| import torch
|
| import torch.nn as nn
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| import torch.nn.functional as F
|
| from torchvision import models
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| import numpy as np
|
|
|
| from itertools import cycle
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| from scipy import linalg
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|
|
|
|
| try:
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| from torchvision.models.utils import load_state_dict_from_url
|
| except ImportError:
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| from torch.utils.model_zoo import load_url as load_state_dict_from_url
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|
|
|
|
|
|
| FID_WEIGHTS_URL = 'https://github.com/mseitzer/pytorch-fid/releases/download/fid_weights/pt_inception-2015-12-05-6726825d.pth'
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|
|
|
|
| class InceptionV3(nn.Module):
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| """Pretrained InceptionV3 network returning feature maps"""
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|
|
|
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|
|
| DEFAULT_BLOCK_INDEX = 3
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|
|
|
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| BLOCK_INDEX_BY_DIM = {
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| 64: 0,
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| 192: 1,
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| 768: 2,
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| 2048: 3
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| }
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|
|
| def __init__(self,
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| output_blocks=[DEFAULT_BLOCK_INDEX],
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| resize_input=True,
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| normalize_input=True,
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| requires_grad=False,
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| use_fid_inception=True):
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| """Build pretrained InceptionV3
|
| Parameters
|
| ----------
|
| output_blocks : list of int
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| Indices of blocks to return features of. Possible values are:
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| - 0: corresponds to output of first max pooling
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| - 1: corresponds to output of second max pooling
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| - 2: corresponds to output which is fed to aux classifier
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| - 3: corresponds to output of final average pooling
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| resize_input : bool
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| If true, bilinearly resizes input to width and height 299 before
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| feeding input to model. As the network without fully connected
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| layers is fully convolutional, it should be able to handle inputs
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| of arbitrary size, so resizing might not be strictly needed
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| normalize_input : bool
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| If true, scales the input from range (0, 1) to the range the
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| pretrained Inception network expects, namely (-1, 1)
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| requires_grad : bool
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| If true, parameters of the model require gradients. Possibly useful
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| for finetuning the network
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| use_fid_inception : bool
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| If true, uses the pretrained Inception model used in Tensorflow's
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| FID implementation. If false, uses the pretrained Inception model
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| available in torchvision. The FID Inception model has different
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| weights and a slightly different structure from torchvision's
|
| Inception model. If you want to compute FID scores, you are
|
| strongly advised to set this parameter to true to get comparable
|
| results.
|
| """
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| super(InceptionV3, self).__init__()
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|
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| self.resize_input = resize_input
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| self.normalize_input = normalize_input
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| self.output_blocks = sorted(output_blocks)
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| self.last_needed_block = max(output_blocks)
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|
|
| assert self.last_needed_block <= 3, \
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| 'Last possible output block index is 3'
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|
|
| self.blocks = nn.ModuleList()
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|
|
| if use_fid_inception:
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| inception = fid_inception_v3()
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| else:
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| inception = models.inception_v3(pretrained=True)
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|
|
|
|
| block0 = [
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| inception.Conv2d_1a_3x3,
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| inception.Conv2d_2a_3x3,
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| inception.Conv2d_2b_3x3,
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| nn.MaxPool2d(kernel_size=3, stride=2)
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| ]
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| self.blocks.append(nn.Sequential(*block0))
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|
|
|
|
| if self.last_needed_block >= 1:
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| block1 = [
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| inception.Conv2d_3b_1x1,
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| inception.Conv2d_4a_3x3,
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| nn.MaxPool2d(kernel_size=3, stride=2)
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| ]
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| self.blocks.append(nn.Sequential(*block1))
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|
|
|
|
| if self.last_needed_block >= 2:
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| block2 = [
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| inception.Mixed_5b,
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| inception.Mixed_5c,
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| inception.Mixed_5d,
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| inception.Mixed_6a,
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| inception.Mixed_6b,
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| inception.Mixed_6c,
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| inception.Mixed_6d,
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| inception.Mixed_6e,
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| ]
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| self.blocks.append(nn.Sequential(*block2))
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|
|
|
|
| if self.last_needed_block >= 3:
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| block3 = [
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| inception.Mixed_7a,
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| inception.Mixed_7b,
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| inception.Mixed_7c,
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| nn.AdaptiveAvgPool2d(output_size=(1, 1))
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| ]
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| self.blocks.append(nn.Sequential(*block3))
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|
|
| for param in self.parameters():
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| param.requires_grad = requires_grad
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|
|
| def forward(self, inp):
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| """Get Inception feature maps
|
| Parameters
|
| ----------
|
| inp : torch.autograd.Variable
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| Input tensor of shape Bx3xHxW. Values are expected to be in
|
| range (0, 1)
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| Returns
|
| -------
|
| List of torch.autograd.Variable, corresponding to the selected output
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| block, sorted ascending by index
|
| """
|
| outp = []
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| x = inp
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|
|
| if self.resize_input:
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| x = F.interpolate(x,
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| size=(299, 299),
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| mode='bilinear',
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| align_corners=False)
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|
|
| if self.normalize_input:
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| x = 2 * x - 1
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|
|
| for idx, block in enumerate(self.blocks):
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| x = block(x)
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| if idx in self.output_blocks:
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| outp.append(x)
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|
|
| if idx == self.last_needed_block:
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| break
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|
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| return outp
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|
|
| def calculate_frechet_distance(mu1, sigma1, mu2, sigma2, eps=1e-6):
|
| """Numpy implementation of the Frechet Distance.
