|
|
| import time |
| import torch |
| from torch import nn |
| import torch.nn.functional as F |
| from typing import Iterable, Optional |
|
|
| from funasr.register import tables |
| from funasr.models.ctc.ctc import CTC |
| from funasr.utils.datadir_writer import DatadirWriter |
| from funasr.models.paraformer.search import Hypothesis |
| from funasr.train_utils.device_funcs import force_gatherable |
| from funasr.losses.label_smoothing_loss import LabelSmoothingLoss |
| from funasr.metrics.compute_acc import compute_accuracy, th_accuracy |
| from funasr.utils.load_utils import load_audio_text_image_video, extract_fbank |
| from utils.ctc_alignment import ctc_forced_align |
|
|
| class SinusoidalPositionEncoder(torch.nn.Module): |
| """ """ |
|
|
| def __int__(self, d_model=80, dropout_rate=0.1): |
| pass |
|
|
| def encode( |
| self, positions: torch.Tensor = None, depth: int = None, dtype: torch.dtype = torch.float32 |
| ): |
| batch_size = positions.size(0) |
| positions = positions.type(dtype) |
| device = positions.device |
| log_timescale_increment = torch.log(torch.tensor([10000], dtype=dtype, device=device)) / ( |
| depth / 2 - 1 |
| ) |
| inv_timescales = torch.exp( |
| torch.arange(depth / 2, device=device).type(dtype) * (-log_timescale_increment) |
| ) |
| inv_timescales = torch.reshape(inv_timescales, [batch_size, -1]) |
| scaled_time = torch.reshape(positions, [1, -1, 1]) * torch.reshape( |
| inv_timescales, [1, 1, -1] |
| ) |
| encoding = torch.cat([torch.sin(scaled_time), torch.cos(scaled_time)], dim=2) |
| return encoding.type(dtype) |
|
|
| def forward(self, x): |
| batch_size, timesteps, input_dim = x.size() |
| positions = torch.arange(1, timesteps + 1, device=x.device)[None, :] |
| position_encoding = self.encode(positions, input_dim, x.dtype).to(x.device) |
|
|
| return x + position_encoding |
| |
| def get_position_encoding(self, x): |
| batch_size, timesteps, input_dim = x.size() |
| positions = torch.arange(1, timesteps + 1, device=x.device)[None, :] |
| position_encoding = self.encode(positions, input_dim, x.dtype).to(x.device) |
| return position_encoding |
|
|
|
|
| class PositionwiseFeedForward(torch.nn.Module): |
| """Positionwise feed forward layer. |
| |
| Args: |
| idim (int): Input dimenstion. |
| hidden_units (int): The number of hidden units. |
| dropout_rate (float): Dropout rate. |
| |
| """ |
|
|
| def __init__(self, idim, hidden_units, dropout_rate, activation=torch.nn.ReLU()): |
| """Construct an PositionwiseFeedForward object.""" |
| super(PositionwiseFeedForward, self).__init__() |
| self.w_1 = torch.nn.Linear(idim, hidden_units) |
| self.w_2 = torch.nn.Linear(hidden_units, idim) |
| self.dropout = torch.nn.Dropout(dropout_rate) |
| self.activation = activation |
|
|
| def forward(self, x): |
| """Forward function.""" |
| return self.w_2(self.dropout(self.activation(self.w_1(x)))) |
|
|
|
|
| class MultiHeadedAttentionSANM(nn.Module): |
| """Multi-Head Attention layer. |
| |
| Args: |
| n_head (int): The number of heads. |
| n_feat (int): The number of features. |
| dropout_rate (float): Dropout rate. |
| |
| """ |
|
|
| def __init__( |
| self, |
| n_head, |
| in_feat, |
| n_feat, |
| dropout_rate, |
| kernel_size, |
| sanm_shfit=0, |
| lora_list=None, |
| lora_rank=8, |
| lora_alpha=16, |
| lora_dropout=0.1, |
| ): |
| """Construct an MultiHeadedAttention object.""" |
| super().__init__() |
| assert n_feat % n_head == 0 |
