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import math | |
from typing import Dict, List, NoReturn, Tuple | |
import matplotlib.pyplot as plt | |
import numpy as np | |
import pytorch_lightning as pl | |
import torch | |
import torch.nn as nn | |
import torch.nn.functional as F | |
import torch.optim as optim | |
from torch.optim.lr_scheduler import LambdaLR | |
from torchlibrosa.stft import ISTFT, STFT, magphase | |
from bytesep.models.pytorch_modules import Base, Subband, act, init_bn, init_layer | |
class ConvBlock(nn.Module): | |
def __init__( | |
self, | |
in_channels: int, | |
out_channels: int, | |
kernel_size: Tuple, | |
activation: str, | |
momentum: float, | |
): | |
r"""Convolutional block.""" | |
super(ConvBlock, self).__init__() | |
self.activation = activation | |
padding = (kernel_size[0] // 2, kernel_size[1] // 2) | |
self.conv1 = nn.Conv2d( | |
in_channels=in_channels, | |
out_channels=out_channels, | |
kernel_size=kernel_size, | |
stride=(1, 1), | |
dilation=(1, 1), | |
padding=padding, | |
bias=False, | |
) | |
self.bn1 = nn.BatchNorm2d(out_channels, momentum=momentum) | |
self.conv2 = nn.Conv2d( | |
in_channels=out_channels, | |
out_channels=out_channels, | |
kernel_size=kernel_size, | |
stride=(1, 1), | |
dilation=(1, 1), | |
padding=padding, | |
bias=False, | |
) | |
self.bn2 = nn.BatchNorm2d(out_channels, momentum=momentum) | |
self.init_weights() | |
def init_weights(self) -> NoReturn: | |
r"""Initialize weights.""" | |
init_layer(self.conv1) | |
init_layer(self.conv2) | |
init_bn(self.bn1) | |
init_bn(self.bn2) | |
def forward(self, input_tensor: torch.Tensor) -> torch.Tensor: | |
r"""Forward data into the module. | |
Args: | |
input_tensor: (batch_size, in_feature_maps, time_steps, freq_bins) | |
Returns: | |
output_tensor: (batch_size, out_feature_maps, time_steps, freq_bins) | |
""" | |
x = act(self.bn1(self.conv1(input_tensor)), self.activation) | |
x = act(self.bn2(self.conv2(x)), self.activation) | |
output_tensor = x | |
return output_tensor | |
class EncoderBlock(nn.Module): | |
def __init__( | |
self, | |
in_channels: int, | |
out_channels: int, | |
kernel_size: Tuple, | |
downsample: Tuple, | |
activation: str, | |
momentum: float, | |
): | |
r"""Encoder block.""" | |
super(EncoderBlock, self).__init__() | |
self.conv_block = ConvBlock( | |
in_channels, out_channels, kernel_size, activation, momentum | |
) | |
self.downsample = downsample | |
def forward(self, input_tensor: torch.Tensor) -> torch.Tensor: | |
r"""Forward data into the module. | |
Args: | |
input_tensor: (batch_size, in_feature_maps, time_steps, freq_bins) | |
Returns: | |
encoder_pool: (batch_size, out_feature_maps, downsampled_time_steps, downsampled_freq_bins) | |
encoder: (batch_size, out_feature_maps, time_steps, freq_bins) | |
""" | |
encoder_tensor = self.conv_block(input_tensor) | |
# encoder: (batch_size, out_feature_maps, time_steps, freq_bins) | |
encoder_pool = F.avg_pool2d(encoder_tensor, kernel_size=self.downsample) | |
# encoder_pool: (batch_size, out_feature_maps, downsampled_time_steps, downsampled_freq_bins) | |
return encoder_pool, encoder_tensor | |
class DecoderBlock(nn.Module): | |
def __init__( | |
self, | |
in_channels: int, | |
out_channels: int, | |
kernel_size: Tuple, | |
upsample: Tuple, | |
activation: str, | |
momentum: float, | |
): | |
r"""Decoder block.""" | |
super(DecoderBlock, self).__init__() | |
self.kernel_size = kernel_size | |
self.stride = upsample | |
self.activation = activation | |
self.conv1 = torch.nn.ConvTranspose2d( | |
in_channels=in_channels, | |
out_channels=out_channels, | |
kernel_size=self.stride, | |
stride=self.stride, | |
