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video_transforms.py
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video_transforms.py
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#!/usr/bin/env python3
import math
import numpy as np
import random
import torch
import torchvision.transforms.functional as F
from PIL import Image
from torchvision import transforms
from rand_augment import rand_augment_transform
from random_erasing import RandomErasing
import numbers
import PIL
import torchvision
import functional as FF
_pil_interpolation_to_str = {
Image.NEAREST: "PIL.Image.NEAREST",
Image.BILINEAR: "PIL.Image.BILINEAR",
Image.BICUBIC: "PIL.Image.BICUBIC",
Image.LANCZOS: "PIL.Image.LANCZOS",
Image.HAMMING: "PIL.Image.HAMMING",
Image.BOX: "PIL.Image.BOX",
}
_RANDOM_INTERPOLATION = (Image.BILINEAR, Image.BICUBIC)
def _pil_interp(method):
if method == "bicubic":
return Image.BICUBIC
elif method == "lanczos":
return Image.LANCZOS
elif method == "hamming":
return Image.HAMMING
else:
return Image.BILINEAR
def random_short_side_scale_jitter(
images, min_size, max_size, boxes=None, inverse_uniform_sampling=False
):
"""
Perform a spatial short scale jittering on the given images and
corresponding boxes.
Args:
images (tensor): images to perform scale jitter. Dimension is
`num frames` x `channel` x `height` x `width`.
min_size (int): the minimal size to scale the frames.
max_size (int): the maximal size to scale the frames.
boxes (ndarray): optional. Corresponding boxes to images.
Dimension is `num boxes` x 4.
inverse_uniform_sampling (bool): if True, sample uniformly in
[1 / max_scale, 1 / min_scale] and take a reciprocal to get the
scale. If False, take a uniform sample from [min_scale, max_scale].
Returns:
(tensor): the scaled images with dimension of
`num frames` x `channel` x `new height` x `new width`.
(ndarray or None): the scaled boxes with dimension of
`num boxes` x 4.
"""
if inverse_uniform_sampling:
size = int(
round(1.0 / np.random.uniform(1.0 / max_size, 1.0 / min_size))
)
else:
size = int(round(np.random.uniform(min_size, max_size)))
height = images.shape[2]
width = images.shape[3]
if (width <= height and width == size) or (
height <= width and height == size
):
return images, boxes
new_width = size
new_height = size
if width < height:
new_height = int(math.floor((float(height) / width) * size))
if boxes is not None:
boxes = boxes * float(new_height) / height
else:
new_width = int(math.floor((float(width) / height) * size))
if boxes is not None:
boxes = boxes * float(new_width) / width
return (
torch.nn.functional.interpolate(
images,
size=(new_height, new_width),
mode="bilinear",
align_corners=False,
),
boxes,
)
def crop_boxes(boxes, x_offset, y_offset):
"""
Peform crop on the bounding boxes given the offsets.
Args:
boxes (ndarray or None): bounding boxes to peform crop. The dimension
is `num boxes` x 4.
x_offset (int): cropping offset in the x axis.
y_offset (int): cropping offset in the y axis.
Returns:
cropped_boxes (ndarray or None): the cropped boxes with dimension of
`num boxes` x 4.
"""
cropped_boxes = boxes.copy()
cropped_boxes[:, [0, 2]] = boxes[:, [0, 2]] - x_offset
cropped_boxes[:, [1, 3]] = boxes[:, [1, 3]] - y_offset
return cropped_boxes
def random_crop(images, size, boxes=None):
"""
Perform random spatial crop on the given images and corresponding boxes.
Args:
images (tensor): images to perform random crop. The dimension is
`num frames` x `channel` x `height` x `width`.
size (int): the size of height and width to crop on the image.
boxes (ndarray or None): optional. Corresponding boxes to images.
Dimension is `num boxes` x 4.
Returns:
cropped (tensor): cropped images with dimension of
`num frames` x `channel` x `size` x `size`.
cropped_boxes (ndarray or None): the cropped boxes with dimension of
`num boxes` x 4.
