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|
| """Utils for processing video dataset features."""
|
|
|
| from typing import Optional, Tuple
|
| import tensorflow as tf, tf_keras
|
|
|
|
|
| def _sample_or_pad_sequence_indices(sequence: tf.Tensor, num_steps: int,
|
| stride: int,
|
| offset: tf.Tensor) -> tf.Tensor:
|
| """Returns indices to take for sampling or padding sequences to fixed size."""
|
| sequence_length = tf.shape(sequence)[0]
|
| sel_idx = tf.range(sequence_length)
|
|
|
|
|
| max_length = num_steps * stride + offset
|
| num_repeats = tf.math.floordiv(max_length + sequence_length - 1,
|
| sequence_length)
|
| sel_idx = tf.tile(sel_idx, [num_repeats])
|
|
|
| steps = tf.range(offset, offset + num_steps * stride, stride)
|
| return tf.gather(sel_idx, steps)
|
|
|
|
|
| def sample_linspace_sequence(sequence: tf.Tensor, num_windows: int,
|
| num_steps: int, stride: int) -> tf.Tensor:
|
| """Samples `num_windows` segments from sequence with linearly spaced offsets.
|
|
|
| The samples are concatenated in a single `tf.Tensor` in order to have the same
|
| format structure per timestep (e.g. a single frame). If `num_steps` * `stride`
|
| is bigger than the number of timesteps, the sequence is repeated. This
|
| function can be used in evaluation in order to extract enough segments to span
|
| the entire sequence.
|
|
|
| Args:
|
| sequence: Any tensor where the first dimension is timesteps.
|
| num_windows: Number of windows retrieved from the sequence.
|
| num_steps: Number of steps (e.g. frames) to take.
|
| stride: Distance to sample between timesteps.
|
|
|
| Returns:
|
| A single `tf.Tensor` with first dimension `num_windows` * `num_steps`. The
|
| tensor contains the concatenated list of `num_windows` tensors which offsets
|
| have been linearly spaced from input.
|
| """
|
| sequence_length = tf.shape(sequence)[0]
|
| max_offset = tf.maximum(0, sequence_length - num_steps * stride)
|
| offsets = tf.linspace(0.0, tf.cast(max_offset, tf.float32), num_windows)
|
| offsets = tf.cast(offsets, tf.int32)
|
|
|
| all_indices = []
|
| for i in range(num_windows):
|
| all_indices.append(
|
| _sample_or_pad_sequence_indices(
|
| sequence=sequence,
|
| num_steps=num_steps,
|
| stride=stride,
|
| offset=offsets[i]))
|
|
|
| indices = tf.concat(all_indices, axis=0)
|
| indices.set_shape((num_windows * num_steps,))
|
| return tf.gather(sequence, indices)
|
|
|
|
|
| def sample_sequence(sequence: tf.Tensor,
|
| num_steps: int,
|
| random: bool,
|
| stride: int,
|
| seed: Optional[int] = None) -> tf.Tensor:
|
| """Samples a single segment of size `num_steps` from a given sequence.
|
|
|
| If `random` is not `True`, this function will simply sample the central window
|
| of the sequence. Otherwise, a random offset will be chosen in a way that the
|
| desired `num_steps` might be extracted from the sequence.
|
|
|
| Args:
|
| sequence: Any tensor where the first dimension is timesteps.
|
| num_steps: Number of steps (e.g. frames) to take.
|
| random: A boolean indicating whether to random sample the single window. If
|
| `True`, the offset is randomized. If `False`, the middle frame minus half
|
| of `num_steps` is the first frame.
|
| stride: Distance to sample between timesteps.
|
| seed: A deterministic seed to use when sampling.
|
|
|
| Returns:
|
| A single `tf.Tensor` with first dimension `num_steps` with the sampled
|
| segment.
