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from typing import Dict, List, Optional, Tuple, Union
import torch
import torchaudio
from torch import nn
from torch.nn.utils.rnn import pad_sequence
from modules.wenet_extractor.transducer.predictor import PredictorBase
from modules.wenet_extractor.transducer.search.greedy_search import basic_greedy_search
from modules.wenet_extractor.transducer.search.prefix_beam_search import (
PrefixBeamSearch,
)
from modules.wenet_extractor.transformer.asr_model import ASRModel
from modules.wenet_extractor.transformer.ctc import CTC
from modules.wenet_extractor.transformer.decoder import (
BiTransformerDecoder,
TransformerDecoder,
)
from modules.wenet_extractor.transformer.label_smoothing_loss import LabelSmoothingLoss
from modules.wenet_extractor.utils.common import (
IGNORE_ID,
add_blank,
add_sos_eos,
reverse_pad_list,
)
class Transducer(ASRModel):
"""Transducer-ctc-attention hybrid Encoder-Predictor-Decoder model"""
def __init__(
self,
vocab_size: int,
blank: int,
encoder: nn.Module,
predictor: PredictorBase,
joint: nn.Module,
attention_decoder: Optional[
Union[TransformerDecoder, BiTransformerDecoder]
] = None,
ctc: Optional[CTC] = None,
ctc_weight: float = 0,
ignore_id: int = IGNORE_ID,
reverse_weight: float = 0.0,
lsm_weight: float = 0.0,
length_normalized_loss: bool = False,
transducer_weight: float = 1.0,
attention_weight: float = 0.0,
) -> None:
assert attention_weight + ctc_weight + transducer_weight == 1.0
super().__init__(
vocab_size,
encoder,
attention_decoder,
ctc,
ctc_weight,
ignore_id,
reverse_weight,
lsm_weight,
length_normalized_loss,
)
self.blank = blank
self.transducer_weight = transducer_weight
self.attention_decoder_weight = 1 - self.transducer_weight - self.ctc_weight
self.predictor = predictor
self.joint = joint
self.bs = None
# Note(Mddct): decoder also means predictor in transducer,
# but here decoder is attention decoder
del self.criterion_att
if attention_decoder is not None:
self.criterion_att = LabelSmoothingLoss(
size=vocab_size,
padding_idx=ignore_id,
smoothing=lsm_weight,
normalize_length=length_normalized_loss,
)
def forward(
self,
speech: torch.Tensor,
speech_lengths: torch.Tensor,
text: torch.Tensor,
text_lengths: torch.Tensor,
) -> Dict[str, Optional[torch.Tensor]]:
"""Frontend + Encoder + predictor + joint + loss
Args:
speech: (Batch, Length, ...)
speech_lengths: (Batch, )
text: (Batch, Length)
text_lengths: (Batch,)
"""
assert text_lengths.dim() == 1, text_lengths.shape
# Check that batch_size is unified
assert (
speech.shape[0]
== speech_lengths.shape[0]
== text.shape[0]
== text_lengths.shape[0]
), (speech.shape, speech_lengths.shape, text.shape, text_lengths.shape)
# Encoder
encoder_out, encoder_mask = self.encoder(speech, speech_lengths)
encoder_out_lens = encoder_mask.squeeze(1).sum(1)
# predictor
ys_in_pad = add_blank(text, self.blank, self.ignore_id)
predictor_out = self.predictor(ys_in_pad)
# joint
joint_out = self.joint(encoder_out, predictor_out)
# NOTE(Mddct): some loss implementation require pad valid is zero
# torch.int32 rnnt_loss required
rnnt_text = text.to(torch.int64)
rnnt_text = torch.where(rnnt_text == self.ignore_id, 0, rnnt_text).to(
torch.int32
)
rnnt_text_lengths = text_lengths.to(torch.int32)
encoder_out_lens = encoder_out_lens.to(torch.int32)
