mirror of
https://github.com/Anjok07/ultimatevocalremovergui.git
synced 2024-11-24 15:30:11 +01:00
453 lines
16 KiB
Python
453 lines
16 KiB
Python
# Copyright (c) Facebook, Inc. and its affiliates.
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# All rights reserved.
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#
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# This source code is licensed under the license found in the
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# LICENSE file in the root directory of this source tree.
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#
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# Created on 2018/12
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# Author: Kaituo XU
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# Modified on 2019/11 by Alexandre Defossez, added support for multiple output channels
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# Here is the original license:
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# The MIT License (MIT)
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#
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# Copyright (c) 2018 Kaituo XU
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#
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# Permission is hereby granted, free of charge, to any person obtaining a copy
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# of this software and associated documentation files (the "Software"), to deal
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# in the Software without restriction, including without limitation the rights
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# to use, copy, modify, merge, publish, distribute, sublicense, and/or sell
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# copies of the Software, and to permit persons to whom the Software is
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# furnished to do so, subject to the following conditions:
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#
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# The above copyright notice and this permission notice shall be included in all
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# copies or substantial portions of the Software.
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#
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# THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
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# IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
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# FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
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# AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
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# LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
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# OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
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# SOFTWARE.
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import math
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import torch
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import torch.nn as nn
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import torch.nn.functional as F
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from .utils import capture_init
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EPS = 1e-8
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def overlap_and_add(signal, frame_step):
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outer_dimensions = signal.size()[:-2]
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frames, frame_length = signal.size()[-2:]
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subframe_length = math.gcd(frame_length, frame_step) # gcd=Greatest Common Divisor
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subframe_step = frame_step // subframe_length
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subframes_per_frame = frame_length // subframe_length
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output_size = frame_step * (frames - 1) + frame_length
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output_subframes = output_size // subframe_length
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subframe_signal = signal.view(*outer_dimensions, -1, subframe_length)
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frame = torch.arange(0, output_subframes,
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device=signal.device).unfold(0, subframes_per_frame, subframe_step)
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frame = frame.long() # signal may in GPU or CPU
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frame = frame.contiguous().view(-1)
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result = signal.new_zeros(*outer_dimensions, output_subframes, subframe_length)
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result.index_add_(-2, frame, subframe_signal)
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result = result.view(*outer_dimensions, -1)
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return result
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class ConvTasNet(nn.Module):
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@capture_init
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def __init__(self,
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sources,
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N=256,
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L=20,
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B=256,
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H=512,
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P=3,
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X=8,
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R=4,
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audio_channels=2,
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norm_type="gLN",
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causal=False,
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mask_nonlinear='relu',
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samplerate=44100,
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segment_length=44100 * 2 * 4):
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"""
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Args:
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sources: list of sources
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N: Number of filters in autoencoder
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L: Length of the filters (in samples)
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B: Number of channels in bottleneck 1 × 1-conv block
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H: Number of channels in convolutional blocks
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P: Kernel size in convolutional blocks
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X: Number of convolutional blocks in each repeat
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R: Number of repeats
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norm_type: BN, gLN, cLN
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causal: causal or non-causal
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mask_nonlinear: use which non-linear function to generate mask
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"""
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super(ConvTasNet, self).__init__()
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# Hyper-parameter
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self.sources = sources
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self.C = len(sources)
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self.N, self.L, self.B, self.H, self.P, self.X, self.R = N, L, B, H, P, X, R
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self.norm_type = norm_type
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self.causal = causal
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self.mask_nonlinear = mask_nonlinear
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self.audio_channels = audio_channels
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self.samplerate = samplerate
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self.segment_length = segment_length
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# Components
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self.encoder = Encoder(L, N, audio_channels)
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self.separator = TemporalConvNet(
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N, B, H, P, X, R, self.C, norm_type, causal, mask_nonlinear)
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self.decoder = Decoder(N, L, audio_channels)
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# init
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for p in self.parameters():
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if p.dim() > 1:
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nn.init.xavier_normal_(p)
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def valid_length(self, length):
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return length
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def forward(self, mixture):
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"""
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Args:
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mixture: [M, T], M is batch size, T is #samples
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Returns:
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est_source: [M, C, T]
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"""
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mixture_w = self.encoder(mixture)
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est_mask = self.separator(mixture_w)
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est_source = self.decoder(mixture_w, est_mask)
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# T changed after conv1d in encoder, fix it here
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T_origin = mixture.size(-1)
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T_conv = est_source.size(-1)
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est_source = F.pad(est_source, (0, T_origin - T_conv))
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return est_source
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class Encoder(nn.Module):
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"""Estimation of the nonnegative mixture weight by a 1-D conv layer.
