From 3d9f094e9652d4b84894c6fd4eae39a4a753b0f0 Mon Sep 17 00:00:00 2001
From: 游雁 <zhifu.gzf@alibaba-inc.com>
Date: 星期二, 16 五月 2023 23:48:00 +0800
Subject: [PATCH] train

---
 funasr/bin/asr_infer.py |  597 ++++++++++++++++++++++++++++++++++++++++++++++++++++++++++
 1 files changed, 588 insertions(+), 9 deletions(-)

diff --git a/funasr/bin/asr_infer.py b/funasr/bin/asr_infer.py
index 488be16..f6c5504 100644
--- a/funasr/bin/asr_infer.py
+++ b/funasr/bin/asr_infer.py
@@ -1,4 +1,8 @@
+# -*- encoding: utf-8 -*-
 #!/usr/bin/env python3
+# Copyright FunASR (https://github.com/alibaba-damo-academy/FunASR). All Rights Reserved.
+#  MIT License  (https://opensource.org/licenses/MIT)
+
 import argparse
 import logging
 import sys
@@ -19,13 +23,16 @@
 
 import numpy as np
 import torch
+from packaging.version import parse as V
 from typeguard import check_argument_types
 from typeguard import check_return_type
 from funasr.fileio.datadir_writer import DatadirWriter
 from funasr.modules.beam_search.beam_search import BeamSearch
 # from funasr.modules.beam_search.beam_search import BeamSearchPara as BeamSearch
-
 from funasr.modules.beam_search.beam_search import Hypothesis
+from funasr.modules.beam_search.beam_search_transducer import BeamSearchTransducer
+from funasr.modules.beam_search.beam_search_transducer import Hypothesis as HypothesisTransducer
+from funasr.modules.beam_search.beam_search_sa_asr import Hypothesis as HypothesisSAASR
 from funasr.modules.scorers.ctc import CTCPrefixScorer
 from funasr.modules.scorers.length_bonus import LengthBonus
 from funasr.modules.subsampling import TooShortUttError
@@ -47,13 +54,12 @@
 from funasr.export.models.e2e_asr_paraformer import Paraformer as Paraformer_export
 from funasr.utils.timestamp_tools import ts_prediction_lfr6_standard
 from funasr.bin.tp_infer import Speech2Timestamp
-from funasr.bin.vad_inference import Speech2VadSegment
+from funasr.bin.vad_infer import Speech2VadSegment
 from funasr.bin.punc_infer import Text2Punc
 from funasr.utils.vad_utils import slice_padding_fbank
 from funasr.tasks.vad import VADTask
-
 from funasr.utils.timestamp_tools import time_stamp_sentence, ts_prediction_lfr6_standard
-
+from funasr.tasks.asr import frontend_choices
 
 class Speech2Text:
     """Speech2Text class
@@ -264,7 +270,6 @@
         
         assert check_return_type(results)
         return results
-
 
 class Speech2TextParaformer:
     """Speech2Text class
@@ -839,7 +844,6 @@
         # assert check_return_type(results)
         return results
 
-
 class Speech2TextUniASR:
     """Speech2Text class
 
@@ -1072,9 +1076,7 @@
 
         assert check_return_type(results)
         return results
-
-
-    
+   
 
 class Speech2TextMFCCA:
     """Speech2Text class
@@ -1114,6 +1116,7 @@
         assert check_argument_types()
         
         # 1. Build ASR model
+        from funasr.tasks.asr import ASRTaskMFCCA as ASRTask
         scorers = {}
         asr_model, asr_train_args = ASRTask.build_model_from_file(
             asr_train_config, asr_model_file, cmvn_file, device
@@ -1270,3 +1273,579 @@
         return results
 
