| 12345678910111213141516171819202122232425262728293031323334353637383940414243444546474849505152535455565758596061626364656667686970717273747576777879808182838485868788899091929394959697989910010110210310410510610710810911011111211311411511611711811912012112212312412512612712812913013113213313413513613713813914014114214314414514614714814915015115215315415515615715815916016116216316416516616716816917017117217317417517617717817918018118218318418518618718818919019119219319419519619719819920020120220320420520620720820921021121221321421521621721821922022122222322422522622722822923023123223323423523623723823924024124224324424524624724824925025125225325425525625725825926026126226326426526626726826927027127227327427527627727827928028128228328428528628728828929029129229329429529629729829930030130230330430530630730830931031131231331431531631731831932032132232332432532632732832933033133233333433533633733833934034134234334434534634734834935035135235335435535635735835936036136236336436536636736836937037137237337437537637737837938038138238338438538638738838939039139239339439539639739839940040140240340440540640740840941041141241341441541641741841942042142242342442542642742842943043143243343443543643743843944044144244344444544644744844945045145245345445545645745845946046146246346446546646746846947047147247347447547647747847948048148248348448548648748848949049149249349449549649749849950050150250350450550650750850951051151251351451551651751851952052152252352452552652752852953053153253353453553653753853954054154254354454554654754854955055155255355455555655755855956056156256356456556656756856957057157257357457557657757857958058158258358458558658758858959059159259359459559659759859960060160260360460560660760860961061161261361461561661761861962062162262362462562662762862963063163263363463563663763863964064164264364464564664764864965065165265365465565665765865966066166266366466566666766866967067167267367467567667767867968068168268368468568668768868969069169269369469569669769869970070170270370470570670770870971071171271371471571671771871972072172272372472572672772872973073173273373473573673773873974074174274374474574674774874975075175275375475575675775875976076176276376476576676776876977077177277377477577677777877978078178278378478578678778878979079179279379479579679779879980080180280380480580680780880981081181281381481581681781881982082182282382482582682782882983083183283383483583683783883984084184284384484584684784884985085185285385485585685785885986086186286386486586686786886987087187287387487587687787887988088188288388488588688788888989089189289389489589689789889990090190290390490590690790890991091191291391491591691791891992092192292392492592692792892993093193293393493593693793893994094194294394494594694794894995095195295395495595695795895996096196296396496596696796896997097197297397497597697797897998098198298398498598698798898999099199299399499599699799899910001001100210031004100510061007100810091010101110121013101410151016101710181019102010211022102310241025102610271028102910301031103210331034103510361037103810391040104110421043104410451046104710481049105010511052105310541055105610571058105910601061106210631064106510661067106810691070107110721073107410751076107710781079108010811082108310841085108610871088108910901091109210931094109510961097109810991100110111021103110411051106110711081109111011111112111311141115111611171118111911201121112211231124112511261127112811291130113111321133113411351136113711381139114011411142114311441145114611471148114911501151115211531154115511561157115811591160116111621163116411651166116711681169117011711172117311741175117611771178117911801181118211831184118511861187118811891190119111921193119411951196119711981199120012011202120312041205120612071208120912101211121212131214121512161217121812191220122112221223122412251226122712281229123012311232123312341235123612371238 |
- # Copyright 2020 Tomoki Hayashi
- # Apache 2.0 (http://www.apache.org/licenses/LICENSE-2.0)
- """Conformer encoder definition."""
- import logging
- from typing import List
- from typing import Optional
- from typing import Tuple
- from typing import Union
- from typing import Dict
- import torch
- from torch import nn
- from typeguard import check_argument_types
- from funasr.models.ctc import CTC
- from funasr.modules.attention import (
- MultiHeadedAttention, # noqa: H301
- RelPositionMultiHeadedAttention, # noqa: H301
- RelPositionMultiHeadedAttentionChunk,
- LegacyRelPositionMultiHeadedAttention, # noqa: H301
- )
- from funasr.models.encoder.abs_encoder import AbsEncoder
- from funasr.modules.embedding import (
- PositionalEncoding, # noqa: H301
- ScaledPositionalEncoding, # noqa: H301
- RelPositionalEncoding, # noqa: H301
- LegacyRelPositionalEncoding, # noqa: H301
- StreamingRelPositionalEncoding,
- )
- from funasr.modules.layer_norm import LayerNorm
- from funasr.modules.multi_layer_conv import Conv1dLinear
- from funasr.modules.multi_layer_conv import MultiLayeredConv1d
- from funasr.modules.nets_utils import get_activation
- from funasr.modules.nets_utils import make_pad_mask
- from funasr.modules.nets_utils import (
- TooShortUttError,
- check_short_utt,
- make_chunk_mask,
- make_source_mask,
- )
- from funasr.modules.positionwise_feed_forward import (
- PositionwiseFeedForward, # noqa: H301
- )
- from funasr.modules.repeat import repeat, MultiBlocks
- from funasr.modules.subsampling import Conv2dSubsampling
- from funasr.modules.subsampling import Conv2dSubsampling2
- from funasr.modules.subsampling import Conv2dSubsampling6
- from funasr.modules.subsampling import Conv2dSubsampling8
- from funasr.modules.subsampling import TooShortUttError
- from funasr.modules.subsampling import check_short_utt
- from funasr.modules.subsampling import Conv2dSubsamplingPad
- from funasr.modules.subsampling import StreamingConvInput
- class ConvolutionModule(nn.Module):
- """ConvolutionModule in Conformer model.