|
| """
|
| sequence_length = tf.shape(sequence)[0]
|
|
|
| if random:
|
| sequence_length = tf.cast(sequence_length, tf.float32)
|
| frame_stride = tf.cast(stride, tf.float32)
|
| max_offset = tf.cond(
|
| sequence_length > (num_steps - 1) * frame_stride,
|
| lambda: sequence_length - (num_steps - 1) * frame_stride,
|
| lambda: sequence_length)
|
| offset = tf.random.uniform((),
|
| maxval=tf.cast(max_offset, dtype=tf.int32),
|
| dtype=tf.int32,
|
| seed=seed)
|
| else:
|
| offset = (sequence_length - num_steps * stride) // 2
|
| offset = tf.maximum(0, offset)
|
|
|
| indices = _sample_or_pad_sequence_indices(
|
| sequence=sequence, num_steps=num_steps, stride=stride, offset=offset)
|
| indices.set_shape((num_steps,))
|
|
|
| return tf.gather(sequence, indices)
|
|
|
|
|
| def sample_segment_sequence(sequence: tf.Tensor,
|
| num_frames: int,
|
| is_training: bool,
|
| seed: Optional[int] = None) -> tf.Tensor:
|
| """Samples a single segment of size `num_frames` from a given sequence.
|
|
|
| This function follows the temporal segment network sampling style
|
| (https://arxiv.org/abs/1608.00859). The video sequence would be divided into
|
| `num_frames` non-overlapping segments with same length. If `is_training` is
|
| `True`, we would randomly sampling one frame for each segment, and when
|
| `is_training` is `False`, only the center frame of each segment is sampled.
|
|
|
| Args:
|
| sequence: Any tensor where the first dimension is timesteps.
|
| num_frames: Number of frames to take.
|
| is_training: A boolean indicating sampling in training or evaluation mode.
|
| seed: A deterministic seed to use when sampling.
|
|
|
| Returns:
|
| A single `tf.Tensor` with first dimension `num_steps` with the sampled
|
| segment.
|
| """
|
| sequence_length = tf.shape(sequence)[0]
|
|
|
| sequence_length = tf.cast(sequence_length, tf.float32)
|
| segment_length = tf.cast(sequence_length // num_frames, tf.float32)
|
| segment_indices = tf.linspace(0.0, sequence_length, num_frames + 1)
|
| segment_indices = tf.cast(segment_indices, tf.int32)
|
|
|
| if is_training:
|
| segment_length = tf.cast(segment_length, tf.int32)
|
|
|
| segment_offsets = tf.cond(
|
| segment_length == 0,
|
| lambda: tf.zeros(shape=(num_frames,), dtype=tf.int32),
|
| lambda: tf.random.uniform(
|
| shape=(num_frames,),
|
| minval=0,
|
| maxval=segment_length,
|
| dtype=tf.int32,
|
| seed=seed))
|
|
|
|
|
| else:
|
|
|
| segment_offsets = tf.ones(
|
| shape=(num_frames,), dtype=tf.int32) * tf.cast(
|
| segment_length // 2, dtype=tf.int32)
|
|
|
| indices = segment_indices[:-1] + segment_offsets
|
| indices.set_shape((num_frames,))
|
|
|
| return tf.gather(sequence, indices)
|
|
|
|
|
| def decode_jpeg(image_string: tf.Tensor, channels: int = 0) -> tf.Tensor:
|
| """Decodes JPEG raw bytes string into a RGB uint8 Tensor.
|
|
|
| Args:
|
| image_string: A `tf.Tensor` of type strings with the raw JPEG bytes where
|
| the first dimension is timesteps.
|
| channels: Number of channels of the JPEG image. Allowed values are 0, 1 and
|
| 3. If 0, the number of channels will be calculated at runtime and no
|
| static shape is set.
|
|
|
| Returns:
|
| A Tensor of shape [T, H, W, C] of type uint8 with the decoded images.
|
| """
|
| return tf.map_fn(
|
| lambda x: tf.image.decode_jpeg(x, channels=channels),
|
| image_string,
|
| back_prop=False,
|
| dtype=tf.uint8)
|
|
|
|
|
| def decode_image(image_string: tf.Tensor, channels: int = 0) -> tf.Tensor:
|
| """Decodes PNG or JPEG raw bytes string into a RGB uint8 Tensor.
|
|
|
| Args:
|
| image_string: A `tf.Tensor` of type strings with the raw PNG or JPEG bytes
|
| where the first dimension is timesteps.
|
| channels: Number of channels of the PNG image. Allowed values are 0, 1 and
|
| 3. If 0, the number of channels will be calculated at runtime and no
|
| static shape is set.
|
|
|
| Returns:
|
| A Tensor of shape [T, H, W, C] of type uint8 with the decoded images.