"""
if images.shape[2] == size and images.shape[3] == size:
return images
height = images.shape[2]
width = images.shape[3]
y_offset = 0
if height > size:
y_offset = int(np.random.randint(0, height - size))
x_offset = 0
if width > size:
x_offset = int(np.random.randint(0, width - size))
cropped = images[
:, :, y_offset : y_offset + size, x_offset : x_offset + size
]
cropped_boxes = (
crop_boxes(boxes, x_offset, y_offset) if boxes is not None else None
)
return cropped, cropped_boxes
def horizontal_flip(prob, images, boxes=None):
"""
Perform horizontal flip on the given images and corresponding boxes.
Args:
prob (float): probility to flip the images.
images (tensor): images to perform horizontal flip, the dimension is
`num frames` x `channel` x `height` x `width`.
boxes (ndarray or None): optional. Corresponding boxes to images.
Dimension is `num boxes` x 4.
Returns:
images (tensor): images with dimension of
`num frames` x `channel` x `height` x `width`.
flipped_boxes (ndarray or None): the flipped boxes with dimension of
`num boxes` x 4.
"""
if boxes is None:
flipped_boxes = None
else:
flipped_boxes = boxes.copy()
if np.random.uniform() < prob:
images = images.flip((-1))
if len(images.shape) == 3:
width = images.shape[2]
elif len(images.shape) == 4:
width = images.shape[3]
else:
raise NotImplementedError("Dimension does not supported")
if boxes is not None:
flipped_boxes[:, [0, 2]] = width - boxes[:, [2, 0]] - 1
return images, flipped_boxes
def uniform_crop(images, size, spatial_idx, boxes=None, scale_size=None):
"""
Perform uniform spatial sampling on the images and corresponding boxes.
Args:
images (tensor): images to perform uniform crop. The dimension is
`num frames` x `channel` x `height` x `width`.
size (int): size of height and weight to crop the images.
spatial_idx (int): 0, 1, or 2 for left, center, and right crop if width
is larger than height. Or 0, 1, or 2 for top, center, and bottom
crop if height is larger than width.
boxes (ndarray or None): optional. Corresponding boxes to images.
Dimension is `num boxes` x 4.
scale_size (int): optinal. If not None, resize the images to scale_size before
performing any crop.
Returns:
cropped (tensor): images with dimension of
`num frames` x `channel` x `size` x `size`.
cropped_boxes (ndarray or None): the cropped boxes with dimension of
`num boxes` x 4.
"""
assert spatial_idx in [0, 1, 2]
ndim = len(images.shape)
if ndim == 3:
images = images.unsqueeze(0)
height = images.shape[2]
width = images.shape[3]
if scale_size is not None:
if width <= height:
width, height = scale_size, int(height / width * scale_size)
else:
width, height = int(width / height * scale_size), scale_size
images = torch.nn.functional.interpolate(
images,
size=(height, width),
mode="bilinear",
align_corners=False,
)
y_offset = int(math.ceil((height - size) / 2))
x_offset = int(math.ceil((width - size) / 2))
if height > width:
if spatial_idx == 0:
y_offset = 0
elif spatial_idx == 2:
y_offset = height - size
else:
if spatial_idx == 0:
x_offset = 0
elif spatial_idx == 2:
x_offset = width - size
cropped = images[
:, :, y_offset : y_offset + size, x_offset : x_offset + size
]
cropped_boxes = (
crop_boxes(boxes, x_offset, y_offset) if boxes is not None else None
)
if ndim == 3:
cropped = cropped.squeeze(0)
return cropped, cropped_boxes
def clip_boxes_to_image(boxes, height, width):
"""
Clip an array of boxes to an image with the given height and width.
Args:
boxes (ndarray): bounding boxes to perform clipping.
Dimension is `num boxes` x 4.
height (int): given image height.
width (int): given image width.
Returns:
clipped_boxes (ndarray): the clipped boxes with dimension of
`num boxes` x 4.
"""
clipped_boxes = boxes.copy()
clipped_boxes[:, [0, 2]] = np.minimum(
width - 1.0, np.maximum(0.0, boxes[:, [0, 2]])
)
clipped_boxes[:, [1, 3]] = np.minimum(
height - 1.0, np.maximum(0.0, boxes[:, [1, 3]])
)
return clipped_boxes
def blend(images1, images2, alpha):
"""
Blend two images with a given weight alpha.
Args:
images1 (tensor): the first images to be blended, the dimension is
`num frames` x `channel` x `height` x `width`.
images2 (tensor): the second images to be blended, the dimension is
`num frames` x `channel` x `height` x `width`.
alpha (float): the blending weight.
