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import torch |
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import torch.nn as nn |
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from torch.nn import functional as F |
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import math |
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def custom_qr(input_tensor): |
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original_dtype = input_tensor.dtype |
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if original_dtype == torch.bfloat16: |
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q, r = torch.linalg.qr(input_tensor.to(torch.float32)) |
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return q.to(original_dtype), r.to(original_dtype) |
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return torch.linalg.qr(input_tensor) |
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def fused_leaky_relu(input, bias, negative_slope=0.2, scale=2 ** 0.5): |
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return F.leaky_relu(input + bias, negative_slope) * scale |
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def upfirdn2d_native(input, kernel, up_x, up_y, down_x, down_y, pad_x0, pad_x1, pad_y0, pad_y1): |
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_, minor, in_h, in_w = input.shape |
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kernel_h, kernel_w = kernel.shape |
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out = input.view(-1, minor, in_h, 1, in_w, 1) |
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out = F.pad(out, [0, up_x - 1, 0, 0, 0, up_y - 1, 0, 0]) |
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out = out.view(-1, minor, in_h * up_y, in_w * up_x) |
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out = F.pad(out, [max(pad_x0, 0), max(pad_x1, 0), max(pad_y0, 0), max(pad_y1, 0)]) |
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out = out[:, :, max(-pad_y0, 0): out.shape[2] - max(-pad_y1, 0), |
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max(-pad_x0, 0): out.shape[3] - max(-pad_x1, 0), ] |
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out = out.reshape([-1, 1, in_h * up_y + pad_y0 + pad_y1, in_w * up_x + pad_x0 + pad_x1]) |
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w = torch.flip(kernel, [0, 1]).view(1, 1, kernel_h, kernel_w) |
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out = F.conv2d(out, w) |
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out = out.reshape(-1, minor, in_h * up_y + pad_y0 + pad_y1 - kernel_h + 1, |
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in_w * up_x + pad_x0 + pad_x1 - kernel_w + 1, ) |
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return out[:, :, ::down_y, ::down_x] |
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def upfirdn2d(input, kernel, up=1, down=1, pad=(0, 0)): |
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return upfirdn2d_native(input, kernel, up, up, down, down, pad[0], pad[1], pad[0], pad[1]) |
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def make_kernel(k): |
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k = torch.tensor(k, dtype=torch.float32) |
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if k.ndim == 1: |
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k = k[None, :] * k[:, None] |
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k /= k.sum() |
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return k |
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class FusedLeakyReLU(nn.Module): |
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def __init__(self, channel, negative_slope=0.2, scale=2 ** 0.5): |
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super().__init__() |
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self.bias = nn.Parameter(torch.zeros(1, channel, 1, 1)) |
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self.negative_slope = negative_slope |
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self.scale = scale |
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def forward(self, input): |
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out = fused_leaky_relu(input, self.bias, self.negative_slope, self.scale) |
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return out |
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class Blur(nn.Module): |
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def __init__(self, kernel, pad, upsample_factor=1): |
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super().__init__() |
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kernel = make_kernel(kernel) |
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if upsample_factor > 1: |
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kernel = kernel * (upsample_factor ** 2) |
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self.register_buffer('kernel', kernel) |
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self.pad = pad |
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def forward(self, input): |
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return upfirdn2d(input, self.kernel, pad=self.pad) |
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class ScaledLeakyReLU(nn.Module): |
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def __init__(self, negative_slope=0.2): |
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super().__init__() |
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self.negative_slope = negative_slope |
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def forward(self, input): |
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return F.leaky_relu(input, negative_slope=self.negative_slope) |
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class EqualConv2d(nn.Module): |
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def __init__(self, in_channel, out_channel, kernel_size, stride=1, padding=0, bias=True): |
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super().__init__() |
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self.weight = nn.Parameter(torch.randn(out_channel, in_channel, kernel_size, kernel_size)) |
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self.scale = 1 / math.sqrt(in_channel * kernel_size ** 2) |
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self.stride = stride |
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self.padding = padding |
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if bias: |
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self.bias = nn.Parameter(torch.zeros(out_channel)) |
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else: |
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self.bias = None |
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def forward(self, input): |
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return F.conv2d(input, self.weight * self.scale, bias=self.bias, stride=self.stride, padding=self.padding) |
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def __repr__(self): |
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return ( |
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f'{self.__class__.__name__}({self.weight.shape[1]}, {self.weight.shape[0]},' |
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f' {self.weight.shape[2]}, stride={self.stride}, padding={self.padding})' |
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) |
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class EqualLinear(nn.Module): |
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def __init__(self, in_dim, out_dim, bias=True, bias_init=0, lr_mul=1, activation=None): |
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super().__init__() |
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self.weight = nn.Parameter(torch.randn(out_dim, in_dim).div_(lr_mul)) |
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if bias: |
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self.bias = nn.Parameter(torch.zeros(out_dim).fill_(bias_init)) |
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else: |
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self.bias = None |
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self.activation = activation |
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self.scale = (1 / math.sqrt(in_dim)) * lr_mul |
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self.lr_mul = lr_mul |
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def forward(self, input): |
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if self.activation: |
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out = F.linear(input, self.weight * self.scale) |
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out = fused_leaky_relu(out, self.bias * self.lr_mul) |
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else: |
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out = F.linear(input, self.weight * self.scale, bias=self.bias * self.lr_mul) |
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return out |
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def __repr__(self): |
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return (f'{self.__class__.__name__}({self.weight.shape[1]}, {self.weight.shape[0]})') |
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class ConvLayer(nn.Sequential): |
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def __init__( |
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self, |
