frontend.py 15 KB

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  1. # -*- encoding: utf-8 -*-
  2. from pathlib import Path
  3. from typing import Any, Dict, Iterable, List, NamedTuple, Set, Tuple, Union
  4. import copy
  5. import numpy as np
  6. from typeguard import check_argument_types
  7. import kaldi_native_fbank as knf
  8. root_dir = Path(__file__).resolve().parent
  9. logger_initialized = {}
  10. class WavFrontend():
  11. """Conventional frontend structure for ASR.
  12. """
  13. def __init__(
  14. self,
  15. cmvn_file: str = None,
  16. fs: int = 16000,
  17. window: str = 'hamming',
  18. n_mels: int = 80,
  19. frame_length: int = 25,
  20. frame_shift: int = 10,
  21. lfr_m: int = 1,
  22. lfr_n: int = 1,
  23. dither: float = 1.0,
  24. **kwargs,
  25. ) -> None:
  26. check_argument_types()
  27. opts = knf.FbankOptions()
  28. opts.frame_opts.samp_freq = fs
  29. opts.frame_opts.dither = dither
  30. opts.frame_opts.window_type = window
  31. opts.frame_opts.frame_shift_ms = float(frame_shift)
  32. opts.frame_opts.frame_length_ms = float(frame_length)
  33. opts.mel_opts.num_bins = n_mels
  34. opts.energy_floor = 0
  35. opts.frame_opts.snip_edges = True
  36. opts.mel_opts.debug_mel = False
  37. self.opts = opts
  38. self.lfr_m = lfr_m
  39. self.lfr_n = lfr_n
  40. self.cmvn_file = cmvn_file
  41. if self.cmvn_file:
  42. self.cmvn = self.load_cmvn()
  43. self.fbank_fn = None
  44. self.fbank_beg_idx = 0
  45. self.reset_status()
  46. def fbank(self,
  47. waveform: np.ndarray) -> Tuple[np.ndarray, np.ndarray]:
  48. waveform = waveform * (1 << 15)
  49. self.fbank_fn = knf.OnlineFbank(self.opts)
  50. self.fbank_fn.accept_waveform(self.opts.frame_opts.samp_freq, waveform.tolist())
  51. frames = self.fbank_fn.num_frames_ready
  52. mat = np.empty([frames, self.opts.mel_opts.num_bins])
  53. for i in range(frames):
  54. mat[i, :] = self.fbank_fn.get_frame(i)
  55. feat = mat.astype(np.float32)
  56. feat_len = np.array(mat.shape[0]).astype(np.int32)
  57. return feat, feat_len
  58. def fbank_online(self,
  59. waveform: np.ndarray) -> Tuple[np.ndarray, np.ndarray]:
  60. waveform = waveform * (1 << 15)
  61. # self.fbank_fn = knf.OnlineFbank(self.opts)
  62. self.fbank_fn.accept_waveform(self.opts.frame_opts.samp_freq, waveform.tolist())
  63. frames = self.fbank_fn.num_frames_ready
  64. mat = np.empty([frames, self.opts.mel_opts.num_bins])
  65. for i in range(self.fbank_beg_idx, frames):
  66. mat[i, :] = self.fbank_fn.get_frame(i)
  67. # self.fbank_beg_idx += (frames-self.fbank_beg_idx)
  68. feat = mat.astype(np.float32)
  69. feat_len = np.array(mat.shape[0]).astype(np.int32)
  70. return feat, feat_len
  71. def reset_status(self):
  72. self.fbank_fn = knf.OnlineFbank(self.opts)
  73. self.fbank_beg_idx = 0
  74. def lfr_cmvn(self, feat: np.ndarray) -> Tuple[np.ndarray, np.ndarray]:
  75. if self.lfr_m != 1 or self.lfr_n != 1:
  76. feat = self.apply_lfr(feat, self.lfr_m, self.lfr_n)
  77. if self.cmvn_file:
  78. feat = self.apply_cmvn(feat)
  79. feat_len = np.array(feat.shape[0]).astype(np.int32)
  80. return feat, feat_len
  81. @staticmethod
  82. def apply_lfr(inputs: np.ndarray, lfr_m: int, lfr_n: int) -> np.ndarray:
  83. LFR_inputs = []
  84. T = inputs.shape[0]
  85. T_lfr = int(np.ceil(T / lfr_n))
  86. left_padding = np.tile(inputs[0], ((lfr_m - 1) // 2, 1))
  87. inputs = np.vstack((left_padding, inputs))
  88. T = T + (lfr_m - 1) // 2
  89. for i in range(T_lfr):
  90. if lfr_m <= T - i * lfr_n:
  91. LFR_inputs.append(
  92. (inputs[i * lfr_n:i * lfr_n + lfr_m]).reshape(1, -1))
  93. else:
  94. # process last LFR frame
