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import cv2 |
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import math |
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import numpy as np |
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import os.path as osp |
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import torch |
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import torch.utils.data as data |
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from basicsr.data import degradations as degradations |
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from basicsr.data.data_util import paths_from_folder |
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from basicsr.data.transforms import augment |
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from basicsr.utils import FileClient, get_root_logger, imfrombytes, img2tensor |
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from basicsr.utils.registry import DATASET_REGISTRY |
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from torchvision.transforms.functional import (adjust_brightness, adjust_contrast, adjust_hue, adjust_saturation, |
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normalize) |
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@DATASET_REGISTRY.register() |
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class FFHQDegradationDataset(data.Dataset): |
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"""FFHQ dataset for GFPGAN. |
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It reads high resolution images, and then generate low-quality (LQ) images on-the-fly. |
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Args: |
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opt (dict): Config for train datasets. It contains the following keys: |
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dataroot_gt (str): Data root path for gt. |
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io_backend (dict): IO backend type and other kwarg. |
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mean (list | tuple): Image mean. |
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std (list | tuple): Image std. |
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use_hflip (bool): Whether to horizontally flip. |
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Please see more options in the codes. |
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""" |
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def __init__(self, opt): |
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super(FFHQDegradationDataset, self).__init__() |
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self.opt = opt |
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self.file_client = None |
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self.io_backend_opt = opt['io_backend'] |
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self.gt_folder = opt['dataroot_gt'] |
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self.mean = opt['mean'] |
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self.std = opt['std'] |
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self.out_size = opt['out_size'] |
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self.crop_components = opt.get('crop_components', False) |
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self.eye_enlarge_ratio = opt.get('eye_enlarge_ratio', 1) |
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if self.crop_components: |
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self.components_list = torch.load(opt.get('component_path')) |
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if self.io_backend_opt['type'] == 'lmdb': |
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self.io_backend_opt['db_paths'] = self.gt_folder |
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if not self.gt_folder.endswith('.lmdb'): |
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raise ValueError(f"'dataroot_gt' should end with '.lmdb', but received {self.gt_folder}") |
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with open(osp.join(self.gt_folder, 'meta_info.txt')) as fin: |
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self.paths = [line.split('.')[0] for line in fin] |
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else: |
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self.paths = paths_from_folder(self.gt_folder) |
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self.blur_kernel_size = opt['blur_kernel_size'] |
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self.kernel_list = opt['kernel_list'] |
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self.kernel_prob = opt['kernel_prob'] |
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self.blur_sigma = opt['blur_sigma'] |
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self.downsample_range = opt['downsample_range'] |
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self.noise_range = opt['noise_range'] |
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self.jpeg_range = opt['jpeg_range'] |
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self.color_jitter_prob = opt.get('color_jitter_prob') |
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self.color_jitter_pt_prob = opt.get('color_jitter_pt_prob') |
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self.color_jitter_shift = opt.get('color_jitter_shift', 20) |
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self.gray_prob = opt.get('gray_prob') |
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logger = get_root_logger() |
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logger.info(f'Blur: blur_kernel_size {self.blur_kernel_size}, sigma: [{", ".join(map(str, self.blur_sigma))}]') |
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logger.info(f'Downsample: downsample_range [{", ".join(map(str, self.downsample_range))}]') |
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logger.info(f'Noise: [{", ".join(map(str, self.noise_range))}]') |
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logger.info(f'JPEG compression: [{", ".join(map(str, self.jpeg_range))}]') |
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if self.color_jitter_prob is not None: |
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logger.info(f'Use random color jitter. Prob: {self.color_jitter_prob}, shift: {self.color_jitter_shift}') |
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if self.gray_prob is not None: |
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logger.info(f'Use random gray. Prob: {self.gray_prob}') |
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self.color_jitter_shift /= 255. |
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@staticmethod |
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def color_jitter(img, shift): |
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"""jitter color: randomly jitter the RGB values, in numpy formats""" |
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jitter_val = np.random.uniform(-shift, shift, 3).astype(np.float32) |
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img = img + jitter_val |
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img = np.clip(img, 0, 1) |
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return img |
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@staticmethod |
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def color_jitter_pt(img, brightness, contrast, saturation, hue): |
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"""jitter color: randomly jitter the brightness, contrast, saturation, and hue, in torch Tensor formats""" |
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fn_idx = torch.randperm(4) |
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for fn_id in fn_idx: |
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if fn_id == 0 and brightness is not None: |
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brightness_factor = torch.tensor(1.0).uniform_(brightness[0], brightness[1]).item() |
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img = adjust_brightness(img, brightness_factor) |
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if fn_id == 1 and contrast is not None: |
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contrast_factor = torch.tensor(1.0).uniform_(contrast[0], contrast[1]).item() |
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img = adjust_contrast(img, contrast_factor) |
