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# This module is from [WeNet](https://github.com/wenet-e2e/wenet). | |
# ## Citations | |
# ```bibtex | |
# @inproceedings{yao2021wenet, | |
# title={WeNet: Production oriented Streaming and Non-streaming End-to-End Speech Recognition Toolkit}, | |
# author={Yao, Zhuoyuan and Wu, Di and Wang, Xiong and Zhang, Binbin and Yu, Fan and Yang, Chao and Peng, Zhendong and Chen, Xiaoyu and Xie, Lei and Lei, Xin}, | |
# booktitle={Proc. Interspeech}, | |
# year={2021}, | |
# address={Brno, Czech Republic }, | |
# organization={IEEE} | |
# } | |
# @article{zhang2022wenet, | |
# title={WeNet 2.0: More Productive End-to-End Speech Recognition Toolkit}, | |
# author={Zhang, Binbin and Wu, Di and Peng, Zhendong and Song, Xingchen and Yao, Zhuoyuan and Lv, Hang and Xie, Lei and Yang, Chao and Pan, Fuping and Niu, Jianwei}, | |
# journal={arXiv preprint arXiv:2203.15455}, | |
# year={2022} | |
# } | |
# | |
from itertools import chain | |
from typing import Any | |
from typing import Dict | |
from typing import List | |
from typing import Tuple | |
from typing import Union | |
from typing import NamedTuple | |
import torch | |
from modules.wenet_extractor.paraformer.utils import end_detect | |
from modules.wenet_extractor.paraformer.search.ctc import CTCPrefixScorer | |
from modules.wenet_extractor.paraformer.search.scorer_interface import ( | |
ScorerInterface, | |
PartialScorerInterface, | |
) | |
class Hypothesis(NamedTuple): | |
"""Hypothesis data type.""" | |
yseq: torch.Tensor | |
score: Union[float, torch.Tensor] = 0 | |
scores: Dict[str, Union[float, torch.Tensor]] = dict() | |
states: Dict[str, Any] = dict() | |
def asdict(self) -> dict: | |
"""Convert data to JSON-friendly dict.""" | |
return self._replace( | |
yseq=self.yseq.tolist(), | |
score=float(self.score), | |
scores={k: float(v) for k, v in self.scores.items()}, | |
)._asdict() | |
class BeamSearchCIF(torch.nn.Module): | |
"""Beam search implementation.""" | |
def __init__( | |
self, | |
scorers: Dict[str, ScorerInterface], | |
weights: Dict[str, float], | |
beam_size: int, | |
vocab_size: int, | |
sos: int, | |
eos: int, | |
pre_beam_ratio: float = 1.5, | |
pre_beam_score_key: str = None, | |
): | |
"""Initialize beam search. | |
Args: | |
scorers (dict[str, ScorerInterface]): Dict of decoder modules | |
e.g., Decoder, CTCPrefixScorer, LM | |
The scorer will be ignored if it is `None` | |
weights (dict[str, float]): Dict of weights for each scorers | |
The scorer will be ignored if its weight is 0 | |
beam_size (int): The number of hypotheses kept during search | |
vocab_size (int): The number of vocabulary | |
sos (int): Start of sequence id | |
eos (int): End of sequence id | |
pre_beam_score_key (str): key of scores to perform pre-beam search | |
pre_beam_ratio (float): beam size in the pre-beam search | |
will be `int(pre_beam_ratio * beam_size)` | |
""" | |
super().__init__() | |
# set scorers | |
self.weights = weights | |
self.scorers = dict() | |
self.full_scorers = dict() | |
self.part_scorers = dict() | |
# this module dict is required for recursive cast | |
# `self.to(device, dtype)` in `recog.py` | |
self.nn_dict = torch.nn.ModuleDict() | |
for k, v in scorers.items(): | |
w = weights.get(k, 0) | |
if w == 0 or v is None: | |
continue | |
assert isinstance( | |
v, ScorerInterface | |
), f"{k} ({type(v)}) does not implement ScorerInterface" | |
self.scorers[k] = v | |
if isinstance(v, PartialScorerInterface): | |
self.part_scorers[k] = v | |
else: | |
self.full_scorers[k] = v | |
if isinstance(v, torch.nn.Module): | |
self.nn_dict[k] = v | |
# set configurations | |
self.sos = sos | |
self.eos = eos | |