Returns:
(tensor): blended images, the dimension is
`num frames` x `channel` x `height` x `width`.
"""
return images1 * alpha + images2 * (1 - alpha)
def grayscale(images):
"""
Get the grayscale for the input images. The channels of images should be
in order BGR.
Args:
images (tensor): the input images for getting grayscale. Dimension is
`num frames` x `channel` x `height` x `width`.
Returns:
img_gray (tensor): blended images, the dimension is
`num frames` x `channel` x `height` x `width`.
"""
# R -> 0.299, G -> 0.587, B -> 0.114.
img_gray = torch.tensor(images)
gray_channel = (
0.299 * images[:, 2] + 0.587 * images[:, 1] + 0.114 * images[:, 0]
)
img_gray[:, 0] = gray_channel
img_gray[:, 1] = gray_channel
img_gray[:, 2] = gray_channel
return img_gray
def color_jitter(images, img_brightness=0, img_contrast=0, img_saturation=0):
"""
Perfrom a color jittering on the input images. The channels of images
should be in order BGR.
Args:
images (tensor): images to perform color jitter. Dimension is
`num frames` x `channel` x `height` x `width`.
img_brightness (float): jitter ratio for brightness.
img_contrast (float): jitter ratio for contrast.
img_saturation (float): jitter ratio for saturation.
Returns:
images (tensor): the jittered images, the dimension is
`num frames` x `channel` x `height` x `width`.
"""
jitter = []
if img_brightness != 0:
jitter.append("brightness")
if img_contrast != 0:
jitter.append("contrast")
if img_saturation != 0:
jitter.append("saturation")
if len(jitter) > 0:
order = np.random.permutation(np.arange(len(jitter)))
for idx in range(0, len(jitter)):
if jitter[order[idx]] == "brightness":
images = brightness_jitter(img_brightness, images)
elif jitter[order[idx]] == "contrast":
images = contrast_jitter(img_contrast, images)
elif jitter[order[idx]] == "saturation":
images = saturation_jitter(img_saturation, images)
return images
def brightness_jitter(var, images):
"""
Perfrom brightness jittering on the input images. The channels of images
should be in order BGR.
Args:
var (float): jitter ratio for brightness.
images (tensor): images to perform color jitter. Dimension is
`num frames` x `channel` x `height` x `width`.
Returns:
images (tensor): the jittered images, the dimension is
`num frames` x `channel` x `height` x `width`.
"""
alpha = 1.0 + np.random.uniform(-var, var)
img_bright = torch.zeros(images.shape)
images = blend(images, img_bright, alpha)
return images
def contrast_jitter(var, images):
"""
Perfrom contrast jittering on the input images. The channels of images
should be in order BGR.
Args:
var (float): jitter ratio for contrast.
images (tensor): images to perform color jitter. Dimension is
`num frames` x `channel` x `height` x `width`.
Returns:
images (tensor): the jittered images, the dimension is
`num frames` x `channel` x `height` x `width`.
"""
alpha = 1.0 + np.random.uniform(-var, var)
img_gray = grayscale(images)
img_gray[:] = torch.mean(img_gray, dim=(1, 2, 3), keepdim=True)
images = blend(images, img_gray, alpha)
return images
def saturation_jitter(var, images):
"""
Perfrom saturation jittering on the input images. The channels of images
should be in order BGR.
Args:
var (float): jitter ratio for saturation.
images (tensor): images to perform color jitter. Dimension is
`num frames` x `channel` x `height` x `width`.
Returns:
images (tensor): the jittered images, the dimension is
`num frames` x `channel` x `height` x `width`.
"""
alpha = 1.0 + np.random.uniform(-var, var)
img_gray = grayscale(images)
images = blend(images, img_gray, alpha)
return images
def lighting_jitter(images, alphastd, eigval, eigvec):
"""
Perform AlexNet-style PCA jitter on the given images.
Args:
images (tensor): images to perform lighting jitter. Dimension is
`num frames` x `channel` x `height` x `width`.
alphastd (float): jitter ratio for PCA jitter.
eigval (list): eigenvalues for PCA jitter.
eigvec (list[list]): eigenvectors for PCA jitter.
Returns:
out_images (tensor): the jittered images, the dimension is
`num frames` x `channel` x `height` x `width`.
