import torch import torch.nn as nn import torch.nn.init as init import torch.nn.functional as F import torch.nn.utils.spectral_norm as SpectralNorm from math import sqrt def pixel_norm(x, epsilon=1e-8): return x * torch.rsqrt(torch.mean(torch.pow(x, 2), dim=1, keepdims=True) + epsilon) def initialize_weights(net_l, scale=1): if not isinstance(net_l, list): net_l = [net_l] for net in net_l: for m in net.modules(): if isinstance(m, nn.Conv2d) or isinstance(m, nn.Conv3d): init.kaiming_normal_(m.weight, a=0, mode='fan_in') m.weight.data *= scale # for residual block if m.bias is not None: m.bias.data.zero_() elif isinstance(m, nn.Linear): init.kaiming_normal_(m.weight, a=0, mode='fan_in') m.weight.data *= scale if m.bias is not None: m.bias.data.zero_() elif isinstance(m, nn.BatchNorm2d): init.constant_(m.weight, 1) init.constant_(m.bias.data, 0.0) def make_layer(block, n_layers, return_layers=False): layers = [] for _ in range(n_layers): layers.append(block()) if return_layers: return nn.Sequential(*layers), layers else: return nn.Sequential(*layers) class ResidualBlock(nn.Module): '''Residual block with BN ---Conv-BN-ReLU-Conv-+- |________________| ''' def __init__(self, nf=64): super(ResidualBlock, self).__init__() self.lrelu = nn.LeakyReLU(negative_slope=0.1, inplace=True) self.conv1 = nn.Conv2d(nf, nf, 3, 1, 1, bias=True) self.BN1 = nn.BatchNorm2d(nf) self.conv2 = nn.Conv2d(nf, nf, 3, 1, 1, bias=True) self.BN2 = nn.BatchNorm2d(nf) # initialization initialize_weights([self.conv1, self.conv2], 0.1) def forward(self, x): identity = x out = self.lrelu(self.BN1(self.conv1(x))) out = self.BN2(self.conv2(out)) return identity + out class ResidualBlockSpectralNorm(nn.Module): '''Residual block with Spectral Normalization. ---SpecConv-ReLU-SpecConv-+- |________________| ''' def __init__(self, nf, total_residual_blocks): super(ResidualBlockSpectralNorm, self).__init__() self.lrelu = nn.LeakyReLU(negative_slope=0.1, inplace=True) self.conv1 = SpectralNorm(nn.Conv2d(nf, nf, 3, 1, 1, bias=True)) self.conv2 = SpectralNorm(nn.Conv2d(nf, nf, 3, 1, 1, bias=True)) initialize_weights([self.conv1, self.conv2], 1) def forward(self, x): identity = x out = self.lrelu(self.conv1(x)) out = self.conv2(out) return identity + out class ResidualBlock_noBN(nn.Module): '''Residual block w/o BN ---Conv-ReLU-Conv-+- |________________| ''' def __init__(self, nf=64): super(ResidualBlock_noBN, self).__init__() self.lrelu = nn.LeakyReLU(negative_slope=0.1, inplace=True) self.conv1 = nn.Conv2d(nf, nf, 3, 1, 1, bias=True) self.conv2 = nn.Conv2d(nf, nf, 3, 1, 1, bias=True) # initialization initialize_weights([self.conv1, self.conv2], 0.1) def forward(self, x): identity = x out = self.lrelu(self.conv1(x)) out = self.conv2(out) return identity + out def flow_warp(x, flow, interp_mode='bilinear', padding_mode='zeros'): """Warp an image or feature map with optical flow Args: x (Tensor): size (N, C, H, W) flow (Tensor): size (N, H, W, 2), normal value interp_mode (str): 'nearest' or 'bilinear' padding_mode (str): 'zeros' or 'border' or 'reflection' Returns: Tensor: warped image or feature map """ assert x.size()[-2:] == flow.size()[1:3] B, C, H, W = x.size() # mesh grid grid_y, grid_x = torch.meshgrid(torch.arange(0, H), torch.arange(0, W)) grid = torch.stack((grid_x, grid_y), 2).float() # W(x), H(y), 2 grid.requires_grad = False grid = grid.type_as(x) vgrid = grid + flow # scale grid to [-1,1] vgrid_x = 2.0 * vgrid[:, :, :, 0] / max(W - 1, 1) - 1.0 vgrid_y = 2.0 * vgrid[:, :, :, 1] / max(H - 1, 1) - 1.0 vgrid_scaled = torch.stack((vgrid_x, vgrid_y), dim=3) output = F.grid_sample(x, vgrid_scaled, mode=interp_mode, padding_mode=padding_mode) return output class PixelUnshuffle(nn.Module): def __init__(self, reduction_factor): super(PixelUnshuffle, self).