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frechet_inception_distance.py
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# Copyright (c) 2019, NVIDIA Corporation. All rights reserved.
#
# This work is made available under the Nvidia Source Code License-NC.
# To view a copy of this license, visit
# https://nvlabs.github.io/stylegan2/license.html
"""Frechet Inception Distance (FID)."""
import os
import numpy as np
import scipy
import tensorflow as tf
import dnnlib.tflib as tflib
from metrics import metric_base
from training import misc
#----------------------------------------------------------------------------
class FID(metric_base.MetricBase):
def __init__(self, num_images, minibatch_per_gpu, **kwargs):
super().__init__(**kwargs)
self.num_images = num_images
self.minibatch_per_gpu = minibatch_per_gpu
def _evaluate(self, Gs, Gs_kwargs, num_gpus):
minibatch_size = num_gpus * self.minibatch_per_gpu
inception = misc.load_pkl('https://nvlabs-fi-cdn.nvidia.com/stylegan/networks/metrics/inception_v3_features.pkl')
activations = np.empty([self.num_images, inception.output_shape[1]], dtype=np.float32)
# Calculate statistics for reals.
cache_file = self._get_cache_file_for_reals(num_images=self.num_images)
os.makedirs(os.path.dirname(cache_file), exist_ok=True)
if os.path.isfile(cache_file):
mu_real, sigma_real = misc.load_pkl(cache_file)
else:
for idx, images in enumerate(self._iterate_reals(minibatch_size=minibatch_size)):
begin = idx * minibatch_size
end = min(begin + minibatch_size, self.num_images)
activations[begin:end] = inception.run(images[:end-begin], num_gpus=num_gpus, assume_frozen=True)
if end == self.num_images:
break
mu_real = np.mean(activations, axis=0)
sigma_real = np.cov(activations, rowvar=False)
misc.save_pkl((mu_real, sigma_real), cache_file)
# Construct TensorFlow graph.
result_expr = []
for gpu_idx in range(num_gpus):
with tf.device('/gpu:%d' % gpu_idx):
Gs_clone = Gs.clone()
inception_clone = inception.clone()
latents = tf.random_normal([self.minibatch_per_gpu] + Gs_clone.input_shape[1:])
labels = self._get_random_labels_tf(self.minibatch_per_gpu)
images = Gs_clone.get_output_for(latents, labels, **Gs_kwargs)
images = tflib.convert_images_to_uint8(images)
result_expr.append(inception_clone.get_output_for(images))
# Calculate statistics for fakes.
for begin in range(0, self.num_images, minibatch_size):
self._report_progress(begin, self.num_images)
end = min(begin + minibatch_size, self.num_images)
activations[begin:end] = np.concatenate(tflib.run(result_expr), axis=0)[:end-begin]
mu_fake = np.mean(activations, axis=0)
sigma_fake = np.cov(activations, rowvar=False)
# Calculate FID.
m = np.square(mu_fake - mu_real).sum()
s, _ = scipy.linalg.sqrtm(np.dot(sigma_fake, sigma_real), disp=False) # pylint: disable=no-member
dist = m + np.trace(sigma_fake + sigma_real - 2*s)
self._report_result(np.real(dist))
#----------------------------------------------------------------------------