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"""
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def __init__(self, L, N, audio_channels):
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super(Encoder, self).__init__()
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# Hyper-parameter
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self.L, self.N = L, N
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# Components
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# 50% overlap
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self.conv1d_U = nn.Conv1d(audio_channels, N, kernel_size=L, stride=L // 2, bias=False)
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def forward(self, mixture):
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"""
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Args:
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mixture: [M, T], M is batch size, T is #samples
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Returns:
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mixture_w: [M, N, K], where K = (T-L)/(L/2)+1 = 2T/L-1
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"""
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mixture_w = F.relu(self.conv1d_U(mixture)) # [M, N, K]
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return mixture_w
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class Decoder(nn.Module):
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def __init__(self, N, L, audio_channels):
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super(Decoder, self).__init__()
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# Hyper-parameter
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self.N, self.L = N, L
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self.audio_channels = audio_channels
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# Components
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self.basis_signals = nn.Linear(N, audio_channels * L, bias=False)
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def forward(self, mixture_w, est_mask):
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"""
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Args:
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mixture_w: [M, N, K]
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est_mask: [M, C, N, K]
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Returns:
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est_source: [M, C, T]
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"""
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# D = W * M
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source_w = torch.unsqueeze(mixture_w, 1) * est_mask # [M, C, N, K]
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source_w = torch.transpose(source_w, 2, 3) # [M, C, K, N]
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# S = DV
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est_source = self.basis_signals(source_w) # [M, C, K, ac * L]
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m, c, k, _ = est_source.size()
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est_source = est_source.view(m, c, k, self.audio_channels, -1).transpose(2, 3).contiguous()
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est_source = overlap_and_add(est_source, self.L // 2) # M x C x ac x T
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return est_source
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class TemporalConvNet(nn.Module):
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def __init__(self, N, B, H, P, X, R, C, norm_type="gLN", causal=False, mask_nonlinear='relu'):
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"""
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Args:
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N: Number of filters in autoencoder
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B: Number of channels in bottleneck 1 × 1-conv block
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H: Number of channels in convolutional blocks
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P: Kernel size in convolutional blocks
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X: Number of convolutional blocks in each repeat
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R: Number of repeats
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C: Number of speakers
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norm_type: BN, gLN, cLN
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causal: causal or non-causal
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mask_nonlinear: use which non-linear function to generate mask
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"""
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super(TemporalConvNet, self).__init__()
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# Hyper-parameter
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self.C = C
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self.mask_nonlinear = mask_nonlinear
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# Components
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# [M, N, K] -> [M, N, K]
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layer_norm = ChannelwiseLayerNorm(N)
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# [M, N, K] -> [M, B, K]
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bottleneck_conv1x1 = nn.Conv1d(N, B, 1, bias=False)
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# [M, B, K] -> [M, B, K]
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repeats = []
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for r in range(R):
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blocks = []
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for x in range(X):
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dilation = 2**x
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padding = (P - 1) * dilation if causal else (P - 1) * dilation // 2
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blocks += [
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TemporalBlock(B,
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H,
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P,
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stride=1,
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padding=padding,
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dilation=dilation,
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norm_type=norm_type,
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causal=causal)
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]
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repeats += [nn.Sequential(*blocks)]
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temporal_conv_net = nn.Sequential(*repeats)
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# [M, B, K] -> [M, C*N, K]
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mask_conv1x1 = nn.Conv1d(B, C * N, 1, bias=False)
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# Put together
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self.network = nn.Sequential(layer_norm, bottleneck_conv1x1, temporal_conv_net,
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mask_conv1x1)
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def forward(self, mixture_w):
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"""
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Keep this API same with TasNet
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Args:
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mixture_w: [M, N, K], M is batch size
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returns:
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est_mask: [M, C, N, K]
