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- # -*- encoding: utf-8 -*-
- import os.path
- from pathlib import Path
- from typing import List, Union, Tuple
- import copy
- import librosa
- import numpy as np
- from .utils.utils import (CharTokenizer, Hypothesis,
- TokenIDConverter, get_logger,
- read_yaml)
- from .utils.postprocess_utils import sentence_postprocess
- from .utils.frontend import WavFrontend
- from .utils.timestamp_utils import time_stamp_lfr6_onnx
- logging = get_logger()
- import torch
- class Paraformer():
- def __init__(self, model_dir: Union[str, Path] = None,
- batch_size: int = 1,
- device_id: Union[str, int] = "-1",
- plot_timestamp_to: str = "",
- quantize: bool = False,
- intra_op_num_threads: int = 1,
- ):
- if not Path(model_dir).exists():
- raise FileNotFoundError(f'{model_dir} does not exist.')
- model_file = os.path.join(model_dir, 'model.torchscripts')
- if quantize:
- model_file = os.path.join(model_dir, 'model_quant.torchscripts')
- config_file = os.path.join(model_dir, 'config.yaml')
- cmvn_file = os.path.join(model_dir, 'am.mvn')
- config = read_yaml(config_file)
- self.converter = TokenIDConverter(config['token_list'])
- self.tokenizer = CharTokenizer()
- self.frontend = WavFrontend(
- cmvn_file=cmvn_file,
- **config['frontend_conf']
- )
- self.ort_infer = torch.jit.load(model_file)
- self.batch_size = batch_size
- self.device_id = device_id
- self.plot_timestamp_to = plot_timestamp_to
- if "predictor_bias" in config['model_conf'].keys():
- self.pred_bias = config['model_conf']['predictor_bias']
- else:
- self.pred_bias = 0
- def __call__(self, wav_content: Union[str, np.ndarray, List[str]], **kwargs) -> List:
- waveform_list = self.load_data(wav_content, self.frontend.opts.frame_opts.samp_freq)
- waveform_nums = len(waveform_list)
- asr_res = []
- for beg_idx in range(0, waveform_nums, self.batch_size):
-
- end_idx = min(waveform_nums, beg_idx + self.batch_size)
- feats, feats_len = self.extract_feat(waveform_list[beg_idx:end_idx])
- try:
- with torch.no_grad():
- if int(self.device_id) == -1:
- outputs = self.ort_infer(feats, feats_len)
- am_scores, valid_token_lens = outputs[0], outputs[1]
- else:
- outputs = self.ort_infer(feats.cuda(), feats_len.cuda())
- am_scores, valid_token_lens = outputs[0].cpu(), outputs[1].cpu()
- if len(outputs) == 4:
- # for BiCifParaformer Inference
- us_alphas, us_peaks = outputs[2], outputs[3]
- else:
- us_alphas, us_peaks = None, None
- except:
- #logging.warning(traceback.format_exc())
- logging.warning("input wav is silence or noise")
- preds = ['']
- else:
- preds = self.decode(am_scores, valid_token_lens)
- if us_peaks is None:
- for pred in preds:
- pred = sentence_postprocess(pred)
- asr_res.append({'preds': pred})
- else:
- for pred, us_peaks_ in zip(preds, us_peaks):
- raw_tokens = pred
- timestamp, timestamp_raw = time_stamp_lfr6_onnx(us_peaks_, copy.copy(raw_tokens))
- text_proc, timestamp_proc, _ = sentence_postprocess(raw_tokens, timestamp_raw)
- # logging.warning(timestamp)
- if len(self.plot_timestamp_to):
- self.plot_wave_timestamp(waveform_list[0], timestamp, self.plot_timestamp_to)
- asr_res.append({'preds': text_proc, 'timestamp': timestamp_proc, "raw_tokens": raw_tokens})
- return asr_res
- def plot_wave_timestamp(self, wav, text_timestamp, dest):
- # TODO: Plot the wav and timestamp results with matplotlib