 
+class Speech2TextTransducer:
+    """Speech2Text class for Transducer models.
+    Args:
+        asr_train_config: ASR model training config path.
+        asr_model_file: ASR model path.
+        beam_search_config: Beam search config path.
+        lm_train_config: Language Model training config path.
+        lm_file: Language Model config path.
+        token_type: Type of token units.
+        bpemodel: BPE model path.
+        device: Device to use for inference.
+        beam_size: Size of beam during search.
+        dtype: Data type.
+        lm_weight: Language model weight.
+        quantize_asr_model: Whether to apply dynamic quantization to ASR model.
+        quantize_modules: List of module names to apply dynamic quantization on.
+        quantize_dtype: Dynamic quantization data type.
+        nbest: Number of final hypothesis.
+        streaming: Whether to perform chunk-by-chunk inference.
+        chunk_size: Number of frames in chunk AFTER subsampling.
+        left_context: Number of frames in left context AFTER subsampling.
+        right_context: Number of frames in right context AFTER subsampling.
+        display_partial_hypotheses: Whether to display partial hypotheses.
+    """
+    
+    def __init__(
+        self,
+        asr_train_config: Union[Path, str] = None,
+        asr_model_file: Union[Path, str] = None,
+        cmvn_file: Union[Path, str] = None,
+        beam_search_config: Dict[str, Any] = None,
+        lm_train_config: Union[Path, str] = None,
+        lm_file: Union[Path, str] = None,
+        token_type: str = None,
+        bpemodel: str = None,
+        device: str = "cpu",
+        beam_size: int = 5,
+        dtype: str = "float32",
+        lm_weight: float = 1.0,
+        quantize_asr_model: bool = False,
+        quantize_modules: List[str] = None,
+        quantize_dtype: str = "qint8",
+        nbest: int = 1,
+        streaming: bool = False,
+        simu_streaming: bool = False,
+        chunk_size: int = 16,
+        left_context: int = 32,
+        right_context: int = 0,
+        display_partial_hypotheses: bool = False,
+    ) -> None:
+        """Construct a Speech2Text object."""
+        super().__init__()
+        
+        assert check_argument_types()
+        from funasr.tasks.asr import ASRTransducerTask
+        asr_model, asr_train_args = ASRTransducerTask.build_model_from_file(
+            asr_train_config, asr_model_file, cmvn_file, device
+        )
+        
+        frontend = None
+        if asr_train_args.frontend is not None and asr_train_args.frontend_conf is not None:
+            frontend = WavFrontend(cmvn_file=cmvn_file, **asr_train_args.frontend_conf)
+        
+        if quantize_asr_model:
+            if quantize_modules is not None:
+                if not all([q in ["LSTM", "Linear"] for q in quantize_modules]):
+                    raise ValueError(
+                        "Only 'Linear' and 'LSTM' modules are currently supported"
+                        " by PyTorch and in --quantize_modules"
+                    )
+                
+                q_config = set([getattr(torch.nn, q) for q in quantize_modules])
+            else:
+                q_config = {torch.nn.Linear}
+            
+            if quantize_dtype == "float16" and (V(torch.__version__) < V("1.5.0")):
+                raise ValueError(
+                    "float16 dtype for dynamic quantization is not supported with torch"
+                    " version < 1.5.0. Switching to qint8 dtype instead."
+                )
+            q_dtype = getattr(torch, quantize_dtype)
+            
+            asr_model = torch.quantization.quantize_dynamic(
+                asr_model, q_config, dtype=q_dtype
+            ).eval()
+        else:
+            asr_model.to(dtype=getattr(torch, dtype)).eval()
+        
+        if lm_train_config is not None:
+            lm, lm_train_args = LMTask.build_model_from_file(
+                lm_train_config, lm_file, device
+            )
+            lm_scorer = lm.lm
+        else:
+            lm_scorer = None
+        
+        # 4. Build BeamSearch object
+        if beam_search_config is None:
+            beam_search_config = {}
+        
+        beam_search = BeamSearchTransducer(
+            asr_model.decoder,
+            asr_model.joint_network,
