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aligned_dataset.py
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aligned_dataset.py
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import os.path
import random
from data.base_dataset import BaseDataset, get_params, get_transform
import torchvision.transforms as transforms
from data.image_folder import make_dataset
from PIL import Image
class AlignedDataset(BaseDataset):
"""A dataset class for paired image dataset.
It assumes that the directory '/path/to/data/train' contains image pairs in the form of {A,B}.
During test time, you need to prepare a directory '/path/to/data/test'.
"""
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_AB = os.path.join(opt.dataroot, opt.phase) # get the image directory
self.AB_paths = sorted(make_dataset(self.dir_AB, opt.max_dataset_size)) # get image paths
assert(self.opt.load_size >= self.opt.crop_size) # crop_size should be smaller than the size of loaded image
self.input_nc = self.opt.output_nc if self.opt.direction == 'BtoA' else self.opt.input_nc
self.output_nc = self.opt.input_nc if self.opt.direction == 'BtoA' else self.opt.output_nc
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) - - an image in the input domain
B (tensor) - - its corresponding image in the target domain
A_paths (str) - - image paths
B_paths (str) - - image paths (same as A_paths)
"""
# read a image given a random integer index
AB_path = self.AB_paths[index]
AB = Image.open(AB_path).convert('RGB')
# split AB image into A and B
w, h = AB.size
w2 = int(w / 2)
A = AB.crop((0, 0, w2, h))
B = AB.crop((w2, 0, w, h))
# apply the same transform to both A and B
transform_params = get_params(self.opt, A.size)
A_transform = get_transform(self.opt, transform_params, grayscale=(self.input_nc == 1))
B_transform = get_transform(self.opt, transform_params, grayscale=(self.output_nc == 1))
A = A_transform(A)
B = B_transform(B)
return {'A': A, 'B': B, 'A_paths': AB_path, 'B_paths': AB_path}
def __len__(self):
"""Return the total number of images in the dataset."""
return len(self.AB_paths)