- Args:
- channels (int): The number of channels of conv layers.
- kernel_size (int): Kernerl size of conv layers.
- """
- def __init__(self, channels, kernel_size, activation=nn.ReLU(), bias=True):
- """Construct an ConvolutionModule object."""
- super(ConvolutionModule, self).__init__()
- # kernerl_size should be a odd number for 'SAME' padding
- assert (kernel_size - 1) % 2 == 0
- self.pointwise_conv1 = nn.Conv1d(
- channels,
- 2 * channels,
- kernel_size=1,
- stride=1,
- padding=0,
- bias=bias,
- )
- self.depthwise_conv = nn.Conv1d(
- channels,
- channels,
- kernel_size,
- stride=1,
- padding=(kernel_size - 1) // 2,
- groups=channels,
- bias=bias,
- )
- self.norm = nn.BatchNorm1d(channels)
- self.pointwise_conv2 = nn.Conv1d(
- channels,
- channels,
- kernel_size=1,
- stride=1,
- padding=0,
- bias=bias,
- )
- self.activation = activation
- def forward(self, x):
- """Compute convolution module.
- Args:
- x (torch.Tensor): Input tensor (#batch, time, channels).
- Returns:
- torch.Tensor: Output tensor (#batch, time, channels).
- """
- # exchange the temporal dimension and the feature dimension
- x = x.transpose(1, 2)
- # GLU mechanism
- x = self.pointwise_conv1(x) # (batch, 2*channel, dim)
- x = nn.functional.glu(x, dim=1) # (batch, channel, dim)
- # 1D Depthwise Conv
- x = self.depthwise_conv(x)
- x = self.activation(self.norm(x))
- x = self.pointwise_conv2(x)
- return x.transpose(1, 2)
- class EncoderLayer(nn.Module):
- """Encoder layer module.
- Args:
- size (int): Input dimension.
- self_attn (torch.nn.Module): Self-attention module instance.
- `MultiHeadedAttention` or `RelPositionMultiHeadedAttention` instance
- can be used as the argument.
- feed_forward (torch.nn.Module): Feed-forward module instance.
- `PositionwiseFeedForward`, `MultiLayeredConv1d`, or `Conv1dLinear` instance
- can be used as the argument.
- feed_forward_macaron (torch.nn.Module): Additional feed-forward module instance.
- `PositionwiseFeedForward`, `MultiLayeredConv1d`, or `Conv1dLinear` instance
- can be used as the argument.
- conv_module (torch.nn.Module): Convolution module instance.
- `ConvlutionModule` instance can be used as the argument.
- dropout_rate (float): Dropout rate.
- normalize_before (bool): Whether to use layer_norm before the first block.
- concat_after (bool): Whether to concat attention layer's input and output.
- if True, additional linear will be applied.
- i.e. x -> x + linear(concat(x, att(x)))
- if False, no additional linear will be applied. i.e. x -> x + att(x)
- stochastic_depth_rate (float): Proability to skip this layer.
- During training, the layer may skip residual computation and return input
- as-is with given probability.
- """
- def __init__(
- self,
- size,
- self_attn,
- feed_forward,
- feed_forward_macaron,
- conv_module,
- dropout_rate,
- normalize_before=True,
- concat_after=False,
- stochastic_depth_rate=0.0,
- ):
- """Construct an EncoderLayer object."""
- super(EncoderLayer, self).__init__()
- self.self_attn = self_attn
- self.feed_forward = feed_forward
- self.feed_forward_macaron = feed_forward_macaron
- self.conv_module = conv_module
- self.norm_ff = LayerNorm(size) # for the FNN module
- self.norm_mha = LayerNorm(size) # for the MHA module
- if feed_forward_macaron is not None:
- self.norm_ff_macaron = LayerNorm(size)
- self.ff_scale = 0.5
- else:
- self.ff_scale = 1.0
- if self.conv_module is not None:
- self.norm_conv = LayerNorm(size) # for the CNN module
- self.norm_final = LayerNorm(size) # for the final output of the block
- self.dropout = nn.Dropout(dropout_rate)
- self.size = size
- self.normalize_before = normalize_before
- self.concat_after = concat_after
- if self.concat_after:
- self.concat_linear = nn.Linear(size + size, size)
- self.stochastic_depth_rate = stochastic_depth_rate
- def forward(self, x_input, mask, cache=None):
- """Compute encoded features.
- Args:
- x_input (Union[Tuple, torch.Tensor]): Input tensor w/ or w/o pos emb.
- - w/ pos emb: Tuple of tensors [(#batch, time, size), (1, time, size)].
- - w/o pos emb: Tensor (#batch, time, size).
- mask (torch.Tensor): Mask tensor for the input (#batch, time).
- cache (torch.Tensor): Cache tensor of the input (#batch, time - 1, size).
- Returns:
- torch.Tensor: Output tensor (#batch, time, size).
- torch.Tensor: Mask tensor (#batch, time).
- """
- if isinstance(x_input, tuple):
- x, pos_emb = x_input[0], x_input[1]
- else:
- x, pos_emb = x_input, None
- skip_layer = False
- # with stochastic depth, residual connection `x + f(x)` becomes
- # `x <- x + 1 / (1 - p) * f(x)` at training time.