self.pre_beam_size = int(pre_beam_ratio * beam_size) | |
self.beam_size = beam_size | |
self.n_vocab = vocab_size | |
if ( | |
pre_beam_score_key is not None | |
and pre_beam_score_key != "full" | |
and pre_beam_score_key not in self.full_scorers | |
): | |
raise KeyError( | |
f"{pre_beam_score_key} is not found in " f"{self.full_scorers}" | |
) | |
self.pre_beam_score_key = pre_beam_score_key | |
self.do_pre_beam = ( | |
self.pre_beam_score_key is not None | |
and self.pre_beam_size < self.n_vocab | |
and len(self.part_scorers) > 0 | |
) | |
def init_hyp(self, x: torch.Tensor) -> List[Hypothesis]: | |
"""Get an initial hypothesis data. | |
Args: | |
x (torch.Tensor): The encoder output feature | |
Returns: | |
Hypothesis: The initial hypothesis. | |
""" | |
init_states = dict() | |
init_scores = dict() | |
for k, d in self.scorers.items(): | |
init_states[k] = d.init_state(x) | |
init_scores[k] = 0.0 | |
return [ | |
Hypothesis( | |
score=0.0, | |
scores=init_scores, | |
states=init_states, | |
yseq=torch.tensor([self.sos], device=x.device), | |
) | |
] | |
def append_token(xs: torch.Tensor, x: int) -> torch.Tensor: | |
"""Append new token to prefix tokens. | |
Args: | |
xs (torch.Tensor): The prefix token | |
x (int): The new token to append | |
Returns: | |
torch.Tensor: New tensor contains: xs + [x] with xs.dtype and | |
xs.device | |
""" | |
x = torch.tensor([x], dtype=xs.dtype, device=xs.device) | |
return torch.cat((xs, x)) | |
def score_full( | |
self, hyp: Hypothesis, x: torch.Tensor | |
) -> Tuple[Dict[str, torch.Tensor], Dict[str, Any]]: | |
"""Score new hypothesis by `self.full_scorers`. | |
Args: | |
hyp (Hypothesis): Hypothesis with prefix tokens to score | |
x (torch.Tensor): Corresponding input feature | |
Returns: | |
Tuple[Dict[str, torch.Tensor], Dict[str, Any]]: Tuple of | |
score dict of `hyp` that has string keys of `self.full_scorers` | |
and tensor score values of shape: `(self.n_vocab,)`, | |
and state dict that has string keys | |
and state values of `self.full_scorers` | |
""" | |
scores = dict() | |
states = dict() | |
for k, d in self.full_scorers.items(): | |
scores[k], states[k] = d.score(hyp.yseq, hyp.states[k], x) | |
return scores, states | |
def score_partial( | |
self, hyp: Hypothesis, ids: torch.Tensor, x: torch.Tensor | |
) -> Tuple[Dict[str, torch.Tensor], Dict[str, Any]]: | |
"""Score new hypothesis by `self.part_scorers`. | |
Args: | |
hyp (Hypothesis): Hypothesis with prefix tokens to score | |
ids (torch.Tensor): 1D tensor of new partial tokens to score | |
x (torch.Tensor): Corresponding input feature | |
Returns: | |
Tuple[Dict[str, torch.Tensor], Dict[str, Any]]: Tuple of | |
score dict of `hyp` that has string keys of `self.part_scorers` | |
and tensor score values of shape: `(len(ids),)`, | |
and state dict that has string keys | |
and state values of `self.part_scorers` | |
""" | |
scores = dict() | |
states = dict() | |
for k, d in self.part_scorers.items(): | |
scores[k], states[k] = d.score_partial(hyp.yseq, ids, hyp.states[k], x) | |
return scores, states | |
def beam( | |
self, weighted_scores: torch.Tensor, ids: torch.Tensor | |
) -> Tuple[torch.Tensor, torch.Tensor]: | |
"""Compute topk full token ids and partial token ids. | |
Args: | |
weighted_scores (torch.Tensor): The weighted sum scores for each | |
tokens. | |
Its shape is `(self.n_vocab,)`. | |
ids (torch.Tensor): The partial token ids to compute topk | |
Returns: | |
Tuple[torch.Tensor, torch.Tensor]: | |
The topk full token ids and partial token ids. | |
Their shapes are `(self.beam_size,)` | |
""" | |
# no pre beam performed | |
if weighted_scores.size(0) == ids.size(0): | |
top_ids = weighted_scores.topk(self.beam_size)[1] | |
return top_ids, top_ids | |
