support u2pp cli and server, optimiz code of u2pp decode, test=asr

pull/2489/head
tianhao zhang 2 years ago
parent d3e5937591
commit 5bbe6e9897

@ -21,7 +21,7 @@ engine_list: ['asr_online']
################################### ASR ######################################### ################################### ASR #########################################
################### speech task: asr; engine_type: online ####################### ################### speech task: asr; engine_type: online #######################
asr_online: asr_online:
model_type: 'conformer_online_wenetspeech' model_type: 'conformer_u2pp_online_wenetspeech'
am_model: # the pdmodel file of am static model [optional] am_model: # the pdmodel file of am static model [optional]
am_params: # the pdiparams file of am static model [optional] am_params: # the pdiparams file of am static model [optional]
lang: 'zh' lang: 'zh'

@ -9,6 +9,7 @@ Acoustic Model | Training Data | Token-based | Size | Descriptions | CER | WER |
[Ds2 Online Aishell ASR0 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr0/asr0_deepspeech2_online_aishell_fbank161_ckpt_0.2.1.model.tar.gz) | Aishell Dataset | Char-based | 491 MB | 2 Conv + 5 LSTM layers | 0.0666 |-| 151 h | [D2 Online Aishell ASR0](../../examples/aishell/asr0) | onnx/inference/python | [Ds2 Online Aishell ASR0 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr0/asr0_deepspeech2_online_aishell_fbank161_ckpt_0.2.1.model.tar.gz) | Aishell Dataset | Char-based | 491 MB | 2 Conv + 5 LSTM layers | 0.0666 |-| 151 h | [D2 Online Aishell ASR0](../../examples/aishell/asr0) | onnx/inference/python |
[Ds2 Offline Aishell ASR0 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr0/asr0_deepspeech2_offline_aishell_ckpt_1.0.1.model.tar.gz)| Aishell Dataset | Char-based | 1.4 GB | 2 Conv + 5 bidirectional LSTM layers| 0.0554 |-| 151 h | [Ds2 Offline Aishell ASR0](../../examples/aishell/asr0) | inference/python | [Ds2 Offline Aishell ASR0 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr0/asr0_deepspeech2_offline_aishell_ckpt_1.0.1.model.tar.gz)| Aishell Dataset | Char-based | 1.4 GB | 2 Conv + 5 bidirectional LSTM layers| 0.0554 |-| 151 h | [Ds2 Offline Aishell ASR0](../../examples/aishell/asr0) | inference/python |
[Conformer Online Wenetspeech ASR1 Model](https://paddlespeech.bj.bcebos.com/s2t/wenetspeech/asr1/asr1_chunk_conformer_wenetspeech_ckpt_1.0.0a.model.tar.gz) | WenetSpeech Dataset | Char-based | 457 MB | Encoder:Conformer, Decoder:Transformer, Decoding method: Attention rescoring| 0.11 (test\_net) 0.1879 (test\_meeting) |-| 10000 h |- | python | [Conformer Online Wenetspeech ASR1 Model](https://paddlespeech.bj.bcebos.com/s2t/wenetspeech/asr1/asr1_chunk_conformer_wenetspeech_ckpt_1.0.0a.model.tar.gz) | WenetSpeech Dataset | Char-based | 457 MB | Encoder:Conformer, Decoder:Transformer, Decoding method: Attention rescoring| 0.11 (test\_net) 0.1879 (test\_meeting) |-| 10000 h |- | python |
[Conformer U2PP Online Wenetspeech ASR1 Model](https://paddlespeech.bj.bcebos.com/s2t/wenetspeech/asr1/asr1_chunk_conformer_u2pp_wenetspeech_ckpt_1.1.1.model.tar.gz) | WenetSpeech Dataset | Char-based | 476 MB | Encoder:Conformer, Decoder:BiTransformer, Decoding method: Attention rescoring| 0.047198 (aishell test\_-1) 0.059212 (aishell test\_16) |-| 10000 h |- | python |
[Conformer Online Aishell ASR1 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr1/asr1_chunk_conformer_aishell_ckpt_0.2.0.model.tar.gz) | Aishell Dataset | Char-based | 189 MB | Encoder:Conformer, Decoder:Transformer, Decoding method: Attention rescoring| 0.0544 |-| 151 h | [Conformer Online Aishell ASR1](../../examples/aishell/asr1) | python | [Conformer Online Aishell ASR1 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr1/asr1_chunk_conformer_aishell_ckpt_0.2.0.model.tar.gz) | Aishell Dataset | Char-based | 189 MB | Encoder:Conformer, Decoder:Transformer, Decoding method: Attention rescoring| 0.0544 |-| 151 h | [Conformer Online Aishell ASR1](../../examples/aishell/asr1) | python |
[Conformer Offline Aishell ASR1 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr1/asr1_conformer_aishell_ckpt_1.0.1.model.tar.gz) | Aishell Dataset | Char-based | 189 MB | Encoder:Conformer, Decoder:Transformer, Decoding method: Attention rescoring | 0.0460 |-| 151 h | [Conformer Offline Aishell ASR1](../../examples/aishell/asr1) | python | [Conformer Offline Aishell ASR1 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr1/asr1_conformer_aishell_ckpt_1.0.1.model.tar.gz) | Aishell Dataset | Char-based | 189 MB | Encoder:Conformer, Decoder:Transformer, Decoding method: Attention rescoring | 0.0460 |-| 151 h | [Conformer Offline Aishell ASR1](../../examples/aishell/asr1) | python |
[Transformer Aishell ASR1 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr1/asr1_transformer_aishell_ckpt_0.1.1.model.tar.gz) | Aishell Dataset | Char-based | 128 MB | Encoder:Transformer, Decoder:Transformer, Decoding method: Attention rescoring | 0.0523 || 151 h | [Transformer Aishell ASR1](../../examples/aishell/asr1) | python | [Transformer Aishell ASR1 Model](https://paddlespeech.bj.bcebos.com/s2t/aishell/asr1/asr1_transformer_aishell_ckpt_0.1.1.model.tar.gz) | Aishell Dataset | Char-based | 128 MB | Encoder:Transformer, Decoder:Transformer, Decoding method: Attention rescoring | 0.0523 || 151 h | [Transformer Aishell ASR1](../../examples/aishell/asr1) | python |