| |
| self.d_k = n_feat // n_head |
| self.h = n_head |
| |
| |
| |
|
|
| self.linear_out = nn.Linear(n_feat, n_feat) |
| self.linear_q_k_v = nn.Linear(in_feat, n_feat * 3) |
| self.attn = None |
| self.dropout = nn.Dropout(p=dropout_rate) |
|
|
| self.fsmn_block = nn.Conv1d( |
| n_feat, n_feat, kernel_size, stride=1, padding=0, groups=n_feat, bias=False |
| ) |
| |
| left_padding = (kernel_size - 1) // 2 |
| if sanm_shfit > 0: |
| left_padding = left_padding + sanm_shfit |
| right_padding = kernel_size - 1 - left_padding |
| self.pad_fn = nn.ConstantPad1d((left_padding, right_padding), 0.0) |
|
|
| def forward_fsmn(self, inputs, mask, mask_shfit_chunk=None): |
| b, t, d = inputs.size() |
| if mask is not None: |
| mask = torch.reshape(mask, (b, -1, 1)) |
| if mask_shfit_chunk is not None: |
| mask = mask * mask_shfit_chunk |
| inputs = inputs * mask |
|
|
| x = inputs.transpose(1, 2) |
| x = self.pad_fn(x) |
| x = self.fsmn_block(x) |
| x = x.transpose(1, 2) |
| x += inputs |
| x = self.dropout(x) |
| if mask is not None: |
| x = x * mask |
| return x |
|
|
| def forward_qkv(self, x): |
| """Transform query, key and value. |
| |
| Args: |
| query (torch.Tensor): Query tensor (#batch, time1, size). |
| key (torch.Tensor): Key tensor (#batch, time2, size). |
| value (torch.Tensor): Value tensor (#batch, time2, size). |
| |
| Returns: |
| torch.Tensor: Transformed query tensor (#batch, n_head, time1, d_k). |
| torch.Tensor: Transformed key tensor (#batch, n_head, time2, d_k). |
| torch.Tensor: Transformed value tensor (#batch, n_head, time2, d_k). |
| |
| """ |
| b, t, d = x.size() |
| q_k_v = self.linear_q_k_v(x) |
| q, k, v = torch.split(q_k_v, int(self.h * self.d_k), dim=-1) |
| q_h = torch.reshape(q, (b, t, self.h, self.d_k)).transpose( |
| 1, 2 |
| ) |
| k_h = torch.reshape(k, (b, t, self.h, self.d_k)).transpose( |
| 1, 2 |
| ) |
| v_h = torch.reshape(v, (b, t, self.h, self.d_k)).transpose( |
| 1, 2 |
| ) |
|
|
| return q_h, k_h, v_h, v |
|
|
| def forward_attention(self, value, scores, mask, mask_att_chunk_encoder=None): |
| """Compute attention context vector. |
| |
| Args: |
| value (torch.Tensor): Transformed value (#batch, n_head, time2, d_k). |
| scores (torch.Tensor): Attention score (#batch, n_head, time1, time2). |
| mask (torch.Tensor): Mask (#batch, 1, time2) or (#batch, time1, time2). |
| |
| Returns: |
| torch.Tensor: Transformed value (#batch, time1, d_model) |
| weighted by the attention score (#batch, time1, time2). |
| |
| """ |
| n_batch = value.size(0) |
| if mask is not None: |
| if mask_att_chunk_encoder is not None: |
| mask = mask * mask_att_chunk_encoder |
|
|
| mask = mask.unsqueeze(1).eq(0) |
|
|
| min_value = -float( |
| "inf" |
| ) |
| scores = scores.masked_fill(mask, min_value) |
| attn = torch.softmax(scores, dim=-1).masked_fill( |
| mask, 0.0 |
| ) |
| else: |
| attn = torch.softmax(scores, dim=-1) |
|
|
| p_attn = self.dropout(attn) |
| x = torch.matmul(p_attn, value) |
| x = ( |
| x.transpose(1, 2).contiguous().view(n_batch, -1, self.h * self.d_k) |
| ) |
|
|
| return self.linear_out(x) |
|
|
| def forward(self, x, mask, mask_shfit_chunk=None, mask_att_chunk_encoder=None): |
| """Compute scaled dot product attention. |
| |
| Args: |
| query (torch.Tensor): Query tensor (#batch, time1, size). |
| key (torch.Tensor): Key tensor (#batch, time2, size). |
| value (torch.Tensor): Value tensor (#batch, time2, size). |