# mask pruned in pre-beam not to select in topk | |
tmp = weighted_scores[ids] | |
weighted_scores[:] = -float("inf") | |
weighted_scores[ids] = tmp | |
top_ids = weighted_scores.topk(self.beam_size)[1] | |
local_ids = weighted_scores[ids].topk(self.beam_size)[1] | |
return top_ids, local_ids | |
def merge_scores( | |
prev_scores: Dict[str, float], | |
next_full_scores: Dict[str, torch.Tensor], | |
full_idx: int, | |
next_part_scores: Dict[str, torch.Tensor], | |
part_idx: int, | |
) -> Dict[str, torch.Tensor]: | |
"""Merge scores for new hypothesis. | |
Args: | |
prev_scores (Dict[str, float]): | |
The previous hypothesis scores by `self.scorers` | |
next_full_scores (Dict[str, torch.Tensor]): scores by | |
`self.full_scorers` | |
full_idx (int): The next token id for `next_full_scores` | |
next_part_scores (Dict[str, torch.Tensor]): | |
scores of partial tokens by `self.part_scorers` | |
part_idx (int): The new token id for `next_part_scores` | |
Returns: | |
Dict[str, torch.Tensor]: The new score dict. | |
Its keys are names of `self.full_scorers` and | |
`self.part_scorers`. | |
Its values are scalar tensors by the scorers. | |
""" | |
new_scores = dict() | |
for k, v in next_full_scores.items(): | |
new_scores[k] = prev_scores[k] + v[full_idx] | |
for k, v in next_part_scores.items(): | |
new_scores[k] = prev_scores[k] + v[part_idx] | |
return new_scores | |
def merge_states(self, states: Any, part_states: Any, part_idx: int) -> Any: | |
"""Merge states for new hypothesis. | |
Args: | |
states: states of `self.full_scorers` | |
part_states: states of `self.part_scorers` | |
part_idx (int): The new token id for `part_scores` | |
Returns: | |
Dict[str, torch.Tensor]: The new score dict. | |
Its keys are names of `self.full_scorers` and | |
`self.part_scorers`. | |
Its values are states of the scorers. | |
""" | |
new_states = dict() | |
for k, v in states.items(): | |
new_states[k] = v | |
for k, d in self.part_scorers.items(): | |
new_states[k] = d.select_state(part_states[k], part_idx) | |
return new_states | |
def search( | |
self, running_hyps: List[Hypothesis], x: torch.Tensor, am_score: torch.Tensor | |
) -> List[Hypothesis]: | |
"""Search new tokens for running hypotheses and encoded speech x. | |
Args: | |
running_hyps (List[Hypothesis]): Running hypotheses on beam | |
x (torch.Tensor): Encoded speech feature (T, D) | |
Returns: | |
List[Hypotheses]: Best sorted hypotheses | |
""" | |
best_hyps = [] | |
part_ids = torch.arange(self.n_vocab, device=x.device) # no pre-beam | |
for hyp in running_hyps: | |
# scoring | |
weighted_scores = torch.zeros(self.n_vocab, dtype=x.dtype, device=x.device) | |
weighted_scores += am_score | |
scores, states = self.score_full(hyp, x) | |
for k in self.full_scorers: | |
weighted_scores += self.weights[k] * scores[k] | |
# partial scoring | |
if self.do_pre_beam: | |
pre_beam_scores = ( | |
weighted_scores | |
if self.pre_beam_score_key == "full" | |
else scores[self.pre_beam_score_key] | |
) | |
part_ids = torch.topk(pre_beam_scores, self.pre_beam_size)[1] | |
part_scores, part_states = self.score_partial(hyp, part_ids, x) | |
for k in self.part_scorers: | |
weighted_scores[part_ids] += self.weights[k] * part_scores[k] | |
# add previous hyp score | |
weighted_scores += hyp.score | |
# update hyps | |
for j, part_j in zip(*self.beam(weighted_scores, part_ids)): | |
# will be (2 x beam at most) | |
best_hyps.append( | |
Hypothesis( | |
score=weighted_scores[j], | |
yseq=self.append_token(hyp.yseq, j), | |
scores=self.merge_scores( | |
hyp.scores, scores, j, part_scores, part_j | |
), | |
states=self.merge_states(states, part_states, part_j), | |
) | |
) | |
