147 lines
5.1 KiB
Python
147 lines
5.1 KiB
Python
# coding=utf-8
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# Copyright 2022 The Google Research Authors.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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# Lint as: python2, python3
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"""Minimal Reference implementation for the Frechet Video Distance (FVD).
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FVD is a metric for the quality of video generation models. It is inspired by
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the FID (Frechet Inception Distance) used for images, but uses a different
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embedding to be better suitable for videos.
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"""
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from __future__ import absolute_import
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from __future__ import division
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from __future__ import print_function
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import six
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import tensorflow.compat.v1 as tf
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import tensorflow_gan as tfgan
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import tensorflow_hub as hub
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def preprocess(videos, target_resolution):
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"""Runs some preprocessing on the videos for I3D model.
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Args:
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videos: <T>[batch_size, num_frames, height, width, depth] The videos to be
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preprocessed. We don't care about the specific dtype of the videos, it can
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be anything that tf.image.resize_bilinear accepts. Values are expected to
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be in the range 0-255.
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target_resolution: (width, height): target video resolution
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Returns:
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videos: <float32>[batch_size, num_frames, height, width, depth]
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"""
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videos_shape = list(videos.shape)
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all_frames = tf.reshape(videos, [-1] + videos_shape[-3:])
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resized_videos = tf.image.resize_bilinear(all_frames, size=target_resolution)
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target_shape = [videos_shape[0], -1] + list(target_resolution) + [3]
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output_videos = tf.reshape(resized_videos, target_shape)
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scaled_videos = 2. * tf.cast(output_videos, tf.float32) / 255. - 1
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return scaled_videos
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def _is_in_graph(tensor_name):
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"""Checks whether a given tensor does exists in the graph."""
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try:
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tf.get_default_graph().get_tensor_by_name(tensor_name)
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except KeyError:
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return False
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return True
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def create_id3_embedding(videos,warmup=False,batch_size=16):
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"""Embeds the given videos using the Inflated 3D Convolution ne twork.
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Downloads the graph of the I3D from tf.hub and adds it to the graph on the
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first call.
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Args:
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videos: <float32>[batch_size, num_frames, height=224, width=224, depth=3].
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Expected range is [-1, 1].
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Returns:
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embedding: <float32>[batch_size, embedding_size]. embedding_size depends
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on the model used.
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Raises:
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ValueError: when a provided embedding_layer is not supported.
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"""
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# batch_size = 16
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module_spec = "https://tfhub.dev/deepmind/i3d-kinetics-400/1"
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# Making sure that we import the graph separately for
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# each different input video tensor.
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module_name = "fvd_kinetics-400_id3_module_" + six.ensure_str(
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videos.name).replace(":", "_")
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assert_ops = [
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tf.Assert(
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tf.reduce_max(videos) <= 1.001,
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["max value in frame is > 1", videos]),
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tf.Assert(
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tf.reduce_min(videos) >= -1.001,
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["min value in frame is < -1", videos]),
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tf.assert_equal(
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tf.shape(videos)[0],
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batch_size, ["invalid frame batch size: ",
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tf.shape(videos)],
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summarize=6),
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]
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with tf.control_dependencies(assert_ops):
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videos = tf.identity(videos)
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module_scope = "%s_apply_default/" % module_name
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# To check whether the module has already been loaded into the graph, we look
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# for a given tensor name. If this tensor name exists, we assume the function
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# has been called before and the graph was imported. Otherwise we import it.
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# Note: in theory, the tensor could exist, but have wrong shapes.
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# This will happen if create_id3_embedding is called with a frames_placehoder
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# of wrong size/batch size, because even though that will throw a tf.Assert
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# on graph-execution time, it will insert the tensor (with wrong shape) into
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# the graph. This is why we need the following assert.
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if warmup:
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video_batch_size = int(videos.shape[0])
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assert video_batch_size in [batch_size, -1, None], f"Invalid batch size {video_batch_size}"
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tensor_name = module_scope + "RGB/inception_i3d/Mean:0"
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if not _is_in_graph(tensor_name):
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i3d_model = hub.Module(module_spec, name=module_name)
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i3d_model(videos)
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# gets the kinetics-i3d-400-logits layer
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tensor_name = module_scope + "RGB/inception_i3d/Mean:0"
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tensor = tf.get_default_graph().get_tensor_by_name(tensor_name)
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return tensor
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def calculate_fvd(real_activations,
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generated_activations):
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"""Returns a list of ops that compute metrics as funcs of activations.
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Args:
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real_activations: <float32>[num_samples, embedding_size]
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generated_activations: <float32>[num_samples, embedding_size]
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Returns:
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A scalar that contains the requested FVD.
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"""
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return tfgan.eval.frechet_classifier_distance_from_activations(
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real_activations, generated_activations)
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