"""
if alphastd == 0:
return images
# generate alpha1, alpha2, alpha3.
alpha = np.random.normal(0, alphastd, size=(1, 3))
eig_vec = np.array(eigvec)
eig_val = np.reshape(eigval, (1, 3))
rgb = np.sum(
eig_vec * np.repeat(alpha, 3, axis=0) * np.repeat(eig_val, 3, axis=0),
axis=1,
)
out_images = torch.zeros_like(images)
if len(images.shape) == 3:
# C H W
channel_dim = 0
elif len(images.shape) == 4:
# T C H W
channel_dim = 1
else:
raise NotImplementedError(f"Unsupported dimension {len(images.shape)}")
for idx in range(images.shape[channel_dim]):
# C H W
if len(images.shape) == 3:
out_images[idx] = images[idx] + rgb[2 - idx]
# T C H W
elif len(images.shape) == 4:
out_images[:, idx] = images[:, idx] + rgb[2 - idx]
else:
raise NotImplementedError(
f"Unsupported dimension {len(images.shape)}"
)
return out_images
def color_normalization(images, mean, stddev):
"""
Perform color nomration on the given images.
Args:
images (tensor): images to perform color normalization. Dimension is
`num frames` x `channel` x `height` x `width`.
mean (list): mean values for normalization.
stddev (list): standard deviations for normalization.
Returns:
out_images (tensor): the noramlized images, the dimension is
`num frames` x `channel` x `height` x `width`.
"""
if len(images.shape) == 3:
assert (
len(mean) == images.shape[0]
), "channel mean not computed properly"
assert (
len(stddev) == images.shape[0]
), "channel stddev not computed properly"
elif len(images.shape) == 4:
assert (
len(mean) == images.shape[1]
), "channel mean not computed properly"
assert (
len(stddev) == images.shape[1]
), "channel stddev not computed properly"
else:
raise NotImplementedError(f"Unsupported dimension {len(images.shape)}")
out_images = torch.zeros_like(images)
for idx in range(len(mean)):
# C H W
if len(images.shape) == 3:
out_images[idx] = (images[idx] - mean[idx]) / stddev[idx]
elif len(images.shape) == 4:
out_images[:, idx] = (images[:, idx] - mean[idx]) / stddev[idx]
else:
raise NotImplementedError(
f"Unsupported dimension {len(images.shape)}"
)
return out_images
def _get_param_spatial_crop(
scale, ratio, height, width, num_repeat=10, log_scale=True, switch_hw=False
):
"""
Given scale, ratio, height and width, return sampled coordinates of the videos.
"""
for _ in range(num_repeat):
area = height * width
target_area = random.uniform(*scale) * area
if log_scale:
log_ratio = (math.log(ratio[0]), math.log(ratio[1]))
aspect_ratio = math.exp(random.uniform(*log_ratio))
else:
aspect_ratio = random.uniform(*ratio)
w = int(round(math.sqrt(target_area * aspect_ratio)))
h = int(round(math.sqrt(target_area / aspect_ratio)))
if np.random.uniform() < 0.5 and switch_hw:
w, h = h, w
if 0 < w <= width and 0 < h <= height:
i = random.randint(0, height - h)
j = random.randint(0, width - w)
return i, j, h, w
# Fallback to central crop
in_ratio = float(width) / float(height)
if in_ratio < min(ratio):
w = width
h = int(round(w / min(ratio)))
elif in_ratio > max(ratio):
h = height
w = int(round(h * max(ratio)))
else: # whole image
w = width
h = height
i = (height - h) // 2
j = (width - w) // 2
return i, j, h, w
def random_resized_crop(
images,
target_height,
target_width,
scale=(0.8, 1.0),
ratio=(3.0 / 4.0, 4.0 / 3.0),
):
"""
Crop the given images to random size and aspect ratio. A crop of random
size (default: of 0.08 to 1.0) of the original size and a random aspect
ratio (default: of 3/4 to 4/3) of the original aspect ratio is made. This
crop is finally resized to given size. This is popularly used to train the
Inception networks.
Args:
images: Images to perform resizing and cropping.
target_height: Desired height after cropping.
target_width: Desired width after cropping.
scale: Scale range of Inception-style area based random resizing.
ratio: Aspect ratio range of Inception-style area based random resizing.