@ -51,7 +51,7 @@ class ASRExecutor(BaseExecutor):
self.parser.add_argument( self.parser.add_argument(
'--model', '--model',
type=str, type=str,
default='conformer_wenetspeech', default='conformer_u2pp_wenetspeech',
choices=[ choices=[
tag[:tag.index('-')] tag[:tag.index('-')]
for tag in self.task_resource.pretrained_models.keys() for tag in self.task_resource.pretrained_models.keys()
@ -465,7 +465,7 @@ class ASRExecutor(BaseExecutor):
@stats_wrapper @stats_wrapper
def __call__(self, def __call__(self,
audio_file: os.PathLike, audio_file: os.PathLike,
model: str='conformer_wenetspeech', model: str='conformer_u2pp_wenetspeech',
lang: str='zh', lang: str='zh',
sample_rate: int=16000, sample_rate: int=16000,
config: os.PathLike=None, config: os.PathLike=None,

@ -25,6 +25,8 @@ model_alias = {
"deepspeech2online": ["paddlespeech.s2t.models.ds2:DeepSpeech2Model"], "deepspeech2online": ["paddlespeech.s2t.models.ds2:DeepSpeech2Model"],
"conformer": ["paddlespeech.s2t.models.u2:U2Model"], "conformer": ["paddlespeech.s2t.models.u2:U2Model"],
"conformer_online": ["paddlespeech.s2t.models.u2:U2Model"], "conformer_online": ["paddlespeech.s2t.models.u2:U2Model"],
"conformer_u2pp": ["paddlespeech.s2t.models.u2:U2Model"],
"conformer_u2pp_online": ["paddlespeech.s2t.models.u2:U2Model"],
"transformer": ["paddlespeech.s2t.models.u2:U2Model"], "transformer": ["paddlespeech.s2t.models.u2:U2Model"],
"wenetspeech": ["paddlespeech.s2t.models.u2:U2Model"], "wenetspeech": ["paddlespeech.s2t.models.u2:U2Model"],