loss = torchaudio.functional.rnnt_loss(
joint_out,
rnnt_text,
encoder_out_lens,
rnnt_text_lengths,
blank=self.blank,
reduction="mean",
)
loss_rnnt = loss
loss = self.transducer_weight * loss
# optional attention decoder
loss_att: Optional[torch.Tensor] = None
if self.attention_decoder_weight != 0.0 and self.decoder is not None:
loss_att, _ = self._calc_att_loss(
encoder_out, encoder_mask, text, text_lengths
)
# optional ctc
loss_ctc: Optional[torch.Tensor] = None
if self.ctc_weight != 0.0 and self.ctc is not None:
loss_ctc = self.ctc(encoder_out, encoder_out_lens, text, text_lengths)
else:
loss_ctc = None
if loss_ctc is not None:
loss = loss + self.ctc_weight * loss_ctc.sum()
if loss_att is not None:
loss = loss + self.attention_decoder_weight * loss_att.sum()
# NOTE: 'loss' must be in dict
return {
"loss": loss,
"loss_att": loss_att,
"loss_ctc": loss_ctc,
"loss_rnnt": loss_rnnt,
}
def init_bs(self):
if self.bs is None:
self.bs = PrefixBeamSearch(
self.encoder, self.predictor, self.joint, self.ctc, self.blank
)
def _cal_transducer_score(
self,
encoder_out: torch.Tensor,
encoder_mask: torch.Tensor,
hyps_lens: torch.Tensor,
hyps_pad: torch.Tensor,
):
# ignore id -> blank, add blank at head
hyps_pad_blank = add_blank(hyps_pad, self.blank, self.ignore_id)
xs_in_lens = encoder_mask.squeeze(1).sum(1).int()
# 1. Forward predictor
predictor_out = self.predictor(hyps_pad_blank)
# 2. Forward joint
joint_out = self.joint(encoder_out, predictor_out)
rnnt_text = hyps_pad.to(torch.int64)
rnnt_text = torch.where(rnnt_text == self.ignore_id, 0, rnnt_text).to(
torch.int32
)
# 3. Compute transducer loss
loss_td = torchaudio.functional.rnnt_loss(
joint_out,
rnnt_text,
xs_in_lens,
hyps_lens.int(),
blank=self.blank,
reduction="none",
)
return loss_td * -1
def _cal_attn_score(
self,
encoder_out: torch.Tensor,
encoder_mask: torch.Tensor,
hyps_pad: torch.Tensor,
hyps_lens: torch.Tensor,
):
# (beam_size, max_hyps_len)
ori_hyps_pad = hyps_pad
# td_score = loss_td * -1
hyps_pad, _ = add_sos_eos(hyps_pad, self.sos, self.eos, self.ignore_id)
hyps_lens = hyps_lens + 1 # Add <sos> at begining
# used for right to left decoder
r_hyps_pad = reverse_pad_list(ori_hyps_pad, hyps_lens, self.ignore_id)
r_hyps_pad, _ = add_sos_eos(r_hyps_pad, self.sos, self.eos, self.ignore_id)
decoder_out, r_decoder_out, _ = self.decoder(
encoder_out,
encoder_mask,
hyps_pad,
hyps_lens,
r_hyps_pad,
self.reverse_weight,
) # (beam_size, max_hyps_len, vocab_size)
decoder_out = torch.nn.functional.log_softmax(decoder_out, dim=-1)
decoder_out = decoder_out.cpu().numpy()
# r_decoder_out will be 0.0, if reverse_weight is 0.0 or decoder is a
# conventional transformer decoder.
r_decoder_out = torch.nn.functional.log_softmax(r_decoder_out, dim=-1)
r_decoder_out = r_decoder_out.cpu().numpy()
return decoder_out, r_decoder_out
def beam_search(
self,
speech: torch.Tensor,
speech_lengths: torch.Tensor,
decoding_chunk_size: int = -1,
beam_size: int = 5,
num_decoding_left_chunks: int = -1,
simulate_streaming: bool = False,
ctc_weight: float = 0.3,
transducer_weight: float = 0.7,
):
"""beam search
Args:
speech (torch.Tensor): (batch=1, max_len, feat_dim)
speech_length (torch.Tensor): (batch, )
beam_size (int): beam size for beam search
decoding_chunk_size (int): decoding chunk for dynamic chunk
trained model.
