vad.py 10 KB

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  1. import argparse
  2. import logging
  3. import os
  4. from pathlib import Path
  5. from typing import Callable
  6. from typing import Collection
  7. from typing import Dict
  8. from typing import List
  9. from typing import Optional
  10. from typing import Tuple
  11. from typing import Union
  12. import numpy as np
  13. import torch
  14. import yaml
  15. from funasr.datasets.collate_fn import CommonCollateFn
  16. from funasr.layers.abs_normalize import AbsNormalize
  17. from funasr.layers.global_mvn import GlobalMVN
  18. from funasr.layers.utterance_mvn import UtteranceMVN
  19. from funasr.models.e2e_vad import E2EVadModel
  20. from funasr.models.encoder.fsmn_encoder import FSMN
  21. from funasr.models.frontend.abs_frontend import AbsFrontend
  22. from funasr.models.frontend.default import DefaultFrontend
  23. from funasr.models.frontend.fused import FusedFrontends
  24. from funasr.models.frontend.s3prl import S3prlFrontend
  25. from funasr.models.frontend.wav_frontend import WavFrontend, WavFrontendOnline
  26. from funasr.models.frontend.windowing import SlidingWindow
  27. from funasr.models.specaug.abs_specaug import AbsSpecAug
  28. from funasr.models.specaug.specaug import SpecAug
  29. from funasr.models.specaug.specaug import SpecAugLFR
  30. from funasr.tasks.abs_task import AbsTask
  31. from funasr.train.class_choices import ClassChoices
  32. from funasr.train.trainer import Trainer
  33. from funasr.utils.types import float_or_none
  34. from funasr.utils.types import int_or_none
  35. from funasr.utils.types import str_or_none
  36. frontend_choices = ClassChoices(
  37. name="frontend",
  38. classes=dict(
  39. default=DefaultFrontend,
  40. sliding_window=SlidingWindow,
  41. s3prl=S3prlFrontend,
  42. fused=FusedFrontends,
  43. wav_frontend=WavFrontend,
  44. wav_frontend_online=WavFrontendOnline,
  45. ),
  46. type_check=AbsFrontend,
  47. default="default",
  48. )
  49. specaug_choices = ClassChoices(
  50. name="specaug",
  51. classes=dict(
  52. specaug=SpecAug,
  53. specaug_lfr=SpecAugLFR,
  54. ),
  55. type_check=AbsSpecAug,
  56. default=None,
  57. optional=True,
  58. )
  59. normalize_choices = ClassChoices(
  60. "normalize",
  61. classes=dict(
  62. global_mvn=GlobalMVN,
  63. utterance_mvn=UtteranceMVN,
  64. ),
  65. type_check=AbsNormalize,
  66. default=None,
  67. optional=True,
  68. )
  69. model_choices = ClassChoices(
  70. "model",
  71. classes=dict(
  72. e2evad=E2EVadModel,
  73. ),
  74. type_check=object,
  75. default="e2evad",
  76. )
  77. encoder_choices = ClassChoices(
  78. "encoder",
  79. classes=dict(
  80. fsmn=FSMN,
  81. ),
  82. type_check=torch.nn.Module,
  83. default="fsmn",
  84. )
  85. class VADTask(AbsTask):
  86. # If you need more than one optimizers, change this value
  87. num_optimizers: int = 1
  88. # Add variable objects configurations
  89. class_choices_list = [
  90. # --frontend and --frontend_conf
  91. frontend_choices,
  92. # --model and --model_conf
  93. model_choices,
  94. ]
  95. # If you need to modify train() or eval() procedures, change Trainer class here
  96. trainer = Trainer
  97. @classmethod
  98. def add_task_arguments(cls, parser: argparse.ArgumentParser):
  99. group = parser.add_argument_group(description="Task related")
  100. # NOTE(kamo): add_arguments(..., required=True) can't be used
  101. # to provide --print_config mode. Instead of it, do as
  102. # required = parser.get_default("required")
  103. # required += ["token_list"]
  104. group.add_argument(
  105. "--init",
  106. type=lambda x: str_or_none(x.lower()),
  107. default=None,
  108. help="The initialization method",
  109. choices=[
  110. "chainer",
  111. "xavier_uniform",
  112. "xavier_normal",
  113. "kaiming_uniform",
  114. "kaiming_normal",
  115. None,
  116. ],
  117. )
  118. group.add_argument(
  119. "--input_size",
  120. type=int_or_none,
  121. default=None,
  122. help="The number of input dimension of the feature",
  123. )
  124. group = parser.add_argument_group(description="Preprocess related")
  125. parser.add_argument(
  126. "--speech_volume_normalize",
  127. type=float_or_none,
  128. default=None,
  129. help="Scale the maximum amplitude to the given value.",
  130. )
  131. parser.add_argument(
  132. "--rir_scp",
  133. type=str_or_none,
  134. default=None,
  135. help="The file path of rir scp file.",
  136. )
  137. parser.add_argument(
  138. "--rir_apply_prob",
  139. type=float,
  140. default=1.0,
  141. help="THe probability for applying RIR convolution.",
  142. )
  143. parser.add_argument(
  144. "--cmvn_file",
  145. type=str_or_none,
  146. default=None,
  147. help="The file path of noise scp file.",
  148. )
  149. parser.add_argument(
  150. "--noise_scp",
  151. type=str_or_none,
  152. default=None,
  153. help="The file path of noise scp file.",
  154. )
  155. parser.add_argument(
  156. "--noise_apply_prob",
  157. type=float,
  158. default=1.0,
  159. help="The probability applying Noise adding.",
  160. )
  161. parser.add_argument(
  162. "--noise_db_range",
  163. type=str,
  164. default="13_15",
  165. help="The range of noise decibel level.",
  166. )
  167. for class_choices in cls.class_choices_list:
  168. # Append --<name> and --<name>_conf.