+            beam_size,
+            lm=lm_scorer,
+            lm_weight=lm_weight,
+            nbest=nbest,
+            **beam_search_config,
+        )
+        
+        token_list = asr_model.token_list
+        
+        if token_type is None:
+            token_type = asr_train_args.token_type
+        if bpemodel is None:
+            bpemodel = asr_train_args.bpemodel
+        
+        if token_type is None:
+            tokenizer = None
+        elif token_type == "bpe":
+            if bpemodel is not None:
+                tokenizer = build_tokenizer(token_type=token_type, bpemodel=bpemodel)
+            else:
+                tokenizer = None
+        else:
+            tokenizer = build_tokenizer(token_type=token_type)
+        converter = TokenIDConverter(token_list=token_list)
+        logging.info(f"Text tokenizer: {tokenizer}")
+        
+        self.asr_model = asr_model
+        self.asr_train_args = asr_train_args
+        self.device = device
+        self.dtype = dtype
+        self.nbest = nbest
+        
+        self.converter = converter
+        self.tokenizer = tokenizer
+        
+        self.beam_search = beam_search
+        self.streaming = streaming
+        self.simu_streaming = simu_streaming
+        self.chunk_size = max(chunk_size, 0)
+        self.left_context = left_context
+        self.right_context = max(right_context, 0)
+        
+        if not streaming or chunk_size == 0:
+            self.streaming = False
+            self.asr_model.encoder.dynamic_chunk_training = False
+        
+        if not simu_streaming or chunk_size == 0:
+            self.simu_streaming = False
+            self.asr_model.encoder.dynamic_chunk_training = False
+        
+        self.frontend = frontend
+        self.window_size = self.chunk_size + self.right_context
+        
+        if self.streaming:
+            self._ctx = self.asr_model.encoder.get_encoder_input_size(
+                self.window_size
+            )
+            
+            self.last_chunk_length = (
+                self.asr_model.encoder.embed.min_frame_length + self.right_context + 1
+            )
+            self.reset_inference_cache()
+    
+    def reset_inference_cache(self) -> None:
+        """Reset Speech2Text parameters."""
+        self.frontend_cache = None
+        
+        self.asr_model.encoder.reset_streaming_cache(
+            self.left_context, device=self.device
+        )
+        self.beam_search.reset_inference_cache()
+        
+        self.num_processed_frames = torch.tensor([[0]], device=self.device)
+    
+    @torch.no_grad()
+    def streaming_decode(
+        self,
+        speech: Union[torch.Tensor, np.ndarray],
+        is_final: bool = True,
+    ) -> List[HypothesisTransducer]:
+        """Speech2Text streaming call.
+        Args:
+            speech: Chunk of speech data. (S)
+            is_final: Whether speech corresponds to the final chunk of data.
+        Returns:
+            nbest_hypothesis: N-best hypothesis.
+        """
+        if isinstance(speech, np.ndarray):
+            speech = torch.tensor(speech)
+        if is_final:
+            if self.streaming and speech.size(0) < self.last_chunk_length:
+                pad = torch.zeros(
+                    self.last_chunk_length - speech.size(0), speech.size(1), dtype=speech.dtype
+                )
+                speech = torch.cat([speech, pad],
+                                   dim=0)  # feats, feats_length = self.apply_frontend(speech, is_final=is_final)
+        
+        feats = speech.unsqueeze(0).to(getattr(torch, self.dtype))
+        feats_lengths = feats.new_full([1], dtype=torch.long, fill_value=feats.size(1))
+        
+        if self.asr_model.normalize is not None:
+            feats, feats_lengths = self.asr_model.normalize(feats, feats_lengths)
+        
+        feats = to_device(feats, device=self.device)
+        feats_lengths = to_device(feats_lengths, device=self.device)
+        enc_out = self.asr_model.encoder.chunk_forward(
+            feats,
+            feats_lengths,
+            self.num_processed_frames,
+            chunk_size=self.chunk_size,
+            left_context=self.left_context,
+            right_context=self.right_context,
+        )
+        nbest_hyps = self.beam_search(enc_out[0], is_final=is_final)
+        