| mask (torch.Tensor): Mask tensor (#batch, 1, time2) or |
| (#batch, time1, time2). |
| |
| Returns: |
| torch.Tensor: Output tensor (#batch, time1, d_model). |
| |
| """ |
| q_h, k_h, v_h, v = self.forward_qkv(x) |
| fsmn_memory = self.forward_fsmn(v, mask, mask_shfit_chunk) |
| q_h = q_h * self.d_k ** (-0.5) |
| scores = torch.matmul(q_h, k_h.transpose(-2, -1)) |
| att_outs = self.forward_attention(v_h, scores, mask, mask_att_chunk_encoder) |
| return att_outs + fsmn_memory |
|
|
| def forward_chunk(self, x, cache=None, chunk_size=None, look_back=0): |
| """Compute scaled dot product attention. |
| |
| Args: |
| query (torch.Tensor): Query tensor (#batch, time1, size). |
| key (torch.Tensor): Key tensor (#batch, time2, size). |
| value (torch.Tensor): Value tensor (#batch, time2, size). |
| mask (torch.Tensor): Mask tensor (#batch, 1, time2) or |
| (#batch, time1, time2). |
| |
| Returns: |
| torch.Tensor: Output tensor (#batch, time1, d_model). |
| |
| """ |
| q_h, k_h, v_h, v = self.forward_qkv(x) |
| if chunk_size is not None and look_back > 0 or look_back == -1: |
| if cache is not None: |
| k_h_stride = k_h[:, :, : -(chunk_size[2]), :] |
| v_h_stride = v_h[:, :, : -(chunk_size[2]), :] |
| k_h = torch.cat((cache["k"], k_h), dim=2) |
| v_h = torch.cat((cache["v"], v_h), dim=2) |
|
|
| cache["k"] = torch.cat((cache["k"], k_h_stride), dim=2) |
| cache["v"] = torch.cat((cache["v"], v_h_stride), dim=2) |
| if look_back != -1: |
| cache["k"] = cache["k"][:, :, -(look_back * chunk_size[1]) :, :] |
| cache["v"] = cache["v"][:, :, -(look_back * chunk_size[1]) :, :] |
| else: |
| cache_tmp = { |
| "k": k_h[:, :, : -(chunk_size[2]), :], |
| "v": v_h[:, :, : -(chunk_size[2]), :], |
| } |
| cache = cache_tmp |
| fsmn_memory = self.forward_fsmn(v, None) |
| q_h = q_h * self.d_k ** (-0.5) |
| scores = torch.matmul(q_h, k_h.transpose(-2, -1)) |
| att_outs = self.forward_attention(v_h, scores, None) |
| return att_outs + fsmn_memory, cache |
|
|
|
|
| class LayerNorm(nn.LayerNorm): |
| def __init__(self, *args, **kwargs): |
| super().__init__(*args, **kwargs) |
|
|
| def forward(self, input): |
| output = F.layer_norm( |
| input.float(), |
| self.normalized_shape, |
| self.weight.float() if self.weight is not None else None, |
| self.bias.float() if self.bias is not None else None, |
| self.eps, |
| ) |
| return output.type_as(input) |
|
|
|
|
| def sequence_mask(lengths, maxlen=None, dtype=torch.float32, device=None): |
| if maxlen is None: |
| maxlen = lengths.max() |
| row_vector = torch.arange(0, maxlen, 1).to(lengths.device) |
| matrix = torch.unsqueeze(lengths, dim=-1) |
| mask = row_vector < matrix |
| mask = mask.detach() |
|
|
| return mask.type(dtype).to(device) if device is not None else mask.type(dtype) |
|
|
|
|
| class EncoderLayerSANM(nn.Module): |
| def __init__( |
| self, |
| in_size, |
| size, |
| self_attn, |
| feed_forward, |
| dropout_rate, |
| normalize_before=True, |
| concat_after=False, |
| stochastic_depth_rate=0.0, |
| ): |
| """Construct an EncoderLayer object.""" |
| super(EncoderLayerSANM, self).__init__() |
| self.self_attn = self_attn |
| self.feed_forward = feed_forward |
| self.norm1 = LayerNorm(in_size) |
| self.norm2 = LayerNorm(size) |
| self.dropout = nn.Dropout(dropout_rate) |
| self.in_size = in_size |
| 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 |
| self.dropout_rate = dropout_rate |
|
|