  169. # e.g. --encoder and --encoder_conf
  170. class_choices.add_arguments(group)
  171. @classmethod
  172. def build_collate_fn(
  173. cls, args: argparse.Namespace, train: bool
  174. ) -> Callable[
  175. [Collection[Tuple[str, Dict[str, np.ndarray]]]],
  176. Tuple[List[str], Dict[str, torch.Tensor]],
  177. ]:
  178. # NOTE(kamo): int value = 0 is reserved by CTC-blank symbol
  179. return CommonCollateFn(float_pad_value=0.0, int_pad_value=-1)
  180. @classmethod
  181. def build_preprocess_fn(
  182. cls, args: argparse.Namespace, train: bool
  183. ) -> Optional[Callable[[str, Dict[str, np.array]], Dict[str, np.ndarray]]]:
  184. # if args.use_preprocessor:
  185. # retval = CommonPreprocessor(
  186. # train=train,
  187. # # NOTE(kamo): Check attribute existence for backward compatibility
  188. # rir_scp=args.rir_scp if hasattr(args, "rir_scp") else None,
  189. # rir_apply_prob=args.rir_apply_prob
  190. # if hasattr(args, "rir_apply_prob")
  191. # else 1.0,
  192. # noise_scp=args.noise_scp if hasattr(args, "noise_scp") else None,
  193. # noise_apply_prob=args.noise_apply_prob
  194. # if hasattr(args, "noise_apply_prob")
  195. # else 1.0,
  196. # noise_db_range=args.noise_db_range
  197. # if hasattr(args, "noise_db_range")
  198. # else "13_15",
  199. # speech_volume_normalize=args.speech_volume_normalize
  200. # if hasattr(args, "rir_scp")
  201. # else None,
  202. # )
  203. # else:
  204. # retval = None
  205. retval = None
  206. return retval
  207. @classmethod
  208. def required_data_names(
  209. cls, train: bool = True, inference: bool = False
  210. ) -> Tuple[str, ...]:
  211. if not inference:
  212. retval = ("speech", "text")
  213. else:
  214. # Recognition mode
  215. retval = ("speech",)
  216. return retval
  217. @classmethod
  218. def optional_data_names(
  219. cls, train: bool = True, inference: bool = False
  220. ) -> Tuple[str, ...]:
  221. retval = ()
  222. return retval
  223. @classmethod
  224. def build_model(cls, args: argparse.Namespace):
  225. # 4. Encoder
  226. encoder_class = encoder_choices.get_class(args.encoder)
  227. encoder = encoder_class(**args.encoder_conf)
  228. # 5. Build model
  229. try:
  230. model_class = model_choices.get_class(args.model)
  231. except AttributeError:
  232. model_class = model_choices.get_class("e2evad")
  233. # 1. frontend
  234. if args.input_size is None:
  235. # Extract features in the model
  236. frontend_class = frontend_choices.get_class(args.frontend)
  237. if args.frontend == 'wav_frontend':
  238. frontend = frontend_class(cmvn_file=args.cmvn_file, **args.frontend_conf)
  239. else:
  240. frontend = frontend_class(**args.frontend_conf)
  241. input_size = frontend.output_size()
  242. else:
  243. # Give features from data-loader
  244. args.frontend = None
  245. args.frontend_conf = {}
  246. frontend = None
  247. input_size = args.input_size
  248. model = model_class(encoder=encoder, vad_post_args=args.vad_post_conf, frontend=frontend)
  249. return model
  250. # ~~~~~~~~~ The methods below are mainly used for inference ~~~~~~~~~
  251. @classmethod
  252. def build_model_from_file(
  253. cls,
  254. config_file: Union[Path, str] = None,
  255. model_file: Union[Path, str] = None,
  256. device: str = "cpu",
  257. cmvn_file: Union[Path, str] = None,
  258. ):
  259. """Build model from the files.
  260. This method is used for inference or fine-tuning.
  261. Args:
  262. config_file: The yaml file saved when training.
  263. model_file: The model file saved when training.
  264. device: Device type, "cpu", "cuda", or "cuda:N".
  265. """
  266. if config_file is None:
  267. assert model_file is not None, (
  268. "The argument 'model_file' must be provided "
  269. "if the argument 'config_file' is not specified."
  270. )
  271. config_file = Path(model_file).parent / "config.yaml"
  272. else:
  273. config_file = Path(config_file)
  274. with config_file.open("r", encoding="utf-8") as f:
  275. args = yaml.safe_load(f)
  276. # if cmvn_file is not None:
  277. args["cmvn_file"] = cmvn_file
  278. args = argparse.Namespace(**args)
  279. model = cls.build_model(args)
  280. model.to(device)
  281. model_dict = dict()
  282. model_name_pth = None
  283. if model_file is not None:
  284. logging.info("model_file is {}".format(model_file))
  285. if device == "cuda":
  286. device = f"cuda:{torch.cuda.current_device()}"
  287. model_dir = os.path.dirname(model_file)
  288. model_name = os.path.basename(model_file)
  289. model_dict = torch.load(model_file, map_location=device)
  290. model.encoder.load_state_dict(model_dict)
  291. return model, args