From 012903e42ec890ab5c50137beb365c3d94e731d1 Mon Sep 17 00:00:00 2001
From: nichongjia-2007 <nichongjia@gmail.com>
Date: 星期五, 30 六月 2023 11:21:28 +0800
Subject: [PATCH] Merge branch 'main' of https://github.com/alibaba-damo-academy/FunASR

---
 funasr/build_utils/build_sv_model.py |  256 +++++++++++++++++++++++++++++++++++++++++++++++++++
 1 files changed, 256 insertions(+), 0 deletions(-)

diff --git a/funasr/build_utils/build_sv_model.py b/funasr/build_utils/build_sv_model.py
new file mode 100644
index 0000000..55df75a
--- /dev/null
+++ b/funasr/build_utils/build_sv_model.py
@@ -0,0 +1,256 @@
+import logging
+
+import torch
+
+from funasr.layers.abs_normalize import AbsNormalize
+from funasr.layers.global_mvn import GlobalMVN
+from funasr.layers.utterance_mvn import UtteranceMVN
+from funasr.models.base_model import FunASRModel
+from funasr.models.decoder.abs_decoder import AbsDecoder
+from funasr.models.decoder.sv_decoder import DenseDecoder
+from funasr.models.e2e_sv import ESPnetSVModel
+from funasr.models.encoder.abs_encoder import AbsEncoder
+from funasr.models.encoder.resnet34_encoder import ResNet34, ResNet34_SP_L2Reg
+from funasr.models.encoder.rnn_encoder import RNNEncoder
+from funasr.models.frontend.abs_frontend import AbsFrontend
+from funasr.models.frontend.default import DefaultFrontend
+from funasr.models.frontend.fused import FusedFrontends
+from funasr.models.frontend.s3prl import S3prlFrontend
+from funasr.models.frontend.wav_frontend import WavFrontend
+from funasr.models.frontend.windowing import SlidingWindow
+from funasr.models.pooling.statistic_pooling import StatisticPooling
+from funasr.models.postencoder.abs_postencoder import AbsPostEncoder
+from funasr.models.postencoder.hugging_face_transformers_postencoder import (
+    HuggingFaceTransformersPostEncoder,  # noqa: H301
+)
+from funasr.models.preencoder.abs_preencoder import AbsPreEncoder
+from funasr.models.preencoder.linear import LinearProjection
+from funasr.models.preencoder.sinc import LightweightSincConvs
+from funasr.models.specaug.abs_specaug import AbsSpecAug
+from funasr.models.specaug.specaug import SpecAug
+from funasr.torch_utils.initialize import initialize
+from funasr.train.class_choices import ClassChoices
+
+frontend_choices = ClassChoices(
+    name="frontend",
+    classes=dict(
+        default=DefaultFrontend,
+        sliding_window=SlidingWindow,
+        s3prl=S3prlFrontend,
+        fused=FusedFrontends,
+        wav_frontend=WavFrontend,
+    ),
+    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=None,
+    optional=True,
+)
+model_choices = ClassChoices(
+    "model",
+    classes=dict(
+        espnet=ESPnetSVModel,
+    ),
+    type_check=FunASRModel,
+    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(
+        resnet34=ResNet34,
+        resnet34_sp_l2reg=ResNet34_SP_L2Reg,
+        rnn=RNNEncoder,
+    ),
+    type_check=AbsEncoder,
+    default="resnet34",
+)
+postencoder_choices = ClassChoices(
+    name="postencoder",
+    classes=dict(
+        hugging_face_transformers=HuggingFaceTransformersPostEncoder,
+    ),
+    type_check=AbsPostEncoder,
+    default=None,
+    optional=True,
+)
+pooling_choices = ClassChoices(
+    name="pooling_type",
+    classes=dict(
+        statistic=StatisticPooling,
+    ),
+    type_check=torch.nn.Module,
+    default="statistic",
+)
+decoder_choices = ClassChoices(
+    "decoder",
+    classes=dict(
+        dense=DenseDecoder,
+    ),
+    type_check=AbsDecoder,
+    default="dense",
+)
+
+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,
+    # --pooling and --pooling_conf
+    pooling_choices,
+    # --decoder and --decoder_conf
+    decoder_choices,
+]
+
+
+def build_sv_model(args):
+    # token_list
+    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")
+    vocab_size = len(token_list)
+    logging.info(f"Speaker number: {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
+
+    # 5. Encoder
+    encoder_class = encoder_choices.get_class(args.encoder)
+    encoder = encoder_class(input_size=input_size, **args.encoder_conf)
+
+    # 6. 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
+
+    # 7. Pooling layer
+    pooling_class = pooling_choices.get_class(args.pooling_type)
+    pooling_dim = (2, 3)
+    eps = 1e-12
+    if hasattr(args, "pooling_type_conf"):
+        if "pooling_dim" in args.pooling_type_conf:
+            pooling_dim = args.pooling_type_conf["pooling_dim"]
+        if "eps" in args.pooling_type_conf:
+            eps = args.pooling_type_conf["eps"]
+    pooling_layer = pooling_class(
+        pooling_dim=pooling_dim,
+        eps=eps,
+    )
+    if args.pooling_type == "statistic":
+        encoder_output_size *= 2
+
+    # 8. Decoder
+    decoder_class = decoder_choices.get_class(args.decoder)
+    decoder = decoder_class(
+        vocab_size=vocab_size,
+        encoder_output_size=encoder_output_size,
+        **args.decoder_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,
+        token_list=token_list,
+        frontend=frontend,
+        specaug=specaug,
+        normalize=normalize,
+        preencoder=preencoder,
+        encoder=encoder,
+        postencoder=postencoder,
+        pooling_layer=pooling_layer,
+        decoder=decoder,
+        **args.model_conf,
+    )
+
+    # FIXME(kamo): Should be done in model?
+    # 8. Initialize
+    if args.init is not None:
+        initialize(model, args.init)
+
+    return model

--
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