padding=(0, 0), | |
bias=False, | |
dilation=(1, 1), | |
) | |
self.bn1 = nn.BatchNorm2d(out_channels, momentum=momentum) | |
self.conv_block2 = ConvBlock( | |
out_channels * 2, out_channels, kernel_size, activation, momentum | |
) | |
self.init_weights() | |
def init_weights(self): | |
r"""Initialize weights.""" | |
init_layer(self.conv1) | |
init_bn(self.bn1) | |
def forward( | |
self, input_tensor: torch.Tensor, concat_tensor: torch.Tensor | |
) -> torch.Tensor: | |
r"""Forward data into the module. | |
Args: | |
torch_tensor: (batch_size, in_feature_maps, downsampled_time_steps, downsampled_freq_bins) | |
concat_tensor: (batch_size, in_feature_maps, time_steps, freq_bins) | |
Returns: | |
output_tensor: (batch_size, out_feature_maps, time_steps, freq_bins) | |
""" | |
x = act(self.bn1(self.conv1(input_tensor)), self.activation) | |
# (batch_size, in_feature_maps, time_steps, freq_bins) | |
x = torch.cat((x, concat_tensor), dim=1) | |
# (batch_size, in_feature_maps * 2, time_steps, freq_bins) | |
output_tensor = self.conv_block2(x) | |
# output_tensor: (batch_size, out_feature_maps, time_steps, freq_bins) | |
return output_tensor | |
class UNet(nn.Module, Base): | |
def __init__(self, input_channels: int, target_sources_num: int): | |
r"""UNet.""" | |
super(UNet, self).__init__() | |
self.input_channels = input_channels | |
self.target_sources_num = target_sources_num | |
window_size = 2048 | |
hop_size = 441 | |
center = True | |
pad_mode = "reflect" | |
window = "hann" | |
activation = "leaky_relu" | |
momentum = 0.01 | |
self.subbands_num = 1 | |
assert ( | |
self.subbands_num == 1 | |
), "Using subbands_num > 1 on spectrogram \ | |
will lead to unexpected performance sometimes. Suggest to use \ | |
subband method on waveform." | |
self.K = 3 # outputs: |M|, cos∠M, sin∠M | |
self.downsample_ratio = 2 ** 6 # This number equals 2^{#encoder_blcoks} | |
self.stft = STFT( | |
n_fft=window_size, | |
hop_length=hop_size, | |
win_length=window_size, | |
window=window, | |
center=center, | |
pad_mode=pad_mode, | |
freeze_parameters=True, | |
) | |
self.istft = ISTFT( | |
n_fft=window_size, | |
hop_length=hop_size, | |
win_length=window_size, | |
window=window, | |
center=center, | |
pad_mode=pad_mode, | |
freeze_parameters=True, | |
) | |
self.bn0 = nn.BatchNorm2d(window_size // 2 + 1, momentum=momentum) | |
self.subband = Subband(subbands_num=self.subbands_num) | |
self.encoder_block1 = EncoderBlock( | |
in_channels=input_channels * self.subbands_num, | |
out_channels=32, | |
kernel_size=(3, 3), | |
downsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.encoder_block2 = EncoderBlock( | |
in_channels=32, | |
out_channels=64, | |
kernel_size=(3, 3), | |
downsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.encoder_block3 = EncoderBlock( | |
in_channels=64, | |
out_channels=128, | |
kernel_size=(3, 3), | |
downsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.encoder_block4 = EncoderBlock( | |
in_channels=128, | |
out_channels=256, | |
kernel_size=(3, 3), | |
downsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.encoder_block5 = EncoderBlock( | |
in_channels=256, | |
out_channels=384, | |
kernel_size=(3, 3), | |
downsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.encoder_block6 = EncoderBlock( | |
in_channels=384, | |
out_channels=384, | |
kernel_size=(3, 3), | |
downsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.conv_block7 = ConvBlock( | |
in_channels=384, | |
out_channels=384, | |
kernel_size=(3, 3), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.decoder_block1 = DecoderBlock( | |
in_channels=384, | |
out_channels=384, | |
kernel_size=(3, 3), | |
upsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.decoder_block2 = DecoderBlock( | |
in_channels=384, | |
out_channels=384, | |
kernel_size=(3, 3), | |
upsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.decoder_block3 = DecoderBlock( | |
in_channels=384, | |
out_channels=256, | |
kernel_size=(3, 3), | |
upsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.decoder_block4 = DecoderBlock( | |
in_channels=256, | |
out_channels=128, | |
kernel_size=(3, 3), | |
upsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.decoder_block5 = DecoderBlock( | |
in_channels=128, | |
out_channels=64, | |
kernel_size=(3, 3), | |
upsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.decoder_block6 = DecoderBlock( | |
in_channels=64, | |
out_channels=32, | |
kernel_size=(3, 3), | |
upsample=(2, 2), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.after_conv_block1 = ConvBlock( | |
in_channels=32, | |
out_channels=32, | |
kernel_size=(3, 3), | |
activation=activation, | |
momentum=momentum, | |
) | |
self.after_conv2 = nn.Conv2d( | |
in_channels=32, | |
out_channels=target_sources_num | |
* input_channels | |
* self.K | |
* self.subbands_num, | |
kernel_size=(1, 1), | |
stride=(1, 1), | |
padding=(0, 0), | |
bias=True, | |
) | |
self.init_weights() | |
def init_weights(self): | |
r"""Initialize weights.""" | |
init_bn(self.bn0) | |
init_layer(self.after_conv2) | |
def feature_maps_to_wav( | |
self, | |
input_tensor: torch.Tensor, | |
sp: torch.Tensor, | |
sin_in: torch.Tensor, | |
cos_in: torch.Tensor, | |
audio_length: int, | |
) -> torch.Tensor: | |
r"""Convert feature maps to waveform. | |
Args: | |
input_tensor: (batch_size, target_sources_num * input_channels * self.K, time_steps, freq_bins) | |
sp: (batch_size, target_sources_num * input_channels, time_steps, freq_bins) | |
sin_in: (batch_size, target_sources_num * input_channels, time_steps, freq_bins) | |
cos_in: (batch_size, target_sources_num * input_channels, time_steps, freq_bins) | |
Outputs: | |
waveform: (batch_size, target_sources_num * input_channels, segment_samples) | |
""" | |
batch_size, _, time_steps, freq_bins = input_tensor.shape | |
x = input_tensor.reshape( | |
batch_size, | |
self.target_sources_num, | |
self.input_channels, | |
self.K, | |
time_steps, | |
freq_bins, | |
) | |
# x: (batch_size, target_sources_num, input_channles, K, time_steps, freq_bins) | |
mask_mag = torch.sigmoid(x[:, :, :, 0, :, :]) | |
_mask_real = torch.tanh(x[:, :, :, 1, :, :]) | |
_mask_imag = torch.tanh(x[:, :, :, 2, :, :]) | |
_, mask_cos, mask_sin = magphase(_mask_real, _mask_imag) | |
# mask_cos, mask_sin: (batch_size, target_sources_num, input_channles, time_steps, freq_bins) | |
# Y = |Y|cos∠Y + j|Y|sin∠Y | |
# = |Y|cos(∠X + ∠M) + j|Y|sin(∠X + ∠M) | |
# = |Y|(cos∠X cos∠M - sin∠X sin∠M) + j|Y|(sin∠X cos∠M + cos∠X sin∠M) | |
out_cos = ( | |
cos_in[:, None, :, :, :] * mask_cos - sin_in[:, None, :, :, :] * mask_sin | |
) | |
out_sin = ( | |
sin_in[:, None, :, :, :] * mask_cos + cos_in[:, None, :, :, :] * mask_sin | |
) | |
# out_cos: (batch_size, target_sources_num, input_channles, time_steps, freq_bins) | |
# out_sin: (batch_size, target_sources_num, input_channles, time_steps, freq_bins) | |
# Calculate |Y|. | |
out_mag = F.relu_(sp[:, None, :, :, :] * mask_mag) | |
# out_mag: (batch_size, target_sources_num, input_channles, time_steps, freq_bins) | |
# Calculate Y_{real} and Y_{imag} for ISTFT. | |
out_real = out_mag * out_cos | |
out_imag = out_mag * out_sin | |
# out_real, out_imag: (batch_size, target_sources_num, input_channles, time_steps, freq_bins) | |
# Reformat shape to (n, 1, time_steps, freq_bins) for ISTFT. | |
shape = ( | |