- stoch_layer_coeff = 1.0
- if self.training and self.stochastic_depth_rate > 0:
- skip_layer = torch.rand(1).item() < self.stochastic_depth_rate
- stoch_layer_coeff = 1.0 / (1 - self.stochastic_depth_rate)
- if skip_layer:
- if cache is not None:
- x = torch.cat([cache, x], dim=1)
- if pos_emb is not None:
- return (x, pos_emb), mask
- return x, mask
- # whether to use macaron style
- if self.feed_forward_macaron is not None:
- residual = x
- if self.normalize_before:
- x = self.norm_ff_macaron(x)
- x = residual + stoch_layer_coeff * self.ff_scale * self.dropout(
- self.feed_forward_macaron(x)
- )
- if not self.normalize_before:
- x = self.norm_ff_macaron(x)
- # multi-headed self-attention module
- residual = x
- if self.normalize_before:
- x = self.norm_mha(x)
- if cache is None:
- x_q = x
- else:
- assert cache.shape == (x.shape[0], x.shape[1] - 1, self.size)
- x_q = x[:, -1:, :]
- residual = residual[:, -1:, :]
- mask = None if mask is None else mask[:, -1:, :]
- if pos_emb is not None:
- x_att = self.self_attn(x_q, x, x, pos_emb, mask)
- else:
- x_att = self.self_attn(x_q, x, x, mask)
- if self.concat_after:
- x_concat = torch.cat((x, x_att), dim=-1)
- x = residual + stoch_layer_coeff * self.concat_linear(x_concat)
- else:
- x = residual + stoch_layer_coeff * self.dropout(x_att)
- if not self.normalize_before:
- x = self.norm_mha(x)
- # convolution module
- if self.conv_module is not None:
- residual = x
- if self.normalize_before:
- x = self.norm_conv(x)
- x = residual + stoch_layer_coeff * self.dropout(self.conv_module(x))
- if not self.normalize_before:
- x = self.norm_conv(x)
- # feed forward module
- residual = x
- if self.normalize_before:
- x = self.norm_ff(x)
- x = residual + stoch_layer_coeff * self.ff_scale * self.dropout(
- self.feed_forward(x)
- )
- if not self.normalize_before:
- x = self.norm_ff(x)
- if self.conv_module is not None:
- x = self.norm_final(x)
- if cache is not None:
- x = torch.cat([cache, x], dim=1)
- if pos_emb is not None:
- return (x, pos_emb), mask
- return x, mask
- class ChunkEncoderLayer(torch.nn.Module):
- """Chunk Conformer module definition.
- Args:
- block_size: Input/output size.
- self_att: Self-attention module instance.
- feed_forward: Feed-forward module instance.
- feed_forward_macaron: Feed-forward module instance for macaron network.
- conv_mod: Convolution module instance.
- norm_class: Normalization module class.
- norm_args: Normalization module arguments.
- dropout_rate: Dropout rate.
- """
- def __init__(
- self,
- block_size: int,
- self_att: torch.nn.Module,
- feed_forward: torch.nn.Module,
- feed_forward_macaron: torch.nn.Module,
- conv_mod: torch.nn.Module,
- norm_class: torch.nn.Module = LayerNorm,
- norm_args: Dict = {},
- dropout_rate: float = 0.0,
- ) -> None:
- """Construct a Conformer object."""
- super().__init__()
- self.self_att = self_att
- self.feed_forward = feed_forward
- self.feed_forward_macaron = feed_forward_macaron
- self.feed_forward_scale = 0.5
- self.conv_mod = conv_mod
- self.norm_feed_forward = norm_class(block_size, **norm_args)
- self.norm_self_att = norm_class(block_size, **norm_args)
- self.norm_macaron = norm_class(block_size, **norm_args)
- self.norm_conv = norm_class(block_size, **norm_args)
- self.norm_final = norm_class(block_size, **norm_args)
- self.dropout = torch.nn.Dropout(dropout_rate)
- self.block_size = block_size
- self.cache = None
- def reset_streaming_cache(self, left_context: int, device: torch.device) -> None:
- """Initialize/Reset self-attention and convolution modules cache for streaming.
- Args:
- left_context: Number of left frames during chunk-by-chunk inference.
- device: Device to use for cache tensor.
- """
- self.cache = [
- torch.zeros(
- (1, left_context, self.block_size),
- device=device,
- ),
- torch.zeros(
- (
- 1,
- self.block_size,
- self.conv_mod.kernel_size - 1,
- ),
- device=device,
- ),
- ]
- def forward(
- self,
- x: torch.Tensor,
- pos_enc: torch.Tensor,
- mask: torch.Tensor,
- chunk_mask: Optional[torch.Tensor] = None,
- ) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]:
- """Encode input sequences.
- Args:
- x: Conformer input sequences. (B, T, D_block)
- pos_enc: Positional embedding sequences. (B, 2 * (T - 1), D_block)
- mask: Source mask. (B, T)
- chunk_mask: Chunk mask. (T_2, T_2)
- Returns:
- x: Conformer output sequences. (B, T, D_block)
- mask: Source mask. (B, T)
- pos_enc: Positional embedding sequences. (B, 2 * (T - 1), D_block)
- """
- residual = x
- x = self.norm_macaron(x)
- x = residual + self.feed_forward_scale * self.dropout(
- self.feed_forward_macaron(x)
- )
- residual = x
- x = self.norm_self_att(x)
- x_q = x
- x = residual + self.dropout(
- self.self_att(
- x_q,
- x,
- x,
- pos_enc,
- mask,
- chunk_mask=chunk_mask,
- )
- )
- residual = x
- x = self.norm_conv(x)
- x, _ = self.conv_mod(x)
- x = residual + self.dropout(x)
- residual = x
- x = self.norm_feed_forward(x)
- x = residual + self.feed_forward_scale * self.dropout(self.feed_forward(x))
- x = self.norm_final(x)
- return x, mask, pos_enc
- def chunk_forward(
- self,
- x: torch.Tensor,
- pos_enc: torch.Tensor,
- mask: torch.Tensor,
- chunk_size: int = 16,
- left_context: int = 0,
- right_context: int = 0,
- ) -> Tuple[torch.Tensor, torch.Tensor]:
- """Encode chunk of input sequence.