| def forward(self, x, mask, cache=None, mask_shfit_chunk=None, mask_att_chunk_encoder=None): |
| """Compute encoded features. |
| |
| Args: |
| x_input (torch.Tensor): Input 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). |
| |
| """ |
| skip_layer = False |
| |
| |
| 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) |
| return x, mask |
|
|
| residual = x |
| if self.normalize_before: |
| x = self.norm1(x) |
|
|
| if self.concat_after: |
| x_concat = torch.cat( |
| ( |
| x, |
| self.self_attn( |
| x, |
| mask, |
| mask_shfit_chunk=mask_shfit_chunk, |
| mask_att_chunk_encoder=mask_att_chunk_encoder, |
| ), |
| ), |
| dim=-1, |
| ) |
| if self.in_size == self.size: |
| x = residual + stoch_layer_coeff * self.concat_linear(x_concat) |
| else: |
| x = stoch_layer_coeff * self.concat_linear(x_concat) |
| else: |
| if self.in_size == self.size: |
| x = residual + stoch_layer_coeff * self.dropout( |
| self.self_attn( |
| x, |
| mask, |
| mask_shfit_chunk=mask_shfit_chunk, |
| mask_att_chunk_encoder=mask_att_chunk_encoder, |
| ) |
| ) |
| else: |
| x = stoch_layer_coeff * self.dropout( |
| self.self_attn( |
| x, |
| mask, |
| mask_shfit_chunk=mask_shfit_chunk, |
| mask_att_chunk_encoder=mask_att_chunk_encoder, |
| ) |
| ) |
| if not self.normalize_before: |
| x = self.norm1(x) |
|
|
| residual = x |
| if self.normalize_before: |
| x = self.norm2(x) |
| x = residual + stoch_layer_coeff * self.dropout(self.feed_forward(x)) |
| if not self.normalize_before: |
| x = self.norm2(x) |
|
|
| return x, mask, cache, mask_shfit_chunk, mask_att_chunk_encoder |
|
|
| def forward_chunk(self, x, cache=None, chunk_size=None, look_back=0): |
| """Compute encoded features. |
| |
| Args: |
| x_input (torch.Tensor): Input 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). |
| |
| """ |
|
|
| residual = x |
| if self.normalize_before: |
| x = self.norm1(x) |
|
|
| if self.in_size == self.size: |
| attn, cache = self.self_attn.forward_chunk(x, cache, chunk_size, look_back) |
| x = residual + attn |
| else: |
| x, cache = self.self_attn.forward_chunk(x, cache, chunk_size, look_back) |
|
|
| if not self.normalize_before: |
| x = self.norm1(x) |
|
|
| residual = x |
| if self.normalize_before: |
| x = self.norm2(x) |
| x = residual + self.feed_forward(x) |
| if not self.normalize_before: |
| x = self.norm2(x) |
|
|
| return x, cache |
|
|
|
|
| @tables.register("encoder_classes", "SenseVoiceEncoderSmall") |
| class SenseVoiceEncoderSmall(nn.Module): |
| """ |
| Author: Speech Lab of DAMO Academy, Alibaba Group |
| SCAMA: Streaming chunk-aware multihead attention for online end-to-end speech recognition |
| https://arxiv.org/abs/2006.01713 |
| """ |
|
|
| def __init__( |
| self, |
| input_size: int, |
| output_size: int = 256, |
| attention_heads: int = 4, |
| linear_units: int = 2048, |
| num_blocks: int = 6, |
| tp_blocks: int = 0, |
| dropout_rate: float = 0.1, |
| positional_dropout_rate: float = 0.1, |
| attention_dropout_rate: float = 0.0, |
| stochastic_depth_rate: float = 0.0, |
| input_layer: Optional[str] = "conv2d", |
| pos_enc_class=SinusoidalPositionEncoder, |
| normalize_before: bool = True, |
| concat_after: bool = False, |
| positionwise_layer_type: str = "linear", |
| positionwise_conv_kernel_size: int = 1, |
| padding_idx: int = -1, |
| kernel_size: int = 11, |
| sanm_shfit: int = 0, |
| selfattention_layer_type: str = "sanm", |
| **kwargs, |
| ): |
| super().__init__() |
