| import torch
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| import numpy as np
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| from PIL import Image, ImageFilter
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| from modules.util import resample_image, set_image_shape_ceil, get_image_shape_ceil
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| from modules.upscaler import perform_upscale
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| import cv2
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| inpaint_head_model = None
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| class InpaintHead(torch.nn.Module):
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| def __init__(self, *args, **kwargs):
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| super().__init__(*args, **kwargs)
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| self.head = torch.nn.Parameter(torch.empty(size=(320, 5, 3, 3), device='cpu'))
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| def __call__(self, x):
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| x = torch.nn.functional.pad(x, (1, 1, 1, 1), "replicate")
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| return torch.nn.functional.conv2d(input=x, weight=self.head)
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| current_task = None
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| def box_blur(x, k):
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| x = Image.fromarray(x)
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| x = x.filter(ImageFilter.BoxBlur(k))
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| return np.array(x)
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| def max_filter_opencv(x, ksize=3):
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| return cv2.dilate(x, np.ones((ksize, ksize), dtype=np.int16))
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| def morphological_open(x):
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| x_int16 = np.zeros_like(x, dtype=np.int16)
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| x_int16[x > 127] = 256
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|
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| for i in range(32):
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| maxed = max_filter_opencv(x_int16, ksize=3) - 8
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| x_int16 = np.maximum(maxed, x_int16)
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| x_uint8 = np.clip(x_int16, 0, 255).astype(np.uint8)
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| return x_uint8
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| def up255(x, t=0):
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| y = np.zeros_like(x).astype(np.uint8)
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| y[x > t] = 255
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| return y
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| def imsave(x, path):
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| x = Image.fromarray(x)
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| x.save(path)
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| def regulate_abcd(x, a, b, c, d):
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| H, W = x.shape[:2]
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| if a < 0:
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| a = 0
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| if a > H:
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| a = H
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| if b < 0:
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| b = 0
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| if b > H:
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| b = H
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| if c < 0:
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| c = 0
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| if c > W:
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| c = W
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| if d < 0:
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| d = 0
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| if d > W:
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| d = W
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| return int(a), int(b), int(c), int(d)
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| def compute_initial_abcd(x):
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| indices = np.where(x)
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| a = np.min(indices[0])
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| b = np.max(indices[0])
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| c = np.min(indices[1])
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| d = np.max(indices[1])
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| abp = (b + a) // 2
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| abm = (b - a) // 2
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| cdp = (d + c) // 2
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| cdm = (d - c) // 2
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| l = int(max(abm, cdm) * 1.15)
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| a = abp - l
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| b = abp + l + 1
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| c = cdp - l
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| d = cdp + l + 1
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| a, b, c, d = regulate_abcd(x, a, b, c, d)
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| return a, b, c, d
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| def solve_abcd(x, a, b, c, d, k):
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| k = float(k)
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| assert 0.0 <= k <= 1.0
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| H, W = x.shape[:2]
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| if k == 1.0:
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| return 0, H, 0, W
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| while True:
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| if b - a >= H * k and d - c >= W * k:
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| break
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| add_h = (b - a) < (d - c)
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| add_w = not add_h
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| if b - a == H:
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| add_w = True
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| if d - c == W:
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| add_h = True
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| if add_h:
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| a -= 1
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| b += 1
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| if add_w:
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| c -= 1
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| d += 1
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| a, b, c, d = regulate_abcd(x, a, b, c, d)
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| return a, b, c, d
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| def fooocus_fill(image, mask):
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| current_image = image.copy()
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| raw_image = image.copy()
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| area = np.where(mask < 127)
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| store = raw_image[area]
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| for k, repeats in [(512, 2), (256, 2), (128, 4), (64, 4), (33, 8), (15, 8), (5, 16), (3, 16)]:
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| for _ in range(repeats):
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| current_image = box_blur(current_image, k)
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| current_image[area] = store
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| return current_image
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|
|
| class InpaintWorker:
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| def __init__(self, image, mask, use_fill=True, k=0.618):
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| a, b, c, d = compute_initial_abcd(mask > 0)
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| a, b, c, d = solve_abcd(mask, a, b, c, d, k=k)
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| self.interested_area = (a, b, c, d)
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| self.interested_mask = mask[a:b, c:d]
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| self.interested_image = image[a:b, c:d]
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| if get_image_shape_ceil(self.interested_image) < 1024:
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| self.interested_image = perform_upscale(self.interested_image)
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| self.interested_image = set_image_shape_ceil(self.interested_image, 1024)
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| self.interested_fill = self.interested_image.copy()
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| H, W, C = self.interested_image.shape
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| self.interested_mask = up255(resample_image(self.interested_mask, W, H), t=127)
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| if use_fill:
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| self.interested_fill = fooocus_fill(self.interested_image, self.interested_mask)
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| self.mask = morphological_open(mask)
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| self.image = image
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| self.latent = None
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| self.latent_after_swap = None
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| self.swapped = False
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| self.latent_mask = None
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| self.inpaint_head_feature = None
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| return
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|
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| def load_latent(self, latent_fill, latent_mask, latent_swap=None):
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| self.latent = latent_fill
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| self.latent_mask = latent_mask
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| self.latent_after_swap = latent_swap
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| return
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|
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| def patch(self, inpaint_head_model_path, inpaint_latent, inpaint_latent_mask, model):
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| global inpaint_head_model
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| if inpaint_head_model is None:
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| inpaint_head_model = InpaintHead()
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| sd = torch.load(inpaint_head_model_path, map_location='cpu')
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| inpaint_head_model.load_state_dict(sd)
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|
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| feed = torch.cat([
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| inpaint_latent_mask,
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| model.model.process_latent_in(inpaint_latent)
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| ], dim=1)
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| inpaint_head_model.to(device=feed.device, dtype=feed.dtype)
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| inpaint_head_feature = inpaint_head_model(feed)
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|
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| def input_block_patch(h, transformer_options):
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| if transformer_options["block"][1] == 0:
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| h = h + inpaint_head_feature.to(h)
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| return h
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| m = model.clone()
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| m.set_model_input_block_patch(input_block_patch)
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| return m
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|
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| def swap(self):
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| if self.swapped:
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| return
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|
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| if self.latent is None:
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| return
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|
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| if self.latent_after_swap is None:
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| return
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|
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| self.latent, self.latent_after_swap = self.latent_after_swap, self.latent
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| self.swapped = True
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| return
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|
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| def unswap(self):
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| if not self.swapped:
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| return
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|
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| if self.latent is None:
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| return
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|
|
| if self.latent_after_swap is None:
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| return
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|
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| self.latent, self.latent_after_swap = self.latent_after_swap, self.latent
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| self.swapped = False
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| return
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|
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| def color_correction(self, img):
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| fg = img.astype(np.float32)
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| bg = self.image.copy().astype(np.float32)
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| w = self.mask[:, :, None].astype(np.float32) / 255.0
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| y = fg * w + bg * (1 - w)
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| return y.clip(0, 255).astype(np.uint8)
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|
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| def post_process(self, img):
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| a, b, c, d = self.interested_area
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| content = resample_image(img, d - c, b - a)
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| result = self.image.copy()
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| result[a:b, c:d] = content
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| result = self.color_correction(result)
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| return result
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|
|
| def visualize_mask_processing(self):
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| return [self.interested_fill, self.interested_mask, self.interested_image]
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|