__init__() self.r = reduction_factor def forward(self, x): (b, f, w, h) = x.shape x = x.contiguous().view(b, f, w // self.r, self.r, h // self.r, self.r) x = x.permute(0, 1, 3, 5, 2, 4).contiguous().view(b, f * (self.r ** 2), w // self.r, h // self.r) return x # simply define a silu function def silu(input): ''' Applies the Sigmoid Linear Unit (SiLU) function element-wise: SiLU(x) = x * sigmoid(x) ''' return input * torch.sigmoid(input) # create a class wrapper from PyTorch nn.Module, so # the function now can be easily used in models class SiLU(nn.Module): ''' Applies the Sigmoid Linear Unit (SiLU) function element-wise: SiLU(x) = x * sigmoid(x) Shape: - Input: (N, *) where * means, any number of additional dimensions - Output: (N, *), same shape as the input References: - Related paper: https://arxiv.org/pdf/1606.08415.pdf Examples: >>> m = silu() >>> input = torch.randn(2) >>> output = m(input) ''' def __init__(self): ''' Init method. ''' super().__init__() # init the base class def forward(self, input): ''' Forward pass of the function. ''' return silu(input) ''' Convenience class with Conv->BN->ReLU. Includes weight initialization and auto-padding for standard kernel sizes. ''' class ConvBnRelu(nn.Module): def __init__(self, filters_in, filters_out, kernel_size=3, stride=1, activation=True, norm=True, bias=True): super(ConvBnRelu, self).__init__() padding_map = {1: 0, 3: 1, 5: 2, 7: 3} assert kernel_size in padding_map.keys() self.conv = nn.Conv2d(filters_in, filters_out, kernel_size, stride, padding_map[kernel_size], bias=bias) if norm: self.bn = nn.BatchNorm2d(filters_out) else: self.bn = None if activation: self.relu = nn.ReLU() else: self.relu = None # Init params. for m in self.modules(): if isinstance(m, nn.Conv2d): nn.init.kaiming_normal_(m.weight, mode='fan_out', nonlinearity='relu' if self.relu else 'linear') elif isinstance(m, (nn.BatchNorm2d, nn.GroupNorm)): nn.init.constant_(m.weight, 1) nn.init.constant_(m.bias, 0) def forward(self, x): x = self.conv(x) if self.bn: x = self.bn(x) if self.relu: return self.relu(x) else: return x ''' Convenience class with Conv->BN->SiLU. Includes weight initialization and auto-padding for standard kernel sizes. ''' class ConvBnSilu(nn.Module): def __init__(self, filters_in, filters_out, kernel_size=3, stride=1, activation=True, norm=True, bias=True, weight_init_factor=1): super(ConvBnSilu, self).__init__() padding_map = {1: 0, 3: 1, 5: 2, 7: 3} assert kernel_size in padding_map.keys() self.conv = nn.Conv2d(filters_in, filters_out, kernel_size, stride, padding_map[kernel_size], bias=bias) if norm: self.bn = nn.BatchNorm2d(filters_out) else: self.bn = None if activation: self.silu = SiLU() else: self.silu = None # Init params. for m in self.modules(): if isinstance(m, nn.Conv2d): nn.init.kaiming_normal_(m.weight, mode='fan_out', nonlinearity='relu' if self.silu else 'linear') m.weight.data *= weight_init_factor if m.bias is not None: m.bias.data.zero_() elif isinstance(m, (nn.BatchNorm2d, nn.GroupNorm)): nn.init.constant_(m.weight, 1) nn.init.constant_(m.bias, 0) def forward(self, x): x = self.conv(x) if self.bn: x = self.bn(x) if self.silu: return self.silu(x) else: return x ''' Convenience class with Conv->BN->LeakyReLU. Includes weight initialization and auto-padding for standard kernel sizes. ''' class ConvBnLelu(nn.Module): def __init__(self, filters_in, filters_out, kernel_size=3, stride=1, activation=True, norm=True, bias=True, weight_init_factor=1): super(ConvBnLelu, self).__init__() padding_map = {1: 0, 3: 1, 5: 2, 7: 3} assert kernel_size in padding_map.keys() self.conv = nn.Conv2d(filters_in, filters_out, kernel_size, stride, padding_map[kernel_size], bias=bias) if norm: self.bn = nn.BatchNorm2d(filters_out) else: self.bn = None if activation: self.lelu = nn.LeakyReLU(negative_slope=.1) else: self.lelu = None # Init params. for m in self.modules(): if isinstance(m, nn.Conv2d): nn.init.kaiming_normal_(m.weight, a=.1, mode='fan_out', nonlinearity='leaky_relu' if self.lelu else 'linear') m.weight.data *= weight_init_factor if m.bias is not None: m.bias.data.zero_() elif isinstance(m, (nn.BatchNorm2d, nn.GroupNorm)): nn.init.constant_(m.weight, 1) nn.init.constant_(m.bias, 0) def forward(self, x): x = self.conv(x) if self.bn: x = self.bn(x) if self.lelu: return self.lelu(x) else: return x ''' Convenience class with Conv->GroupNorm->LeakyReLU. Includes weight initialization and auto-padding for standard kernel sizes. ''' class ConvGnLelu(nn.Module): def __init__(self, filters_in, filters_out, kernel_size=3, stride=1, activation=True, norm=True, bias=True, num_groups=8, weight_init_factor=1): super(ConvGnLelu, self).