  95. num_padding = lfr_m - (T - i * lfr_n)
  96. frame = inputs[i * lfr_n:].reshape(-1)
  97. for _ in range(num_padding):
  98. frame = np.hstack((frame, inputs[-1]))
  99. LFR_inputs.append(frame)
  100. LFR_outputs = np.vstack(LFR_inputs).astype(np.float32)
  101. return LFR_outputs
  102. def apply_cmvn(self, inputs: np.ndarray) -> np.ndarray:
  103. """
  104. Apply CMVN with mvn data
  105. """
  106. frame, dim = inputs.shape
  107. means = np.tile(self.cmvn[0:1, :dim], (frame, 1))
  108. vars = np.tile(self.cmvn[1:2, :dim], (frame, 1))
  109. inputs = (inputs + means) * vars
  110. return inputs
  111. def load_cmvn(self,) -> np.ndarray:
  112. with open(self.cmvn_file, 'r', encoding='utf-8') as f:
  113. lines = f.readlines()
  114. means_list = []
  115. vars_list = []
  116. for i in range(len(lines)):
  117. line_item = lines[i].split()
  118. if line_item[0] == '<AddShift>':
  119. line_item = lines[i + 1].split()
  120. if line_item[0] == '<LearnRateCoef>':
  121. add_shift_line = line_item[3:(len(line_item) - 1)]
  122. means_list = list(add_shift_line)
  123. continue
  124. elif line_item[0] == '<Rescale>':
  125. line_item = lines[i + 1].split()
  126. if line_item[0] == '<LearnRateCoef>':
  127. rescale_line = line_item[3:(len(line_item) - 1)]
  128. vars_list = list(rescale_line)
  129. continue
  130. means = np.array(means_list).astype(np.float64)
  131. vars = np.array(vars_list).astype(np.float64)
  132. cmvn = np.array([means, vars])
  133. return cmvn
  134. class WavFrontendOnline(WavFrontend):
  135. def __init__(self, **kwargs):
  136. super().__init__(**kwargs)
  137. # self.fbank_fn = knf.OnlineFbank(self.opts)
  138. # add variables
  139. self.frame_sample_length = int(self.opts.frame_opts.frame_length_ms * self.opts.frame_opts.samp_freq / 1000)
  140. self.frame_shift_sample_length = int(self.opts.frame_opts.frame_shift_ms * self.opts.frame_opts.samp_freq / 1000)
  141. self.waveform = None
  142. self.reserve_waveforms = None
  143. self.input_cache = None
  144. self.lfr_splice_cache = []
  145. @staticmethod
  146. # inputs has catted the cache
  147. def apply_lfr(inputs: np.ndarray, lfr_m: int, lfr_n: int, is_final: bool = False) -> Tuple[
  148. np.ndarray, np.ndarray, int]:
  149. """
  150. Apply lfr with data
  151. """
  152. LFR_inputs = []
  153. T = inputs.shape[0] # include the right context
  154. T_lfr = int(np.ceil((T - (lfr_m - 1) // 2) / lfr_n)) # minus the right context: (lfr_m - 1) // 2
  155. splice_idx = T_lfr
  156. for i in range(T_lfr):
  157. if lfr_m <= T - i * lfr_n:
  158. LFR_inputs.append((inputs[i * lfr_n:i * lfr_n + lfr_m]).reshape(1, -1))
  159. else: # process last LFR frame
  160. if is_final:
  161. num_padding = lfr_m - (T - i * lfr_n)
  162. frame = (inputs[i * lfr_n:]).reshape(-1)
  163. for _ in range(num_padding):
  164. frame = np.hstack((frame, inputs[-1]))
  165. LFR_inputs.append(frame)
  166. else:
  167. # update splice_idx and break the circle
  168. splice_idx = i
  169. break
  170. splice_idx = min(T - 1, splice_idx * lfr_n)
  171. lfr_splice_cache = inputs[splice_idx:, :]
  172. LFR_outputs = np.vstack(LFR_inputs)
  173. return LFR_outputs.astype(np.float32), lfr_splice_cache, splice_idx
  174. @staticmethod
  175. def compute_frame_num(sample_length: int, frame_sample_length: int, frame_shift_sample_length: int) -> int:
  176. frame_num = int((sample_length - frame_sample_length) / frame_shift_sample_length + 1)
  177. return frame_num if frame_num >= 1 and sample_length >= frame_sample_length else 0
  178. def fbank(
  179. self,
  180. input: np.ndarray,
  181. input_lengths: np.ndarray
  182. ) -> Tuple[np.ndarray, np.ndarray, np.ndarray]:
