Source code for espnet2.tasks.asr

import argparse
import logging
from typing import Callable, Collection, Dict, List, Optional, Tuple

import numpy as np
import torch
from typeguard import typechecked

from espnet2.asr.ctc import CTC
from espnet2.asr.decoder.abs_decoder import AbsDecoder
from espnet2.asr.decoder.hugging_face_transformers_decoder import (  # noqa: H301
    HuggingFaceTransformersDecoder,
)
from espnet2.asr.decoder.mlm_decoder import MLMDecoder
from espnet2.asr.decoder.rnn_decoder import RNNDecoder
from espnet2.asr.decoder.s4_decoder import S4Decoder
from espnet2.asr.decoder.transducer_decoder import TransducerDecoder
from espnet2.asr.decoder.transformer_decoder import (
    DynamicConvolution2DTransformerDecoder,
    DynamicConvolutionTransformerDecoder,
    LightweightConvolution2DTransformerDecoder,
    LightweightConvolutionTransformerDecoder,
    TransformerDecoder,
)
from espnet2.asr.decoder.whisper_decoder import OpenAIWhisperDecoder
from espnet2.asr.encoder.abs_encoder import AbsEncoder
from espnet2.asr.encoder.avhubert_encoder import FairseqAVHubertEncoder
from espnet2.asr.encoder.branchformer_encoder import BranchformerEncoder
from espnet2.asr.encoder.conformer_encoder import ConformerEncoder
from espnet2.asr.encoder.contextual_block_conformer_encoder import (
    ContextualBlockConformerEncoder,
)
from espnet2.asr.encoder.contextual_block_transformer_encoder import (
    ContextualBlockTransformerEncoder,
)
from espnet2.asr.encoder.e_branchformer_encoder import EBranchformerEncoder
from espnet2.asr.encoder.hubert_encoder import (
    FairseqHubertEncoder,
    FairseqHubertPretrainEncoder,
    TorchAudioHuBERTPretrainEncoder,
)
from espnet2.asr.encoder.longformer_encoder import LongformerEncoder
from espnet2.asr.encoder.rnn_encoder import RNNEncoder
from espnet2.asr.encoder.transformer_encoder import TransformerEncoder
from espnet2.asr.encoder.transformer_encoder_multispkr import (
    TransformerEncoder as TransformerEncoderMultiSpkr,
)
from espnet2.asr.encoder.vgg_rnn_encoder import VGGRNNEncoder
from espnet2.asr.encoder.wav2vec2_encoder import FairSeqWav2Vec2Encoder
from espnet2.asr.encoder.whisper_encoder import OpenAIWhisperEncoder
from espnet2.asr.espnet_model import ESPnetASRModel
from espnet2.asr.frontend.abs_frontend import AbsFrontend
from espnet2.asr.frontend.default import DefaultFrontend
from espnet2.asr.frontend.fused import FusedFrontends
from espnet2.asr.frontend.s3prl import S3prlFrontend
from espnet2.asr.frontend.whisper import WhisperFrontend
from espnet2.asr.frontend.windowing import SlidingWindow
from espnet2.asr.maskctc_model import MaskCTCModel
from espnet2.asr.pit_espnet_model import ESPnetASRModel as PITESPnetModel
from espnet2.asr.postencoder.abs_postencoder import AbsPostEncoder
from espnet2.asr.postencoder.hugging_face_transformers_postencoder import (
    HuggingFaceTransformersPostEncoder,
)
from espnet2.asr.postencoder.length_adaptor_postencoder import LengthAdaptorPostEncoder
from espnet2.asr.preencoder.abs_preencoder import AbsPreEncoder
from espnet2.asr.preencoder.linear import LinearProjection
from espnet2.asr.preencoder.sinc import LightweightSincConvs
from espnet2.asr.specaug.abs_specaug import AbsSpecAug
from espnet2.asr.specaug.specaug import SpecAug
from espnet2.asr_transducer.joint_network import JointNetwork
from espnet2.layers.abs_normalize import AbsNormalize
from espnet2.layers.global_mvn import GlobalMVN
from espnet2.layers.utterance_mvn import UtteranceMVN
from espnet2.tasks.abs_task import AbsTask
from espnet2.text.phoneme_tokenizer import g2p_choices
from espnet2.torch_utils.initialize import initialize
from espnet2.train.abs_espnet_model import AbsESPnetModel
from espnet2.train.class_choices import ClassChoices
from espnet2.train.collate_fn import CommonCollateFn
from espnet2.train.preprocessor import (
    AbsPreprocessor,
    CommonPreprocessor,
    CommonPreprocessor_multi,
)
from espnet2.train.trainer import Trainer
from espnet2.utils.get_default_kwargs import get_default_kwargs
from espnet2.utils.nested_dict_action import NestedDictAction
from espnet2.utils.types import float_or_none, int_or_none, str2bool, str_or_none

frontend_choices = ClassChoices(
    name="frontend",
    classes=dict(
        default=DefaultFrontend,
        sliding_window=SlidingWindow,
        s3prl=S3prlFrontend,
        fused=FusedFrontends,
        whisper=WhisperFrontend,
    ),