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"""
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M, N, K = mixture_w.size()
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score = self.network(mixture_w) # [M, N, K] -> [M, C*N, K]
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score = score.view(M, self.C, N, K) # [M, C*N, K] -> [M, C, N, K]
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if self.mask_nonlinear == 'softmax':
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est_mask = F.softmax(score, dim=1)
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elif self.mask_nonlinear == 'relu':
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est_mask = F.relu(score)
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else:
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raise ValueError("Unsupported mask non-linear function")
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return est_mask
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class TemporalBlock(nn.Module):
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def __init__(self,
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in_channels,
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out_channels,
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kernel_size,
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stride,
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padding,
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dilation,
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norm_type="gLN",
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causal=False):
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super(TemporalBlock, self).__init__()
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# [M, B, K] -> [M, H, K]
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conv1x1 = nn.Conv1d(in_channels, out_channels, 1, bias=False)
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prelu = nn.PReLU()
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norm = chose_norm(norm_type, out_channels)
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# [M, H, K] -> [M, B, K]
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dsconv = DepthwiseSeparableConv(out_channels, in_channels, kernel_size, stride, padding,
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dilation, norm_type, causal)
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# Put together
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self.net = nn.Sequential(conv1x1, prelu, norm, dsconv)
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def forward(self, x):
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"""
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Args:
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x: [M, B, K]
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Returns:
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[M, B, K]
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"""
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residual = x
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out = self.net(x)
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# TODO: when P = 3 here works fine, but when P = 2 maybe need to pad?
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return out + residual # look like w/o F.relu is better than w/ F.relu
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# return F.relu(out + residual)
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class DepthwiseSeparableConv(nn.Module):
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def __init__(self,
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in_channels,
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out_channels,
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kernel_size,
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stride,
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padding,
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dilation,
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norm_type="gLN",
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causal=False):
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super(DepthwiseSeparableConv, self).__init__()
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# Use `groups` option to implement depthwise convolution
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# [M, H, K] -> [M, H, K]
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depthwise_conv = nn.Conv1d(in_channels,
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in_channels,
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kernel_size,
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stride=stride,
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padding=padding,
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dilation=dilation,
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groups=in_channels,
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bias=False)
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if causal:
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chomp = Chomp1d(padding)
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prelu = nn.PReLU()
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norm = chose_norm(norm_type, in_channels)
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# [M, H, K] -> [M, B, K]
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pointwise_conv = nn.Conv1d(in_channels, out_channels, 1, bias=False)
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# Put together
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if causal:
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self.net = nn.Sequential(depthwise_conv, chomp, prelu, norm, pointwise_conv)
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else:
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self.net = nn.Sequential(depthwise_conv, prelu, norm, pointwise_conv)
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def forward(self, x):
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"""
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Args:
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x: [M, H, K]
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Returns:
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result: [M, B, K]
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"""
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return self.net(x)
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class Chomp1d(nn.Module):
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"""To ensure the output length is the same as the input.
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"""
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def __init__(self, chomp_size):
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super(Chomp1d, self).__init__()
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self.chomp_size = chomp_size
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def forward(self, x):
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"""
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Args:
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x: [M, H, Kpad]
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Returns:
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[M, H, K]
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"""
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return x[:, :, :-self.chomp_size].contiguous()
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def chose_norm(norm_type, channel_size):
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"""The input of normlization will be (M, C, K), where M is batch size,
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C is channel size and K is sequence length.