@ -68,6 +68,46 @@ asr_dynamic_pretrained_models = {
'', '',
}, },
}, },
"conformer_u2pp_wenetspeech-zh-16k": {
'1.0': {
'url':
'https://paddlespeech.bj.bcebos.com/s2t/wenetspeech/asr1/asr1_chunk_conformer_u2pp_wenetspeech_ckpt_1.1.1.model.tar.gz',
'md5':
'eae678c04ed3b3f89672052fdc0c5e10',
'cfg_path':
'model.yaml',
'ckpt_path':
'exp/chunk_conformer_u2pp/checkpoints/avg_10',
'model':
'exp/chunk_conformer_u2pp/checkpoints/avg_10.pdparams',
'params':
'exp/chunk_conformer_u2pp/checkpoints/avg_10.pdparams',
'lm_url':
'',
'lm_md5':
'',
},
},
"conformer_u2pp_online_wenetspeech-zh-16k": {
'1.0': {
'url':
'https://paddlespeech.bj.bcebos.com/s2t/wenetspeech/asr1/asr1_chunk_conformer_u2pp_wenetspeech_ckpt_1.1.2.model.tar.gz',
'md5':
'925d047e9188dea7f421a718230c9ae3',
'cfg_path':
'model.yaml',
'ckpt_path':
'exp/chunk_conformer_u2pp/checkpoints/avg_10',
'model':
'exp/chunk_conformer_u2pp/checkpoints/avg_10.pdparams',
'params':
'exp/chunk_conformer_u2pp/checkpoints/avg_10.pdparams',
'lm_url':
'',
'lm_md5':
'',
},
},
"conformer_online_multicn-zh-16k": { "conformer_online_multicn-zh-16k": {
'1.0': { '1.0': {
'url': 'url':

@ -40,7 +40,6 @@ class U2Infer():
self.preprocess_conf = config.preprocess_config self.preprocess_conf = config.preprocess_config
self.preprocess_args = {"train": False} self.preprocess_args = {"train": False}
self.preprocessing = Transformation(self.preprocess_conf) self.preprocessing = Transformation(self.preprocess_conf)
self.reverse_weight = getattr(config.model_conf, 'reverse_weight', 0.0)
self.text_feature = TextFeaturizer( self.text_feature = TextFeaturizer(
unit_type=config.unit_type, unit_type=config.unit_type,
vocab=config.vocab_filepath, vocab=config.vocab_filepath,
@ -89,8 +88,7 @@ class U2Infer():
ctc_weight=decode_config.ctc_weight, ctc_weight=decode_config.ctc_weight,
decoding_chunk_size=decode_config.decoding_chunk_size, decoding_chunk_size=decode_config.decoding_chunk_size,
num_decoding_left_chunks=decode_config.num_decoding_left_chunks, num_decoding_left_chunks=decode_config.num_decoding_left_chunks,
simulate_streaming=decode_config.simulate_streaming, simulate_streaming=decode_config.simulate_streaming)
reverse_weight=self.reverse_weight)
rsl = result_transcripts[0][0] rsl = result_transcripts[0][0]
utt = Path(self.audio_file).name utt = Path(self.audio_file).name
logger.info(f"hyp: {utt} {result_transcripts[0][0]}") logger.info(f"hyp: {utt} {result_transcripts[0][0]}")

@ -316,7 +316,6 @@ class U2Tester(U2Trainer):
vocab=self.config.vocab_filepath, vocab=self.config.vocab_filepath,
spm_model_prefix=self.config.spm_model_prefix) spm_model_prefix=self.config.spm_model_prefix)
self.vocab_list = self.text_feature.vocab_list self.vocab_list = self.text_feature.vocab_list
self.reverse_weight = getattr(config.model_conf, 'reverse_weight', 0.0)
def id2token(self, texts, texts_len, text_feature): def id2token(self, texts, texts_len, text_feature):
""" ord() id to chr() chr """ """ ord() id to chr() chr """
@ -351,8 +350,7 @@ class U2Tester(U2Trainer):
ctc_weight=decode_config.ctc_weight, ctc_weight=decode_config.ctc_weight,
decoding_chunk_size=decode_config.decoding_chunk_size, decoding_chunk_size=decode_config.decoding_chunk_size,
num_decoding_left_chunks=decode_config.num_decoding_left_chunks, num_decoding_left_chunks=decode_config.num_decoding_left_chunks,
simulate_streaming=decode_config.simulate_streaming, simulate_streaming=decode_config.simulate_streaming)
reverse_weight=self.reverse_weight)
decode_time = time.time() - start_time decode_time = time.time() - start_time
for utt, target, result, rec_tids in zip( for utt, target, result, rec_tids in zip(