- import matplotlib
- matplotlib.use('Agg')
- matplotlib.rc("font", family='Alibaba PuHuiTi') # set it to a font that your system supports
- import matplotlib.pyplot as plt
- fig, ax1 = plt.subplots(figsize=(11, 3.5), dpi=320)
- ax2 = ax1.twinx()
- ax2.set_ylim([0, 2.0])
- # plot waveform
- ax1.set_ylim([-0.3, 0.3])
- time = np.arange(wav.shape[0]) / 16000
- ax1.plot(time, wav/wav.max()*0.3, color='gray', alpha=0.4)
- # plot lines and text
- for (char, start, end) in text_timestamp:
- ax1.vlines(start, -0.3, 0.3, ls='--')
- ax1.vlines(end, -0.3, 0.3, ls='--')
- x_adj = 0.045 if char != '<sil>' else 0.12
- ax1.text((start + end) * 0.5 - x_adj, 0, char)
- # plt.legend()
- plotname = "{}/timestamp.png".format(dest)
- plt.savefig(plotname, bbox_inches='tight')
- def load_data(self,
- wav_content: Union[str, np.ndarray, List[str]], fs: int = None) -> List:
- def load_wav(path: str) -> np.ndarray:
- waveform, _ = librosa.load(path, sr=fs)
- return waveform
- if isinstance(wav_content, np.ndarray):
- return [wav_content]
- if isinstance(wav_content, str):
- return [load_wav(wav_content)]
- if isinstance(wav_content, list):
- return [load_wav(path) for path in wav_content]
- raise TypeError(
- f'The type of {wav_content} is not in [str, np.ndarray, list]')
- def extract_feat(self,
- waveform_list: List[np.ndarray]
- ) -> Tuple[np.ndarray, np.ndarray]:
- feats, feats_len = [], []
- for waveform in waveform_list:
- speech, _ = self.frontend.fbank(waveform)
- feat, feat_len = self.frontend.lfr_cmvn(speech)
- feats.append(feat)
- feats_len.append(feat_len)
- feats = self.pad_feats(feats, np.max(feats_len))
- feats_len = np.array(feats_len).astype(np.int32)
- feats = torch.from_numpy(feats).type(torch.float32)
- feats_len = torch.from_numpy(feats_len).type(torch.int32)
- return feats, feats_len
- @staticmethod
- def pad_feats(feats: List[np.ndarray], max_feat_len: int) -> np.ndarray:
- def pad_feat(feat: np.ndarray, cur_len: int) -> np.ndarray:
- pad_width = ((0, max_feat_len - cur_len), (0, 0))
- return np.pad(feat, pad_width, 'constant', constant_values=0)
- feat_res = [pad_feat(feat, feat.shape[0]) for feat in feats]
- feats = np.array(feat_res).astype(np.float32)
- return feats
- def infer(self, feats: np.ndarray,
- feats_len: np.ndarray) -> Tuple[np.ndarray, np.ndarray]:
- outputs = self.ort_infer([feats, feats_len])
- return outputs
- def decode(self, am_scores: np.ndarray, token_nums: int) -> List[str]:
- return [self.decode_one(am_score, token_num)
- for am_score, token_num in zip(am_scores, token_nums)]
- def decode_one(self,
- am_score: np.ndarray,
- valid_token_num: int) -> List[str]:
- yseq = am_score.argmax(axis=-1)
- score = am_score.max(axis=-1)
- score = np.sum(score, axis=-1)
- # pad with mask tokens to ensure compatibility with sos/eos tokens
- # asr_model.sos:1 asr_model.eos:2
- yseq = np.array([1] + yseq.tolist() + [2])
- hyp = Hypothesis(yseq=yseq, score=score)
- # remove sos/eos and get results
- last_pos = -1
- token_int = hyp.yseq[1:last_pos].tolist()
- # remove blank symbol id, which is assumed to be 0
- token_int = list(filter(lambda x: x not in (0, 2), token_int))
- # Change integer-ids to tokens
- token = self.converter.ids2tokens(token_int)
- token = token[:valid_token_num-self.pred_bias]
- # texts = sentence_postprocess(token)
- return token
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