    type_check=AbsFrontend,
    default="default",
)
specaug_choices = ClassChoices(
    name="specaug",
    classes=dict(
        specaug=SpecAug,
    ),
    type_check=AbsSpecAug,
    default=None,
    optional=True,
)
normalize_choices = ClassChoices(
    "normalize",
    classes=dict(
        global_mvn=GlobalMVN,
        utterance_mvn=UtteranceMVN,
    ),
    type_check=AbsNormalize,
    default="utterance_mvn",
    optional=True,
)
model_choices = ClassChoices(
    "model",
    classes=dict(
        espnet=ESPnetASRModel,
        maskctc=MaskCTCModel,
        pit_espnet=PITESPnetModel,
    ),
    type_check=AbsESPnetModel,
    default="espnet",
)
preencoder_choices = ClassChoices(
    name="preencoder",
    classes=dict(
        sinc=LightweightSincConvs,
        linear=LinearProjection,
    ),
    type_check=AbsPreEncoder,
    default=None,
    optional=True,
)
encoder_choices = ClassChoices(
    "encoder",
    classes=dict(
        conformer=ConformerEncoder,
        transformer=TransformerEncoder,
        transformer_multispkr=TransformerEncoderMultiSpkr,
        contextual_block_transformer=ContextualBlockTransformerEncoder,
        contextual_block_conformer=ContextualBlockConformerEncoder,
        vgg_rnn=VGGRNNEncoder,
        rnn=RNNEncoder,
        wav2vec2=FairSeqWav2Vec2Encoder,
        hubert=FairseqHubertEncoder,
        hubert_pretrain=FairseqHubertPretrainEncoder,
        torchaudiohubert=TorchAudioHuBERTPretrainEncoder,
        longformer=LongformerEncoder,
        branchformer=BranchformerEncoder,
        whisper=OpenAIWhisperEncoder,
        e_branchformer=EBranchformerEncoder,
        avhubert=FairseqAVHubertEncoder,
    ),
    type_check=AbsEncoder,
    default="rnn",
)
postencoder_choices = ClassChoices(
    name="postencoder",
    classes=dict(
        hugging_face_transformers=HuggingFaceTransformersPostEncoder,
        length_adaptor=LengthAdaptorPostEncoder,
    ),
    type_check=AbsPostEncoder,
    default=None,
    optional=True,
)
decoder_choices = ClassChoices(
    "decoder",
    classes=dict(
        transformer=TransformerDecoder,
        lightweight_conv=LightweightConvolutionTransformerDecoder,
        lightweight_conv2d=LightweightConvolution2DTransformerDecoder,
        dynamic_conv=DynamicConvolutionTransformerDecoder,
        dynamic_conv2d=DynamicConvolution2DTransformerDecoder,
        rnn=RNNDecoder,
        transducer=TransducerDecoder,
        mlm=MLMDecoder,
        whisper=OpenAIWhisperDecoder,
        hugging_face_transformers=HuggingFaceTransformersDecoder,
        s4=S4Decoder,
    ),
    type_check=AbsDecoder,
    default=None,
    optional=True,
)
preprocessor_choices = ClassChoices(
    "preprocessor",
    classes=dict(
        default=CommonPreprocessor,
        multi=CommonPreprocessor_multi,
    ),
    type_check=AbsPreprocessor,
    default="default",
)


[docs]class ASRTask(AbsTask): # If you need more than one optimizers, change this value num_optimizers: int = 1 # Add variable objects configurations class_choices_list = [ # --frontend and --frontend_conf frontend_choices, # --specaug and --specaug_conf specaug_choices, # --normalize and --normalize_conf normalize_choices, # --model and --model_conf model_choices, # --preencoder and --preencoder_conf preencoder_choices, # --encoder and --encoder_conf encoder_choices, # --postencoder and --postencoder_conf postencoder_choices, # --decoder and --decoder_conf decoder_choices, # --preprocessor and --preprocessor_conf preprocessor_choices, ] # If you need to modify train() or eval() procedures, change Trainer class here trainer = Trainer
[docs] @classmethod def add_task_arguments(cls, parser: argparse.ArgumentParser): group = parser.add_argument_group(description="Task related") # NOTE(kamo): add_arguments(..., required=True) can't be used # to provide --print_config mode. Instead of it, do as required = parser.get_default("required") required += ["token_list"] group.add_argument( "--token_list", type=str_or_none, default=None, help="A text mapping int-id to token", ) group.add_argument( "--init", type=lambda x: str_or_none(x.lower()), default=None, help="The initialization method", choices=[ "chainer", "xavier_uniform", "xavier_normal", "kaiming_uniform", "kaiming_normal", None, ], ) group.add_argument( "--input_size", type=int_or_none, default=None, help="The number of input dimension of the