import os from data.base_dataset import BaseDataset, get_transform from data.image_folder import make_dataset from skimage import color # require skimage from PIL import Image import numpy as np import torchvision.transforms as transforms class ColorizationDataset(BaseDataset): """This dataset class can load a set of natural images in RGB, and convert RGB format into (L, ab) pairs in Lab color space. This dataset is required by pix2pix-based colorization model ('--model colorization') """ @staticmethod def modify_commandline_options(parser, is_train): """Add new dataset-specific options, and rewrite default values for existing options. Parameters: parser -- original option parser is_train (bool) -- whether training phase or test phase. You can use this flag to add training-specific or test-specific options. Returns: the modified parser. By default, the number of channels for input image is 1 (L) and the number of channels for output image is 2 (ab). The direction is from A to B """ parser.set_defaults(input_nc=1, output_nc=2, direction='AtoB') return parser def __init__(self, opt): """Initialize this dataset class. Parameters: opt (Option class) -- stores all the experiment flags; needs to be a subclass of BaseOptions """ BaseDataset.__init__(self, opt) self.dir = os.path.join(opt.dataroot, opt.phase) self.AB_paths = sorted(make_dataset(self.dir, opt.max_dataset_size)) assert(opt.input_nc == 1 and opt.output_nc == 2 and opt.direction == 'AtoB') self.transform = get_transform(self.opt, convert=False) def __getitem__(self, index): """Return a data point and its metadata information. Parameters: index - - a random integer for data indexing Returns a dictionary that contains A, B, A_paths and B_paths A (tensor) - - the L channel of an image B (tensor) - - the ab channels of the same image A_paths (str) - - image paths B_paths (str) - - image paths (same as A_paths) """ path = self.AB_paths[index] im = Image.open(path).convert('RGB') im = self.transform(im) im = np.array(im) lab = color.rgb2lab(im).astype(np.float32) lab_t = transforms.ToTensor()(lab) A = lab_t[[0], ...] / 50.0 - 1.0 B = lab_t[[1, 2], ...] / 110.0 return {'A': A, 'B': B, 'A_paths': path, 'B_paths': path} def __len__(self): """Return the total number of images in the dataset.""" return len(self.AB_paths)