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official/legacy/image_classification/augment.py

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# Copyright 2024 The TensorFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

"""AutoAugment and RandAugment policies for enhanced image preprocessing.

AutoAugment Reference: https://arxiv.org/abs/1805.09501
RandAugment Reference: https://arxiv.org/abs/1909.13719
"""

from __future__ import absolute_import
from __future__ import division
from __future__ import print_function

import math
from typing import Any, Dict, List, Optional, Text, Tuple

import tensorflow as tf, tf_keras


# This signifies the max integer that the controller RNN could predict for the
# augmentation scheme.
_MAX_LEVEL = 10.


def to_4d(image: tf.Tensor) -> tf.Tensor:
  """Converts an input Tensor to 4 dimensions.

  4D image => [N, H, W, C] or [N, C, H, W]
  3D image => [1, H, W, C] or [1, C, H, W]
  2D image => [1, H, W, 1]

  Args:
    image: The 2/3/4D input tensor.

  Returns:
    A 4D image tensor.

  Raises:
    `TypeError` if `image` is not a 2/3/4D tensor.

  """
  shape = tf.shape(image)
  original_rank = tf.rank(image)
  left_pad = tf.cast(tf.less_equal(original_rank, 3), dtype=tf.int32)
  right_pad = tf.cast(tf.equal(original_rank, 2), dtype=tf.int32)
  new_shape = tf.concat(
      [
          tf.ones(shape=left_pad, dtype=tf.int32),
          shape,
          tf.ones(shape=right_pad, dtype=tf.int32),
      ],
      axis=0,
  )
  return tf.reshape(image, new_shape)


def from_4d(image: tf.Tensor, ndims: tf.Tensor) -> tf.Tensor:
  """Converts a 4D image back to `ndims` rank."""
  shape = tf.shape(image)
  begin = tf.cast(tf.less_equal(ndims, 3), dtype=tf.int32)
  end = 4 - tf.cast(tf.equal(ndims, 2), dtype=tf.int32)
  new_shape = shape[begin:end]
  return tf.reshape(image, new_shape)


def _convert_translation_to_transform(translations: tf.Tensor) -> tf.Tensor:
  """Converts translations to a projective transform.

  The translation matrix looks like this:
    [[1 0 -dx]
     [0 1 -dy]
     [0 0 1]]

  Args:
    translations: The 2-element list representing [dx, dy], or a matrix of
      2-element lists representing [dx dy] to translate for each image. The
      shape must be static.

  Returns:
    The transformation matrix of shape (num_images, 8).

  Raises:
    `TypeError` if
      - the shape of `translations` is not known or
      - the shape of `translations` is not rank 1 or 2.

  """
  translations = tf.convert_to_tensor(translations, dtype=tf.float32)
  if translations.get_shape().ndims is None:
    raise TypeError('translations rank must be statically known')
  elif len(translations.get_shape()) == 1:
    translations = translations[None]
  elif len(translations.get_shape()) != 2:
    raise TypeError('translations should have rank 1 or 2.')
  num_translations = tf.shape(translations)[0]

  return tf.concat(
      values=[
          tf.ones((num_translations, 1), tf.dtypes.float32),
          tf.zeros((num_translations, 1), tf.dtypes.float32),
          -translations[:, 0, None],
          tf.zeros((num_translations, 1), tf.dtypes.float32),
          tf.ones((num_translations, 1), tf.dtypes.float32),
          -translations[:, 1, None],
          tf.zeros((num_translations, 2), tf.dtypes.float32),
      ],
      axis=1,
  )


def _convert_angles_to_transform(angles: tf.Tensor, image_width: tf.Tensor,
                                 image_height: tf.Tensor) -> tf.Tensor:
  """Converts an angle or angles to a projective transform.

  Args:
    angles: A scalar to rotate all images, or a vector to rotate a batch of
      images. This must be a scalar.
    image_width: The width of the image(s) to be transformed.
    image_height: The height of the image(s) to be transformed.

  Returns:
    A tensor of shape (num_images, 8).

  Raises:
    `TypeError` if `angles` is not rank 0 or 1.

  """
  angles = tf.convert_to_tensor(angles, dtype=tf.float32)
  if len(angles.get_shape()) == 0:  # pylint:disable=g-explicit-length-test
    angles = angles[None]
  elif len(angles.get_shape()) != 1:
    raise TypeError('Angles should have a rank 0 or 1.')
  x_offset = ((image_width - 1) -
              (tf.math.cos(angles) * (image_width - 1) - tf.math.sin(angles) *
               (image_height - 1))) / 2.0
  y_offset = ((image_height - 1) -
              (tf.math.sin(angles) * (image_width - 1) + tf.math.cos(angles) *
               (image_height - 1))) / 2.0
  num_angles = tf.shape(angles)[0]
  return tf.concat(
      values=[
          tf.math.cos(angles)[:, None],
          -tf.math.sin(angles)[:, None],
          x_offset[:, None],
          tf.math.sin(angles)[:, None],
          tf.math.cos(angles)[:, None],
          y_offset[:, None],
          tf.zeros((num_angles, 2), tf.dtypes.float32),
      ],
      axis=1,
  )


def apply_transform_to_images(
    images,
    transforms,
    fill_mode='reflect',
    fill_value=0.0,
    interpolation='bilinear',
    output_shape=None,
    name=None,
):
  """Applies the given transform(s) to the image(s).