@ -507,16 +507,14 @@ class U2BaseModel(ASRInterface, nn.Layer):
num_decoding_left_chunks, simulate_streaming) num_decoding_left_chunks, simulate_streaming)
return hyps[0][0] return hyps[0][0]
def attention_rescoring( def attention_rescoring(self,
self,
speech: paddle.Tensor, speech: paddle.Tensor,
speech_lengths: paddle.Tensor, speech_lengths: paddle.Tensor,
beam_size: int, beam_size: int,
decoding_chunk_size: int=-1, decoding_chunk_size: int=-1,
num_decoding_left_chunks: int=-1, num_decoding_left_chunks: int=-1,
ctc_weight: float=0.0, ctc_weight: float=0.0,
simulate_streaming: bool=False, simulate_streaming: bool=False) -> List[int]:
reverse_weight: float=0.0, ) -> List[int]:
""" Apply attention rescoring decoding, CTC prefix beam search """ Apply attention rescoring decoding, CTC prefix beam search
is applied first to get nbest, then we resoring the nbest on is applied first to get nbest, then we resoring the nbest on
attention decoder with corresponding encoder out attention decoder with corresponding encoder out
@ -536,7 +534,7 @@ class U2BaseModel(ASRInterface, nn.Layer):
""" """
assert speech.shape[0] == speech_lengths.shape[0] assert speech.shape[0] == speech_lengths.shape[0]
assert decoding_chunk_size != 0 assert decoding_chunk_size != 0
if reverse_weight > 0.0: if self.reverse_weight > 0.0:
# decoder should be a bitransformer decoder if reverse_weight > 0.0 # decoder should be a bitransformer decoder if reverse_weight > 0.0
assert hasattr(self.decoder, 'right_decoder') assert hasattr(self.decoder, 'right_decoder')
device = speech.place device = speech.place
@ -574,7 +572,7 @@ class U2BaseModel(ASRInterface, nn.Layer):
self.eos) self.eos)
decoder_out, r_decoder_out, _ = self.decoder( decoder_out, r_decoder_out, _ = self.decoder(
encoder_out, encoder_mask, hyps_pad, hyps_lens, r_hyps_pad, encoder_out, encoder_mask, hyps_pad, hyps_lens, r_hyps_pad,
reverse_weight) # (beam_size, max_hyps_len, vocab_size) self.reverse_weight) # (beam_size, max_hyps_len, vocab_size)
# ctc score in ln domain # ctc score in ln domain
decoder_out = paddle.nn.functional.log_softmax(decoder_out, axis=-1) decoder_out = paddle.nn.functional.log_softmax(decoder_out, axis=-1)
decoder_out = decoder_out.numpy() decoder_out = decoder_out.numpy()
@ -594,12 +592,13 @@ class U2BaseModel(ASRInterface, nn.Layer):
score += decoder_out[i][j][w] score += decoder_out[i][j][w]
# last decoder output token is `eos`, for laste decoder input token. # last decoder output token is `eos`, for laste decoder input token.
score += decoder_out[i][len(hyp[0])][self.eos] score += decoder_out[i][len(hyp[0])][self.eos]
if reverse_weight > 0: if self.reverse_weight > 0:
r_score = 0.0 r_score = 0.0
for j, w in enumerate(hyp[0]): for j, w in enumerate(hyp[0]):
r_score += r_decoder_out[i][len(hyp[0]) - j - 1][w] r_score += r_decoder_out[i][len(hyp[0]) - j - 1][w]
r_score += r_decoder_out[i][len(hyp[0])][self.eos] r_score += r_decoder_out[i][len(hyp[0])][self.eos]
score = score * (1 - reverse_weight) + r_score * reverse_weight score = score * (1 - self.reverse_weight
) + r_score * self.reverse_weight
# add ctc score (which in ln domain) # add ctc score (which in ln domain)
score += hyp[1] * ctc_weight score += hyp[1] * ctc_weight
if score > best_score: if score > best_score:
@ -748,8 +747,7 @@ class U2BaseModel(ASRInterface, nn.Layer):
ctc_weight: float=0.0, ctc_weight: float=0.0,
decoding_chunk_size: int=-1, decoding_chunk_size: int=-1,
num_decoding_left_chunks: int=-1, num_decoding_left_chunks: int=-1,
simulate_streaming: bool=False, simulate_streaming: bool=False):
reverse_weight: float=0.0):
"""u2 decoding. """u2 decoding.
Args: Args:
@ -821,8 +819,7 @@ class U2BaseModel(ASRInterface, nn.Layer):
decoding_chunk_size=decoding_chunk_size, decoding_chunk_size=decoding_chunk_size,
num_decoding_left_chunks=num_decoding_left_chunks, num_decoding_left_chunks=num_decoding_left_chunks,
ctc_weight=ctc_weight, ctc_weight=ctc_weight,
simulate_streaming=simulate_streaming, simulate_streaming=simulate_streaming)
reverse_weight=reverse_weight)
hyps = [hyp] hyps = [hyp]
else: else:
raise ValueError(f"Not support decoding method: {decoding_method}") raise ValueError(f"Not support decoding method: {decoding_method}")