  183. self.fbank_fn = knf.OnlineFbank(self.opts)
  184. batch_size = input.shape[0]
  185. if self.input_cache is None:
  186. self.input_cache = np.empty((batch_size, 0), dtype=np.float32)
  187. input = np.concatenate((self.input_cache, input), axis=1)
  188. frame_num = self.compute_frame_num(input.shape[-1], self.frame_sample_length, self.frame_shift_sample_length)
  189. # update self.in_cache
  190. self.input_cache = input[:, -(input.shape[-1] - frame_num * self.frame_shift_sample_length):]
  191. waveforms = np.empty(0, dtype=np.float32)
  192. feats_pad = np.empty(0, dtype=np.float32)
  193. feats_lens = np.empty(0, dtype=np.int32)
  194. if frame_num:
  195. waveforms = []
  196. feats = []
  197. feats_lens = []
  198. for i in range(batch_size):
  199. waveform = input[i]
  200. waveforms.append(
  201. waveform[:((frame_num - 1) * self.frame_shift_sample_length + self.frame_sample_length)])
  202. waveform = waveform * (1 << 15)
  203. self.fbank_fn.accept_waveform(self.opts.frame_opts.samp_freq, waveform.tolist())
  204. frames = self.fbank_fn.num_frames_ready
  205. mat = np.empty([frames, self.opts.mel_opts.num_bins])
  206. for i in range(frames):
  207. mat[i, :] = self.fbank_fn.get_frame(i)
  208. feat = mat.astype(np.float32)
  209. feat_len = np.array(mat.shape[0]).astype(np.int32)
  210. feats.append(feat)
  211. feats_lens.append(feat_len)
  212. waveforms = np.stack(waveforms)
  213. feats_lens = np.array(feats_lens)
  214. feats_pad = np.array(feats)
  215. self.fbanks = feats_pad
  216. self.fbanks_lens = copy.deepcopy(feats_lens)
  217. return waveforms, feats_pad, feats_lens
  218. def get_fbank(self) -> Tuple[np.ndarray, np.ndarray]:
  219. return self.fbanks, self.fbanks_lens
  220. def lfr_cmvn(
  221. self,
  222. input: np.ndarray,
  223. input_lengths: np.ndarray,
  224. is_final: bool = False
  225. ) -> Tuple[np.ndarray, np.ndarray, List[int]]:
  226. batch_size = input.shape[0]
  227. feats = []
  228. feats_lens = []
  229. lfr_splice_frame_idxs = []
  230. for i in range(batch_size):
  231. mat = input[i, :input_lengths[i], :]
  232. lfr_splice_frame_idx = -1
  233. if self.lfr_m != 1 or self.lfr_n != 1:
  234. # update self.lfr_splice_cache in self.apply_lfr
  235. mat, self.lfr_splice_cache[i], lfr_splice_frame_idx = self.apply_lfr(mat, self.lfr_m, self.lfr_n,
  236. is_final)
  237. if self.cmvn_file is not None:
  238. mat = self.apply_cmvn(mat)
  239. feat_length = mat.shape[0]
  240. feats.append(mat)
  241. feats_lens.append(feat_length)
  242. lfr_splice_frame_idxs.append(lfr_splice_frame_idx)
  243. feats_lens = np.array(feats_lens)
  244. feats_pad = np.array(feats)
  245. return feats_pad, feats_lens, lfr_splice_frame_idxs
  246. def extract_fbank(
  247. self, input: np.ndarray, input_lengths: np.ndarray, is_final: bool = False
  248. ) -> Tuple[np.ndarray, np.ndarray]:
  249. batch_size = input.shape[0]
  250. assert batch_size == 1, 'we support to extract feature online only when the batch size is equal to 1 now'
  251. waveforms, feats, feats_lengths = self.fbank(input, input_lengths) # input shape: B T D
  252. if feats.shape[0]:
  253. self.waveforms = waveforms if self.reserve_waveforms is None else np.concatenate(
  254. (self.reserve_waveforms, waveforms), axis=1)
  255. if not self.lfr_splice_cache:
  256. for i in range(batch_size):
  257. self.lfr_splice_cache.append(np.expand_dims(feats[i][0, :], axis=0).repeat((self.lfr_m - 1) // 2, axis=0))
  258. if feats_lengths[0] + self.lfr_splice_cache[0].shape[0] >= self.lfr_m:
  259. lfr_splice_cache_np = np.stack(self.lfr_splice_cache) # B T D
  260. feats = np.concatenate((lfr_splice_cache_np, feats), axis=1)