  Args:
    images: A tensor of shape `(num_images, num_rows, num_columns,
      num_channels)` (NHWC). The rank must be statically known (the shape is
      not `TensorShape(None)`).
    transforms: Projective transform matrix/matrices. A vector of length 8 or
      tensor of size N x 8. If one row of transforms is [a0, a1, a2, b0, b1,
      b2, c0, c1], then it maps the *output* point `(x, y)` to a transformed
      *input* point `(x', y') = ((a0 x + a1 y + a2) / k, (b0 x + b1 y + b2) /
      k)`, where `k = c0 x + c1 y + 1`. The transforms are *inverted* compared
      to the transform mapping input points to output points. Note that
      gradients are not backpropagated into transformation parameters.
    fill_mode: Points outside the boundaries of the input are filled according
      to the given mode (one of `{"constant", "reflect", "wrap", "nearest"}`).
    fill_value: a float represents the value to be filled outside the
      boundaries when `fill_mode="constant"`.
    interpolation: Interpolation mode. Supported values: `"nearest"`,
      `"bilinear"`.
    output_shape: Output dimension after the transform, `[height, width]`. If
      `None`, output is the same size as input image.
    name: The name of the op.  Fill mode behavior for each valid value is as
      follows
      - `"reflect"`: `(d c b a | a b c d | d c b a)` The input is extended by
      reflecting about the edge of the last pixel.
      - `"constant"`: `(k k k k | a b c d | k k k k)` The input is extended by
      filling all values beyond the edge with the same constant value k = 0.
      - `"wrap"`: `(a b c d | a b c d | a b c d)` The input is extended by
      wrapping around to the opposite edge.
      - `"nearest"`: `(a a a a | a b c d | d d d d)` The input is extended by
      the nearest pixel.  Input shape: 4D tensor with shape:
      `(samples, height, width, channels)`, in `"channels_last"` format.
      Output shape: 4D tensor with shape: `(samples, height, width, channels)`,
      in `"channels_last"` format.

  Returns:
    Image(s) with the same type and shape as `images`, with the given
    transform(s) applied. Transformed coordinates outside of the input image
    will be filled with zeros.
  """
  with tf.name_scope(name or 'transform'):
    if output_shape is None:
      output_shape = tf.shape(images)[1:3]
      if not tf.executing_eagerly():
        output_shape_value = tf.get_static_value(output_shape)
        if output_shape_value is not None:
          output_shape = output_shape_value

    output_shape = tf.convert_to_tensor(
        output_shape, tf.int32, name='output_shape'
    )

    if not output_shape.get_shape().is_compatible_with([2]):
      raise ValueError(
          'output_shape must be a 1-D Tensor of 2 elements: '
          'new_height, new_width, instead got '
          f'output_shape={output_shape}'
      )

    fill_value = tf.convert_to_tensor(fill_value, tf.float32, name='fill_value')

    return tf.raw_ops.ImageProjectiveTransformV3(
        images=images,
        output_shape=output_shape,
        fill_value=fill_value,
        transforms=transforms,
        fill_mode=fill_mode.upper(),
        interpolation=interpolation.upper(),
    )


def transform(image: tf.Tensor, transforms) -> tf.Tensor:
  """Prepares input data for `image_ops.transform`."""
  original_ndims = tf.rank(image)
  transforms = tf.convert_to_tensor(transforms, dtype=tf.float32)
  if transforms.shape.rank == 1:
    transforms = transforms[None]
  image = to_4d(image)
  image = apply_transform_to_images(
      images=image, transforms=transforms, interpolation='nearest'
  )
  return from_4d(image, original_ndims)


def translate(image: tf.Tensor, translations) -> tf.Tensor:
  """Translates image(s) by provided vectors.

  Args:
    image: An image Tensor of type uint8.
    translations: A vector or matrix representing [dx dy].

  Returns:
    The translated version of the image.

  """
  transforms = _convert_translation_to_transform(translations)  # pytype: disable=wrong-arg-types  # always-use-return-annotations
  return transform(image, transforms=transforms)


def rotate(image: tf.Tensor, degrees: float) -> tf.Tensor:
  """Rotates the image by degrees either clockwise or counterclockwise.

  Args:
    image: An image Tensor of type uint8.
    degrees: Float, a scalar angle in degrees to rotate all images by. If
      degrees is positive the image will be rotated clockwise otherwise it will
      be rotated counterclockwise.

  Returns:
    The rotated version of image.

