import random import torch class ImagePool(): def __init__(self, pool_size): self.pool_size = pool_size if self.pool_size > 0: self.num_imgs = 0 self.images = [] def query(self, images): if self.pool_size == 0: return images return_images = [] for image in images: image = torch.unsqueeze(image.data, 0) if self.num_imgs < self.pool_size: self.num_imgs = self.num_imgs + 1 self.images.append(image) return_images.append(image) else: p = random.uniform(0, 1) if p > 0.5: random_id = random.randint(0, self.pool_size - 1) # randint is inclusive tmp = self.images[random_id].clone() self.images[random_id] = image return_images.append(tmp) else: return_images.append(image) return_images = torch.cat(return_images, 0) return return_images