# sort and prune 2 x beam -> beam | |
best_hyps = sorted(best_hyps, key=lambda x: x.score, reverse=True)[ | |
: min(len(best_hyps), self.beam_size) | |
] | |
return best_hyps | |
def forward( | |
self, | |
x: torch.Tensor, | |
am_scores: torch.Tensor, | |
maxlenratio: float = 0.0, | |
minlenratio: float = 0.0, | |
) -> List[Hypothesis]: | |
"""Perform beam search. | |
Args: | |
x (torch.Tensor): Encoded speech feature (T, D) | |
maxlenratio (float): Input length ratio to obtain max output length. | |
If maxlenratio=0.0 (default), it uses a end-detect function | |
to automatically find maximum hypothesis lengths | |
If maxlenratio<0.0, its absolute value is interpreted | |
as a constant max output length. | |
minlenratio (float): Input length ratio to obtain min output length. | |
Returns: | |
list[Hypothesis]: N-best decoding results | |
""" | |
# set length bounds | |
maxlen = am_scores.shape[0] | |
# main loop of prefix search | |
running_hyps = self.init_hyp(x) | |
ended_hyps = [] | |
for i in range(maxlen): | |
best = self.search(running_hyps, x, am_scores[i]) | |
# post process of one iteration | |
running_hyps = self.post_process(i, maxlen, maxlenratio, best, ended_hyps) | |
# end detection | |
if maxlenratio == 0.0 and end_detect([h.asdict() for h in ended_hyps], i): | |
break | |
nbest_hyps = sorted(ended_hyps, key=lambda x: x.score, reverse=True) | |
# check the number of hypotheses reaching to eos | |
if len(nbest_hyps) == 0: | |
return ( | |
[] | |
if minlenratio < 0.1 | |
else self.forward(x, maxlenratio, max(0.0, minlenratio - 0.1)) | |
) | |
best = nbest_hyps[0] | |
return nbest_hyps | |
def post_process( | |
self, | |
i: int, | |
maxlen: int, | |
maxlenratio: float, | |
running_hyps: List[Hypothesis], | |
ended_hyps: List[Hypothesis], | |
) -> List[Hypothesis]: | |
"""Perform post-processing of beam search iterations. | |
Args: | |
i (int): The length of hypothesis tokens. | |
maxlen (int): The maximum length of tokens in beam search. | |
maxlenratio (int): The maximum length ratio in beam search. | |
running_hyps (List[Hypothesis]): The running hypotheses in beam | |
search. | |
ended_hyps (List[Hypothesis]): The ended hypotheses in beam search. | |
Returns: | |
List[Hypothesis]: The new running hypotheses. | |
""" | |
# add eos in the final loop to avoid that there are no ended hyps | |
if i == maxlen - 1: | |
# logging.info("adding <eos> in the last position in the loop") | |
running_hyps = [ | |
h._replace(yseq=self.append_token(h.yseq, self.eos)) | |
for h in running_hyps | |
] | |
# add ended hypotheses to a final list, and removed them from current | |
# hypotheses | |
# (this will be a problem, number of hyps < beam) | |
remained_hyps = [] | |
for hyp in running_hyps: | |
if hyp.yseq[-1] == self.eos: | |
# e.g., Word LM needs to add final <eos> score | |
for k, d in chain(self.full_scorers.items(), self.part_scorers.items()): | |
s = d.final_score(hyp.states[k]) | |
hyp.scores[k] += s | |
hyp = hyp._replace(score=hyp.score + self.weights[k] * s) | |
ended_hyps.append(hyp) | |
else: | |
remained_hyps.append(hyp) | |
return remained_hyps | |
def build_beam_search(model, args, device): | |
scorers = {} | |
if model.ctc is not None: | |
ctc = CTCPrefixScorer(ctc=model.ctc, eos=model.eos) | |
scorers.update(ctc=ctc) | |
weights = dict( | |
decoder=1.0 - args.ctc_weight, | |
ctc=args.ctc_weight, | |
length_bonus=args.penalty, | |
) | |
beam_search = BeamSearchCIF( | |
beam_size=args.beam_size, | |
weights=weights, | |
scorers=scorers, | |
sos=model.sos, | |
eos=model.eos, | |
vocab_size=model.vocab_size, | |
pre_beam_score_key=None if args.ctc_weight == 1.0 else "full", | |
) | |
beam_search.to(device=device, dtype=torch.float32).eval() | |
return beam_search | |