- Args:
- x: Conformer input sequences. (B, T, D_block)
- pos_enc: Positional embedding sequences. (B, 2 * (T - 1), D_block)
- mask: Source mask. (B, T_2)
- left_context: Number of frames in left context.
- right_context: Number of frames in right context.
- Returns:
- x: Conformer output sequences. (B, T, D_block)
- pos_enc: Positional embedding sequences. (B, 2 * (T - 1), D_block)
- """
- residual = x
- x = self.norm_macaron(x)
- x = residual + self.feed_forward_scale * self.feed_forward_macaron(x)
- residual = x
- x = self.norm_self_att(x)
- if left_context > 0:
- key = torch.cat([self.cache[0], x], dim=1)
- else:
- key = x
- val = key
- if right_context > 0:
- att_cache = key[:, -(left_context + right_context) : -right_context, :]
- else:
- att_cache = key[:, -left_context:, :]
- x = residual + self.self_att(
- x,
- key,
- val,
- pos_enc,
- mask,
- left_context=left_context,
- )
- residual = x
- x = self.norm_conv(x)
- x, conv_cache = self.conv_mod(
- x, cache=self.cache[1], right_context=right_context
- )
- x = residual + x
- residual = x
- x = self.norm_feed_forward(x)
- x = residual + self.feed_forward_scale * self.feed_forward(x)
- x = self.norm_final(x)
- self.cache = [att_cache, conv_cache]
- return x, pos_enc
- class ConformerEncoder(AbsEncoder):
- """Conformer encoder module.
- Args:
- input_size (int): Input dimension.
- output_size (int): Dimension of attention.
- attention_heads (int): The number of heads of multi head attention.
- linear_units (int): The number of units of position-wise feed forward.
- num_blocks (int): The number of decoder blocks.
- dropout_rate (float): Dropout rate.
- attention_dropout_rate (float): Dropout rate in attention.
- positional_dropout_rate (float): Dropout rate after adding positional encoding.
- input_layer (Union[str, torch.nn.Module]): Input layer type.
- normalize_before (bool): Whether to use layer_norm before the first block.
- concat_after (bool): Whether to concat attention layer's input and output.
- If True, additional linear will be applied.
- i.e. x -> x + linear(concat(x, att(x)))
- If False, no additional linear will be applied. i.e. x -> x + att(x)
- positionwise_layer_type (str): "linear", "conv1d", or "conv1d-linear".
- positionwise_conv_kernel_size (int): Kernel size of positionwise conv1d layer.
- rel_pos_type (str): Whether to use the latest relative positional encoding or
- the legacy one. The legacy relative positional encoding will be deprecated
- in the future. More Details can be found in
- https://github.com/espnet/espnet/pull/2816.
- encoder_pos_enc_layer_type (str): Encoder positional encoding layer type.
- encoder_attn_layer_type (str): Encoder attention layer type.
- activation_type (str): Encoder activation function type.
- macaron_style (bool): Whether to use macaron style for positionwise layer.
- use_cnn_module (bool): Whether to use convolution module.
- zero_triu (bool): Whether to zero the upper triangular part of attention matrix.
- cnn_module_kernel (int): Kernerl size of convolution module.
- padding_idx (int): Padding idx for input_layer=embed.
- """
- def __init__(
- self,
- input_size: int,
- output_size: int = 256,
- attention_heads: int = 4,
- linear_units: int = 2048,
- num_blocks: int = 6,
- dropout_rate: float = 0.1,
- positional_dropout_rate: float = 0.1,
- attention_dropout_rate: float = 0.0,
- input_layer: str = "conv2d",
- normalize_before: bool = True,
- concat_after: bool = False,
- positionwise_layer_type: str = "linear",
- positionwise_conv_kernel_size: int = 3,
- macaron_style: bool = False,
- rel_pos_type: str = "legacy",
- pos_enc_layer_type: str = "rel_pos",
- selfattention_layer_type: str = "rel_selfattn",
- activation_type: str = "swish",
- use_cnn_module: bool = True,
- zero_triu: bool = False,
- cnn_module_kernel: int = 31,
- padding_idx: int = -1,
- interctc_layer_idx: List[int] = [],
- interctc_use_conditioning: bool = False,
- stochastic_depth_rate: Union[float, List[float]] = 0.0,
- ):
- assert check_argument_types()
- super().__init__()
- self._output_size = output_size
- if rel_pos_type == "legacy":
- if pos_enc_layer_type == "rel_pos":
- pos_enc_layer_type = "legacy_rel_pos"
- if selfattention_layer_type == "rel_selfattn":
- selfattention_layer_type = "legacy_rel_selfattn"
- elif rel_pos_type == "latest":
- assert selfattention_layer_type != "legacy_rel_selfattn"
- assert pos_enc_layer_type != "legacy_rel_pos"
- else:
- raise ValueError("unknown rel_pos_type: " + rel_pos_type)
- activation = get_activation(activation_type)
- if pos_enc_layer_type == "abs_pos":
- pos_enc_class = PositionalEncoding
- elif pos_enc_layer_type == "scaled_abs_pos":
- pos_enc_class = ScaledPositionalEncoding
- elif pos_enc_layer_type == "rel_pos":
- assert selfattention_layer_type == "rel_selfattn"
- pos_enc_class = RelPositionalEncoding
- elif pos_enc_layer_type == "legacy_rel_pos":
- assert selfattention_layer_type == "legacy_rel_selfattn"
- pos_enc_class = LegacyRelPositionalEncoding
- logging.warning(
- "Using legacy_rel_pos and it will be deprecated in the future."