| self._output_size = output_size |
|
|
| self.embed = SinusoidalPositionEncoder() |
|
|
| self.normalize_before = normalize_before |
|
|
| positionwise_layer = PositionwiseFeedForward |
| positionwise_layer_args = ( |
| output_size, |
| linear_units, |
| dropout_rate, |
| ) |
|
|
| encoder_selfattn_layer = MultiHeadedAttentionSANM |
| encoder_selfattn_layer_args0 = ( |
| attention_heads, |
| input_size, |
| output_size, |
| attention_dropout_rate, |
| kernel_size, |
| sanm_shfit, |
| ) |
| encoder_selfattn_layer_args = ( |
| attention_heads, |
| output_size, |
| output_size, |
| attention_dropout_rate, |
| kernel_size, |
| sanm_shfit, |
| ) |
|
|
| self.encoders0 = nn.ModuleList( |
| [ |
| EncoderLayerSANM( |
| input_size, |
| output_size, |
| encoder_selfattn_layer(*encoder_selfattn_layer_args0), |
| positionwise_layer(*positionwise_layer_args), |
| dropout_rate, |
| ) |
| for i in range(1) |
| ] |
| ) |
| self.encoders = nn.ModuleList( |
| [ |
| EncoderLayerSANM( |
| output_size, |
| output_size, |
| encoder_selfattn_layer(*encoder_selfattn_layer_args), |
| positionwise_layer(*positionwise_layer_args), |
| dropout_rate, |
| ) |
| for i in range(num_blocks - 1) |
| ] |
| ) |
|
|
| self.tp_encoders = nn.ModuleList( |
| [ |
| EncoderLayerSANM( |
| output_size, |
| output_size, |
| encoder_selfattn_layer(*encoder_selfattn_layer_args), |
| positionwise_layer(*positionwise_layer_args), |
| dropout_rate, |
| ) |
| for i in range(tp_blocks) |
| ] |
| ) |
|
|
| self.after_norm = LayerNorm(output_size) |
|
|
| self.tp_norm = LayerNorm(output_size) |
|
|
| def output_size(self) -> int: |
| return self._output_size |
|
|
| def forward( |
| self, |
| xs_pad: torch.Tensor, |
| |
| masks: torch.Tensor, |
| position_encoding: torch.Tensor |
| ): |
| """Embed positions in tensor.""" |
| |
|
|
| xs_pad *= self.output_size() ** 0.5 |
|
|
| |
| xs_pad += position_encoding |
|
|
| |
| for layer_idx, encoder_layer in enumerate(self.encoders0): |
| encoder_outs = encoder_layer(xs_pad, masks) |
| xs_pad, masks = encoder_outs[0], encoder_outs[1] |
|
|
| for layer_idx, encoder_layer in enumerate(self.encoders): |
| encoder_outs = encoder_layer(xs_pad, masks) |
| xs_pad, masks = encoder_outs[0], encoder_outs[1] |
|
|
| xs_pad = self.after_norm(xs_pad) |
|
|
| |
| olens = masks.squeeze(1).sum(1).int() |
|
|
| for layer_idx, encoder_layer in enumerate(self.tp_encoders): |
| encoder_outs = encoder_layer(xs_pad, masks) |
| xs_pad, masks = encoder_outs[0], encoder_outs[1] |
|
|
| xs_pad = self.tp_norm(xs_pad) |
| return xs_pad, olens |
|
|
|
|
| @tables.register("model_classes", "SenseVoiceSmall") |
| class SenseVoiceSmall(nn.Module): |
| """CTC-attention hybrid Encoder-Decoder model""" |
|
|
| def __init__( |
| self, |
| specaug: str = None, |
| specaug_conf: dict = None, |
| normalize: str = None, |
| normalize_conf: dict = None, |
| encoder: str = None, |
| encoder_conf: dict = None, |
| ctc_conf: dict = None, |
| input_size: int = 80, |
| vocab_size: int = -1, |
| ignore_id: int = -1, |
| blank_id: int = 0, |
| sos: int = 1, |
| eos: int = 2, |
| length_normalized_loss: bool = False, |
| seq_len = 68, |
| **kwargs, |
| ): |
|
|
| super().__init__() |
|
|
| if specaug is not None: |
| specaug_class = tables.specaug_classes.get(specaug) |
| specaug = specaug_class(**specaug_conf) |
| if normalize is not None: |
| normalize_class = tables.normalize_classes.get(normalize) |