__init__() padding_map = {1: 0, 3: 1, 5: 2, 7: 3} assert kernel_size in padding_map.keys() self.conv = nn.Conv2d(filters_in, filters_out, kernel_size, stride, padding_map[kernel_size], bias=bias) if norm: self.gn = nn.GroupNorm(num_groups, filters_out) else: self.gn = None if activation: self.lelu = nn.LeakyReLU(negative_slope=.1) else: self.lelu = None # Init params. for m in self.modules(): if isinstance(m, nn.Conv2d): nn.init.kaiming_normal_(m.weight, a=.1, mode='fan_out', nonlinearity='leaky_relu' if self.lelu else 'linear') m.weight.data *= weight_init_factor if m.bias is not None: m.bias.data.zero_() elif isinstance(m, (nn.BatchNorm2d, nn.GroupNorm)): nn.init.constant_(m.weight, 1) nn.init.constant_(m.bias, 0) def forward(self, x): x = self.conv(x) if self.gn: x = self.gn(x) if self.lelu: return self.lelu(x) else: return x ''' Convenience class with Conv->BN->SiLU. Includes weight initialization and auto-padding for standard kernel sizes. ''' class ConvGnSilu(nn.Module): def __init__(self, filters_in, filters_out, kernel_size=3, stride=1, activation=True, norm=True, bias=True, num_groups=8, weight_init_factor=1): super(ConvGnSilu, self).__init__() padding_map = {1: 0, 3: 1, 5: 2, 7: 3} assert kernel_size in padding_map.keys() self.conv = nn.Conv2d(filters_in, filters_out, kernel_size, stride, padding_map[kernel_size], bias=bias) if norm: self.gn = nn.GroupNorm(num_groups, filters_out) else: self.gn = None if activation: self.silu = SiLU() else: self.silu = None # Init params. for m in self.modules(): if isinstance(m, nn.Conv2d): nn.init.kaiming_normal_(m.weight, mode='fan_out', nonlinearity='relu' if self.silu else 'linear') m.weight.data *= weight_init_factor if m.bias is not None: m.bias.data.zero_() elif isinstance(m, (nn.BatchNorm2d, nn.GroupNorm)): nn.init.constant_(m.weight, 1) nn.init.constant_(m.bias, 0) def forward(self, x): x = self.conv(x) if self.gn: x = self.gn(x) if self.silu: return self.silu(x) else: return x # Simple way to chain multiple conv->act->norms together in an intuitive way. class MultiConvBlock(nn.Module): def __init__(self, filters_in, filters_mid, filters_out, kernel_size, depth, scale_init=1, norm=False, weight_init_factor=1): assert depth >= 2 super(MultiConvBlock, self).__init__() self.noise_scale = nn.Parameter(torch.full((1,), fill_value=.01)) self.bnconvs = nn.ModuleList([ConvBnLelu(filters_in, filters_mid, kernel_size, norm=norm, bias=False, weight_init_factor=weight_init_factor)] + [ConvBnLelu(filters_mid, filters_mid, kernel_size, norm=norm, bias=False, weight_init_factor=weight_init_factor) for i in range(depth - 2)] + [ConvBnLelu(filters_mid, filters_out, kernel_size, activation=False, norm=False, bias=False, weight_init_factor=weight_init_factor)]) self.scale = nn.Parameter(torch.full((1,), fill_value=scale_init, dtype=torch.float)) self.bias = nn.Parameter(torch.zeros(1)) def forward(self, x, noise=None): if noise is not None: noise = noise * self.noise_scale x = x + noise for m in self.bnconvs: x = m.forward(x) return x * self.scale + self.bias # Block that upsamples 2x and reduces incoming filters by 2x. It preserves structure by taking a passthrough feed # along with the feature representation. class ExpansionBlock(nn.Module): def __init__(self, filters_in, filters_out=None, block=ConvGnSilu): super(ExpansionBlock, self).