Files
Dehaze/RefineDNet/data/unpaired_dataset.py
2026-06-10 17:42:11 +08:00

73 lines
3.1 KiB
Python

import os.path
from data.base_dataset import BaseDataset, get_transform, get_params
from data.image_folder import make_dataset
from PIL import Image
import random
class UnpairedDataset(BaseDataset):
"""
This dataset class can load unpaired datasets for dehazing.
It requires two directories to host training images from domain A '/path/to/data/trainA'
and from domain B '/path/to/data/trainB' respectively.
You can train the model with the dataset flag '--dataroot /path/to/data'.
Similarly, you need to prepare two directories:
'/path/to/data/testA' and '/path/to/data/testB' during test time.
"""
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_I = os.path.join(opt.dataroot, opt.phase + 'A') # create a path '/path/to/data/trainA'
self.dir_J = os.path.join(opt.dataroot, opt.phase + 'B') # create a path '/path/to/data/trainB'
self.I_paths = sorted(make_dataset(self.dir_I, opt.max_dataset_size)) # load images from '/path/to/data/trainA'
self.J_paths = sorted(make_dataset(self.dir_J, opt.max_dataset_size)) # load images from '/path/to/data/trainB'
self.I_size = len(self.I_paths) # get the size of dataset A
self.J_size = len(self.J_paths) # get the size of dataset B
def __getitem__(self, index):
"""Return a data point and its metadata information.
Parameters:
index (int) -- a random integer for data indexing
Returns a dictionary that contains haze, clear, paths and J_paths
haze (tensor) -- hazy image
clear (tensor) -- clear image
paths (str) -- image paths
J_paths (str) -- image paths
"""
I_path = self.I_paths[index % self.I_size] # make sure index is within then range
if self.opt.serial_batches: # make sure index is within then range
index_J = index % self.J_size
else: # randomize the index for domain B to avoid fixed pairs.
index_J = random.randint(0, self.J_size - 1)
J_path = self.J_paths[index_J]
I_img = Image.open(I_path).convert('RGB')
J_img = Image.open(J_path).convert('RGB')
params_I = get_params(self.opt, I_img.size)
params_J = get_params(self.opt, J_img.size)
transform_I = get_transform(self.opt, params=params_I, grayscale=(self.opt.input_nc == 1))
transform_J = get_transform(self.opt, params=params_J, grayscale=(self.opt.output_nc == 1))
# apply image transformation
real_I = transform_I(I_img)
real_J = transform_J(J_img)
return {'haze': real_I, 'clear': real_J, 'paths': I_path, 'J_paths': J_path}
def __len__(self):
"""Return the total number of images in the dataset.
As we have two datasets with potentially different number of images,
we take a maximum of
"""
return max(self.I_size, self.J_size)