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| The Frechet distance between two multivariate Gaussians X_1 ~ N(mu_1, C_1)
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| and X_2 ~ N(mu_2, C_2) is
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| d^2 = ||mu_1 - mu_2||^2 + Tr(C_1 + C_2 - 2*sqrt(C_1*C_2)).
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| Stable version by Dougal J. Sutherland.
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| Params:
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| -- mu1 : Numpy array containing the activations of a layer of the
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| inception net (like returned by the function 'get_predictions')
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| for generated samples.
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| -- mu2 : The sample mean over activations, precalculated on an
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| representative data set.
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| -- sigma1: The covariance matrix over activations for generated samples.
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| -- sigma2: The covariance matrix over activations, precalculated on an
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| representative data set.
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| Returns:
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| -- : The Frechet Distance.
|
| """
|
|
|
| mu1 = np.atleast_1d(mu1)
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| mu2 = np.atleast_1d(mu2)
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|
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| sigma1 = np.atleast_2d(sigma1)
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| sigma2 = np.atleast_2d(sigma2)
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|
|
| assert mu1.shape == mu2.shape, \
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| 'Training and test mean vectors have different lengths'
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| assert sigma1.shape == sigma2.shape, \
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| 'Training and test covariances have different dimensions'
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|
|
| diff = mu1 - mu2
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|
|
|
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| covmean, _ = linalg.sqrtm(sigma1.dot(sigma2), disp=False)
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| if not np.isfinite(covmean).all():
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| msg = ('fid calculation produces singular product; '
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| 'adding %s to diagonal of cov estimates') % eps
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| print(msg)
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| offset = np.eye(sigma1.shape[0]) * eps
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| covmean = linalg.sqrtm((sigma1 + offset).dot(sigma2 + offset))
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|
|
|
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| if np.iscomplexobj(covmean):
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| if not np.allclose(np.diagonal(covmean).imag, 0, atol=1e-3):
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| m = np.max(np.abs(covmean.imag))
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| raise ValueError('Imaginary component {}'.format(m))
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| covmean = covmean.real
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|
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| tr_covmean = np.trace(covmean)
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|
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| return (diff.dot(diff) + np.trace(sigma1) +
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| np.trace(sigma2) - 2 * tr_covmean)
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|
|
|
|
| def fid_inception_v3():
|
| """Build pretrained Inception model for FID computation
|
| The Inception model for FID computation uses a different set of weights
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| and has a slightly different structure than torchvision's Inception.
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| This method first constructs torchvision's Inception and then patches the
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| necessary parts that are different in the FID Inception model.