- )
- else:
- raise ValueError("unknown pos_enc_layer: " + pos_enc_layer_type)
- if input_layer == "linear":
- self.embed = torch.nn.Sequential(
- torch.nn.Linear(input_size, output_size),
- torch.nn.LayerNorm(output_size),
- torch.nn.Dropout(dropout_rate),
- pos_enc_class(output_size, positional_dropout_rate),
- )
- elif input_layer == "conv2d":
- self.embed = Conv2dSubsampling(
- input_size,
- output_size,
- dropout_rate,
- pos_enc_class(output_size, positional_dropout_rate),
- )
- elif input_layer == "conv2dpad":
- self.embed = Conv2dSubsamplingPad(
- input_size,
- output_size,
- dropout_rate,
- pos_enc_class(output_size, positional_dropout_rate),
- )
- elif input_layer == "conv2d2":
- self.embed = Conv2dSubsampling2(
- input_size,
- output_size,
- dropout_rate,
- pos_enc_class(output_size, positional_dropout_rate),
- )
- elif input_layer == "conv2d6":
- self.embed = Conv2dSubsampling6(
- input_size,
- output_size,
- dropout_rate,
- pos_enc_class(output_size, positional_dropout_rate),
- )
- elif input_layer == "conv2d8":
- self.embed = Conv2dSubsampling8(
- input_size,
- output_size,
- dropout_rate,
- pos_enc_class(output_size, positional_dropout_rate),
- )
- elif input_layer == "embed":
- self.embed = torch.nn.Sequential(
- torch.nn.Embedding(input_size, output_size, padding_idx=padding_idx),
- pos_enc_class(output_size, positional_dropout_rate),
- )
- elif isinstance(input_layer, torch.nn.Module):
- self.embed = torch.nn.Sequential(
- input_layer,
- pos_enc_class(output_size, positional_dropout_rate),
- )
- elif input_layer is None:
- self.embed = torch.nn.Sequential(
- pos_enc_class(output_size, positional_dropout_rate)
- )
- else:
- raise ValueError("unknown input_layer: " + input_layer)
- self.normalize_before = normalize_before
- if positionwise_layer_type == "linear":
- positionwise_layer = PositionwiseFeedForward
- positionwise_layer_args = (
- output_size,
- linear_units,
- dropout_rate,
- activation,
- )
- elif positionwise_layer_type == "conv1d":
- positionwise_layer = MultiLayeredConv1d
- positionwise_layer_args = (
- output_size,
- linear_units,
- positionwise_conv_kernel_size,
- dropout_rate,
- )
- elif positionwise_layer_type == "conv1d-linear":
- positionwise_layer = Conv1dLinear
- positionwise_layer_args = (
- output_size,
- linear_units,
- positionwise_conv_kernel_size,
- dropout_rate,
- )
- else:
- raise NotImplementedError("Support only linear or conv1d.")
- if selfattention_layer_type == "selfattn":
- encoder_selfattn_layer = MultiHeadedAttention
- encoder_selfattn_layer_args = (
- attention_heads,
- output_size,
- attention_dropout_rate,
- )
- elif selfattention_layer_type == "legacy_rel_selfattn":
- assert pos_enc_layer_type == "legacy_rel_pos"
- encoder_selfattn_layer = LegacyRelPositionMultiHeadedAttention
- encoder_selfattn_layer_args = (
- attention_heads,
- output_size,
- attention_dropout_rate,
- )
- logging.warning(
- "Using legacy_rel_selfattn and it will be deprecated in the future."
- )
- elif selfattention_layer_type == "rel_selfattn":
- assert pos_enc_layer_type == "rel_pos"
- encoder_selfattn_layer = RelPositionMultiHeadedAttention
- encoder_selfattn_layer_args = (
- attention_heads,
- output_size,
- attention_dropout_rate,
- zero_triu,
- )
- else:
- raise ValueError("unknown encoder_attn_layer: " + selfattention_layer_type)
- convolution_layer = ConvolutionModule
- convolution_layer_args = (output_size, cnn_module_kernel, activation)
- if isinstance(stochastic_depth_rate, float):
- stochastic_depth_rate = [stochastic_depth_rate] * num_blocks
- if len(stochastic_depth_rate) != num_blocks:
- raise ValueError(
- f"Length of stochastic_depth_rate ({len(stochastic_depth_rate)}) "
- f"should be equal to num_blocks ({num_blocks})"
- )
- self.encoders = repeat(
- num_blocks,
- lambda lnum: EncoderLayer(
- output_size,
- encoder_selfattn_layer(*encoder_selfattn_layer_args),
- positionwise_layer(*positionwise_layer_args),
- positionwise_layer(*positionwise_layer_args) if macaron_style else None,
- convolution_layer(*convolution_layer_args) if use_cnn_module else None,
- dropout_rate,
- normalize_before,
- concat_after,
- stochastic_depth_rate[lnum],
- ),
- )
- if self.normalize_before:
- self.after_norm = LayerNorm(output_size)
- self.interctc_layer_idx = interctc_layer_idx
- if len(interctc_layer_idx) > 0:
- assert 0 < min(interctc_layer_idx) and max(interctc_layer_idx) < num_blocks
- self.interctc_use_conditioning = interctc_use_conditioning
- self.conditioning_layer = None
- def output_size(self) -> int:
- return self._output_size
- def forward(
- self,
- xs_pad: torch.Tensor,
- ilens: torch.Tensor,
- prev_states: torch.Tensor = None,
- ctc: CTC = None,
- ) -> Tuple[torch.Tensor, torch.Tensor, Optional[torch.Tensor]]:
- """Calculate forward propagation.