  """
  # Convert from degrees to radians.
  degrees_to_radians = math.pi / 180.0
  radians = tf.cast(degrees * degrees_to_radians, tf.float32)

  original_ndims = tf.rank(image)
  image = to_4d(image)

  image_height = tf.cast(tf.shape(image)[1], tf.float32)
  image_width = tf.cast(tf.shape(image)[2], tf.float32)
  transforms = _convert_angles_to_transform(
      angles=radians, image_width=image_width, image_height=image_height)
  # In practice, we should randomize the rotation degrees by flipping
  # it negatively half the time, but that's done on 'degrees' outside
  # of the function.
  image = transform(image, transforms=transforms)
  return from_4d(image, original_ndims)


def blend(image1: tf.Tensor, image2: tf.Tensor, factor: float) -> tf.Tensor:
  """Blend image1 and image2 using 'factor'.

  Factor can be above 0.0.  A value of 0.0 means only image1 is used.
  A value of 1.0 means only image2 is used.  A value between 0.0 and
  1.0 means we linearly interpolate the pixel values between the two
  images.  A value greater than 1.0 "extrapolates" the difference
  between the two pixel values, and we clip the results to values
  between 0 and 255.

  Args:
    image1: An image Tensor of type uint8.
    image2: An image Tensor of type uint8.
    factor: A floating point value above 0.0.

  Returns:
    A blended image Tensor of type uint8.
  """
  if factor == 0.0:
    return tf.convert_to_tensor(image1)
  if factor == 1.0:
    return tf.convert_to_tensor(image2)

  image1 = tf.cast(image1, tf.float32)
  image2 = tf.cast(image2, tf.float32)

  difference = image2 - image1
  scaled = factor * difference

  # Do addition in float.
  temp = tf.cast(image1, tf.float32) + scaled

  # Interpolate
  if factor > 0.0 and factor < 1.0:
    # Interpolation means we always stay within 0 and 255.
    return tf.cast(temp, tf.uint8)

  # Extrapolate:
  #
  # We need to clip and then cast.
  return tf.cast(tf.clip_by_value(temp, 0.0, 255.0), tf.uint8)


def cutout(image: tf.Tensor, pad_size: int, replace: int = 0) -> tf.Tensor:
  """Apply cutout (https://arxiv.org/abs/1708.04552) to image.

  This operation applies a (2*pad_size x 2*pad_size) mask of zeros to
  a random location within `img`. The pixel values filled in will be of the
  value `replace`. The located where the mask will be applied is randomly
  chosen uniformly over the whole image.

  Args:
    image: An image Tensor of type uint8.
    pad_size: Specifies how big the zero mask that will be generated is that is
      applied to the image. The mask will be of size (2*pad_size x 2*pad_size).
    replace: What pixel value to fill in the image in the area that has the
      cutout mask applied to it.

  Returns:
    An image Tensor that is of type uint8.
  """
  image_height = tf.shape(image)[0]
  image_width = tf.shape(image)[1]

  # Sample the center location in the image where the zero mask will be applied.
  cutout_center_height = tf.random.uniform(
      shape=[], minval=0, maxval=image_height, dtype=tf.int32)

  cutout_center_width = tf.random.uniform(
      shape=[], minval=0, maxval=image_width, dtype=tf.int32)

  lower_pad = tf.maximum(0, cutout_center_height - pad_size)
  upper_pad = tf.maximum(0, image_height - cutout_center_height - pad_size)
  left_pad = tf.maximum(0, cutout_center_width - pad_size)
  right_pad = tf.maximum(0, image_width - cutout_center_width - pad_size)

  cutout_shape = [
      image_height - (lower_pad + upper_pad),
      image_width - (left_pad + right_pad)
  ]
  padding_dims = [[lower_pad, upper_pad], [left_pad, right_pad]]
  mask = tf.pad(
      tf.zeros(cutout_shape, dtype=image.dtype),
      padding_dims,
      constant_values=1)
  mask = tf.expand_dims(mask, -1)
  mask = tf.tile(mask, [1, 1, 3])
  image = tf.where(
      tf.equal(mask, 0),
      tf.ones_like(image, dtype=image.dtype) * replace, image)
  return image


def solarize(image: tf.Tensor, threshold: int = 128) -> tf.Tensor:
  # For each pixel in the image, select the pixel
  # if the value is less than the threshold.
  # Otherwise, subtract 255 from the pixel.
  return tf.where(image < threshold, image, 255 - image)


def solarize_add(image: tf.Tensor,
                 addition: int = 0,
                 threshold: int = 128) -> tf.Tensor:
  # For each pixel in the image less than threshold
  # we add 'addition' amount to it and then clip the
  # pixel value to be between 0 and 255. The value
  # of 'addition' is between -128 and 128.
  added_image = tf.cast(image, tf.int64) + addition
  added_image = tf.cast(tf.clip_by_value(added_image, 0, 255), tf.uint8)
  return tf.where(image < threshold, added_image, image)


def color(image: tf.Tensor, factor: float) -> tf.Tensor:
  """Equivalent of PIL Color."""
  degenerate = tf.image.grayscale_to_rgb(tf.image.rgb_to_grayscale(image))
  return blend(degenerate, image, factor)


def contrast(image: tf.Tensor, factor: float) -> tf.Tensor:
  """Equivalent of PIL Contrast."""
  degenerate = tf.image.rgb_to_grayscale(image)
  # Cast before calling tf.histogram.
  degenerate = tf.cast(degenerate, tf.int32)