@ -30,7 +30,7 @@ asr_online:
decode_method: decode_method:
num_decoding_left_chunks: -1 num_decoding_left_chunks: -1
force_yes: True force_yes: True
device: # cpu or gpu:id device: gpu # cpu or gpu:id
continuous_decoding: True # enable continue decoding when endpoint detected continuous_decoding: True # enable continue decoding when endpoint detected
am_predictor_conf: am_predictor_conf:

@ -22,6 +22,7 @@ from numpy import float32
from yacs.config import CfgNode from yacs.config import CfgNode
from paddlespeech.audio.transform.transformation import Transformation from paddlespeech.audio.transform.transformation import Transformation
from paddlespeech.audio.utils.tensor_utils import st_reverse_pad_list
from paddlespeech.cli.asr.infer import ASRExecutor from paddlespeech.cli.asr.infer import ASRExecutor
from paddlespeech.cli.log import logger from paddlespeech.cli.log import logger
from paddlespeech.resource import CommonTaskResource from paddlespeech.resource import CommonTaskResource
@ -603,24 +604,31 @@ class PaddleASRConnectionHanddler:
hyps_pad = pad_sequence( hyps_pad = pad_sequence(
hyp_list, batch_first=True, padding_value=self.model.ignore_id) hyp_list, batch_first=True, padding_value=self.model.ignore_id)
ori_hyps_pad = hyps_pad
hyps_lens = paddle.to_tensor( hyps_lens = paddle.to_tensor(
[len(hyp[0]) for hyp in hyps], place=self.device, [len(hyp[0]) for hyp in hyps], place=self.device,
dtype=paddle.long) # (beam_size,) dtype=paddle.long) # (beam_size,)
hyps_pad, _ = add_sos_eos(hyps_pad, self.model.sos, self.model.eos, hyps_pad, _ = add_sos_eos(hyps_pad, self.model.sos, self.model.eos,
self.model.ignore_id) self.model.ignore_id)
hyps_lens = hyps_lens + 1 # Add <sos> at begining hyps_lens = hyps_lens + 1 # Add <sos> at begining
encoder_out = self.encoder_out.repeat(beam_size, 1, 1) encoder_out = self.encoder_out.repeat(beam_size, 1, 1)
encoder_mask = paddle.ones( encoder_mask = paddle.ones(
(beam_size, 1, encoder_out.shape[1]), dtype=paddle.bool) (beam_size, 1, encoder_out.shape[1]), dtype=paddle.bool)
decoder_out, _, _ = self.model.decoder( r_hyps_pad = st_reverse_pad_list(ori_hyps_pad, hyps_lens - 1,
encoder_out, encoder_mask, hyps_pad, self.model.sos, self.model.eos)
hyps_lens) # (beam_size, max_hyps_len, vocab_size) decoder_out, r_decoder_out, _ = self.model.decoder(
encoder_out, encoder_mask, hyps_pad, hyps_lens, r_hyps_pad,
self.model.reverse_weight) # (beam_size, max_hyps_len, vocab_size)
# ctc score in ln domain # ctc score in ln domain
decoder_out = paddle.nn.functional.log_softmax(decoder_out, axis=-1) decoder_out = paddle.nn.functional.log_softmax(decoder_out, axis=-1)
decoder_out = decoder_out.numpy() decoder_out = decoder_out.numpy()
# r_decoder_out will be 0.0, if reverse_weight is 0.0 or decoder is a
# conventional transformer decoder.
r_decoder_out = paddle.nn.functional.log_softmax(r_decoder_out, axis=-1)
r_decoder_out = r_decoder_out.numpy()
# Only use decoder score for rescoring # Only use decoder score for rescoring
best_score = -float('inf') best_score = -float('inf')
best_index = 0 best_index = 0
@ -632,6 +640,13 @@ class PaddleASRConnectionHanddler:
# last decoder output token is `eos`, for laste decoder input token. # last decoder output token is `eos`, for laste decoder input token.
score += decoder_out[i][len(hyp[0])][self.model.eos] score += decoder_out[i][len(hyp[0])][self.model.eos]
if self.model.reverse_weight > 0:
r_score = 0.0
for j, w in enumerate(hyp[0]):
r_score += r_decoder_out[i][len(hyp[0]) - j - 1][w]
r_score += r_decoder_out[i][len(hyp[0])][self.model.eos]
score = score * (1 - self.model.reverse_weight
) + r_score * self.model.reverse_weight
# add ctc score (which in ln domain) # add ctc score (which in ln domain)
score += hyp[1] * self.ctc_decode_config.ctc_weight score += hyp[1] * self.ctc_decode_config.ctc_weight

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