- Args:
- xs_pad (torch.Tensor): Input tensor (#batch, L, input_size).
- ilens (torch.Tensor): Input length (#batch).
- prev_states (torch.Tensor): Not to be used now.
- Returns:
- torch.Tensor: Output tensor (#batch, L, output_size).
- torch.Tensor: Output length (#batch).
- torch.Tensor: Not to be used now.
- """
- masks = (~make_pad_mask(ilens)[:, None, :]).to(xs_pad.device)
- if (
- isinstance(self.embed, Conv2dSubsampling)
- or isinstance(self.embed, Conv2dSubsampling2)
- or isinstance(self.embed, Conv2dSubsampling6)
- or isinstance(self.embed, Conv2dSubsampling8)
- or isinstance(self.embed, Conv2dSubsamplingPad)
- ):
- short_status, limit_size = check_short_utt(self.embed, xs_pad.size(1))
- if short_status:
- raise TooShortUttError(
- f"has {xs_pad.size(1)} frames and is too short for subsampling "
- + f"(it needs more than {limit_size} frames), return empty results",
- xs_pad.size(1),
- limit_size,
- )
- xs_pad, masks = self.embed(xs_pad, masks)
- else:
- xs_pad = self.embed(xs_pad)
- intermediate_outs = []
- if len(self.interctc_layer_idx) == 0:
- xs_pad, masks = self.encoders(xs_pad, masks)
- else:
- for layer_idx, encoder_layer in enumerate(self.encoders):
- xs_pad, masks = encoder_layer(xs_pad, masks)
- if layer_idx + 1 in self.interctc_layer_idx:
- encoder_out = xs_pad
- if isinstance(encoder_out, tuple):
- encoder_out = encoder_out[0]
- # intermediate outputs are also normalized
- if self.normalize_before:
- encoder_out = self.after_norm(encoder_out)
- intermediate_outs.append((layer_idx + 1, encoder_out))
- if self.interctc_use_conditioning:
- ctc_out = ctc.softmax(encoder_out)
- if isinstance(xs_pad, tuple):
- x, pos_emb = xs_pad
- x = x + self.conditioning_layer(ctc_out)
- xs_pad = (x, pos_emb)
- else:
- xs_pad = xs_pad + self.conditioning_layer(ctc_out)
- if isinstance(xs_pad, tuple):
- xs_pad = xs_pad[0]
- if self.normalize_before:
- xs_pad = self.after_norm(xs_pad)
- olens = masks.squeeze(1).sum(1)
- if len(intermediate_outs) > 0:
- return (xs_pad, intermediate_outs), olens, None
- return xs_pad, olens, None
- class CausalConvolution(torch.nn.Module):
- """ConformerConvolution module definition.
- Args:
- channels: The number of channels.
- kernel_size: Size of the convolving kernel.
- activation: Type of activation function.
- norm_args: Normalization module arguments.
- causal: Whether to use causal convolution (set to True if streaming).
- """
- def __init__(
- self,
- channels: int,
- kernel_size: int,
- activation: torch.nn.Module = torch.nn.ReLU(),
- norm_args: Dict = {},
- causal: bool = False,
- ) -> None:
- """Construct an ConformerConvolution object."""
- super().__init__()
- assert (kernel_size - 1) % 2 == 0
- self.kernel_size = kernel_size
- self.pointwise_conv1 = torch.nn.Conv1d(
- channels,
- 2 * channels,
- kernel_size=1,
- stride=1,
- padding=0,
- )
- if causal:
- self.lorder = kernel_size - 1
- padding = 0
- else:
- self.lorder = 0
- padding = (kernel_size - 1) // 2
- self.depthwise_conv = torch.nn.Conv1d(
- channels,
- channels,
- kernel_size,
- stride=1,
- padding=padding,
- groups=channels,
- )
- self.norm = torch.nn.BatchNorm1d(channels, **norm_args)
- self.pointwise_conv2 = torch.nn.Conv1d(
- channels,
- channels,
- kernel_size=1,
- stride=1,
- padding=0,
- )
- self.activation = activation
- def forward(
- self,
- x: torch.Tensor,
- cache: Optional[torch.Tensor] = None,
- right_context: int = 0,
- ) -> Tuple[torch.Tensor, torch.Tensor]:
- """Compute convolution module.
- Args:
- x: ConformerConvolution input sequences. (B, T, D_hidden)
- cache: ConformerConvolution input cache. (1, conv_kernel, D_hidden)
- right_context: Number of frames in right context.