|
| """
|
| inception = models.inception_v3(num_classes=1008,
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| aux_logits=False,
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| pretrained=False)
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| inception.Mixed_5b = FIDInceptionA(192, pool_features=32)
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| inception.Mixed_5c = FIDInceptionA(256, pool_features=64)
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| inception.Mixed_5d = FIDInceptionA(288, pool_features=64)
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| inception.Mixed_6b = FIDInceptionC(768, channels_7x7=128)
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| inception.Mixed_6c = FIDInceptionC(768, channels_7x7=160)
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| inception.Mixed_6d = FIDInceptionC(768, channels_7x7=160)
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| inception.Mixed_6e = FIDInceptionC(768, channels_7x7=192)
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| inception.Mixed_7b = FIDInceptionE_1(1280)
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| inception.Mixed_7c = FIDInceptionE_2(2048)
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|
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| state_dict = load_state_dict_from_url(FID_WEIGHTS_URL, progress=True)
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| inception.load_state_dict(state_dict)
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| return inception
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|
|
|
|
| class FIDInceptionA(models.inception.InceptionA):
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| """InceptionA block patched for FID computation"""
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| def __init__(self, in_channels, pool_features):
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| super(FIDInceptionA, self).__init__(in_channels, pool_features)
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|
|
| def forward(self, x):
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| branch1x1 = self.branch1x1(x)
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|
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| branch5x5 = self.branch5x5_1(x)
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| branch5x5 = self.branch5x5_2(branch5x5)
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|
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| branch3x3dbl = self.branch3x3dbl_1(x)
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| branch3x3dbl = self.branch3x3dbl_2(branch3x3dbl)
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| branch3x3dbl = self.branch3x3dbl_3(branch3x3dbl)
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|
|
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|
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| branch_pool = F.avg_pool2d(x, kernel_size=3, stride=1, padding=1,
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| count_include_pad=False)
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| branch_pool = self.branch_pool(branch_pool)
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|
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| outputs = [branch1x1, branch5x5, branch3x3dbl, branch_pool]
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| return torch.cat(outputs, 1)
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|
|
|
|
| class FIDInceptionC(models.inception.InceptionC):
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| """InceptionC block patched for FID computation"""
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| def __init__(self, in_channels, channels_7x7):
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| super(FIDInceptionC, self).__init__(in_channels, channels_7x7)
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|
|
| def forward(self, x):
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| branch1x1 = self.branch1x1(x)
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|
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| branch7x7 = self.branch7x7_1(x)
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| branch7x7 = self.branch7x7_2(branch7x7)
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| branch7x7 = self.branch7x7_3(branch7x7)
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|
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| branch7x7dbl = self.branch7x7dbl_1(x)
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| branch7x7dbl = self.branch7x7dbl_2(branch7x7dbl)
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| branch7x7dbl = self.branch7x7dbl_3(branch7x7dbl)
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| branch7x7dbl = self.branch7x7dbl_4(branch7x7dbl)
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| branch7x7dbl = self.branch7x7dbl_5(branch7x7dbl)
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|
|
|
|
|
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| branch_pool = F.avg_pool2d(x, kernel_size=3, stride=1, padding=1,
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| count_include_pad=False)
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| branch_pool = self.branch_pool(branch_pool)
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|
|
| outputs = [branch1x1, branch7x7, branch7x7dbl, branch_pool]
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| return torch.cat(outputs, 1)
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|
|
|
|
| class FIDInceptionE_1(models.inception.InceptionE):
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| """First InceptionE block patched for FID computation"""
|
| def __init__(self, in_channels):
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| super(FIDInceptionE_1, self).__init__(in_channels)
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|
|
| def forward(self, x):
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| branch1x1 = self.branch1x1(x)
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|
|
| branch3x3 = self.branch3x3_1(x)
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| branch3x3 = [
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| self.branch3x3_2a(branch3x3),
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| self.branch3x3_2b(branch3x3),
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| ]
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| branch3x3 = torch.cat(branch3x3, 1)
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|
|
| branch3x3dbl = self.branch3x3dbl_1(x)
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| branch3x3dbl = self.branch3x3dbl_2(branch3x3dbl)
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| branch3x3dbl = [
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| self.branch3x3dbl_3a(branch3x3dbl),
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| self.branch3x3dbl_3b(branch3x3dbl),
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| ]
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| branch3x3dbl = torch.cat(branch3x3dbl, 1)
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|
|
|
|
|
|
| branch_pool = F.avg_pool2d(x, kernel_size=3, stride=1, padding=1,
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| count_include_pad=False)
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| branch_pool = self.branch_pool(branch_pool)
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|
|
| outputs = [branch1x1, branch3x3, branch3x3dbl, branch_pool]
|
| return torch.cat(outputs, 1)
|
|
|
|
|
| class FIDInceptionE_2(models.inception.InceptionE):
|
| """Second InceptionE block patched for FID computation"""
|
| def __init__(self, in_channels):
|
| super(FIDInceptionE_2, self).__init__(in_channels)
|
|
|
| def forward(self, x):
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| branch1x1 = self.branch1x1(x)
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|
|
| branch3x3 = self.branch3x3_1(x)
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| branch3x3 = [
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| self.branch3x3_2a(branch3x3),
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| self.branch3x3_2b(branch3x3),
|
| ]
|
| branch3x3 = torch.cat(branch3x3, 1)
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|
|
| branch3x3dbl = self.branch3x3dbl_1(x)
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| branch3x3dbl = self.branch3x3dbl_2(branch3x3dbl)
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| branch3x3dbl = [
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| self.branch3x3dbl_3a(branch3x3dbl),
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| self.branch3x3dbl_3b(branch3x3dbl),
|
| ]
|
| branch3x3dbl = torch.cat(branch3x3dbl, 1)
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|
|
|
|
|
|
|
|
|
|
| branch_pool = F.max_pool2d(x, kernel_size=3, stride=1, padding=1)
|
| branch_pool = self.branch_pool(branch_pool)
|
|
|
| outputs = [branch1x1, branch3x3, branch3x3dbl, branch_pool]
|
| return torch.cat(outputs, 1) |