+        self.num_processed_frames += self.chunk_size
+        
+        if is_final:
+            self.reset_inference_cache()
+        
+        return nbest_hyps
+    
+    @torch.no_grad()
+    def simu_streaming_decode(self, speech: Union[torch.Tensor, np.ndarray]) -> List[HypothesisTransducer]:
+        """Speech2Text call.
+        Args:
+            speech: Speech data. (S)
+        Returns:
+            nbest_hypothesis: N-best hypothesis.
+        """
+        assert check_argument_types()
+        
+        if isinstance(speech, np.ndarray):
+            speech = torch.tensor(speech)
+        
+        feats = speech.unsqueeze(0).to(getattr(torch, self.dtype))
+        feats_lengths = feats.new_full([1], dtype=torch.long, fill_value=feats.size(1))
+        
+        if self.asr_model.normalize is not None:
+            feats, feats_lengths = self.asr_model.normalize(feats, feats_lengths)
+        
+        feats = to_device(feats, device=self.device)
+        feats_lengths = to_device(feats_lengths, device=self.device)
+        enc_out = self.asr_model.encoder.simu_chunk_forward(feats, feats_lengths, self.chunk_size, self.left_context,
+                                                            self.right_context)
+        nbest_hyps = self.beam_search(enc_out[0])
+        
+        return nbest_hyps
+    
+    @torch.no_grad()
+    def __call__(self, speech: Union[torch.Tensor, np.ndarray]) -> List[HypothesisTransducer]:
+        """Speech2Text call.
+        Args:
+            speech: Speech data. (S)
+        Returns:
+            nbest_hypothesis: N-best hypothesis.
+        """
+        assert check_argument_types()
+        
+        if isinstance(speech, np.ndarray):
+            speech = torch.tensor(speech)
+        
+        feats = speech.unsqueeze(0).to(getattr(torch, self.dtype))
+        feats_lengths = feats.new_full([1], dtype=torch.long, fill_value=feats.size(1))
+        
+        feats = to_device(feats, device=self.device)
+        feats_lengths = to_device(feats_lengths, device=self.device)
+        
+        enc_out, _ = self.asr_model.encoder(feats, feats_lengths)
+        
+        nbest_hyps = self.beam_search(enc_out[0])
+        
+        return nbest_hyps
+    
+    def hypotheses_to_results(self, nbest_hyps: List[HypothesisTransducer]) -> List[Any]:
+        """Build partial or final results from the hypotheses.
+        Args:
+            nbest_hyps: N-best hypothesis.
+        Returns:
+            results: Results containing different representation for the hypothesis.
+        """
+        results = []
+        
+        for hyp in nbest_hyps:
+            token_int = list(filter(lambda x: x != 0, hyp.yseq))
+            
+            token = self.converter.ids2tokens(token_int)
+            
+            if self.tokenizer is not None:
+                text = self.tokenizer.tokens2text(token)
+            else:
+                text = None
+            results.append((text, token, token_int, hyp))
+            
+            assert check_return_type(results)
+        
+        return results
+    
+    @staticmethod
+    def from_pretrained(
+        model_tag: Optional[str] = None,
+        **kwargs: Optional[Any],
+    ) -> Speech2Text:
+        """Build Speech2Text instance from the pretrained model.
+        Args:
+            model_tag: Model tag of the pretrained models.
+        Return:
+            : Speech2Text instance.
+        """
+        if model_tag is not None:
+            try:
+                from espnet_model_zoo.downloader import ModelDownloader
+            
+            except ImportError:
+                logging.error(
+                    "`espnet_model_zoo` is not installed. "
+                    "Please install via `pip install -U espnet_model_zoo`."
+                )
+                raise
+            d = ModelDownloader()
+            kwargs.update(**d.download_and_unpack(model_tag))
+        
+        return Speech2Text(**kwargs)
+
+
+class Speech2TextSAASR:
+    """Speech2Text class
+
+    Examples:
+        >>> import soundfile
+        >>> speech2text = Speech2TextSAASR("asr_config.yml", "asr.pb")
+        >>> audio, rate = soundfile.read("speech.wav")
+        >>> speech2text(audio)
+        [(text, token, token_int, hypothesis object), ...]
+
+    """
+    
+    def __init__(
+        self,