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"""
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if norm_type == "gLN":
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return GlobalLayerNorm(channel_size)
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elif norm_type == "cLN":
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return ChannelwiseLayerNorm(channel_size)
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elif norm_type == "id":
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return nn.Identity()
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else: # norm_type == "BN":
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# Given input (M, C, K), nn.BatchNorm1d(C) will accumulate statics
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# along M and K, so this BN usage is right.
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return nn.BatchNorm1d(channel_size)
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# TODO: Use nn.LayerNorm to impl cLN to speed up
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class ChannelwiseLayerNorm(nn.Module):
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"""Channel-wise Layer Normalization (cLN)"""
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def __init__(self, channel_size):
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super(ChannelwiseLayerNorm, self).__init__()
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self.gamma = nn.Parameter(torch.Tensor(1, channel_size, 1)) # [1, N, 1]
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self.beta = nn.Parameter(torch.Tensor(1, channel_size, 1)) # [1, N, 1]
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self.reset_parameters()
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def reset_parameters(self):
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self.gamma.data.fill_(1)
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self.beta.data.zero_()
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def forward(self, y):
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"""
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Args:
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y: [M, N, K], M is batch size, N is channel size, K is length
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Returns:
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cLN_y: [M, N, K]
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"""
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mean = torch.mean(y, dim=1, keepdim=True) # [M, 1, K]
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var = torch.var(y, dim=1, keepdim=True, unbiased=False) # [M, 1, K]
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cLN_y = self.gamma * (y - mean) / torch.pow(var + EPS, 0.5) + self.beta
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return cLN_y
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class GlobalLayerNorm(nn.Module):
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"""Global Layer Normalization (gLN)"""
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def __init__(self, channel_size):
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super(GlobalLayerNorm, self).__init__()
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self.gamma = nn.Parameter(torch.Tensor(1, channel_size, 1)) # [1, N, 1]
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self.beta = nn.Parameter(torch.Tensor(1, channel_size, 1)) # [1, N, 1]
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self.reset_parameters()
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def reset_parameters(self):
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self.gamma.data.fill_(1)
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self.beta.data.zero_()
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def forward(self, y):
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"""
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Args:
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y: [M, N, K], M is batch size, N is channel size, K is length
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Returns:
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gLN_y: [M, N, K]
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"""
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# TODO: in torch 1.0, torch.mean() support dim list
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mean = y.mean(dim=1, keepdim=True).mean(dim=2, keepdim=True) # [M, 1, 1]
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var = (torch.pow(y - mean, 2)).mean(dim=1, keepdim=True).mean(dim=2, keepdim=True)
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gLN_y = self.gamma * (y - mean) / torch.pow(var + EPS, 0.5) + self.beta
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return gLN_y
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if __name__ == "__main__":
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torch.manual_seed(123)
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M, N, L, T = 2, 3, 4, 12
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K = 2 * T // L - 1
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B, H, P, X, R, C, norm_type, causal = 2, 3, 3, 3, 2, 2, "gLN", False
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mixture = torch.randint(3, (M, T))
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# test Encoder
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encoder = Encoder(L, N)
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encoder.conv1d_U.weight.data = torch.randint(2, encoder.conv1d_U.weight.size())
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mixture_w = encoder(mixture)
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print('mixture', mixture)
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print('U', encoder.conv1d_U.weight)
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print('mixture_w', mixture_w)
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print('mixture_w size', mixture_w.size())
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# test TemporalConvNet
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separator = TemporalConvNet(N, B, H, P, X, R, C, norm_type=norm_type, causal=causal)
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est_mask = separator(mixture_w)
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print('est_mask', est_mask)
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# test Decoder
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decoder = Decoder(N, L)
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est_mask = torch.randint(2, (B, K, C, N))
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est_source = decoder(mixture_w, est_mask)
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print('est_source', est_source)
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# test Conv-TasNet
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conv_tasnet = ConvTasNet(N, L, B, H, P, X, R, C, norm_type=norm_type)
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est_source = conv_tasnet(mixture)
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print('est_source', est_source)
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print('est_source size', est_source.size())
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