  # Compute the grayscale histogram, then compute the mean pixel value,
  # and create a constant image size of that value.  Use that as the
  # blending degenerate target of the original image.
  hist = tf.histogram_fixed_width(degenerate, [0, 255], nbins=256)
  mean = tf.reduce_sum(tf.cast(hist, tf.float32)) / 256.0
  degenerate = tf.ones_like(degenerate, dtype=tf.float32) * mean
  degenerate = tf.clip_by_value(degenerate, 0.0, 255.0)
  degenerate = tf.image.grayscale_to_rgb(tf.cast(degenerate, tf.uint8))
  return blend(degenerate, image, factor)


def brightness(image: tf.Tensor, factor: float) -> tf.Tensor:
  """Equivalent of PIL Brightness."""
  degenerate = tf.zeros_like(image)
  return blend(degenerate, image, factor)


def posterize(image: tf.Tensor, bits: int) -> tf.Tensor:
  """Equivalent of PIL Posterize."""
  shift = 8 - bits
  return tf.bitwise.left_shift(tf.bitwise.right_shift(image, shift), shift)


def wrapped_rotate(image: tf.Tensor, degrees: float, replace: int) -> tf.Tensor:
  """Applies rotation with wrap/unwrap."""
  image = rotate(wrap(image), degrees=degrees)
  return unwrap(image, replace)


def translate_x(image: tf.Tensor, pixels: int, replace: int) -> tf.Tensor:
  """Equivalent of PIL Translate in X dimension."""
  image = translate(wrap(image), [-pixels, 0])
  return unwrap(image, replace)


def translate_y(image: tf.Tensor, pixels: int, replace: int) -> tf.Tensor:
  """Equivalent of PIL Translate in Y dimension."""
  image = translate(wrap(image), [0, -pixels])
  return unwrap(image, replace)


def shear_x(image: tf.Tensor, level: float, replace: int) -> tf.Tensor:
  """Equivalent of PIL Shearing in X dimension."""
  # Shear parallel to x axis is a projective transform
  # with a matrix form of:
  # [1  level
  #  0  1].
  image = transform(
      image=wrap(image), transforms=[1., level, 0., 0., 1., 0., 0., 0.])
  return unwrap(image, replace)


def shear_y(image: tf.Tensor, level: float, replace: int) -> tf.Tensor:
  """Equivalent of PIL Shearing in Y dimension."""
  # Shear parallel to y axis is a projective transform
  # with a matrix form of:
  # [1  0
  #  level  1].
  image = transform(
      image=wrap(image), transforms=[1., 0., 0., level, 1., 0., 0., 0.])
  return unwrap(image, replace)


def autocontrast(image: tf.Tensor) -> tf.Tensor:
  """Implements Autocontrast function from PIL using TF ops.

  Args:
    image: A 3D uint8 tensor.

  Returns:
    The image after it has had autocontrast applied to it and will be of type
    uint8.
  """

  def scale_channel(image: tf.Tensor) -> tf.Tensor:
    """Scale the 2D image using the autocontrast rule."""
    # A possibly cheaper version can be done using cumsum/unique_with_counts
    # over the histogram values, rather than iterating over the entire image.
    # to compute mins and maxes.
    lo = tf.cast(tf.reduce_min(image), tf.float32)
    hi = tf.cast(tf.reduce_max(image), tf.float32)

    # Scale the image, making the lowest value 0 and the highest value 255.
    def scale_values(im):
      scale = 255.0 / (hi - lo)
      offset = -lo * scale
      im = tf.cast(im, tf.float32) * scale + offset
      im = tf.clip_by_value(im, 0.0, 255.0)
      return tf.cast(im, tf.uint8)

    result = tf.cond(hi > lo, lambda: scale_values(image), lambda: image)
    return result

  # Assumes RGB for now.  Scales each channel independently
  # and then stacks the result.
  s1 = scale_channel(image[:, :, 0])
  s2 = scale_channel(image[:, :, 1])
  s3 = scale_channel(image[:, :, 2])
  image = tf.stack([s1, s2, s3], 2)
  return image


def sharpness(image: tf.Tensor, factor: float) -> tf.Tensor:
  """Implements Sharpness function from PIL using TF ops."""
  orig_image = image
  image = tf.cast(image, tf.float32)
  # Make image 4D for conv operation.
  image = tf.expand_dims(image, 0)
  # SMOOTH PIL Kernel.
  kernel = tf.constant([[1, 1, 1], [1, 5, 1], [1, 1, 1]],
                       dtype=tf.float32,
                       shape=[3, 3, 1, 1]) / 13.
  # Tile across channel dimension.
  kernel = tf.tile(kernel, [1, 1, 3, 1])
  strides = [1, 1, 1, 1]
  degenerate = tf.nn.depthwise_conv2d(
      image, kernel, strides, padding='VALID', dilations=[1, 1])
  degenerate = tf.clip_by_value(degenerate, 0.0, 255.0)
  degenerate = tf.squeeze(tf.cast(degenerate, tf.uint8), [0])