<0: for decoding, use full chunk.
>0: for decoding, use fixed chunk size as set.
0: used for training, it's prohibited here
simulate_streaming (bool): whether do encoder forward in a
streaming fashion
ctc_weight (float): ctc probability weight in transducer
prefix beam search.
final_prob = ctc_weight * ctc_prob + transducer_weight * transducer_prob
transducer_weight (float): transducer probability weight in
prefix beam search
Returns:
List[List[int]]: best path result
"""
self.init_bs()
beam, _ = self.bs.prefix_beam_search(
speech,
speech_lengths,
decoding_chunk_size,
beam_size,
num_decoding_left_chunks,
simulate_streaming,
ctc_weight,
transducer_weight,
)
return beam[0].hyp[1:], beam[0].score
def transducer_attention_rescoring(
self,
speech: torch.Tensor,
speech_lengths: torch.Tensor,
beam_size: int,
decoding_chunk_size: int = -1,
num_decoding_left_chunks: int = -1,
simulate_streaming: bool = False,
reverse_weight: float = 0.0,
ctc_weight: float = 0.0,
attn_weight: float = 0.0,
transducer_weight: float = 0.0,
search_ctc_weight: float = 1.0,
search_transducer_weight: float = 0.0,
beam_search_type: str = "transducer",
) -> List[List[int]]:
"""beam search
Args:
speech (torch.Tensor): (batch=1, max_len, feat_dim)
speech_length (torch.Tensor): (batch, )
beam_size (int): beam size for beam search
decoding_chunk_size (int): decoding chunk for dynamic chunk
trained model.
<0: for decoding, use full chunk.
>0: for decoding, use fixed chunk size as set.
0: used for training, it's prohibited here
simulate_streaming (bool): whether do encoder forward in a
streaming fashion
ctc_weight (float): ctc probability weight using in rescoring.
rescore_prob = ctc_weight * ctc_prob +
transducer_weight * (transducer_loss * -1) +
attn_weight * attn_prob
attn_weight (float): attn probability weight using in rescoring.
transducer_weight (float): transducer probability weight using in
rescoring
search_ctc_weight (float): ctc weight using
in rnnt beam search (seeing in self.beam_search)
search_transducer_weight (float): transducer weight using
in rnnt beam search (seeing in self.beam_search)
Returns:
List[List[int]]: best path result
"""
assert speech.shape[0] == speech_lengths.shape[0]
assert decoding_chunk_size != 0
if reverse_weight > 0.0:
# decoder should be a bitransformer decoder if reverse_weight > 0.0
assert hasattr(self.decoder, "right_decoder")
device = speech.device
batch_size = speech.shape[0]
# For attention rescoring we only support batch_size=1
assert batch_size == 1
# encoder_out: (1, maxlen, encoder_dim), len(hyps) = beam_size
self.init_bs()
if beam_search_type == "transducer":
beam, encoder_out = self.bs.prefix_beam_search(
speech,
speech_lengths,
decoding_chunk_size=decoding_chunk_size,
beam_size=beam_size,
num_decoding_left_chunks=num_decoding_left_chunks,
ctc_weight=search_ctc_weight,
transducer_weight=search_transducer_weight,
)
beam_score = [s.score for s in beam]
hyps = [s.hyp[1:] for s in beam]
elif beam_search_type == "ctc":
hyps, encoder_out = self._ctc_prefix_beam_search(
speech,
speech_lengths,
beam_size=beam_size,
decoding_chunk_size=decoding_chunk_size,
num_decoding_left_chunks=num_decoding_left_chunks,
simulate_streaming=simulate_streaming,
)
beam_score = [hyp[1] for hyp in hyps]
hyps = [hyp[0] for hyp in hyps]
assert len(hyps) == beam_size
# build hyps and encoder output
hyps_pad = pad_sequence(