| normalize = normalize_class(**normalize_conf) |
| encoder_class = tables.encoder_classes.get(encoder) |
| encoder = encoder_class(input_size=input_size, **encoder_conf) |
| encoder_output_size = encoder.output_size() |
|
|
| if ctc_conf is None: |
| ctc_conf = {} |
| ctc = CTC(odim=vocab_size, encoder_output_size=encoder_output_size, **ctc_conf) |
|
|
| self.blank_id = blank_id |
| self.sos = sos if sos is not None else vocab_size - 1 |
| self.eos = eos if eos is not None else vocab_size - 1 |
| self.vocab_size = vocab_size |
| self.ignore_id = ignore_id |
| self.specaug = specaug |
| self.normalize = normalize |
| self.encoder = encoder |
| self.error_calculator = None |
|
|
| self.ctc = ctc |
|
|
| self.length_normalized_loss = length_normalized_loss |
| self.encoder_output_size = encoder_output_size |
|
|
| self.lid_dict = {"auto": 0, "zh": 3, "en": 4, "yue": 7, "ja": 11, "ko": 12, "nospeech": 13} |
| self.lid_int_dict = {24884: 3, 24885: 4, 24888: 7, 24892: 11, 24896: 12, 24992: 13} |
| self.textnorm_dict = {"withitn": 14, "woitn": 15} |
| self.textnorm_int_dict = {25016: 14, 25017: 15} |
| self.embed = torch.nn.Embedding(7 + len(self.lid_dict) + len(self.textnorm_dict), input_size) |
| self.emo_dict = {"unk": 25009, "happy": 25001, "sad": 25002, "angry": 25003, "neutral": 25004} |
| |
| self.criterion_att = LabelSmoothingLoss( |
| size=self.vocab_size, |
| padding_idx=self.ignore_id, |
| smoothing=kwargs.get("lsm_weight", 0.0), |
| normalize_length=self.length_normalized_loss, |
| ) |
|
|
| self.seq_len = seq_len |
| |
| @staticmethod |
| def from_pretrained(model:str=None, **kwargs): |
| from funasr import AutoModel |
| model, kwargs = AutoModel.build_model(model=model, trust_remote_code=True, **kwargs) |
| |
| return model, kwargs |
|
|
| def forward( |
| self, |
| speech: torch.Tensor, |
| speech_lengths: torch.Tensor, |
| text: torch.Tensor, |
| text_lengths: torch.Tensor, |
| **kwargs, |
| ): |
| """Encoder + Decoder + Calc loss |
| Args: |
| speech: (Batch, Length, ...) |
| speech_lengths: (Batch, ) |
| text: (Batch, Length) |
| text_lengths: (Batch,) |
| """ |
| |
| |
| if len(text_lengths.size()) > 1: |
| text_lengths = text_lengths[:, 0] |
| if len(speech_lengths.size()) > 1: |
| speech_lengths = speech_lengths[:, 0] |
|
|
| batch_size = speech.shape[0] |
|
|
| |
| encoder_out, encoder_out_lens = self.encode(speech, speech_lengths, text) |
|
|
| loss_ctc, cer_ctc = None, None |
| loss_rich, acc_rich = None, None |
| stats = dict() |
|
|
| loss_ctc, cer_ctc = self._calc_ctc_loss( |
| encoder_out[:, 4:, :], encoder_out_lens - 4, text[:, 4:], text_lengths - 4 |
| ) |
|
|
| loss_rich, acc_rich = self._calc_rich_ce_loss( |
| encoder_out[:, :4, :], text[:, :4] |
| ) |
|
|
| loss = loss_ctc + loss_rich |
| |
| stats["loss_ctc"] = torch.clone(loss_ctc.detach()) if loss_ctc is not None else None |
| stats["loss_rich"] = torch.clone(loss_rich.detach()) if loss_rich is not None else None |
| stats["loss"] = torch.clone(loss.detach()) if loss is not None else None |
| stats["acc_rich"] = acc_rich |
|
|
| |
| if self.length_normalized_loss: |
| batch_size = int((text_lengths + 1).sum()) |
| loss, stats, weight = force_gatherable((loss, stats, batch_size), loss.device) |
| return loss, stats, weight |
|
|
| def encode( |
| self, |
| speech: torch.Tensor, |
| speech_lengths: torch.Tensor, |
| text: torch.Tensor, |
| **kwargs, |
| ): |