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in_channel, |
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out_channel, |
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kernel_size, |
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downsample=False, |
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blur_kernel=[1, 3, 3, 1], |
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bias=True, |
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activate=True, |
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): |
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layers = [] |
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if downsample: |
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factor = 2 |
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p = (len(blur_kernel) - factor) + (kernel_size - 1) |
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pad0 = (p + 1) // 2 |
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pad1 = p // 2 |
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layers.append(Blur(blur_kernel, pad=(pad0, pad1))) |
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stride = 2 |
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self.padding = 0 |
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else: |
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stride = 1 |
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self.padding = kernel_size // 2 |
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layers.append(EqualConv2d(in_channel, out_channel, kernel_size, padding=self.padding, stride=stride, |
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bias=bias and not activate)) |
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if activate: |
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if bias: |
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layers.append(FusedLeakyReLU(out_channel)) |
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else: |
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layers.append(ScaledLeakyReLU(0.2)) |
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super().__init__(*layers) |
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class ResBlock(nn.Module): |
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def __init__(self, in_channel, out_channel, blur_kernel=[1, 3, 3, 1]): |
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super().__init__() |
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self.conv1 = ConvLayer(in_channel, in_channel, 3) |
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self.conv2 = ConvLayer(in_channel, out_channel, 3, downsample=True) |
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self.skip = ConvLayer(in_channel, out_channel, 1, downsample=True, activate=False, bias=False) |
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def forward(self, input): |
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out = self.conv1(input) |
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out = self.conv2(out) |
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skip = self.skip(input) |
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out = (out + skip) / math.sqrt(2) |
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return out |
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class EncoderApp(nn.Module): |
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def __init__(self, size, w_dim=512): |
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super(EncoderApp, self).__init__() |
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channels = { |
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4: 512, |
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8: 512, |
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16: 512, |
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32: 512, |
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64: 256, |
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128: 128, |
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256: 64, |
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512: 32, |
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1024: 16 |
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} |
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self.w_dim = w_dim |
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log_size = int(math.log(size, 2)) |
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self.convs = nn.ModuleList() |
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self.convs.append(ConvLayer(3, channels[size], 1)) |
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in_channel = channels[size] |
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for i in range(log_size, 2, -1): |
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out_channel = channels[2 ** (i - 1)] |
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self.convs.append(ResBlock(in_channel, out_channel)) |
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in_channel = out_channel |
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self.convs.append(EqualConv2d(in_channel, self.w_dim, 4, padding=0, bias=False)) |
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def forward(self, x): |
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res = [] |
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h = x |
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for conv in self.convs: |
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h = conv(h) |
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res.append(h) |
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return res[-1].squeeze(-1).squeeze(-1), res[::-1][2:] |
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class Encoder(nn.Module): |
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def __init__(self, size, dim=512, dim_motion=20): |
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super(Encoder, self).__init__() |
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self.net_app = EncoderApp(size, dim) |
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fc = [EqualLinear(dim, dim)] |
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for i in range(3): |
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fc.append(EqualLinear(dim, dim)) |
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fc.append(EqualLinear(dim, dim_motion)) |
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self.fc = nn.Sequential(*fc) |
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def enc_app(self, x): |
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h_source = self.net_app(x) |
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return h_source |
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def enc_motion(self, x): |
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h, _ = self.net_app(x) |
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h_motion = self.fc(h) |
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return h_motion |
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class Direction(nn.Module): |
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def __init__(self, motion_dim): |
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super(Direction, self).__init__() |
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self.weight = nn.Parameter(torch.randn(512, motion_dim)) |
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def forward(self, input): |
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weight = self.weight + 1e-8 |
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Q, R = custom_qr(weight) |
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if input is None: |
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return Q |
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else: |
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input_diag = torch.diag_embed(input) |
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out = torch.matmul(input_diag, Q.T) |
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out = torch.sum(out, dim=1) |
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return out |
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class Synthesis(nn.Module): |
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def __init__(self, motion_dim): |
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super(Synthesis, self).__init__() |
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self.direction = Direction(motion_dim) |
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class Generator(nn.Module): |
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def __init__(self, size, style_dim=512, motion_dim=20): |
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super().__init__() |
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self.enc = Encoder(size, style_dim, motion_dim) |
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self.dec = Synthesis(motion_dim) |
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def get_motion(self, img): |
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motion_feat = torch.utils.checkpoint.checkpoint((self.enc.enc_motion), img, use_reentrant=True) |
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with torch.cuda.amp.autocast(dtype=torch.float32): |
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motion = self.dec.direction(motion_feat) |
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return motion |