- Returns:
- x: ConformerConvolution output sequences. (B, T, D_hidden)
- cache: ConformerConvolution output cache. (1, conv_kernel, D_hidden)
- """
- x = self.pointwise_conv1(x.transpose(1, 2))
- x = torch.nn.functional.glu(x, dim=1)
- if self.lorder > 0:
- if cache is None:
- x = torch.nn.functional.pad(x, (self.lorder, 0), "constant", 0.0)
- else:
- x = torch.cat([cache, x], dim=2)
- if right_context > 0:
- cache = x[:, :, -(self.lorder + right_context) : -right_context]
- else:
- cache = x[:, :, -self.lorder :]
- x = self.depthwise_conv(x)
- x = self.activation(self.norm(x))
- x = self.pointwise_conv2(x).transpose(1, 2)
- return x, cache
- class ConformerChunkEncoder(AbsEncoder):
- """Encoder module definition.
- Args:
- input_size: Input size.
- body_conf: Encoder body configuration.
- input_conf: Encoder input configuration.
- main_conf: Encoder main configuration.
- """
- def __init__(
- self,
- input_size: int,
- output_size: int = 256,
- attention_heads: int = 4,
- linear_units: int = 2048,
- num_blocks: int = 6,
- dropout_rate: float = 0.1,
- positional_dropout_rate: float = 0.1,
- attention_dropout_rate: float = 0.0,
- embed_vgg_like: bool = False,
- normalize_before: bool = True,
- concat_after: bool = False,
- positionwise_layer_type: str = "linear",
- positionwise_conv_kernel_size: int = 3,
- macaron_style: bool = False,
- rel_pos_type: str = "legacy",
- pos_enc_layer_type: str = "rel_pos",
- selfattention_layer_type: str = "rel_selfattn",
- activation_type: str = "swish",
- use_cnn_module: bool = True,
- zero_triu: bool = False,
- norm_type: str = "layer_norm",
- cnn_module_kernel: int = 31,
- conv_mod_norm_eps: float = 0.00001,
- conv_mod_norm_momentum: float = 0.1,
- simplified_att_score: bool = False,
- dynamic_chunk_training: bool = False,
- short_chunk_threshold: float = 0.75,
- short_chunk_size: int = 25,
- left_chunk_size: int = 0,
- time_reduction_factor: int = 1,
- unified_model_training: bool = False,
- default_chunk_size: int = 16,
- jitter_range: int = 4,
- subsampling_factor: int = 1,
- ) -> None:
- """Construct an Encoder object."""
- super().__init__()
- assert check_argument_types()
- self.embed = StreamingConvInput(
- input_size,
- output_size,
- subsampling_factor,
- vgg_like=embed_vgg_like,
- output_size=output_size,
- )
- self.pos_enc = StreamingRelPositionalEncoding(
- output_size,
- positional_dropout_rate,
- )
- activation = get_activation(
- activation_type
- )
- pos_wise_args = (
- output_size,
- linear_units,
- positional_dropout_rate,
- activation,
- )
- conv_mod_norm_args = {
- "eps": conv_mod_norm_eps,
- "momentum": conv_mod_norm_momentum,
- }
- conv_mod_args = (
- output_size,
- cnn_module_kernel,
- activation,
- conv_mod_norm_args,
- dynamic_chunk_training or unified_model_training,
- )
- mult_att_args = (
- attention_heads,
- output_size,
- attention_dropout_rate,
- simplified_att_score,
- )
- fn_modules = []
- for _ in range(num_blocks):
- module = lambda: ChunkEncoderLayer(
- output_size,
- RelPositionMultiHeadedAttentionChunk(*mult_att_args),
- PositionwiseFeedForward(*pos_wise_args),
- PositionwiseFeedForward(*pos_wise_args),
- CausalConvolution(*conv_mod_args),
- dropout_rate=dropout_rate,
- )
- fn_modules.append(module)
- self.encoders = MultiBlocks(
- [fn() for fn in fn_modules],
- output_size,
- )
- self._output_size = output_size
- self.dynamic_chunk_training = dynamic_chunk_training
- self.short_chunk_threshold = short_chunk_threshold
- self.short_chunk_size = short_chunk_size
- self.left_chunk_size = left_chunk_size
- self.unified_model_training = unified_model_training
- self.default_chunk_size = default_chunk_size
- self.jitter_range = jitter_range
- self.time_reduction_factor = time_reduction_factor
- def output_size(self) -> int:
- return self._output_size
- def get_encoder_input_raw_size(self, size: int, hop_length: int) -> int:
- """Return the corresponding number of sample for a given chunk size, in frames.
- Where size is the number of features frames after applying subsampling.
- Args:
- size: Number of frames after subsampling.
- hop_length: Frontend's hop length
- Returns:
- : Number of raw samples
- """
- return self.embed.get_size_before_subsampling(size) * hop_length
- def get_encoder_input_size(self, size: int) -> int:
- """Return the corresponding number of sample for a given chunk size, in frames.
- Where size is the number of features frames after applying subsampling.
- Args:
- size: Number of frames after subsampling.
- Returns:
- : Number of raw samples
- """
- return self.embed.get_size_before_subsampling(size)
- def reset_streaming_cache(self, left_context: int, device: torch.device) -> None:
- """Initialize/Reset encoder streaming cache.
- Args:
- left_context: Number of frames in left context.
- device: Device ID.