| """Frontend + Encoder. Note that this method is used by asr_inference.py |
| Args: |
| speech: (Batch, Length, ...) |
| speech_lengths: (Batch, ) |
| ind: int |
| """ |
|
|
| |
| if self.specaug is not None and self.training: |
| speech, speech_lengths = self.specaug(speech, speech_lengths) |
|
|
| |
| if self.normalize is not None: |
| speech, speech_lengths = self.normalize(speech, speech_lengths) |
|
|
|
|
| lids = torch.LongTensor([[self.lid_int_dict[int(lid)] if torch.rand(1) > 0.2 and int(lid) in self.lid_int_dict else 0 ] for lid in text[:, 0]]).to(speech.device) |
| language_query = self.embed(lids) |
| |
| styles = torch.LongTensor([[self.textnorm_int_dict[int(style)]] for style in text[:, 3]]).to(speech.device) |
| style_query = self.embed(styles) |
| speech = torch.cat((style_query, speech), dim=1) |
| speech_lengths += 1 |
|
|
| event_emo_query = self.embed(torch.LongTensor([[1, 2]]).to(speech.device)).repeat(speech.size(0), 1, 1) |
| input_query = torch.cat((language_query, event_emo_query), dim=1) |
| speech = torch.cat((input_query, speech), dim=1) |
| speech_lengths += 3 |
|
|
| encoder_out, encoder_out_lens = self.encoder(speech, speech_lengths) |
|
|
| return encoder_out, encoder_out_lens |
|
|
| def _calc_ctc_loss( |
| self, |
| encoder_out: torch.Tensor, |
| encoder_out_lens: torch.Tensor, |
| ys_pad: torch.Tensor, |
| ys_pad_lens: torch.Tensor, |
| ): |
| |
| loss_ctc = self.ctc(encoder_out, encoder_out_lens, ys_pad, ys_pad_lens) |
|
|
| |
| cer_ctc = None |
| if not self.training and self.error_calculator is not None: |
| ys_hat = self.ctc.argmax(encoder_out).data |
| cer_ctc = self.error_calculator(ys_hat.cpu(), ys_pad.cpu(), is_ctc=True) |
| return loss_ctc, cer_ctc |
|
|
| def _calc_rich_ce_loss( |
| self, |
| encoder_out: torch.Tensor, |
| ys_pad: torch.Tensor, |
| ): |
| decoder_out = self.ctc.ctc_lo(encoder_out) |
| |
| loss_rich = self.criterion_att(decoder_out, ys_pad.contiguous()) |
| acc_rich = th_accuracy( |
| decoder_out.view(-1, self.vocab_size), |
| ys_pad.contiguous(), |
| ignore_label=self.ignore_id, |
| ) |
|
|
| return loss_rich, acc_rich |
|
|
|
|
| def inference( |
| self, |
| data_in, |
| data_lengths=None, |
| key: list = ["wav_file_tmp_name"], |
| tokenizer=None, |
| frontend=None, |
| **kwargs, |
| ): |
|
|
|
|
| meta_data = {} |
| if ( |
| isinstance(data_in, torch.Tensor) and kwargs.get("data_type", "sound") == "fbank" |
| ): |
| speech, speech_lengths = data_in, data_lengths |
| if len(speech.shape) < 3: |
| speech = speech[None, :, :] |
| if speech_lengths is None: |
| speech_lengths = speech.shape[1] |
| else: |
| |
| time1 = time.perf_counter() |
| audio_sample_list = load_audio_text_image_video( |
| data_in, |
| fs=frontend.fs, |
| audio_fs=kwargs.get("fs", 16000), |
| data_type=kwargs.get("data_type", "sound"), |
| tokenizer=tokenizer, |
| ) |
| time2 = time.perf_counter() |
| meta_data["load_data"] = f"{time2 - time1:0.3f}" |
| speech, speech_lengths = extract_fbank( |
| audio_sample_list, data_type=kwargs.get("data_type", "sound"), frontend=frontend |
| ) |
| time3 = time.perf_counter() |
| meta_data["extract_feat"] = f"{time3 - time2:0.3f}" |
| meta_data["batch_data_time"] = ( |
| speech_lengths.sum().item() * frontend.frame_shift * frontend.lfr_n / 1000 |
| ) |
|
|
| speech = speech.to(device=kwargs["device"]) |
| speech_lengths = speech_lengths.to(device=kwargs["device"]) |
|
|
| language = kwargs.get("language", "auto") |