feature", ) group.add_argument( "--ctc_conf", action=NestedDictAction, default=get_default_kwargs(CTC), help="The keyword arguments for CTC class.", ) group.add_argument( "--joint_net_conf", action=NestedDictAction, default=None, help="The keyword arguments for joint network class.", ) group = parser.add_argument_group(description="Preprocess related") group.add_argument( "--use_preprocessor", type=str2bool, default=True, help="Apply preprocessing to data or not", ) group.add_argument( "--use_lang_prompt", type=str2bool, default=False, help="Use language id as prompt", ) group.add_argument( "--use_nlp_prompt", type=str2bool, default=False, help="Use natural language phrases as prompt", ) group.add_argument( "--token_type", type=str, default="bpe", choices=[ "bpe", "char", "word", "phn", "hugging_face", "whisper_en", "whisper_multilingual", ], help="The text will be tokenized " "in the specified level token", ) group.add_argument( "--bpemodel", type=str_or_none, default=None, help="The model file of sentencepiece", ) parser.add_argument( "--non_linguistic_symbols", type=str_or_none, help="non_linguistic_symbols file path", ) group.add_argument( "--cleaner", type=str_or_none, choices=[ None, "tacotron", "jaconv", "vietnamese", "whisper_en", "whisper_basic", ], default=None, help="Apply text cleaning", ) group.add_argument( "--g2p", type=str_or_none, choices=g2p_choices, default=None, help="Specify g2p method if --token_type=phn", ) group.add_argument( "--speech_volume_normalize", type=float_or_none, default=None, help="Scale the maximum amplitude to the given value.", ) group.add_argument( "--rir_scp", type=str_or_none, default=None, help="The file path of rir scp file.", ) group.add_argument( "--rir_apply_prob", type=float, default=1.0, help="THe probability for applying RIR convolution.", ) group.add_argument( "--noise_scp", type=str_or_none, default=None, help="The file path of noise scp file.", ) group.add_argument( "--noise_apply_prob", type=float, default=1.0, help="The probability applying Noise adding.", ) group.add_argument( "--noise_db_range", type=str, default="13_15", help="The range of noise decibel level.", ) group.add_argument( "--short_noise_thres", type=float, default=0.5, help="If len(noise) / len(speech) is smaller than this threshold during " "dynamic mixing, a warning will be displayed.", ) group.add_argument( "--aux_ctc_tasks", type=str, nargs="+", default=[], help="Auxillary tasks to train on using CTC loss. ", ) for class_choices in cls.class_choices_list: # Append --<name> and --<name>_conf. # e.g. --encoder and --encoder_conf class_choices.add_arguments(group)
[docs] @classmethod @typechecked def build_collate_fn(cls, args: argparse.Namespace, train: bool) -> Callable[ [Collection[Tuple[str, Dict[str, np.ndarray]]]], Tuple[List[str], Dict[str, torch.Tensor]], ]: # NOTE(kamo): int value = 0 is reserved by CTC-blank symbol return CommonCollateFn(float_pad_value=0.0, int_pad_value=-1)
[docs] @classmethod @typechecked def build_preprocess_fn( cls, args: argparse.Namespace, train: bool ) -> Optional[Callable[[str, Dict[str, np.array]], Dict[str, np.ndarray]]]: if args.use_preprocessor: try: _ = getattr(args, "preprocessor") except AttributeError: setattr(args, "preprocessor", "default") setattr(args, "preprocessor_conf", dict()) except Exception as e: raise e preprocessor_class = preprocessor_choices.get_class(args.preprocessor) retval = preprocessor_class( train=train, token_type=args.token_type, token_list=args.token_list, bpemodel=args.bpemodel, non_linguistic_symbols=args.non_linguistic_symbols, text_cleaner=args.cleaner, g2p_type=args.g2p, # NOTE(kamo): Check attribute existence for backward compatibility rir_scp=args.rir_scp if hasattr(args, "rir_scp") else None, rir_apply_prob=( args.rir_apply_prob if hasattr(args, "rir_apply_prob") else 1.0 ), noise_scp=args.noise_scp if hasattr(args, "noise_scp") else None, noise_apply_prob=( args.noise_apply_prob if hasattr(args, "noise_apply_prob") else 1.0 ), noise_db_range=( args.noise_db_range if hasattr(args, "noise_db_range") else "13_15" ), short_noise_thres=( args.short_noise_thres if hasattr(args, "short_noise_thres") else 0.5 ), speech_volume_normalize=( args.speech_volume_normalize if hasattr(args, "rir_scp") else None ), aux_task_names=( args.aux_ctc_tasks if hasattr(args, "aux_ctc_tasks") else None ), use_lang_prompt=( args.use_lang_prompt if hasattr(args, "use_lang_prompt") else None ), **args.preprocessor_conf, use_nlp_prompt=( args.use_nlp_prompt if hasattr(args, "use_nlp_prompt") else None ), ) else: retval = None return retval