"""
height = images.shape[2]
width = images.shape[3]
i, j, h, w = _get_param_spatial_crop(scale, ratio, height, width)
cropped = images[:, :, i : i + h, j : j + w]
return torch.nn.functional.interpolate(
cropped,
size=(target_height, target_width),
mode="bilinear",
align_corners=False,
)
def random_resized_crop_with_shift(
images,
target_height,
target_width,
scale=(0.8, 1.0),
ratio=(3.0 / 4.0, 4.0 / 3.0),
):
"""
This is similar to random_resized_crop. However, it samples two different
boxes (for cropping) for the first and last frame. It then linearly
interpolates the two boxes for other frames.
Args:
images: Images to perform resizing and cropping.
target_height: Desired height after cropping.
target_width: Desired width after cropping.
scale: Scale range of Inception-style area based random resizing.
ratio: Aspect ratio range of Inception-style area based random resizing.
"""
t = images.shape[1]
height = images.shape[2]
width = images.shape[3]
i, j, h, w = _get_param_spatial_crop(scale, ratio, height, width)
i_, j_, h_, w_ = _get_param_spatial_crop(scale, ratio, height, width)
i_s = [int(i) for i in torch.linspace(i, i_, steps=t).tolist()]
j_s = [int(i) for i in torch.linspace(j, j_, steps=t).tolist()]
h_s = [int(i) for i in torch.linspace(h, h_, steps=t).tolist()]
w_s = [int(i) for i in torch.linspace(w, w_, steps=t).tolist()]
out = torch.zeros((3, t, target_height, target_width))
for ind in range(t):
out[:, ind : ind + 1, :, :] = torch.nn.functional.interpolate(
images[
:,
ind : ind + 1,
i_s[ind] : i_s[ind] + h_s[ind],
j_s[ind] : j_s[ind] + w_s[ind],
],
size=(target_height, target_width),
mode="bilinear",
align_corners=False,
)
return out
def create_random_augment(
input_size,
auto_augment=None,
interpolation="bilinear",
):
"""
Get video randaug transform.
Args:
input_size: The size of the input video in tuple.
auto_augment: Parameters for randaug. An example:
"rand-m7-n4-mstd0.5-inc1" (m is the magnitude and n is the number
of operations to apply).
interpolation: Interpolation method.
"""
if isinstance(input_size, tuple):
img_size = input_size[-2:]
else:
img_size = input_size
if auto_augment:
assert isinstance(auto_augment, str)
if isinstance(img_size, tuple):
img_size_min = min(img_size)
else:
img_size_min = img_size
aa_params = {"translate_const": int(img_size_min * 0.45)}
if interpolation and interpolation != "random":
aa_params["interpolation"] = _pil_interp(interpolation)
if auto_augment.startswith("rand"):
return transforms.Compose(
[rand_augment_transform(auto_augment, aa_params)]
)
raise NotImplementedError
def random_sized_crop_img(
im,
size,
jitter_scale=(0.08, 1.0),
jitter_aspect=(3.0 / 4.0, 4.0 / 3.0),
max_iter=10,
):
"""
Performs Inception-style cropping (used for training).
"""
assert (
len(im.shape) == 3
), "Currently only support image for random_sized_crop"
h, w = im.shape[1:3]
i, j, h, w = _get_param_spatial_crop(
scale=jitter_scale,
ratio=jitter_aspect,
height=h,
width=w,
num_repeat=max_iter,
log_scale=False,
switch_hw=True,
)
cropped = im[:, i : i + h, j : j + w]
return torch.nn.functional.interpolate(
cropped.unsqueeze(0),
size=(size, size),
mode="bilinear",
align_corners=False,
).squeeze(0)
# The following code are modified based on timm lib, we will replace the following
# contents with dependency from PyTorchVideo.
# https://github.com/facebookresearch/pytorchvideo
class RandomResizedCropAndInterpolation:
"""Crop the given PIL Image to random size and aspect ratio with random interpolation.
A crop of random size (default: of 0.08 to 1.0) of the original size and a random
aspect ratio (default: of 3/4 to 4/3) of the original aspect ratio is made. This crop
is finally resized to given size.
This is popularly used to train the Inception networks.