| language_query = self.embed( |
| torch.LongTensor( |
| [[self.lid_dict[language] if language in self.lid_dict else 0]] |
| ).to(speech.device) |
| ).repeat(speech.size(0), 1, 1) |
| |
| use_itn = kwargs.get("use_itn", False) |
| output_timestamp = kwargs.get("output_timestamp", False) |
|
|
| textnorm = kwargs.get("text_norm", None) |
| if textnorm is None: |
| textnorm = "withitn" if use_itn else "woitn" |
| textnorm_query = self.embed( |
| torch.LongTensor([[self.textnorm_dict[textnorm]]]).to(speech.device) |
| ).repeat(speech.size(0), 1, 1) |
| speech = torch.cat((textnorm_query, speech), dim=1) |
| speech_lengths += 1 |
|
|
| event_emo_query = self.embed(torch.LongTensor([[1, 2]]).to(speech.device)).repeat( |
| speech.size(0), 1, 1 |
| ) |
| input_query = torch.cat((language_query, event_emo_query), dim=1) |
| speech = torch.cat((input_query, speech), dim=1) |
| speech_lengths += 3 |
|
|
| |
| encoder_out, encoder_out_lens = self.encoder(speech, speech_lengths) |
| if isinstance(encoder_out, tuple): |
| encoder_out = encoder_out[0] |
|
|
| |
| ctc_logits = self.ctc.log_softmax(encoder_out) |
| if kwargs.get("ban_emo_unk", False): |
| ctc_logits[:, :, self.emo_dict["unk"]] = -float("inf") |
|
|
| results = [] |
| b, n, d = encoder_out.size() |
| if isinstance(key[0], (list, tuple)): |
| key = key[0] |
| if len(key) < b: |
| key = key * b |
| for i in range(b): |
| x = ctc_logits[i, : encoder_out_lens[i].item(), :] |
| yseq = x.argmax(dim=-1) |
| yseq = torch.unique_consecutive(yseq, dim=-1) |
|
|
| ibest_writer = None |
| if kwargs.get("output_dir") is not None: |
| if not hasattr(self, "writer"): |
| self.writer = DatadirWriter(kwargs.get("output_dir")) |
| ibest_writer = self.writer[f"1best_recog"] |
|
|
| mask = yseq != self.blank_id |
| token_int = yseq[mask].tolist() |
|
|
| |
| text = tokenizer.decode(token_int) |
| if ibest_writer is not None: |
| ibest_writer["text"][key[i]] = text |
|
|
| if output_timestamp: |
| from itertools import groupby |
| timestamp = [] |
| tokens = tokenizer.text2tokens(text)[4:] |
|
|
| logits_speech = self.ctc.softmax(encoder_out)[i, 4:encoder_out_lens[i].item(), :] |
|
|
| pred = logits_speech.argmax(-1).cpu() |
| logits_speech[pred==self.blank_id, self.blank_id] = 0 |
|
|
| align = ctc_forced_align( |
| logits_speech.unsqueeze(0).float(), |
| torch.Tensor(token_int[4:]).unsqueeze(0).long().to(logits_speech.device), |
| (encoder_out_lens-4).long(), |
| torch.tensor(len(token_int)-4).unsqueeze(0).long().to(logits_speech.device), |
| ignore_id=self.ignore_id, |
| ) |
|
|
| pred = groupby(align[0, :encoder_out_lens[0]]) |
| _start = 0 |
| token_id = 0 |
| ts_max = encoder_out_lens[i] - 4 |
| for pred_token, pred_frame in pred: |
| _end = _start + len(list(pred_frame)) |
| if pred_token != 0: |
| ts_left = max((_start*60-30)/1000, 0) |
| ts_right = min((_end*60-30)/1000, (ts_max*60-30)/1000) |
| timestamp.append([tokens[token_id], ts_left, ts_right]) |
| token_id += 1 |
| _start = _end |
|
|
| result_i = {"key": key[i], "text": text, "timestamp": timestamp} |
| results.append(result_i) |
| else: |
| result_i = {"key": key[i], "text": text} |
| results.append(result_i) |
| return results, meta_data |
|
|
| def export(self, **kwargs): |
| from export_meta import export_rebuild_model |
|
|
| if "max_seq_len" not in kwargs: |
| kwargs["max_seq_len"] = 512 |
| models = export_rebuild_model(model=self, **kwargs) |
| return models |
|
|