_len]) |
| return outputs |
|
|
|
|
| class CT_Transformer_VadRealtime(CT_Transformer): |
| """ |
| Author: Speech Lab, Alibaba Group, China |
| CT-Transformer: Controllable time-delay transformer for |
| real-time punctuation prediction and disfluency detection |
| https://arxiv.org/pdf/2003.01309.pdf |
| """ |
|
|
| def __init__( |
| self, |
| model_dir: Union[str, Path] = None, |
| batch_size: int = 1, |
| device_id: Union[str, int] = "-1", |
| quantize: bool = False, |
| intra_op_num_threads: int = 4, |
| ): |
| super(CT_Transformer_VadRealtime, self).__init__( |
| model_dir, batch_size, device_id, quantize, intra_op_num_threads |
| ) |
|
|
| def __call__(self, text: str, param_dict: map, split_size=20): |
| cache_key = "cache" |
| assert cache_key in param_dict |
| cache = param_dict[cache_key] |
| if cache is not None and len(cache) > 0: |
| precache = "".join(cache) |
| else: |
| precache = "" |
| cache = [] |
| full_text = precache + text |
| split_text = code_mix_split_words(full_text) |
| split_text_id = self.converter.tokens2ids(split_text) |
| mini_sentences = split_to_mini_sentence(split_text, split_size) |
| mini_sentences_id = split_to_mini_sentence(split_text_id, split_size) |
| new_mini_sentence_punc = [] |
| assert len(mini_sentences) == len(mini_sentences_id) |
|
|
| cache_sent = [] |
| cache_sent_id = np.array([], dtype="int32") |
| sentence_punc_list = [] |
| sentence_words_list = [] |
| cache_pop_trigger_limit = 200 |
| skip_num = 0 |
| for mini_sentence_i in range(len(mini_sentences)): |
| mini_sentence = mini_sentences[mini_sentence_i] |
| mini_sentence_id = mini_sentences_id[mini_sentence_i] |
| mini_sentence = cache_sent + mini_sentence |
| mini_sentence_id = np.concatenate((cache_sent_id, mini_sentence_id), axis=0) |
| text_length = len(mini_sentence_id) |
| data = { |
| "input": mini_sentence_id[None, :], |
| "text_lengths": np.array([text_length], dtype="int32"), |
| "vad_mask": self.vad_mask(text_length, len(cache))[ |
| None, None, :, : |
| ].astype(np.float32), |
| "sub_masks": np.tril( |
| np.ones((text_length, text_length), dtype=np.float32) |
| )[None, None, :, :].astype(np.float32), |
| } |
| try: |
| outputs = self.infer( |
| data["input"], |
| data["text_lengths"], |
| data["vad_mask"], |
| data["sub_masks"], |
| ) |
| y = outputs[0] |
| punctuations = np.argmax(y, axis=-1)[0] |
| assert punctuations.size == len(mini_sentence) |
| except ONNXRuntimeError: |
| logging.warning("error") |
|
|
| |
| if mini_sentence_i < len(mini_sentences) - 1: |
| sentenceEnd = -1 |
| last_comma_index = -1 |
| for i in range(len(punctuations) - 2, 1, -1): |
| if ( |
| self.punc_list[punctuations[i]] == "。" |
| or self.punc_list[punctuations[i]] == "?" |
| ): |
| sentenceEnd = i |
| break |
| if last_comma_index < 0 and self.punc_list[punctuations[i]] == ",": |
| last_comma_index = i |
|
|
| if ( |
| sentenceEnd < 0 |
| and len(mini_sentence) > cache_pop_trigger_limit |
| and last_comma_index >= 0 |
| ): |
| |
| sentenceEnd = last_comma_index |
| punctuations[sentenceEnd] = self.period |
| cache_sent = mini_sentence[sentenceEnd + 1 :] |
| cache_sent_id = mini_sentence_id[sentenceEnd + 1 :] |
| mini_sentence = mini_sentence[0 : sentenceEnd + 1] |
| punctuations = punctuations[0 : sentenceEnd + 1] |
|
|
| punctuations_np = [int(x) for x in punctuations] |
| new_mini_sentence_punc += punctuations_np |
| sentence_punc_list += [self.punc_list[int(x)] for x in punctuations_np] |
| sentence_words_list += mini_sentence |
|
|
| assert len(sentence_punc_list) == len(sentence_words_list) |
| words_with_punc = [] |
| sentence_punc_list_out = [] |
| for i in range(0, len(sentence_words_list)): |
| if i > 0: |
| if ( |
| len(sentence_words_list[i][0].encode()) == 1 |
| and len(sentence_words_list[i - 1][-1].encode()) == 1 |
| ): |
| sentence_words_list[i] = " " + sentence_words_list[i] |
| if skip_num < len(cache): |
| skip_num += 1 |
| else: |
| words_with_punc.append(sentence_words_list[i]) |
| if skip_num >= len(cache): |
| sentence_punc_list_out.append(sentence_punc_list[i]) |
| if sentence_punc_list[i] != "_": |
| words_with_punc.append(sentence_punc_list[i]) |
| sentence_out = "".join(words_with_punc) |
|
|
| sentenceEnd = -1 |
| for i in range(len(sentence_punc_list) - 2, 1, -1): |
| if sentence_punc_list[i] == "。" or sentence_punc_list[i] == "?": |
| sentenceEnd = i |
| break |
| cache_out = sentence_words_list[sentenceEnd + 1 :] |
| if sentence_out[-1] in self.punc_list: |
| sentence_out = sentence_out[:-1] |
| sentence_punc_list_out[-1] = "_" |
| param_dict[cache_key] = cache_out |
| return sentence_out, sentence_punc_list_out, cache_out |
|
|
| def vad_mask(self, size, vad_pos, dtype=np.bool_): |
| """Create mask for decoder self-attention. |
| |
| :param int size: size of mask |
| :param int vad_pos: index of vad index |
| :param torch.dtype dtype: result dtype |
| :rtype: torch.Tensor (B, Lmax, Lmax) |
| """ |
| ret = np.ones((size, size), dtype=dtype) |
| if vad_pos <= 0 or vad_pos >= size: |
| return ret |
| sub_corner = np.zeros((vad_pos - 1, size - vad_pos), dtype=dtype) |
| ret[0 : vad_pos - 1, vad_pos:] = sub_corner |
| return ret |
|
|
| def infer( |
| self, |
| feats: np.ndarray, |
| feats_len: np.ndarray, |
| vad_mask: np.ndarray, |
| sub_masks: np.ndarray, |
| ) -> Tuple[np.ndarray, np.ndarray]: |
| outputs = self.ort_infer([feats, feats_len, vad_mask, sub_masks]) |
| return outputs |
|
|