| | |
| | | # Copyright (c) Alibaba, Inc. and its affiliates. |
| | | # Part of the implementation is borrowed from espnet/espnet. |
| | | from abc import ABC |
| | | from typing import Tuple |
| | | |
| | | import numpy as np |
| | | import torch |
| | | import torchaudio.compliance.kaldi as kaldi |
| | | from funasr.models.frontend.abs_frontend import AbsFrontend |
| | | import funasr.models.frontend.eend_ola_feature as eend_ola_feature |
| | | from typeguard import check_argument_types |
| | | from torch.nn.utils.rnn import pad_sequence |
| | | from typeguard import check_argument_types |
| | | |
| | | import funasr.models.frontend.eend_ola_feature as eend_ola_feature |
| | | from funasr.models.frontend.abs_frontend import AbsFrontend |
| | | |
| | | |
| | | def load_cmvn(cmvn_file): |
| | |
| | | # inputs tensor has catted the cache tensor |
| | | # def apply_lfr(inputs: torch.Tensor, lfr_m: int, lfr_n: int, inputs_lfr_cache: torch.Tensor = None, |
| | | # is_final: bool = False) -> Tuple[torch.Tensor, torch.Tensor, int]: |
| | | def apply_lfr(inputs: torch.Tensor, lfr_m: int, lfr_n: int, is_final: bool = False) -> Tuple[torch.Tensor, torch.Tensor, int]: |
| | | def apply_lfr(inputs: torch.Tensor, lfr_m: int, lfr_n: int, is_final: bool = False) -> Tuple[ |
| | | torch.Tensor, torch.Tensor, int]: |
| | | """ |
| | | Apply lfr with data |
| | | """ |
| | |
| | | if self.lfr_m != 1 or self.lfr_n != 1: |
| | | # update self.lfr_splice_cache in self.apply_lfr |
| | | # mat, self.lfr_splice_cache[i], lfr_splice_frame_idx = self.apply_lfr(mat, self.lfr_m, self.lfr_n, self.lfr_splice_cache[i], |
| | | mat, self.lfr_splice_cache[i], lfr_splice_frame_idx = self.apply_lfr(mat, self.lfr_m, self.lfr_n, is_final) |
| | | mat, self.lfr_splice_cache[i], lfr_splice_frame_idx = self.apply_lfr(mat, self.lfr_m, self.lfr_n, |
| | | is_final) |
| | | if self.cmvn_file is not None: |
| | | mat = self.apply_cmvn(mat, self.cmvn) |
| | | feat_length = mat.size(0) |
| | |
| | | assert batch_size == 1, 'we support to extract feature online only when the batch size is equal to 1 now' |
| | | waveforms, feats, feats_lengths = self.forward_fbank(input, input_lengths) # input shape: B T D |
| | | if feats.shape[0]: |
| | | #if self.reserve_waveforms is None and self.lfr_m > 1: |
| | | # if self.reserve_waveforms is None and self.lfr_m > 1: |
| | | # self.reserve_waveforms = waveforms[:, :(self.lfr_m - 1) // 2 * self.frame_shift_sample_length] |
| | | self.waveforms = waveforms if self.reserve_waveforms is None else torch.cat((self.reserve_waveforms, waveforms), dim=1) |
| | | self.waveforms = waveforms if self.reserve_waveforms is None else torch.cat( |
| | | (self.reserve_waveforms, waveforms), dim=1) |
| | | if not self.lfr_splice_cache: # 初始化splice_cache |
| | | for i in range(batch_size): |
| | | self.lfr_splice_cache.append(feats[i][0, :].unsqueeze(dim=0).repeat((self.lfr_m - 1) // 2, 1)) |
| | |
| | | lfr_splice_cache_tensor = torch.stack(self.lfr_splice_cache) # B T D |
| | | feats = torch.cat((lfr_splice_cache_tensor, feats), dim=1) |
| | | feats_lengths += lfr_splice_cache_tensor[0].shape[0] |
| | | frame_from_waveforms = int((self.waveforms.shape[1] - self.frame_sample_length) / self.frame_shift_sample_length + 1) |
| | | frame_from_waveforms = int( |
| | | (self.waveforms.shape[1] - self.frame_sample_length) / self.frame_shift_sample_length + 1) |
| | | minus_frame = (self.lfr_m - 1) // 2 if self.reserve_waveforms is None else 0 |
| | | feats, feats_lengths, lfr_splice_frame_idxs = self.forward_lfr_cmvn(feats, feats_lengths, is_final) |
| | | if self.lfr_m == 1: |
| | |
| | | reserve_frame_idx = lfr_splice_frame_idxs[0] - minus_frame |
| | | # print('reserve_frame_idx: ' + str(reserve_frame_idx)) |
| | | # print('frame_frame: ' + str(frame_from_waveforms)) |
| | | self.reserve_waveforms = self.waveforms[:, reserve_frame_idx * self.frame_shift_sample_length:frame_from_waveforms * self.frame_shift_sample_length] |
| | | sample_length = (frame_from_waveforms - 1) * self.frame_shift_sample_length + self.frame_sample_length |
| | | self.reserve_waveforms = self.waveforms[:, |
| | | reserve_frame_idx * self.frame_shift_sample_length:frame_from_waveforms * self.frame_shift_sample_length] |
| | | sample_length = ( |
| | | frame_from_waveforms - 1) * self.frame_shift_sample_length + self.frame_sample_length |
| | | self.waveforms = self.waveforms[:, :sample_length] |
| | | else: |
| | | # update self.reserve_waveforms and self.lfr_splice_cache |
| | | self.reserve_waveforms = self.waveforms[:, :-(self.frame_sample_length - self.frame_shift_sample_length)] |
| | | self.reserve_waveforms = self.waveforms[:, |
| | | :-(self.frame_sample_length - self.frame_shift_sample_length)] |
| | | for i in range(batch_size): |
| | | self.lfr_splice_cache[i] = torch.cat((self.lfr_splice_cache[i], feats[i]), dim=0) |
| | | return torch.empty(0), feats_lengths |
| | | else: |
| | | if is_final: |
| | | self.waveforms = waveforms if self.reserve_waveforms is None else self.reserve_waveforms |
| | | feats = torch.stack(self.lfr_splice_cache) |
| | | feats = torch.stack(self.lfr_splice_cache) |
| | | feats_lengths = torch.zeros(batch_size, dtype=torch.int) + feats.shape[1] |
| | | feats, feats_lengths, _ = self.forward_lfr_cmvn(feats, feats_lengths, is_final) |
| | | if is_final: |
| | |
| | | self.frame_shift = frame_shift |
| | | self.lfr_m = lfr_m |
| | | self.lfr_n = lfr_n |
| | | self.n_mels = 23 |
| | | |
| | | def output_size(self) -> int: |
| | | return self.n_mels * self.lfr_m |
| | | return self.n_mels * (2 * self.lfr_m + 1) |
| | | |
| | | def forward( |
| | | self, |
| | |
| | | feats_pad = pad_sequence(feats, |
| | | batch_first=True, |
| | | padding_value=0.0) |
| | | return feats_pad, feats_lens |
| | | return feats_pad, feats_lens |