|
| """
|
| return tf.map_fn(
|
| lambda x: tf.image.decode_image(
|
| x, channels=channels, expand_animations=False),
|
| image_string,
|
| back_prop=False,
|
| dtype=tf.uint8,
|
| )
|
|
|
|
|
| def crop_image(
|
| frames: tf.Tensor,
|
| target_height: int,
|
| target_width: int,
|
| random: bool = False,
|
| num_crops: int = 1,
|
| seed: Optional[int] = None,
|
| ) -> tf.Tensor:
|
| """Crops the image sequence of images.
|
|
|
| If requested size is bigger than image size, image is padded with 0. If not
|
| random cropping, a central crop is performed if num_crops is 1.
|
|
|
| Args:
|
| frames: A Tensor of dimension [timesteps, in_height, in_width, channels].
|
| target_height: Target cropped image height.
|
| target_width: Target cropped image width.
|
| random: A boolean indicating if crop should be randomized.
|
| num_crops: Number of crops (support 1 for central crop and 3 for 3-crop).
|
| seed: A deterministic seed to use when random cropping.
|
|
|
| Returns:
|
| A Tensor of shape [timesteps, out_height, out_width, channels] of type uint8
|
| with the cropped images.
|
| """
|
| if random:
|
|
|
| shape = tf.shape(frames)
|
|
|
|
|
| static_shape = frames.shape.as_list()
|
| seq_len = shape[0] if static_shape[0] is None else static_shape[0]
|
| channels = shape[3] if static_shape[3] is None else static_shape[3]
|
| frames = tf.image.random_crop(
|
| frames, (seq_len, target_height, target_width, channels), seed)
|
| else:
|
| if num_crops == 1:
|
|
|
| frames = tf.image.resize_with_crop_or_pad(frames, target_height,
|
| target_width)
|
|
|
| elif num_crops == 3:
|
|
|
| shape = tf.shape(frames)
|
| static_shape = frames.shape.as_list()
|
| seq_len = shape[0] if static_shape[0] is None else static_shape[0]
|
| height = shape[1] if static_shape[1] is None else static_shape[1]
|
| width = shape[2] if static_shape[2] is None else static_shape[2]
|
| channels = shape[3] if static_shape[3] is None else static_shape[3]
|
|
|
| size = tf.convert_to_tensor(
|
| (seq_len, target_height, target_width, channels))
|
|
|
| offset_1 = tf.broadcast_to([0, 0, 0, 0], [4])
|
|
|
| offset_2 = tf.cond(
|
| tf.greater_equal(height, width),
|
| true_fn=lambda: tf.broadcast_to([
|
| 0, tf.cast(height, tf.float32) / 2 - target_height // 2, 0, 0
|
| ], [4]),
|
| false_fn=lambda: tf.broadcast_to([
|
| 0, 0, tf.cast(width, tf.float32) / 2 - target_width // 2, 0
|
| ], [4]))
|
| offset_3 = tf.cond(
|
| tf.greater_equal(height, width),
|
| true_fn=lambda: tf.broadcast_to(
|
| [0, tf.cast(height, tf.float32) - target_height, 0, 0], [4]),
|
| false_fn=lambda: tf.broadcast_to(
|
| [0, 0, tf.cast(width, tf.float32) - target_width, 0], [4]))
|
|
|
|
|
| crops = []
|
| for offset in [offset_1, offset_2, offset_3]:
|
| offset = tf.cast(tf.math.round(offset), tf.int32)
|
| crops.append(tf.slice(frames, offset, size))
|
| frames = tf.concat(crops, axis=0)
|
|
|
| else:
|
| raise NotImplementedError(
|
| f"Only 1-crop and 3-crop are supported. Found {num_crops!r}.")
|
|
|
| return frames
|
|
|
|
|
| def resize_smallest(frames: tf.Tensor, min_resize: int) -> tf.Tensor:
|
| """Resizes frames so that min(`height`, `width`) is equal to `min_resize`.
|
|
|
| This function will not do anything if the min(`height`, `width`) is already
|
| equal to `min_resize`. This allows to save compute time.
|
|
|
| Args:
|
| frames: A Tensor of dimension [timesteps, input_h, input_w, channels].
|
| min_resize: Minimum size of the final image dimensions.
|
|
|
| Returns:
|
| A Tensor of shape [timesteps, output_h, output_w, channels] of type
|
| frames.dtype where min(output_h, output_w) = min_resize.
