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copy the climategan repo in here
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import torch
import torch.nn.functional as F
import random
import kornia
from torchvision.transforms.functional import adjust_brightness, adjust_contrast
from climategan.tutils import normalize, retrieve_sky_mask
try:
from kornia.filters import filter2d
except ImportError:
from kornia.filters import filter2D as filter2d
def increase_sky_mask(mask, p_w=0, p_h=0):
"""
Increases sky mask in width and height by a given pourcentage
(Purpose: when applying Gaussian blur, there are no artifacts of blue sky behind)
Args:
sky_mask (torch.Tensor): Sky mask of shape (H,W)
p_w (float): Percentage of mask width by which to increase
the width of the sky region
p_h (float): Percentage of mask height by which to increase
the height of the sky region
Returns:
torch.Tensor: Sky mask increased given p_w and p_h
"""
if p_h <= 0 and p_w <= 0:
return mask
n_lines = int(p_h * mask.shape[-2])
n_cols = int(p_w * mask.shape[-1])
temp_mask = mask.clone().detach()
for i in range(1, n_cols):
temp_mask[:, :, :, i::] += mask[:, :, :, 0:-i]
temp_mask[:, :, :, 0:-i] += mask[:, :, :, i::]
new_mask = temp_mask.clone().detach()
for i in range(1, n_lines):
new_mask[:, :, i::, :] += temp_mask[:, :, 0:-i, :]
new_mask[:, :, 0:-i, :] += temp_mask[:, :, i::, :]
new_mask[new_mask >= 1] = 1
return new_mask
def paste_filter(x, filter_, mask):
"""
Pastes a filter over an image given a mask
Where the mask is 1, the filter is copied as is.
Where the mask is 0, the current value is preserved.
Intermediate values will mix the two images together.
Args:
x (torch.Tensor): Input tensor, range must be [0, 255]
filer_ (torch.Tensor): Filter, range must be [0, 255]
mask (torch.Tensor): Mask, range must be [0, 1]
Returns:
torch.Tensor: New tensor with filter pasted on it
"""
assert len(x.shape) == len(filter_.shape) == len(mask.shape)
x = filter_ * mask + x * (1 - mask)
return x
def add_fire(x, seg_preds, fire_opts):
"""
Transforms input tensor given wildfires event
Args:
x (torch.Tensor): Input tensor
seg_preds (torch.Tensor): Semantic segmentation predictions for input tensor
filter_color (tuple): (r,g,b) tuple for the color of the sky
blur_radius (float): radius of the Gaussian blur that smooths
the transition between sky and foreground
Returns:
torch.Tensor: Wildfire version of input tensor
"""
wildfire_tens = normalize(x, 0, 255)
# Warm the image
wildfire_tens[:, 2, :, :] -= 20
wildfire_tens[:, 1, :, :] -= 10
wildfire_tens[:, 0, :, :] += 40
wildfire_tens.clamp_(0, 255)
wildfire_tens = wildfire_tens.to(torch.uint8)
# Darken the picture and increase contrast
wildfire_tens = adjust_contrast(wildfire_tens, contrast_factor=1.5)
wildfire_tens = adjust_brightness(wildfire_tens, brightness_factor=0.73)
sky_mask = retrieve_sky_mask(seg_preds).unsqueeze(1)
if fire_opts.get("crop_bottom_sky_mask"):
i = 2 * sky_mask.shape[-2] // 3
sky_mask[..., i:, :] = 0
sky_mask = F.interpolate(
sky_mask.to(torch.float),
(wildfire_tens.shape[-2], wildfire_tens.shape[-1]),
)
sky_mask = increase_sky_mask(sky_mask, 0.18, 0.18)
kernel_size = (fire_opts.get("kernel_size", 301), fire_opts.get("kernel_size", 301))
sigma = (fire_opts.get("kernel_sigma", 150.5), fire_opts.get("kernel_sigma", 150.5))
border_type = "reflect"
kernel = torch.unsqueeze(
kornia.filters.kernels.get_gaussian_kernel2d(kernel_size, sigma), dim=0
).to(x.device)
sky_mask = filter2d(sky_mask, kernel, border_type)
filter_ = torch.ones(wildfire_tens.shape, device=x.device)
filter_[:, 0, :, :] = 255
filter_[:, 1, :, :] = random.randint(100, 150)
filter_[:, 2, :, :] = 0
wildfire_tens = paste_tensor(wildfire_tens, filter_, sky_mask, 200)
wildfire_tens = adjust_brightness(wildfire_tens.to(torch.uint8), 0.8)
wildfire_tens = wildfire_tens.to(torch.float)
# dummy pixels to fool scaling and preserve range
wildfire_tens[:, :, 0, 0] = 255.0
wildfire_tens[:, :, -1, -1] = 0.0
return wildfire_tens
def paste_tensor(source, filter_, mask, transparency):
mask = transparency / 255.0 * mask
new = mask * filter_ + (1.0 - mask) * source
return new