  # For the borders of the resulting image, fill in the values of the
  # original image.
  mask = tf.ones_like(degenerate)
  padded_mask = tf.pad(mask, [[1, 1], [1, 1], [0, 0]])
  padded_degenerate = tf.pad(degenerate, [[1, 1], [1, 1], [0, 0]])
  result = tf.where(tf.equal(padded_mask, 1), padded_degenerate, orig_image)

  # Blend the final result.
  return blend(result, orig_image, factor)


def equalize(image: tf.Tensor) -> tf.Tensor:
  """Implements Equalize function from PIL using TF ops."""

  def scale_channel(im, c):
    """Scale the data in the channel to implement equalize."""
    im = tf.cast(im[:, :, c], tf.int32)
    # Compute the histogram of the image channel.
    histo = tf.histogram_fixed_width(im, [0, 255], nbins=256)

    # For the purposes of computing the step, filter out the nonzeros.
    nonzero = tf.where(tf.not_equal(histo, 0))
    nonzero_histo = tf.reshape(tf.gather(histo, nonzero), [-1])
    step = (tf.reduce_sum(nonzero_histo) - nonzero_histo[-1]) // 255

    def build_lut(histo, step):
      # Compute the cumulative sum, shifting by step // 2
      # and then normalization by step.
      lut = (tf.cumsum(histo) + (step // 2)) // step
      # Shift lut, prepending with 0.
      lut = tf.concat([[0], lut[:-1]], 0)
      # Clip the counts to be in range.  This is done
      # in the C code for image.point.
      return tf.clip_by_value(lut, 0, 255)

    # If step is zero, return the original image.  Otherwise, build
    # lut from the full histogram and step and then index from it.
    result = tf.cond(
        tf.equal(step, 0), lambda: im,
        lambda: tf.gather(build_lut(histo, step), im))

    return tf.cast(result, tf.uint8)

  # Assumes RGB for now.  Scales each channel independently
  # and then stacks the result.
  s1 = scale_channel(image, 0)
  s2 = scale_channel(image, 1)
  s3 = scale_channel(image, 2)
  image = tf.stack([s1, s2, s3], 2)
  return image


def invert(image: tf.Tensor) -> tf.Tensor:
  """Inverts the image pixels."""
  image = tf.convert_to_tensor(image)
  return 255 - image


def wrap(image: tf.Tensor) -> tf.Tensor:
  """Returns 'image' with an extra channel set to all 1s."""
  shape = tf.shape(image)
  extended_channel = tf.ones([shape[0], shape[1], 1], image.dtype)
  extended = tf.concat([image, extended_channel], axis=2)
  return extended


def unwrap(image: tf.Tensor, replace: int) -> tf.Tensor:
  """Unwraps an image produced by wrap.

  Where there is a 0 in the last channel for every spatial position,
  the rest of the three channels in that spatial dimension are grayed
  (set to 128).  Operations like translate and shear on a wrapped
  Tensor will leave 0s in empty locations.  Some transformations look
  at the intensity of values to do preprocessing, and we want these
  empty pixels to assume the 'average' value, rather than pure black.


  Args:
    image: A 3D Image Tensor with 4 channels.
    replace: A one or three value 1D tensor to fill empty pixels.

  Returns:
    image: A 3D image Tensor with 3 channels.
  """
  image_shape = tf.shape(image)
  # Flatten the spatial dimensions.
  flattened_image = tf.reshape(image, [-1, image_shape[2]])

  # Find all pixels where the last channel is zero.
  alpha_channel = tf.expand_dims(flattened_image[:, 3], axis=-1)

  replace = tf.concat([replace, tf.ones([1], image.dtype)], 0)

  # Where they are zero, fill them in with 'replace'.
  flattened_image = tf.where(
      tf.equal(alpha_channel, 0),
      tf.ones_like(flattened_image, dtype=image.dtype) * replace,
      flattened_image)

  image = tf.reshape(flattened_image, image_shape)
  image = tf.slice(image, [0, 0, 0], [image_shape[0], image_shape[1], 3])
  return image


def _randomly_negate_tensor(tensor):
  """With 50% prob turn the tensor negative."""
  should_flip = tf.cast(tf.floor(tf.random.uniform([]) + 0.5), tf.bool)
  final_tensor = tf.cond(should_flip, lambda: tensor, lambda: -tensor)
  return final_tensor


def _rotate_level_to_arg(level: float):
  level = (level / _MAX_LEVEL) * 30.
  level = _randomly_negate_tensor(level)
  return (level,)