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if fn_id == 2 and saturation is not None: |
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saturation_factor = torch.tensor(1.0).uniform_(saturation[0], saturation[1]).item() |
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img = adjust_saturation(img, saturation_factor) |
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if fn_id == 3 and hue is not None: |
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hue_factor = torch.tensor(1.0).uniform_(hue[0], hue[1]).item() |
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img = adjust_hue(img, hue_factor) |
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return img |
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def get_component_coordinates(self, index, status): |
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"""Get facial component (left_eye, right_eye, mouth) coordinates from a pre-loaded pth file""" |
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components_bbox = self.components_list[f'{index:08d}'] |
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if status[0]: |
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tmp = components_bbox['left_eye'] |
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components_bbox['left_eye'] = components_bbox['right_eye'] |
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components_bbox['right_eye'] = tmp |
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components_bbox['left_eye'][0] = self.out_size - components_bbox['left_eye'][0] |
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components_bbox['right_eye'][0] = self.out_size - components_bbox['right_eye'][0] |
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components_bbox['mouth'][0] = self.out_size - components_bbox['mouth'][0] |
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locations = [] |
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for part in ['left_eye', 'right_eye', 'mouth']: |
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mean = components_bbox[part][0:2] |
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half_len = components_bbox[part][2] |
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if 'eye' in part: |
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half_len *= self.eye_enlarge_ratio |
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loc = np.hstack((mean - half_len + 1, mean + half_len)) |
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loc = torch.from_numpy(loc).float() |
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locations.append(loc) |
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return locations |
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def __getitem__(self, index): |
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if self.file_client is None: |
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self.file_client = FileClient(self.io_backend_opt.pop('type'), **self.io_backend_opt) |
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gt_path = self.paths[index] |
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img_bytes = self.file_client.get(gt_path) |
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img_gt = imfrombytes(img_bytes, float32=True) |
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img_gt, status = augment(img_gt, hflip=self.opt['use_hflip'], rotation=False, return_status=True) |
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h, w, _ = img_gt.shape |
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if self.crop_components: |
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locations = self.get_component_coordinates(index, status) |
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loc_left_eye, loc_right_eye, loc_mouth = locations |
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kernel = degradations.random_mixed_kernels( |
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self.kernel_list, |
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self.kernel_prob, |
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self.blur_kernel_size, |
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self.blur_sigma, |
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self.blur_sigma, [-math.pi, math.pi], |
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noise_range=None) |
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img_lq = cv2.filter2D(img_gt, -1, kernel) |
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scale = np.random.uniform(self.downsample_range[0], self.downsample_range[1]) |
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img_lq = cv2.resize(img_lq, (int(w // scale), int(h // scale)), interpolation=cv2.INTER_LINEAR) |
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if self.noise_range is not None: |
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img_lq = degradations.random_add_gaussian_noise(img_lq, self.noise_range) |
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if self.jpeg_range is not None: |
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img_lq = degradations.random_add_jpg_compression(img_lq, self.jpeg_range) |
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img_lq = cv2.resize(img_lq, (w, h), interpolation=cv2.INTER_LINEAR) |
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if self.color_jitter_prob is not None and (np.random.uniform() < self.color_jitter_prob): |
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img_lq = self.color_jitter(img_lq, self.color_jitter_shift) |
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if self.gray_prob and np.random.uniform() < self.gray_prob: |
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img_lq = cv2.cvtColor(img_lq, cv2.COLOR_BGR2GRAY) |
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img_lq = np.tile(img_lq[:, :, None], [1, 1, 3]) |
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if self.opt.get('gt_gray'): |
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img_gt = cv2.cvtColor(img_gt, cv2.COLOR_BGR2GRAY) |
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img_gt = np.tile(img_gt[:, :, None], [1, 1, 3]) |
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img_gt, img_lq = img2tensor([img_gt, img_lq], bgr2rgb=True, float32=True) |
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if self.color_jitter_pt_prob is not None and (np.random.uniform() < self.color_jitter_pt_prob): |
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brightness = self.opt.get('brightness', (0.5, 1.5)) |
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contrast = self.opt.get('contrast', (0.5, 1.5)) |
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saturation = self.opt.get('saturation', (0, 1.5)) |
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hue = self.opt.get('hue', (-0.1, 0.1)) |
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img_lq = self.color_jitter_pt(img_lq, brightness, contrast, saturation, hue) |
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img_lq = torch.clamp((img_lq * 255.0).round(), 0, 255) / 255. |
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normalize(img_gt, self.mean, self.std, inplace=True) |
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normalize(img_lq, self.mean, self.std, inplace=True) |
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if self.crop_components: |
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return_dict = { |
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'lq': img_lq, |
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'gt': img_gt, |
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'gt_path': gt_path, |
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'loc_left_eye': loc_left_eye, |
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'loc_right_eye': loc_right_eye, |
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'loc_mouth': loc_mouth |
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} |
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return return_dict |
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else: |
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return {'lq': img_lq, 'gt': img_gt, 'gt_path': gt_path} |
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def __len__(self): |
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return len(self.paths) |
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