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from __future__ import print_function |
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import os |
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from PIL import Image |
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import numpy as np |
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import torch |
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print('?') |
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def tensor2im(image_tensor, imtype=np.uint8, normalize=True): |
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if isinstance(image_tensor, list): |
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image_numpy = [] |
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for i in range(len(image_tensor)): |
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image_numpy.append(tensor2im(image_tensor[i], imtype, normalize)) |
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return image_numpy |
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image_numpy = image_tensor.cpu().float().numpy() |
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image_numpy = (image_numpy + 1) / 2.0 |
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image_numpy = np.clip(image_numpy, 0, 1) |
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if image_numpy.shape[2] == 1 or image_numpy.shape[2] > 3: |
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image_numpy = image_numpy[:, :, 0] |
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return image_numpy |
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def tensor2label(label_tensor, n_label, imtype=np.uint8): |
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if n_label == 0: |
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return tensor2im(label_tensor, imtype) |
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label_tensor = label_tensor.cpu().float() |
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if label_tensor.size()[0] > 1: |
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label_tensor = label_tensor.max(0, keepdim=True)[1] |
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label_tensor = Colorize(n_label)(label_tensor) |
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label_numpy = label_tensor.numpy() |
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label_numpy = label_numpy / 255.0 |
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return label_numpy |
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def save_image(image_numpy, image_path, grayscale=False): |
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image_pil = Image.fromarray(image_numpy) |
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image_pil.save(image_path) |
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def save_tensor_as_image(image_tensor, image_path, grayscale=False): |
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image_numpy = tensor_to_image(image_tensor, grayscale) |
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save_image(image_numpy, image_path, grayscale) |
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def tensor_to_image(img_tensor, grayscale=False): |
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if grayscale: |
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tensor = img_tensor.cpu().clamp(0, 255) |
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else: |
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tensor = (img_tensor.clone() + 1) * 0.5 * 255 |
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tensor = tensor.cpu().clamp(0, 255) |
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try: |
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array = tensor.numpy().astype('uint8') |
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except: |
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array = tensor.detach().numpy().astype('uint8') |
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if array.shape[0] == 1: |
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array = array.squeeze(0) |
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elif array.shape[0] == 3: |
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array = array.swapaxes(0, 1).swapaxes(1, 2) |
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return array |
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def mkdirs(paths): |
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if isinstance(paths, list) and not isinstance(paths, str): |
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for path in paths: |
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mkdir(path) |
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else: |
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mkdir(paths) |
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def mkdir(path): |
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if not os.path.exists(path): |
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os.makedirs(path) |
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def uint82bin(n, count=8): |
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"""returns the binary of integer n, count refers to amount of bits""" |
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return ''.join([str((n >> y) & 1) for y in range(count-1, -1, -1)]) |
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def labelcolormap(N): |
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if N == 35: |
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cmap = np.array([(0, 0, 0), (0, 0, 0), (0, 0, 0), (0, 0, 0), (0, 0, 0), (111, 74, 0), (81, 0, 81), |
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(128, 64, 128), (244, 35, 232), (250, 170, 160), (230, |
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150, 140), (70, 70, 70), (102, 102, 156), (190, 153, 153), |
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(180, 165, 180), (150, 100, 100), (150, 120, 90), (153, |
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153, 153), (153, 153, 153), (250, 170, 30), (220, 220, 0), |
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(107, 142, 35), (152, 251, 152), (70, 130, 180), (220, |
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20, 60), (255, 0, 0), (0, 0, 142), (0, 0, 70), |
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(0, 60, 100), (0, 0, 90), (0, 0, 110), (0, 80, 100), (0, 0, 230), (119, 11, 32), (0, 0, 142)], |
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dtype=np.uint8) |
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else: |
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cmap = np.zeros((N, 3), dtype=np.uint8) |
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for i in range(N): |
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r, g, b = 0, 0, 0 |
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id = i |
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for j in range(7): |
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str_id = uint82bin(id) |
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r = r ^ (np.uint8(str_id[-1]) << (7-j)) |
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g = g ^ (np.uint8(str_id[-2]) << (7-j)) |
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b = b ^ (np.uint8(str_id[-3]) << (7-j)) |
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id = id >> 3 |
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cmap[i, 0] = r |
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cmap[i, 1] = g |
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cmap[i, 2] = b |
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return cmap |
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class Colorize(object): |
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def __init__(self, n=35): |
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self.cmap = labelcolormap(n) |
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self.cmap = torch.from_numpy(self.cmap[:n]) |
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def __call__(self, gray_image): |
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size = gray_image.size() |
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color_image = torch.ByteTensor(3, size[1], size[2]).fill_(0) |
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for label in range(0, len(self.cmap)): |
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mask = (label == gray_image[0]).cpu() |
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color_image[0][mask] = self.cmap[label][0] |
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color_image[1][mask] = self.cmap[label][1] |
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color_image[2][mask] = self.cmap[label][2] |
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return color_image |
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