- """
- return self.encoders.reset_streaming_cache(left_context, device)
- def forward(
- self,
- x: torch.Tensor,
- x_len: torch.Tensor,
- ) -> Tuple[torch.Tensor, torch.Tensor]:
- """Encode input sequences.
- Args:
- x: Encoder input features. (B, T_in, F)
- x_len: Encoder input features lengths. (B,)
- Returns:
- x: Encoder outputs. (B, T_out, D_enc)
- x_len: Encoder outputs lenghts. (B,)
- """
- short_status, limit_size = check_short_utt(
- self.embed.subsampling_factor, x.size(1)
- )
- if short_status:
- raise TooShortUttError(
- f"has {x.size(1)} frames and is too short for subsampling "
- + f"(it needs more than {limit_size} frames), return empty results",
- x.size(1),
- limit_size,
- )
- mask = make_source_mask(x_len).to(x.device)
- if self.unified_model_training:
- chunk_size = self.default_chunk_size + torch.randint(-self.jitter_range, self.jitter_range+1, (1,)).item()
- x, mask = self.embed(x, mask, chunk_size)
- pos_enc = self.pos_enc(x)
- chunk_mask = make_chunk_mask(
- x.size(1),
- chunk_size,
- left_chunk_size=self.left_chunk_size,
- device=x.device,
- )
- x_utt = self.encoders(
- x,
- pos_enc,
- mask,
- chunk_mask=None,
- )
- x_chunk = self.encoders(
- x,
- pos_enc,
- mask,
- chunk_mask=chunk_mask,
- )
- olens = mask.eq(0).sum(1)
- if self.time_reduction_factor > 1:
- x_utt = x_utt[:,::self.time_reduction_factor,:]
- x_chunk = x_chunk[:,::self.time_reduction_factor,:]
- olens = torch.floor_divide(olens-1, self.time_reduction_factor) + 1
- return x_utt, x_chunk, olens
- elif self.dynamic_chunk_training:
- max_len = x.size(1)
- chunk_size = torch.randint(1, max_len, (1,)).item()
- if chunk_size > (max_len * self.short_chunk_threshold):
- chunk_size = max_len
- else:
- chunk_size = (chunk_size % self.short_chunk_size) + 1
- x, mask = self.embed(x, mask, chunk_size)
- pos_enc = self.pos_enc(x)
- chunk_mask = make_chunk_mask(
- x.size(1),
- chunk_size,
- left_chunk_size=self.left_chunk_size,
- device=x.device,
- )
- else:
- x, mask = self.embed(x, mask, None)
- pos_enc = self.pos_enc(x)
- chunk_mask = None
- x = self.encoders(
- x,
- pos_enc,
- mask,
- chunk_mask=chunk_mask,
- )
- olens = mask.eq(0).sum(1)
- if self.time_reduction_factor > 1:
- x = x[:,::self.time_reduction_factor,:]
- olens = torch.floor_divide(olens-1, self.time_reduction_factor) + 1
- return x, olens, None
- def simu_chunk_forward(
- self,
- x: torch.Tensor,
- x_len: torch.Tensor,
- chunk_size: int = 16,
- left_context: int = 32,
- right_context: int = 0,
- ) -> torch.Tensor:
- short_status, limit_size = check_short_utt(
- self.embed.subsampling_factor, x.size(1)
- )
- if short_status:
- raise TooShortUttError(
- f"has {x.size(1)} frames and is too short for subsampling "
- + f"(it needs more than {limit_size} frames), return empty results",
- x.size(1),
- limit_size,
- )
- mask = make_source_mask(x_len)
- x, mask = self.embed(x, mask, chunk_size)
- pos_enc = self.pos_enc(x)
- chunk_mask = make_chunk_mask(
- x.size(1),
- chunk_size,
- left_chunk_size=self.left_chunk_size,
- device=x.device,
- )
- x = self.encoders(
- x,
- pos_enc,
- mask,
- chunk_mask=chunk_mask,
- )
- olens = mask.eq(0).sum(1)
- if self.time_reduction_factor > 1:
- x = x[:,::self.time_reduction_factor,:]
- return x
- def chunk_forward(
- self,
- x: torch.Tensor,
- x_len: torch.Tensor,
- processed_frames: torch.tensor,
- chunk_size: int = 16,
- left_context: int = 32,
- right_context: int = 0,
- ) -> torch.Tensor:
- """Encode input sequences as chunks.
- Args:
- x: Encoder input features. (1, T_in, F)
- x_len: Encoder input features lengths. (1,)
- processed_frames: Number of frames already seen.
- left_context: Number of frames in left context.
- right_context: Number of frames in right context.
- Returns:
- x: Encoder outputs. (B, T_out, D_enc)
- """
- mask = make_source_mask(x_len)
- x, mask = self.embed(x, mask, None)
- if left_context > 0:
- processed_mask = (
- torch.arange(left_context, device=x.device)
- .view(1, left_context)
- .flip(1)
- )
- processed_mask = processed_mask >= processed_frames
- mask = torch.cat([processed_mask, mask], dim=1)
- pos_enc = self.pos_enc(x, left_context=left_context)
- x = self.encoders.chunk_forward(
- x,
- pos_enc,
- mask,
- chunk_size=chunk_size,
- left_context=left_context,
- right_context=right_context,
- )
- if right_context > 0:
- x = x[:, 0:-right_context, :]
- if self.time_reduction_factor > 1:
- x = x[:,::self.time_reduction_factor,:]
- return x
|