def _shrink_level_to_arg(level: float):
  """Converts level to ratio by which we shrink the image content."""
  if level == 0:
    return (1.0,)  # if level is zero, do not shrink the image
  # Maximum shrinking ratio is 2.9.
  level = 2. / (_MAX_LEVEL / level) + 0.9
  return (level,)


def _enhance_level_to_arg(level: float):
  return ((level / _MAX_LEVEL) * 1.8 + 0.1,)


def _shear_level_to_arg(level: float):
  level = (level / _MAX_LEVEL) * 0.3
  # Flip level to negative with 50% chance.
  level = _randomly_negate_tensor(level)
  return (level,)


def _translate_level_to_arg(level: float, translate_const: float):
  level = (level / _MAX_LEVEL) * float(translate_const)
  # Flip level to negative with 50% chance.
  level = _randomly_negate_tensor(level)
  return (level,)


def _mult_to_arg(level: float, multiplier: float = 1.):
  return (int((level / _MAX_LEVEL) * multiplier),)


def _apply_func_with_prob(func: Any, image: tf.Tensor, args: Any, prob: float):
  """Apply `func` to image w/ `args` as input with probability `prob`."""
  assert isinstance(args, tuple)

  # Apply the function with probability `prob`.
  should_apply_op = tf.cast(
      tf.floor(tf.random.uniform([], dtype=tf.float32) + prob), tf.bool)
  augmented_image = tf.cond(should_apply_op, lambda: func(image, *args),
                            lambda: image)
  return augmented_image


def select_and_apply_random_policy(policies: Any, image: tf.Tensor):
  """Select a random policy from `policies` and apply it to `image`."""
  policy_to_select = tf.random.uniform([], maxval=len(policies), dtype=tf.int32)
  # Note that using tf.case instead of tf.conds would result in significantly
  # larger graphs and would even break export for some larger policies.
  for (i, policy) in enumerate(policies):
    image = tf.cond(
        tf.equal(i, policy_to_select),
        lambda selected_policy=policy: selected_policy(image),
        lambda: image)
  return image


NAME_TO_FUNC = {
    'AutoContrast': autocontrast,
    'Equalize': equalize,
    'Invert': invert,
    'Rotate': wrapped_rotate,
    'Posterize': posterize,
    'Solarize': solarize,
    'SolarizeAdd': solarize_add,
    'Color': color,
    'Contrast': contrast,
    'Brightness': brightness,
    'Sharpness': sharpness,
    'ShearX': shear_x,
    'ShearY': shear_y,
    'TranslateX': translate_x,
    'TranslateY': translate_y,
    'Cutout': cutout,
}

# Functions that have a 'replace' parameter
REPLACE_FUNCS = frozenset({
    'Rotate',
    'TranslateX',
    'ShearX',
    'ShearY',
    'TranslateY',
    'Cutout',
})


def level_to_arg(cutout_const: float, translate_const: float):
  """Creates a dict mapping image operation names to their arguments."""

  no_arg = lambda level: ()
  posterize_arg = lambda level: _mult_to_arg(level, 4)
  solarize_arg = lambda level: _mult_to_arg(level, 256)
  solarize_add_arg = lambda level: _mult_to_arg(level, 110)
  cutout_arg = lambda level: _mult_to_arg(level, cutout_const)
  translate_arg = lambda level: _translate_level_to_arg(level, translate_const)

  args = {
      'AutoContrast': no_arg,
      'Equalize': no_arg,
      'Invert': no_arg,
      'Rotate': _rotate_level_to_arg,
      'Posterize': posterize_arg,
      'Solarize': solarize_arg,
      'SolarizeAdd': solarize_add_arg,
      'Color': _enhance_level_to_arg,
      'Contrast': _enhance_level_to_arg,
      'Brightness': _enhance_level_to_arg,
      'Sharpness': _enhance_level_to_arg,
      'ShearX': _shear_level_to_arg,
      'ShearY': _shear_level_to_arg,
      'Cutout': cutout_arg,
      'TranslateX': translate_arg,
      'TranslateY': translate_arg,
  }
  return args


def _parse_policy_info(name: Text, prob: float, level: float,
                       replace_value: List[int], cutout_const: float,
                       translate_const: float) -> Tuple[Any, float, Any]:
  """Return the function that corresponds to `name` and update `level` param."""
  func = NAME_TO_FUNC[name]
  args = level_to_arg(cutout_const, translate_const)[name](level)

  if name in REPLACE_FUNCS:
    # Add in replace arg if it is required for the function that is called.
    args = tuple(list(args) + [replace_value])

  return func, prob, args


class ImageAugment(object):
  """Image augmentation class for applying image distortions."""

  def distort(self, image: tf.Tensor) -> tf.Tensor:
    """Given an image tensor, returns a distorted image with the same shape.

    Args:
      image: `Tensor` of shape [height, width, 3] representing an image.