[torch.tensor(hyp, device=device, dtype=torch.long) for hyp in hyps],
True,
self.ignore_id,
) # (beam_size, max_hyps_len)
hyps_lens = torch.tensor(
[len(hyp) for hyp in hyps], device=device, dtype=torch.long
) # (beam_size,)
encoder_out = encoder_out.repeat(beam_size, 1, 1)
encoder_mask = torch.ones(
beam_size, 1, encoder_out.size(1), dtype=torch.bool, device=device
)
# 2.1 calculate transducer score
td_score = self._cal_transducer_score(
encoder_out,
encoder_mask,
hyps_lens,
hyps_pad,
)
# 2.2 calculate attention score
decoder_out, r_decoder_out = self._cal_attn_score(
encoder_out,
encoder_mask,
hyps_pad,
hyps_lens,
)
# Only use decoder score for rescoring
best_score = -float("inf")
best_index = 0
for i, hyp in enumerate(hyps):
score = 0.0
for j, w in enumerate(hyp):
score += decoder_out[i][j][w]
score += decoder_out[i][len(hyp)][self.eos]
td_s = td_score[i]
# add right to left decoder score
if reverse_weight > 0:
r_score = 0.0
for j, w in enumerate(hyp):
r_score += r_decoder_out[i][len(hyp) - j - 1][w]
r_score += r_decoder_out[i][len(hyp)][self.eos]
score = score * (1 - reverse_weight) + r_score * reverse_weight
# add ctc score
score = (
score * attn_weight
+ beam_score[i] * ctc_weight
+ td_s * transducer_weight
)
if score > best_score:
best_score = score
best_index = i
return hyps[best_index], best_score
def greedy_search(
self,
speech: torch.Tensor,
speech_lengths: torch.Tensor,
decoding_chunk_size: int = -1,
num_decoding_left_chunks: int = -1,
simulate_streaming: bool = False,
n_steps: int = 64,
) -> List[List[int]]:
"""greedy search
Args:
speech (torch.Tensor): (batch=1, max_len, feat_dim)
speech_length (torch.Tensor): (batch, )
beam_size (int): beam size for beam search
decoding_chunk_size (int): decoding chunk for dynamic chunk
trained model.
<0: for decoding, use full chunk.
>0: for decoding, use fixed chunk size as set.
0: used for training, it's prohibited here
simulate_streaming (bool): whether do encoder forward in a
streaming fashion
Returns:
List[List[int]]: best path result
"""
# TODO(Mddct): batch decode
assert speech.size(0) == 1
assert speech.shape[0] == speech_lengths.shape[0]
assert decoding_chunk_size != 0
# TODO(Mddct): forward chunk by chunk
_ = simulate_streaming
# Let's assume B = batch_size
encoder_out, encoder_mask = self.encoder(
speech,
speech_lengths,
decoding_chunk_size,
num_decoding_left_chunks,
)
encoder_out_lens = encoder_mask.squeeze(1).sum()
hyps = basic_greedy_search(self, encoder_out, encoder_out_lens, n_steps=n_steps)
return hyps
@torch.jit.export
def forward_encoder_chunk(
self,
xs: torch.Tensor,
offset: int,
required_cache_size: int,
att_cache: torch.Tensor = torch.zeros(0, 0, 0, 0),
cnn_cache: torch.Tensor = torch.zeros(0, 0, 0, 0),
) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]:
return self.encoder.forward_chunk(
xs, offset, required_cache_size, att_cache, cnn_cache
)
@torch.jit.export
def forward_predictor_step(
self, xs: torch.Tensor, cache: List[torch.Tensor]
) -> Tuple[torch.Tensor, List[torch.Tensor]]:
assert len(cache) == 2
# fake padding
padding = torch.zeros(1, 1)
return self.predictor.forward_step(xs, padding, cache)
@torch.jit.export
def forward_joint_step(
self, enc_out: torch.Tensor, pred_out: torch.Tensor
) -> torch.Tensor:
return self.joint(enc_out, pred_out)
@torch.jit.export
def forward_predictor_init_state(self) -> List[torch.Tensor]:
return self.predictor.init_state(1, device=torch.device("cpu"))