+        asr_train_config: Union[Path, str] = None,
+        asr_model_file: Union[Path, str] = None,
+        cmvn_file: Union[Path, str] = None,
+        lm_train_config: Union[Path, str] = None,
+        lm_file: Union[Path, str] = None,
+        token_type: str = None,
+        bpemodel: str = None,
+        device: str = "cpu",
+        maxlenratio: float = 0.0,
+        minlenratio: float = 0.0,
+        batch_size: int = 1,
+        dtype: str = "float32",
+        beam_size: int = 20,
+        ctc_weight: float = 0.5,
+        lm_weight: float = 1.0,
+        ngram_weight: float = 0.9,
+        penalty: float = 0.0,
+        nbest: int = 1,
+        streaming: bool = False,
+        frontend_conf: dict = None,
+        **kwargs,
+    ):
+        assert check_argument_types()
+        
+        # 1. Build ASR model
+        from funasr.tasks.sa_asr import ASRTask
+        scorers = {}
+        asr_model, asr_train_args = ASRTask.build_model_from_file(
+            asr_train_config, asr_model_file, cmvn_file, device
+        )
+        frontend = None
+        if asr_train_args.frontend is not None and asr_train_args.frontend_conf is not None:
+            if asr_train_args.frontend == 'wav_frontend':
+                frontend = WavFrontend(cmvn_file=cmvn_file, **asr_train_args.frontend_conf)
+            else:
+                frontend_class = frontend_choices.get_class(asr_train_args.frontend)
+                frontend = frontend_class(**asr_train_args.frontend_conf).eval()
+        
+        logging.info("asr_model: {}".format(asr_model))
+        logging.info("asr_train_args: {}".format(asr_train_args))
+        asr_model.to(dtype=getattr(torch, dtype)).eval()
+        
+        decoder = asr_model.decoder
+        
+        ctc = CTCPrefixScorer(ctc=asr_model.ctc, eos=asr_model.eos)
+        token_list = asr_model.token_list
+        scorers.update(
+            decoder=decoder,
+            ctc=ctc,
+            length_bonus=LengthBonus(len(token_list)),
+        )
+        
+        # 2. Build Language model
+        if lm_train_config is not None:
+            lm, lm_train_args = LMTask.build_model_from_file(
+                lm_train_config, lm_file, None, device
+            )
+            scorers["lm"] = lm.lm
+        
+        # 3. Build ngram model
+        # ngram is not supported now
+        ngram = None
+        scorers["ngram"] = ngram
+        
+        # 4. Build BeamSearch object
+        # transducer is not supported now
+        beam_search_transducer = None
+        from funasr.modules.beam_search.beam_search_sa_asr import BeamSearch
+        
+        weights = dict(
+            decoder=1.0 - ctc_weight,
+            ctc=ctc_weight,
+            lm=lm_weight,
+            ngram=ngram_weight,
+            length_bonus=penalty,
+        )
+        beam_search = BeamSearch(
+            beam_size=beam_size,
+            weights=weights,
+            scorers=scorers,
+            sos=asr_model.sos,
+            eos=asr_model.eos,
+            vocab_size=len(token_list),
+            token_list=token_list,
+            pre_beam_score_key=None if ctc_weight == 1.0 else "full",
+        )
+        
+        # 5. [Optional] Build Text converter: e.g. bpe-sym -> Text
+        if token_type is None:
+            token_type = asr_train_args.token_type
+        if bpemodel is None:
+            bpemodel = asr_train_args.bpemodel
+        
+        if token_type is None:
+            tokenizer = None
+        elif token_type == "bpe":
+            if bpemodel is not None:
+                tokenizer = build_tokenizer(token_type=token_type, bpemodel=bpemodel)
+            else:
+                tokenizer = None
+        else:
+            tokenizer = build_tokenizer(token_type=token_type)
+        converter = TokenIDConverter(token_list=token_list)
+        logging.info(f"Text tokenizer: {tokenizer}")
+        
+        self.asr_model = asr_model
+        self.asr_train_args = asr_train_args
+        self.converter = converter
+        self.tokenizer = tokenizer
+        self.beam_search = beam_search
+        self.beam_search_transducer = beam_search_transducer
+        self.maxlenratio = maxlenratio
+        self.minlenratio = minlenratio
+        self.device = device
+        self.dtype = dtype
+        self.nbest = nbest
+        self.frontend = frontend
+    