    Returns:
      The augmented version of `image`.
    """
    raise NotImplementedError()


class AutoAugment(ImageAugment):
  """Applies the AutoAugment policy to images.

    AutoAugment is from the paper: https://arxiv.org/abs/1805.09501.
  """

  def __init__(self,
               augmentation_name: Text = 'v0',
               policies: Optional[Dict[Text, Any]] = None,
               cutout_const: float = 100,
               translate_const: float = 250):
    """Applies the AutoAugment policy to images.

    Args:
      augmentation_name: The name of the AutoAugment policy to use. The
        available options are `v0` and `test`. `v0` is the policy used for all
        of the results in the paper and was found to achieve the best results on
        the COCO dataset. `v1`, `v2` and `v3` are additional good policies found
        on the COCO dataset that have slight variation in what operations were
        used during the search procedure along with how many operations are
        applied in parallel to a single image (2 vs 3).
      policies: list of lists of tuples in the form `(func, prob, level)`,
        `func` is a string name of the augmentation function, `prob` is the
        probability of applying the `func` operation, `level` is the input
        argument for `func`.
      cutout_const: multiplier for applying cutout.
      translate_const: multiplier for applying translation.
    """
    super(AutoAugment, self).__init__()

    if policies is None:
      self.available_policies = {
          'v0': self.policy_v0(),
          'test': self.policy_test(),
          'simple': self.policy_simple(),
      }

    if augmentation_name not in self.available_policies:
      raise ValueError(
          'Invalid augmentation_name: {}'.format(augmentation_name))

    self.augmentation_name = augmentation_name
    self.policies = self.available_policies[augmentation_name]
    self.cutout_const = float(cutout_const)
    self.translate_const = float(translate_const)

  def distort(self, image: tf.Tensor) -> tf.Tensor:
    """Applies the AutoAugment policy to `image`.

    AutoAugment is from the paper: https://arxiv.org/abs/1805.09501.

    Args:
      image: `Tensor` of shape [height, width, 3] representing an image.

    Returns:
      A version of image that now has data augmentation applied to it based on
      the `policies` pass into the function.
    """
    input_image_type = image.dtype

    if input_image_type != tf.uint8:
      image = tf.clip_by_value(image, 0.0, 255.0)
      image = tf.cast(image, dtype=tf.uint8)

    replace_value = [128] * 3

    # func is the string name of the augmentation function, prob is the
    # probability of applying the operation and level is the parameter
    # associated with the tf op.

    # tf_policies are functions that take in an image and return an augmented
    # image.
    tf_policies = []
    for policy in self.policies:
      tf_policy = []
      # Link string name to the correct python function and make sure the
      # correct argument is passed into that function.
      for policy_info in policy:
        policy_info = list(policy_info) + [
            replace_value, self.cutout_const, self.translate_const
        ]
        tf_policy.append(_parse_policy_info(*policy_info))
      # Now build the tf policy that will apply the augmentation procedue
      # on image.
      def make_final_policy(tf_policy_):

        def final_policy(image_):
          for func, prob, args in tf_policy_:
            image_ = _apply_func_with_prob(func, image_, args, prob)
          return image_

        return final_policy

      tf_policies.append(make_final_policy(tf_policy))

    image = select_and_apply_random_policy(tf_policies, image)
    image = tf.cast(image, dtype=input_image_type)
    return image

  @staticmethod
  def policy_v0():
    """Autoaugment policy that was used in AutoAugment Paper.

    Each tuple is an augmentation operation of the form
    (operation, probability, magnitude). Each element in policy is a
    sub-policy that will be applied sequentially on the image.

    Returns:
      the policy.
    """

    policy = [
        [('Equalize', 0.8, 1), ('ShearY', 0.8, 4)],
        [('Color', 0.4, 9), ('Equalize', 0.6, 3)],
        [('Color', 0.4, 1), ('Rotate', 0.6, 8)],
        [('Solarize', 0.8, 3), ('Equalize', 0.4, 7)],
        [('Solarize', 0.4, 2), ('Solarize', 0.6, 2)],
        [('Color', 0.2, 0), ('Equalize', 0.8, 8)],
        [('Equalize', 0.4, 8), ('SolarizeAdd', 0.8, 3)],
        [('ShearX', 0.2, 9), ('Rotate', 0.6, 8)],
        [('Color', 0.6, 1), ('Equalize', 1.0, 2)],
        [('Invert', 0.4, 9), ('Rotate', 0.6, 0)],
        [('Equalize', 1.0, 9), ('ShearY', 0.6, 3)],
        [('Color', 0.4, 7), ('Equalize', 0.6, 0)],
        [('Posterize', 0.4, 6), ('AutoContrast', 0.4, 7)],
        [('Solarize', 0.6, 8), ('Color', 0.6, 9)],
        [('Solarize', 0.2, 4), ('Rotate', 0.8, 9)],
        [('Rotate', 1.0, 7), ('TranslateY', 0.8, 9)],
        [('ShearX', 0.0, 0), ('Solarize', 0.8, 4)],
        [('ShearY', 0.8, 0), ('Color', 0.6, 4)],
        [('Color', 1.0, 0), ('Rotate', 0.6, 2)],
        [('Equalize', 0.8, 4), ('Equalize', 0.0, 8)],
        [('Equalize', 1.0, 4), ('AutoContrast', 0.6, 2)],
        [('ShearY', 0.4, 7), ('SolarizeAdd', 0.6, 7)],
        [('Posterize', 0.8, 2), ('Solarize', 0.6, 10)],
        [('Solarize', 0.6, 8), ('Equalize', 0.6, 1)],
        [('Color', 0.8, 6), ('Rotate', 0.4, 5)],
    ]
    return policy