  261. feats_lengths += lfr_splice_cache_np[0].shape[0]
  262. frame_from_waveforms = int(
  263. (self.waveforms.shape[1] - self.frame_sample_length) / self.frame_shift_sample_length + 1)
  264. minus_frame = (self.lfr_m - 1) // 2 if self.reserve_waveforms is None else 0
  265. feats, feats_lengths, lfr_splice_frame_idxs = self.lfr_cmvn(feats, feats_lengths, is_final)
  266. if self.lfr_m == 1:
  267. self.reserve_waveforms = None
  268. else:
  269. reserve_frame_idx = lfr_splice_frame_idxs[0] - minus_frame
  270. # print('reserve_frame_idx: ' + str(reserve_frame_idx))
  271. # print('frame_frame: ' + str(frame_from_waveforms))
  272. self.reserve_waveforms = self.waveforms[:, reserve_frame_idx * self.frame_shift_sample_length:frame_from_waveforms * self.frame_shift_sample_length]
  273. sample_length = (frame_from_waveforms - 1) * self.frame_shift_sample_length + self.frame_sample_length
  274. self.waveforms = self.waveforms[:, :sample_length]
  275. else:
  276. # update self.reserve_waveforms and self.lfr_splice_cache
  277. self.reserve_waveforms = self.waveforms[:,
  278. :-(self.frame_sample_length - self.frame_shift_sample_length)]
  279. for i in range(batch_size):
  280. self.lfr_splice_cache[i] = np.concatenate((self.lfr_splice_cache[i], feats[i]), axis=0)
  281. return np.empty(0, dtype=np.float32), feats_lengths
  282. else:
  283. if is_final:
  284. self.waveforms = waveforms if self.reserve_waveforms is None else self.reserve_waveforms
  285. feats = np.stack(self.lfr_splice_cache)
  286. feats_lengths = np.zeros(batch_size, dtype=np.int32) + feats.shape[1]
  287. feats, feats_lengths, _ = self.lfr_cmvn(feats, feats_lengths, is_final)
  288. if is_final:
  289. self.cache_reset()
  290. return feats, feats_lengths
  291. def get_waveforms(self):
  292. return self.waveforms
  293. def cache_reset(self):
  294. self.fbank_fn = knf.OnlineFbank(self.opts)
  295. self.reserve_waveforms = None
  296. self.input_cache = None
  297. self.lfr_splice_cache = []
  298. def load_bytes(input):
  299. middle_data = np.frombuffer(input, dtype=np.int16)
  300. middle_data = np.asarray(middle_data)
  301. if middle_data.dtype.kind not in 'iu':
  302. raise TypeError("'middle_data' must be an array of integers")
  303. dtype = np.dtype('float32')
  304. if dtype.kind != 'f':
  305. raise TypeError("'dtype' must be a floating point type")
  306. i = np.iinfo(middle_data.dtype)
  307. abs_max = 2 ** (i.bits - 1)
  308. offset = i.min + abs_max
  309. array = np.frombuffer((middle_data.astype(dtype) - offset) / abs_max, dtype=np.float32)
  310. return array
  311. def test():
  312. path = "/nfs/zhifu.gzf/export/damo/speech_paraformer-large_asr_nat-zh-cn-16k-common-vocab8404-pytorch/example/asr_example.wav"
  313. import librosa
  314. cmvn_file = "/nfs/zhifu.gzf/export/damo/speech_paraformer-large_asr_nat-zh-cn-16k-common-vocab8404-pytorch/am.mvn"
  315. config_file = "/nfs/zhifu.gzf/export/damo/speech_paraformer-large_asr_nat-zh-cn-16k-common-vocab8404-pytorch/config.yaml"
  316. from funasr.runtime.python.onnxruntime.rapid_paraformer.utils.utils import read_yaml
  317. config = read_yaml(config_file)
  318. waveform, _ = librosa.load(path, sr=None)
  319. frontend = WavFrontend(
  320. cmvn_file=cmvn_file,
  321. **config['frontend_conf'],
  322. )
  323. speech, _ = frontend.fbank_online(waveform) #1d, (sample,), numpy
  324. feat, feat_len = frontend.lfr_cmvn(speech) # 2d, (frame, 450), np.float32 -> torch, torch.from_numpy(), dtype, (1, frame, 450)
  325. frontend.reset_status() # clear cache
  326. return feat, feat_len
  327. if __name__ == '__main__':
  328. test()