+    @torch.no_grad()
+    def __call__(
+        self, speech: Union[torch.Tensor, np.ndarray], speech_lengths: Union[torch.Tensor, np.ndarray],
+        profile: Union[torch.Tensor, np.ndarray], profile_lengths: Union[torch.Tensor, np.ndarray]
+    ) -> List[
+        Tuple[
+            Optional[str],
+            Optional[str],
+            List[str],
+            List[int],
+            Union[HypothesisSAASR],
+        ]
+    ]:
+        """Inference
+
+        Args:
+            speech: Input speech data
+        Returns:
+            text, text_id, token, token_int, hyp
+
+        """
+        assert check_argument_types()
+        
+        # Input as audio signal
+        if isinstance(speech, np.ndarray):
+            speech = torch.tensor(speech)
+        
+        if isinstance(profile, np.ndarray):
+            profile = torch.tensor(profile)
+        
+        if self.frontend is not None:
+            feats, feats_len = self.frontend.forward(speech, speech_lengths)
+            feats = to_device(feats, device=self.device)
+            feats_len = feats_len.int()
+            self.asr_model.frontend = None
+        else:
+            feats = speech
+            feats_len = speech_lengths
+        lfr_factor = max(1, (feats.size()[-1] // 80) - 1)
+        batch = {"speech": feats, "speech_lengths": feats_len}
+        
+        # a. To device
+        batch = to_device(batch, device=self.device)
+        
+        # b. Forward Encoder
+        asr_enc, _, spk_enc = self.asr_model.encode(**batch)
+        if isinstance(asr_enc, tuple):
+            asr_enc = asr_enc[0]
+        if isinstance(spk_enc, tuple):
+            spk_enc = spk_enc[0]
+        assert len(asr_enc) == 1, len(asr_enc)
+        assert len(spk_enc) == 1, len(spk_enc)
+        
+        # c. Passed the encoder result and the beam search
+        nbest_hyps = self.beam_search(
+            asr_enc[0], spk_enc[0], profile[0], maxlenratio=self.maxlenratio, minlenratio=self.minlenratio
+        )
+        
+        nbest_hyps = nbest_hyps[: self.nbest]
+        
+        results = []
+        for hyp in nbest_hyps:
+            assert isinstance(hyp, (HypothesisSAASR)), type(hyp)
+            
+            # remove sos/eos and get results
+            last_pos = -1
+            if isinstance(hyp.yseq, list):
+                token_int = hyp.yseq[1: last_pos]
+            else:
+                token_int = hyp.yseq[1: last_pos].tolist()
+            
+            spk_weigths = torch.stack(hyp.spk_weigths, dim=0)
+            
+            token_ori = self.converter.ids2tokens(token_int)
+            text_ori = self.tokenizer.tokens2text(token_ori)
+            
+            text_ori_spklist = text_ori.split('$')
+            cur_index = 0
+            spk_choose = []
+            for i in range(len(text_ori_spklist)):
+                text_ori_split = text_ori_spklist[i]
+                n = len(text_ori_split)
+                spk_weights_local = spk_weigths[cur_index: cur_index + n]
+                cur_index = cur_index + n + 1
+                spk_weights_local = spk_weights_local.mean(dim=0)
+                spk_choose_local = spk_weights_local.argmax(-1)
+                spk_choose.append(spk_choose_local.item() + 1)
+            
+            # remove blank symbol id, which is assumed to be 0
+            token_int = list(filter(lambda x: x != 0, token_int))
+            
+            # Change integer-ids to tokens
+            token = self.converter.ids2tokens(token_int)
+            
+            if self.tokenizer is not None:
+                text = self.tokenizer.tokens2text(token)
+            else:
+                text = None
+            
+            text_spklist = text.split('$')
+            assert len(spk_choose) == len(text_spklist)
+            
+            spk_list = []
+            for i in range(len(text_spklist)):
+                text_split = text_spklist[i]
+                n = len(text_split)
+                spk_list.append(str(spk_choose[i]) * n)
+            
+            text_id = '$'.join(spk_list)
+            
+            assert len(text) == len(text_id)
+            
+            results.append((text, text_id, token, token_int, hyp))
+        
+        assert check_return_type(results)
+        return results

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