__init__() if filters_out is None: filters_out = filters_in // 2 self.decimate = block(filters_in, filters_out, kernel_size=1, bias=False, activation=False, norm=True) self.process_passthrough = block(filters_out, filters_out, kernel_size=3, bias=True, activation=False, norm=True) self.conjoin = block(filters_out*2, filters_out, kernel_size=3, bias=False, activation=True, norm=False) self.process = block(filters_out, filters_out, kernel_size=3, bias=False, activation=True, norm=True) # input is the feature signal with shape (b, f, w, h) # passthrough is the structure signal with shape (b, f/2, w*2, h*2) # output is conjoined upsample with shape (b, f/2, w*2, h*2) def forward(self, input, passthrough): x = F.interpolate(input, scale_factor=2, mode="nearest") x = self.decimate(x) p = self.process_passthrough(passthrough) x = self.conjoin(torch.cat([x, p], dim=1)) return self.process(x) # Block that upsamples 2x and reduces incoming filters by 2x. It preserves structure by taking a passthrough feed # along with the feature representation. # Differs from ExpansionBlock because it performs all processing in 2xfilter space and decimates at the last step. class ExpansionBlock2(nn.Module): def __init__(self, filters_in, filters_out=None, block=ConvGnSilu): super(ExpansionBlock2, self).__init__() if filters_out is None: filters_out = filters_in // 2 self.decimate = block(filters_in, filters_out, kernel_size=1, bias=False, activation=False, norm=True) self.process_passthrough = block(filters_out, filters_out, kernel_size=3, bias=True, activation=False, norm=True) self.conjoin = block(filters_out*2, filters_out*2, kernel_size=3, bias=False, activation=True, norm=False) self.reduce = block(filters_out*2, filters_out, kernel_size=3, bias=False, activation=True, norm=True) # input is the feature signal with shape (b, f, w, h) # passthrough is the structure signal with shape (b, f/2, w*2, h*2) # output is conjoined upsample with shape (b, f/2, w*2, h*2) def forward(self, input, passthrough): x = F.interpolate(input, scale_factor=2, mode="nearest") x = self.decimate(x) p = self.process_passthrough(passthrough) x = self.conjoin(torch.cat([x, p], dim=1)) return self.reduce(x) # Similar to ExpansionBlock2 but does not upsample. class ConjoinBlock(nn.Module): def __init__(self, filters_in, filters_out=None, filters_pt=None, block=ConvGnSilu, norm=True): super(ConjoinBlock, self).__init__() if filters_out is None: filters_out = filters_in if filters_pt is None: filters_pt = filters_in self.process = block(filters_in + filters_pt, filters_in + filters_pt, kernel_size=3, bias=False, activation=True, norm=norm) self.decimate = block(filters_in + filters_pt, filters_out, kernel_size=1, bias=False, activation=False, norm=norm) def forward(self, input, passthrough): x = torch.cat([input, passthrough], dim=1) x = self.process(x) return self.decimate(x) # Designed explicitly to join a mainline trunk with reference data. Implemented as a residual branch. class ReferenceJoinBlock(nn.Module): def __init__(self, nf, residual_weight_init_factor=1, block=ConvGnLelu, final_norm=False, kernel_size=3, depth=3, join=True): super(ReferenceJoinBlock, self).__init__() self.branch = MultiConvBlock(nf * 2, nf + nf // 2, nf, kernel_size=kernel_size, depth=depth, scale_init=residual_weight_init_factor, norm=False, weight_init_factor=residual_weight_init_factor) if join: self.join_conv = block(nf, nf, kernel_size=kernel_size, norm=final_norm, bias=False, activation=True) else: self.join_conv = None def forward(self, x, ref): joined = torch.cat([x, ref], dim=1) branch = self.branch(joined) if self.join_conv is not None: return self.join_conv(x + branch), torch.std(branch) else: return x + branch, torch.std(branch) # Basic convolutional upsampling block that uses interpolate. class UpconvBlock(nn.Module): def __init__(self, filters_in, filters_out=None, block=ConvGnSilu, norm=True, activation=True, bias=False): super(UpconvBlock, self).__init__() self.process = block(filters_out, filters_out, kernel_size=3, bias=bias, activation=activation, norm=norm) def forward(self, x): x = F.interpolate(x, scale_factor=2, mode="nearest") return self.process(x)