Args:
size: expected output size of each edge
scale: range of size of the origin size cropped
ratio: range of aspect ratio of the origin aspect ratio cropped
interpolation: Default: PIL.Image.BILINEAR
"""
def __init__(
self,
size,
scale=(0.08, 1.0),
ratio=(3.0 / 4.0, 4.0 / 3.0),
interpolation="bilinear",
):
if isinstance(size, tuple):
self.size = size
else:
self.size = (size, size)
if (scale[0] > scale[1]) or (ratio[0] > ratio[1]):
print("range should be of kind (min, max)")
if interpolation == "random":
self.interpolation = _RANDOM_INTERPOLATION
else:
self.interpolation = _pil_interp(interpolation)
self.scale = scale
self.ratio = ratio
@staticmethod
def get_params(img, scale, ratio):
"""Get parameters for ``crop`` for a random sized crop.
Args:
img (PIL Image): Image to be cropped.
scale (tuple): range of size of the origin size cropped
ratio (tuple): range of aspect ratio of the origin aspect ratio cropped
Returns:
tuple: params (i, j, h, w) to be passed to ``crop`` for a random
sized crop.
"""
area = img.size[0] * img.size[1]
for _ in range(10):
target_area = random.uniform(*scale) * area
log_ratio = (math.log(ratio[0]), math.log(ratio[1]))
aspect_ratio = math.exp(random.uniform(*log_ratio))
w = int(round(math.sqrt(target_area * aspect_ratio)))
h = int(round(math.sqrt(target_area / aspect_ratio)))
if w <= img.size[0] and h <= img.size[1]:
i = random.randint(0, img.size[1] - h)
j = random.randint(0, img.size[0] - w)
return i, j, h, w
# Fallback to central crop
in_ratio = img.size[0] / img.size[1]
if in_ratio < min(ratio):
w = img.size[0]
h = int(round(w / min(ratio)))
elif in_ratio > max(ratio):
h = img.size[1]
w = int(round(h * max(ratio)))
else: # whole image
w = img.size[0]
h = img.size[1]
i = (img.size[1] - h) // 2
j = (img.size[0] - w) // 2
return i, j, h, w
def __call__(self, img):
"""
Args:
img (PIL Image): Image to be cropped and resized.
Returns:
PIL Image: Randomly cropped and resized image.
"""
i, j, h, w = self.get_params(img, self.scale, self.ratio)
if isinstance(self.interpolation, (tuple, list)):
interpolation = random.choice(self.interpolation)
else:
interpolation = self.interpolation
return F.resized_crop(img, i, j, h, w, self.size, interpolation)
def __repr__(self):
if isinstance(self.interpolation, (tuple, list)):
interpolate_str = " ".join(
[_pil_interpolation_to_str[x] for x in self.interpolation]
)
else:
interpolate_str = _pil_interpolation_to_str[self.interpolation]
format_string = self.__class__.__name__ + "(size={0}".format(self.size)
format_string += ", scale={0}".format(
tuple(round(s, 4) for s in self.scale)
)
format_string += ", ratio={0}".format(
tuple(round(r, 4) for r in self.ratio)
)
format_string += ", interpolation={0})".format(interpolate_str)
return format_string
def transforms_imagenet_train(
img_size=224,
scale=None,
ratio=None,
hflip=0.5,
vflip=0.0,
color_jitter=0.4,
auto_augment=None,
interpolation="random",
use_prefetcher=False,
mean=(0.485, 0.456, 0.406),
std=(0.229, 0.224, 0.225),
re_prob=0.0,
re_mode="const",
re_count=1,
re_num_splits=0,
separate=False,
):
"""
If separate==True, the transforms are returned as a tuple of 3 separate transforms
for use in a mixing dataset that passes
* all data through the first (primary) transform, called the 'clean' data
* a portion of the data through the secondary transform
* normalizes and converts the branches above with the third, final transform
"""
if isinstance(img_size, tuple):
img_size = img_size[-2:]
else:
img_size = img_size
scale = tuple(scale or (0.08, 1.0)) # default imagenet scale range
ratio = tuple(
ratio or (3.0 / 4.0, 4.0 / 3.0)
) # default imagenet ratio range
primary_tfl = [
RandomResizedCropAndInterpolation(
img_size, scale=scale, ratio=ratio, interpolation=interpolation
)
]
if hflip > 0.0:
primary_tfl += [transforms.RandomHorizontalFlip(p=hflip)]
if vflip > 0.0:
primary_tfl += [transforms.RandomVerticalFlip(p=vflip)]
secondary_tfl = []
if auto_augment:
assert isinstance(auto_augment, str)
if isinstance(img_size, tuple):
img_size_min = min(img_size)
else:
img_size_min = img_size
