FunASR/funasr/models/frontend/wav_frontend_kaldifeat.py
2023-02-22 20:11:31 +08:00

181 lines
6.2 KiB
Python

# Copyright (c) Alibaba, Inc. and its affiliates.
# Part of the implementation is borrowed from espnet/espnet.
from typing import Tuple
import numpy as np
import torch
import torchaudio.compliance.kaldi as kaldi
from funasr.models.frontend.abs_frontend import AbsFrontend
from typeguard import check_argument_types
from torch.nn.utils.rnn import pad_sequence
# import kaldifeat
def load_cmvn(cmvn_file):
with open(cmvn_file, 'r', encoding='utf-8') as f:
lines = f.readlines()
means_list = []
vars_list = []
for i in range(len(lines)):
line_item = lines[i].split()
if line_item[0] == '<AddShift>':
line_item = lines[i + 1].split()
if line_item[0] == '<LearnRateCoef>':
add_shift_line = line_item[3:(len(line_item) - 1)]
means_list = list(add_shift_line)
continue
elif line_item[0] == '<Rescale>':
line_item = lines[i + 1].split()
if line_item[0] == '<LearnRateCoef>':
rescale_line = line_item[3:(len(line_item) - 1)]
vars_list = list(rescale_line)
continue
means = np.array(means_list).astype(np.float)
vars = np.array(vars_list).astype(np.float)
cmvn = np.array([means, vars])
cmvn = torch.as_tensor(cmvn)
return cmvn
def apply_cmvn(inputs, cmvn_file): # noqa
"""
Apply CMVN with mvn data
"""
device = inputs.device
dtype = inputs.dtype
frame, dim = inputs.shape
cmvn = load_cmvn(cmvn_file)
means = np.tile(cmvn[0:1, :dim], (frame, 1))
vars = np.tile(cmvn[1:2, :dim], (frame, 1))
inputs += torch.from_numpy(means).type(dtype).to(device)
inputs *= torch.from_numpy(vars).type(dtype).to(device)
return inputs.type(torch.float32)
def apply_lfr(inputs, lfr_m, lfr_n):
LFR_inputs = []
T = inputs.shape[0]
T_lfr = int(np.ceil(T / lfr_n))
left_padding = inputs[0].repeat((lfr_m - 1) // 2, 1)
inputs = torch.vstack((left_padding, inputs))
T = T + (lfr_m - 1) // 2
for i in range(T_lfr):
if lfr_m <= T - i * lfr_n:
LFR_inputs.append((inputs[i * lfr_n:i * lfr_n + lfr_m]).view(1, -1))
else: # process last LFR frame
num_padding = lfr_m - (T - i * lfr_n)
frame = (inputs[i * lfr_n:]).view(-1)
for _ in range(num_padding):
frame = torch.hstack((frame, inputs[-1]))
LFR_inputs.append(frame)
LFR_outputs = torch.vstack(LFR_inputs)
return LFR_outputs.type(torch.float32)
# class WavFrontend_kaldifeat(AbsFrontend):
# """Conventional frontend structure for ASR.
# """
#
# def __init__(
# self,
# cmvn_file: str = None,
# fs: int = 16000,
# window: str = 'hamming',
# n_mels: int = 80,
# frame_length: int = 25,
# frame_shift: int = 10,
# lfr_m: int = 1,
# lfr_n: int = 1,
# dither: float = 1.0,
# snip_edges: bool = True,
# upsacle_samples: bool = True,
# device: str = 'cpu',
# **kwargs,
# ):
# super().__init__()
#
# opts = kaldifeat.FbankOptions()
# opts.device = device
# opts.frame_opts.samp_freq = fs
# opts.frame_opts.dither = dither
# opts.frame_opts.window_type = window
# opts.frame_opts.frame_shift_ms = float(frame_shift)
# opts.frame_opts.frame_length_ms = float(frame_length)
# opts.mel_opts.num_bins = n_mels
# opts.energy_floor = 0
# opts.frame_opts.snip_edges = snip_edges
# opts.mel_opts.debug_mel = False
# self.opts = opts
# self.fbank_fn = None
# self.fbank_beg_idx = 0
# self.reset_fbank_status()
#
# self.lfr_m = lfr_m
# self.lfr_n = lfr_n
# self.cmvn_file = cmvn_file
# self.upsacle_samples = upsacle_samples
#
# def output_size(self) -> int:
# return self.n_mels * self.lfr_m
#
# def forward_fbank(
# self,
# input: torch.Tensor,
# input_lengths: torch.Tensor) -> Tuple[torch.Tensor, torch.Tensor]:
# batch_size = input.size(0)
# feats = []
# feats_lens = []
# for i in range(batch_size):
# waveform_length = input_lengths[i]
# waveform = input[i][:waveform_length]
# waveform = waveform * (1 << 15)
#
# self.fbank_fn.accept_waveform(self.opts.frame_opts.samp_freq, waveform.tolist())
# frames = self.fbank_fn.num_frames_ready
# frames_cur = frames - self.fbank_beg_idx
# mat = torch.empty([frames_cur, self.opts.mel_opts.num_bins], dtype=torch.float32).to(
# device=self.opts.device)
# for i in range(self.fbank_beg_idx, frames):
# mat[i, :] = self.fbank_fn.get_frame(i)
# self.fbank_beg_idx += frames_cur
#
# feat_length = mat.size(0)
# feats.append(mat)
# feats_lens.append(feat_length)
#
# feats_lens = torch.as_tensor(feats_lens)
# feats_pad = pad_sequence(feats,
# batch_first=True,
# padding_value=0.0)
# return feats_pad, feats_lens
#
# def reset_fbank_status(self):
# self.fbank_fn = kaldifeat.OnlineFbank(self.opts)
# self.fbank_beg_idx = 0
#
# def forward_lfr_cmvn(
# self,
# input: torch.Tensor,
# input_lengths: torch.Tensor) -> Tuple[torch.Tensor, torch.Tensor]:
# batch_size = input.size(0)
# feats = []
# feats_lens = []
# for i in range(batch_size):
# mat = input[i, :input_lengths[i], :]
# if self.lfr_m != 1 or self.lfr_n != 1:
# mat = apply_lfr(mat, self.lfr_m, self.lfr_n)
# if self.cmvn_file is not None:
# mat = apply_cmvn(mat, self.cmvn_file)
# feat_length = mat.size(0)
# feats.append(mat)
# feats_lens.append(feat_length)
#
# feats_lens = torch.as_tensor(feats_lens)
# feats_pad = pad_sequence(feats,
# batch_first=True,
# padding_value=0.0)
# return feats_pad, feats_lens