batch_size * self.target_sources_num * self.input_channels, | |
1, | |
time_steps, | |
freq_bins, | |
) | |
out_real = out_real.reshape(shape) | |
out_imag = out_imag.reshape(shape) | |
# ISTFT. | |
x = self.istft(out_real, out_imag, audio_length) | |
# (batch_size * target_sources_num * input_channels, segments_num) | |
# Reshape. | |
waveform = x.reshape( | |
batch_size, self.target_sources_num * self.input_channels, audio_length | |
) | |
# (batch_size, target_sources_num * input_channels, segments_num) | |
return waveform | |
def forward(self, input_dict: Dict) -> Dict: | |
r"""Forward data into the module. | |
Args: | |
input_dict: dict, e.g., { | |
waveform: (batch_size, input_channels, segment_samples), | |
..., | |
} | |
Outputs: | |
output_dict: dict, e.g., { | |
'waveform': (batch_size, input_channels, segment_samples), | |
..., | |
} | |
""" | |
mixtures = input_dict['waveform'] | |
# (batch_size, input_channels, segment_samples) | |
mag, cos_in, sin_in = self.wav_to_spectrogram_phase(mixtures) | |
# mag, cos_in, sin_in: (batch_size, input_channels, time_steps, freq_bins) | |
# Batch normalize on individual frequency bins. | |
x = mag.transpose(1, 3) | |
x = self.bn0(x) | |
x = x.transpose(1, 3) | |
# x: (batch_size, input_channels, time_steps, freq_bins) | |
# Pad spectrogram to be evenly divided by downsample ratio. | |
origin_len = x.shape[2] | |
pad_len = ( | |
int(np.ceil(x.shape[2] / self.downsample_ratio)) * self.downsample_ratio | |
- origin_len | |
) | |
x = F.pad(x, pad=(0, 0, 0, pad_len)) | |
# x: (batch_size, input_channels, padded_time_steps, freq_bins) | |
# Let frequency bins be evenly divided by 2, e.g., 1025 -> 1024 | |
x = x[..., 0 : x.shape[-1] - 1] # (bs, input_channels, T, F) | |
if self.subbands_num > 1: | |
x = self.subband.analysis(x) | |
# (bs, input_channels, T, F'), where F' = F // subbands_num | |
# UNet | |
(x1_pool, x1) = self.encoder_block1(x) # x1_pool: (bs, 32, T / 2, F' / 2) | |
(x2_pool, x2) = self.encoder_block2(x1_pool) # x2_pool: (bs, 64, T / 4, F' / 4) | |
(x3_pool, x3) = self.encoder_block3( | |
x2_pool | |
) # x3_pool: (bs, 128, T / 8, F' / 8) | |
(x4_pool, x4) = self.encoder_block4( | |
x3_pool | |
) # x4_pool: (bs, 256, T / 16, F' / 16) | |
(x5_pool, x5) = self.encoder_block5( | |
x4_pool | |
) # x5_pool: (bs, 384, T / 32, F' / 32) | |
(x6_pool, x6) = self.encoder_block6( | |
x5_pool | |
) # x6_pool: (bs, 384, T / 64, F' / 64) | |
x_center = self.conv_block7(x6_pool) # (bs, 384, T / 64, F' / 64) | |
x7 = self.decoder_block1(x_center, x6) # (bs, 384, T / 32, F' / 32) | |
x8 = self.decoder_block2(x7, x5) # (bs, 384, T / 16, F' / 16) | |
x9 = self.decoder_block3(x8, x4) # (bs, 256, T / 8, F' / 8) | |
x10 = self.decoder_block4(x9, x3) # (bs, 128, T / 4, F' / 4) | |
x11 = self.decoder_block5(x10, x2) # (bs, 64, T / 2, F' / 2) | |
x12 = self.decoder_block6(x11, x1) # (bs, 32, T, F') | |
x = self.after_conv_block1(x12) # (bs, 32, T, F') | |
x = self.after_conv2(x) | |
# (batch_size, target_sources_num * input_channles * self.K * subbands_num, T, F') | |
if self.subbands_num > 1: | |
x = self.subband.synthesis(x) | |
# (batch_size, target_sources_num * input_channles * self.K, T, F) | |
# Recover shape | |
x = F.pad(x, pad=(0, 1)) # Pad frequency, e.g., 1024 -> 1025. | |
x = x[:, :, 0:origin_len, :] | |
# (batch_size, target_sources_num * input_channles * self.K, T, F) | |
audio_length = mixtures.shape[2] | |
separated_audio = self.feature_maps_to_wav(x, mag, sin_in, cos_in, audio_length) | |
# separated_audio: (batch_size, target_sources_num * input_channels, segments_num) | |
output_dict = {'waveform': separated_audio} | |
return output_dict | |