aa_params = dict(
translate_const=int(img_size_min * 0.45),
img_mean=tuple([min(255, round(255 * x)) for x in mean]),
)
if interpolation and interpolation != "random":
aa_params["interpolation"] = _pil_interp(interpolation)
if auto_augment.startswith("rand"):
secondary_tfl += [rand_augment_transform(auto_augment, aa_params)]
elif auto_augment.startswith("augmix"):
raise NotImplementedError("Augmix not implemented")
else:
raise NotImplementedError("Auto aug not implemented")
elif color_jitter is not None:
# color jitter is enabled when not using AA
if isinstance(color_jitter, (list, tuple)):
# color jitter should be a 3-tuple/list if spec brightness/contrast/saturation
# or 4 if also augmenting hue
assert len(color_jitter) in (3, 4)
else:
# if it's a scalar, duplicate for brightness, contrast, and saturation, no hue
color_jitter = (float(color_jitter),) * 3
secondary_tfl += [transforms.ColorJitter(*color_jitter)]
final_tfl = []
final_tfl += [
transforms.ToTensor(),
transforms.Normalize(mean=torch.tensor(mean), std=torch.tensor(std)),
]
if re_prob > 0.0:
final_tfl.append(
RandomErasing(
re_prob,
mode=re_mode,
max_count=re_count,
num_splits=re_num_splits,
device="cpu",
cube=False,
)
)
if separate:
return (
transforms.Compose(primary_tfl),
transforms.Compose(secondary_tfl),
transforms.Compose(final_tfl),
)
else:
return transforms.Compose(primary_tfl + secondary_tfl + final_tfl)
############################################################################################################
############################################################################################################
class Compose(object):
"""Composes several transforms
Args:
transforms (list of ``Transform`` objects): list of transforms
to compose
"""
def __init__(self, transforms):
self.transforms = transforms
def __call__(self, clip):
for t in self.transforms:
clip = t(clip)
return clip
class RandomHorizontalFlip(object):
"""Horizontally flip the list of given images randomly
with a probability 0.5
"""
def __call__(self, clip):
"""
Args:
img (PIL.Image or numpy.ndarray): List of images to be cropped
in format (h, w, c) in numpy.ndarray
Returns:
PIL.Image or numpy.ndarray: Randomly flipped clip
"""
if random.random() < 0.5:
if isinstance(clip[0], np.ndarray):
return [np.fliplr(img) for img in clip]
elif isinstance(clip[0], PIL.Image.Image):
return [
img.transpose(PIL.Image.FLIP_LEFT_RIGHT) for img in clip
]
else:
raise TypeError('Expected numpy.ndarray or PIL.Image' +
' but got list of {0}'.format(type(clip[0])))
return clip
class RandomResize(object):
"""Resizes a list of (H x W x C) numpy.ndarray to the final size
The larger the original image is, the more times it takes to
interpolate
Args:
interpolation (str): Can be one of 'nearest', 'bilinear'
defaults to nearest
size (tuple): (widht, height)
"""
def __init__(self, ratio=(3. / 4., 4. / 3.), interpolation='nearest'):
self.ratio = ratio
self.interpolation = interpolation
def __call__(self, clip):
scaling_factor = random.uniform(self.ratio[0], self.ratio[1])
if isinstance(clip[0], np.ndarray):
im_h, im_w, im_c = clip[0].shape
elif isinstance(clip[0], PIL.Image.Image):
im_w, im_h = clip[0].size
new_w = int(im_w * scaling_factor)
new_h = int(im_h * scaling_factor)
new_size = (new_w, new_h)
resized = FF.resize_clip(
clip, new_size, interpolation=self.interpolation)
return resized
class Resize(object):
"""Resizes a list of (H x W x C) numpy.ndarray to the final size
The larger the original image is, the more times it takes to
interpolate
Args:
interpolation (str): Can be one of 'nearest', 'bilinear'
defaults to nearest
size (tuple): (widht, height)
"""
def __init__(self, size, interpolation='nearest'):
self.size = size
self.interpolation = interpolation
def __call__(self, clip):
resized = FF.resize_clip(
clip, self.size, interpolation=self.interpolation)
return resized
class RandomCrop(object):
"""Extract random crop at the same location for a list of images
Args:
size (sequence or int): Desired output size for the
crop in format (h, w)
"""