  @staticmethod
  def policy_simple():
    """Same as `policy_v0`, except with custom ops removed."""

    policy = [
        [('Color', 0.4, 9), ('Equalize', 0.6, 3)],
        [('Solarize', 0.8, 3), ('Equalize', 0.4, 7)],
        [('Solarize', 0.4, 2), ('Solarize', 0.6, 2)],
        [('Color', 0.2, 0), ('Equalize', 0.8, 8)],
        [('Equalize', 0.4, 8), ('SolarizeAdd', 0.8, 3)],
        [('Color', 0.6, 1), ('Equalize', 1.0, 2)],
        [('Color', 0.4, 7), ('Equalize', 0.6, 0)],
        [('Posterize', 0.4, 6), ('AutoContrast', 0.4, 7)],
        [('Solarize', 0.6, 8), ('Color', 0.6, 9)],
        [('Equalize', 0.8, 4), ('Equalize', 0.0, 8)],
        [('Equalize', 1.0, 4), ('AutoContrast', 0.6, 2)],
        [('Posterize', 0.8, 2), ('Solarize', 0.6, 10)],
        [('Solarize', 0.6, 8), ('Equalize', 0.6, 1)],
    ]
    return policy

  @staticmethod
  def policy_test():
    """Autoaugment test policy for debugging."""
    policy = [
        [('TranslateX', 1.0, 4), ('Equalize', 1.0, 10)],
    ]
    return policy


class RandAugment(ImageAugment):
  """Applies the RandAugment policy to images.

  RandAugment is from the paper https://arxiv.org/abs/1909.13719,
  """

  def __init__(self,
               num_layers: int = 2,
               magnitude: float = 10.,
               cutout_const: float = 40.,
               translate_const: float = 100.):
    """Applies the RandAugment policy to images.

    Args:
      num_layers: Integer, the number of augmentation transformations to apply
        sequentially to an image. Represented as (N) in the paper. Usually best
        values will be in the range [1, 3].
      magnitude: Integer, shared magnitude across all augmentation operations.
        Represented as (M) in the paper. Usually best values are in the range
        [5, 10].
      cutout_const: multiplier for applying cutout.
      translate_const: multiplier for applying translation.
    """
    super(RandAugment, self).__init__()

    self.num_layers = num_layers
    self.magnitude = float(magnitude)
    self.cutout_const = float(cutout_const)
    self.translate_const = float(translate_const)
    self.available_ops = [
        'AutoContrast', 'Equalize', 'Invert', 'Rotate', 'Posterize', 'Solarize',
        'Color', 'Contrast', 'Brightness', 'Sharpness', 'ShearX', 'ShearY',
        'TranslateX', 'TranslateY', 'Cutout', 'SolarizeAdd'
    ]

  def distort(self, image: tf.Tensor) -> tf.Tensor:
    """Applies the RandAugment policy to `image`.

    Args:
      image: `Tensor` of shape [height, width, 3] representing an image.

    Returns:
      The augmented version of `image`.
    """
    input_image_type = image.dtype

    if input_image_type != tf.uint8:
      image = tf.clip_by_value(image, 0.0, 255.0)
      image = tf.cast(image, dtype=tf.uint8)

    replace_value = [128] * 3
    min_prob, max_prob = 0.2, 0.8

    for _ in range(self.num_layers):
      op_to_select = tf.random.uniform([],
                                       maxval=len(self.available_ops) + 1,
                                       dtype=tf.int32)

      branch_fns = []
      for (i, op_name) in enumerate(self.available_ops):
        prob = tf.random.uniform([],
                                 minval=min_prob,
                                 maxval=max_prob,
                                 dtype=tf.float32)
        func, _, args = _parse_policy_info(op_name, prob, self.magnitude,
                                           replace_value, self.cutout_const,
                                           self.translate_const)
        branch_fns.append((
            i,
            # pylint:disable=g-long-lambda
            lambda selected_func=func, selected_args=args: selected_func(
                image, *selected_args)))
        # pylint:enable=g-long-lambda

      image = tf.switch_case(
          branch_index=op_to_select,
          branch_fns=branch_fns,
          default=lambda: tf.identity(image))

    image = tf.cast(image, dtype=input_image_type)
    return image