[docs] @classmethod def required_data_names( cls, train: bool = True, inference: bool = False ) -> Tuple[str, ...]: if not inference: retval = ("speech", "text") else: # Recognition mode retval = ("speech",) return retval
[docs] @classmethod def optional_data_names( cls, train: bool = True, inference: bool = False ) -> Tuple[str, ...]: MAX_REFERENCE_NUM = 4 retval = ["text_spk{}".format(n) for n in range(2, MAX_REFERENCE_NUM + 1)] retval = retval + ["prompt"] retval = tuple(retval) logging.info(f"Optional Data Names: {retval }") return retval
[docs] @classmethod @typechecked def build_model(cls, args: argparse.Namespace) -> ESPnetASRModel: if isinstance(args.token_list, str): with open(args.token_list, encoding="utf-8") as f: token_list = [line.rstrip() for line in f] # Overwriting token_list to keep it as "portable". args.token_list = list(token_list) elif isinstance(args.token_list, (tuple, list)): token_list = list(args.token_list) else: raise RuntimeError("token_list must be str or list") # If use multi-blank transducer criterion, # big blank symbols are added just before the standard blank if args.model_conf.get("transducer_multi_blank_durations", None) is not None: sym_blank = args.model_conf.get("sym_blank", "<blank>") blank_idx = token_list.index(sym_blank) for dur in args.model_conf.get("transducer_multi_blank_durations"): if f"<blank{dur}>" not in token_list: # avoid this during inference token_list.insert(blank_idx, f"<blank{dur}>") args.token_list = token_list vocab_size = len(token_list) logging.info(f"Vocabulary size: {vocab_size }") # 1. frontend if args.input_size is None: # Extract features in the model frontend_class = frontend_choices.get_class(args.frontend) frontend = frontend_class(**args.frontend_conf) input_size = frontend.output_size() else: # Give features from data-loader args.frontend = None args.frontend_conf = {} frontend = None input_size = args.input_size # 2. Data augmentation for spectrogram if args.specaug is not None: specaug_class = specaug_choices.get_class(args.specaug) specaug = specaug_class(**args.specaug_conf) else: specaug = None # 3. Normalization layer if args.normalize is not None: normalize_class = normalize_choices.get_class(args.normalize) normalize = normalize_class(**args.normalize_conf) else: normalize = None # 4. Pre-encoder input block # NOTE(kan-bayashi): Use getattr to keep the compatibility if getattr(args, "preencoder", None) is not None: preencoder_class = preencoder_choices.get_class(args.preencoder) preencoder = preencoder_class(**args.preencoder_conf) input_size = preencoder.output_size() else: preencoder = None # 4. Encoder encoder_class = encoder_choices.get_class(args.encoder) encoder = encoder_class(input_size=input_size, **args.encoder_conf) # 5. Post-encoder block # NOTE(kan-bayashi): Use getattr to keep the compatibility encoder_output_size = encoder.output_size() if getattr(args, "postencoder", None) is not None: postencoder_class = postencoder_choices.get_class(args.postencoder) postencoder = postencoder_class( input_size=encoder_output_size, **args.postencoder_conf ) encoder_output_size = postencoder.output_size() else: postencoder = None # 5. Decoder if getattr(args, "decoder", None) is not None: decoder_class = decoder_choices.get_class(args.decoder) if args.decoder == "transducer": decoder = decoder_class( vocab_size, embed_pad=0, **args.decoder_conf, ) joint_network = JointNetwork( vocab_size, encoder.output_size(), decoder.dunits, **args.joint_net_conf, ) else: decoder = decoder_class( vocab_size=vocab_size, encoder_output_size=encoder_output_size, **args.decoder_conf, ) joint_network = None else: decoder = None joint_network = None # 6. CTC ctc = CTC( odim=vocab_size, encoder_output_size=encoder_output_size, **args.ctc_conf ) # 7. Build model try: model_class = model_choices.get_class(args.model) except AttributeError: model_class = model_choices.get_class("espnet") model = model_class( vocab_size=vocab_size, frontend=frontend, specaug=specaug, normalize=normalize, preencoder=preencoder, encoder=encoder, postencoder=postencoder, decoder=decoder, ctc=ctc, joint_network=joint_network, token_list=token_list, **args.model_conf, ) # FIXME(kamo): Should be done in model? # 8. Initialize if args.init is not None: initialize(model, args.init) return model