|
| """
|
| shape = tf.shape(frames)
|
| input_h = shape[1]
|
| input_w = shape[2]
|
|
|
| output_h = tf.maximum(min_resize, (input_h * min_resize) // input_w)
|
| output_w = tf.maximum(min_resize, (input_w * min_resize) // input_h)
|
|
|
| def resize_fn():
|
| frames_resized = tf.image.resize(frames, (output_h, output_w))
|
| return tf.cast(frames_resized, frames.dtype)
|
|
|
| should_resize = tf.math.logical_or(
|
| tf.not_equal(input_w, output_w), tf.not_equal(input_h, output_h))
|
| frames = tf.cond(should_resize, resize_fn, lambda: frames)
|
|
|
| return frames
|
|
|
|
|
| def random_crop_resize(frames: tf.Tensor, output_h: int, output_w: int,
|
| num_frames: int, num_channels: int,
|
| aspect_ratio: Tuple[float, float],
|
| area_range: Tuple[float, float]) -> tf.Tensor:
|
| """First crops clip with jittering and then resizes to (output_h, output_w).
|
|
|
| Args:
|
| frames: A Tensor of dimension [timesteps, input_h, input_w, channels].
|
| output_h: Resized image height.
|
| output_w: Resized image width.
|
| num_frames: Number of input frames per clip.
|
| num_channels: Number of channels of the clip.
|
| aspect_ratio: Float tuple with the aspect range for cropping.
|
| area_range: Float tuple with the area range for cropping.
|
|
|
| Returns:
|
| A Tensor of shape [timesteps, output_h, output_w, channels] of type
|
| frames.dtype.
|
| """
|
| shape = tf.shape(frames)
|
| seq_len, _, _, channels = shape[0], shape[1], shape[2], shape[3]
|
| bbox = tf.constant([0.0, 0.0, 1.0, 1.0], dtype=tf.float32, shape=[1, 1, 4])
|
| factor = output_w / output_h
|
| aspect_ratio = (aspect_ratio[0] * factor, aspect_ratio[1] * factor)
|
| sample_distorted_bbox = tf.image.sample_distorted_bounding_box(
|
| shape[1:],
|
| bounding_boxes=bbox,
|
| min_object_covered=0.1,
|
| aspect_ratio_range=aspect_ratio,
|
| area_range=area_range,
|
| max_attempts=100,
|
| use_image_if_no_bounding_boxes=True)
|
| bbox_begin, bbox_size, _ = sample_distorted_bbox
|
| offset_y, offset_x, _ = tf.unstack(bbox_begin)
|
| target_height, target_width, _ = tf.unstack(bbox_size)
|
| size = tf.convert_to_tensor((seq_len, target_height, target_width, channels))
|
| offset = tf.convert_to_tensor((0, offset_y, offset_x, 0))
|
| frames = tf.slice(frames, offset, size)
|
| frames = tf.cast(tf.image.resize(frames, (output_h, output_w)), frames.dtype)
|
| frames.set_shape((num_frames, output_h, output_w, num_channels))
|
| return frames
|
|
|
|
|
| def random_flip_left_right(frames: tf.Tensor,
|
| seed: Optional[int] = None) -> tf.Tensor:
|
| """Flips all the frames with a probability of 50%.
|
|
|
| Args:
|
| frames: A Tensor of shape [timesteps, input_h, input_w, channels].
|
| seed: A seed to use for the random sampling.
|
|
|
| Returns:
|
| A Tensor of shape [timesteps, output_h, output_w, channels] eventually
|
| flipped left right.
|
| """
|
| is_flipped = tf.random.uniform((),
|
| minval=0,
|
| maxval=2,
|
| dtype=tf.int32,
|
| seed=seed)
|
|
|
| frames = tf.cond(
|
| tf.equal(is_flipped, 1),
|
| true_fn=lambda: tf.image.flip_left_right(frames),
|
| false_fn=lambda: frames)
|
| return frames
|
|
|
|
|
| def normalize_image(frames: tf.Tensor,
|
| zero_centering_image: bool,
|
| dtype: tf.dtypes.DType = tf.float32) -> tf.Tensor:
|
| """Normalizes images.
|
|
|
| Args:
|
| frames: A Tensor of numbers.
|
| zero_centering_image: If True, results are in [-1, 1], if False, results are
|
| in [0, 1].
|
| dtype: Type of output Tensor.
|
|
|
| Returns:
|
| A Tensor of same shape as the input and of the given type.
|
| """
|
| frames = tf.cast(frames, dtype)
|
| if zero_centering_image:
|
| return frames * (2.0 / 255.0) - 1.0
|
| else:
|
| return frames / 255.0
|
|
|