| import cv2 |
| import numpy as np |
| import torch |
| from torch.utils.data import Dataset |
| import os |
| cv2.setNumThreads(1) |
| os.environ["OPENCV_IO_ENABLE_OPENEXR"] = "1" |
|
|
|
|
| class RandomResizedCropWithAutoCenteringAndZeroPadding (object): |
| def __init__(self, output_size, scale=(0.08, 1.0), ratio=(3. / 4., 4. / 3.), center_jitter=(0.1, 0.1), size_from_alpha_mask=True): |
| assert isinstance(output_size, (int, tuple)) |
| if isinstance(output_size, int): |
| self.output_size = (output_size, output_size) |
| else: |
| assert len(output_size) == 2 |
| self.output_size = output_size |
| assert isinstance(scale, tuple) |
| assert isinstance(ratio, tuple) |
| if (scale[0] > scale[1]) or (ratio[0] > ratio[1]): |
| raise ValueError("Scale and ratio should be of kind (min, max)") |
| self.size_from_alpha_mask = size_from_alpha_mask |
| self.scale = scale |
| self.ratio = ratio |
| assert isinstance(center_jitter, tuple) |
| self.center_jitter = center_jitter |
|
|
| def __call__(self, sample): |
| imidx, image = sample['imidx'], sample["image_np"] |
| if "labels" in sample: |
| label = sample["labels"] |
| else: |
| label = None |
|
|
| im_h, im_w = image.shape[:2] |
| if self.size_from_alpha_mask and image.shape[2] == 4: |
| |
| bbox_left, bbox_top, bbox_w, bbox_h = cv2.boundingRect( |
| (image[:, :, 3] > 0).astype(np.uint8)) |
| else: |
| bbox_left, bbox_top = 0, 0 |
| bbox_h, bbox_w = image.shape[:2] |
| if bbox_h <= 1 and bbox_w <= 1: |
| sample["bad"] = 0 |
| else: |
| |
| alpha_varea = np.sum((image[:, :, 3] > 0).astype(np.uint8)) |
| image_area = image.shape[0]*image.shape[1] |
| if alpha_varea/image_area < 0.001: |
| sample["bad"] = alpha_varea |
| |
| if "bad" in sample: |
| |
| |
| bbox_h, bbox_w = image.shape[:2] |
| sample["image_np"] = np.zeros( |
| [self.output_size[0], self.output_size[1], image.shape[2]], dtype=image.dtype) |
| if label is not None: |
| sample["labels"] = np.zeros( |
| [self.output_size[0], self.output_size[1], 4], dtype=label.dtype) |
|
|
| return sample |
|
|
| |
|
|
| jitter_h = np.random.uniform(-bbox_h * |
| self.center_jitter[0], bbox_h*self.center_jitter[0]) |
| jitter_w = np.random.uniform(-bbox_w * |
| self.center_jitter[1], bbox_w*self.center_jitter[1]) |
|
|
| |
| target_aspect_ratio = np.exp( |
| np.log(self.output_size[0]/self.output_size[1]) + |
| np.random.uniform(np.log(self.ratio[0]), np.log(self.ratio[1])) |
| ) |
|
|
| source_aspect_ratio = bbox_h/bbox_w |
|
|
| if target_aspect_ratio < source_aspect_ratio: |
| |
| target_height = bbox_h * \ |
| np.random.uniform(self.scale[0], self.scale[1]) |
| virtual_h = int( |
| round(target_height)) |
| virtual_w = int( |
| round(target_height / target_aspect_ratio)) |
| else: |
| |
| target_width = bbox_w * \ |
| np.random.uniform(self.scale[0], self.scale[1]) |
| virtual_h = int( |
| round(target_width * target_aspect_ratio)) |
| virtual_w = int( |
| round(target_width)) |
|
|
| |
|
|
| virtual_top = int(round(bbox_top + jitter_h - (virtual_h-bbox_h)/2)) |
| virutal_left = int(round(bbox_left + jitter_w - (virtual_w-bbox_w)/2)) |
|
|
| if virtual_top < 0: |
| top_padding = abs(virtual_top) |
| crop_top = 0 |
| else: |
| top_padding = 0 |
| crop_top = virtual_top |
| if virutal_left < 0: |
| left_padding = abs(virutal_left) |
| crop_left = 0 |
| else: |
| left_padding = 0 |
| crop_left = virutal_left |
| if virtual_top+virtual_h > im_h: |
| bottom_padding = abs(im_h-(virtual_top+virtual_h)) |
| crop_bottom = im_h |
| else: |
| bottom_padding = 0 |
| crop_bottom = virtual_top+virtual_h |
| if virutal_left+virtual_w > im_w: |
| right_padding = abs(im_w-(virutal_left+virtual_w)) |
| crop_right = im_w |
| else: |
| right_padding = 0 |
| crop_right = virutal_left+virtual_w |
| |
|
|
| image = image[crop_top:crop_bottom, crop_left: crop_right] |
| if label is not None: |
| label = label[crop_top:crop_bottom, crop_left: crop_right] |
|
|
| |
| if top_padding + bottom_padding + left_padding + right_padding > 0: |
| padding = ((top_padding, bottom_padding), |
| (left_padding, right_padding), (0, 0)) |
| |
| image = np.pad(image, padding, mode='constant') |
| if label is not None: |
| label = np.pad(label, padding, mode='constant') |
|
|
| if image.shape[0]/image.shape[1] - virtual_h/virtual_w > 0.001: |
| print("virtual aspect ratio:", virtual_h/virtual_w) |
| print("image aspect ratio:", image.shape[0]/image.shape[1]) |
| assert (image.shape[0]/image.shape[1] - virtual_h/virtual_w < 0.001) |
| sample["crop"] = np.array( |
| [im_h, im_w, crop_top, crop_bottom, crop_left, crop_right, top_padding, bottom_padding, left_padding, right_padding, image.shape[0], image.shape[1]]) |
|
|
| |
| if self.output_size[1] != image.shape[1] or self.output_size[0] != image.shape[0]: |
| if self.output_size[1] > image.shape[1] and self.output_size[0] > image.shape[0]: |
| |
| image = cv2.resize( |
| image, (self.output_size[1], self.output_size[0]), interpolation=cv2.INTER_LINEAR) |
| else: |
| |
| image = cv2.resize( |
| image, (self.output_size[1], self.output_size[0]), interpolation=cv2.INTER_AREA) |
|
|
| if label is not None: |
| label = cv2.resize(label, (self.output_size[1], self.output_size[0]), |
| interpolation=cv2.INTER_NEAREST_EXACT) |
|
|
| assert image.shape[0] == self.output_size[0] and image.shape[1] == self.output_size[1] |
| sample['imidx'], sample["image_np"] = imidx, image |
| if label is not None: |
| assert label.shape[0] == self.output_size[0] and label.shape[1] == self.output_size[1] |
| sample["labels"] = label |
|
|
| return sample |
|
|
|
|
| class FileDataset(Dataset): |
| def __init__(self, image_names_list, fg_img_lbl_transform=None, shader_pose_use_gt_udp_test=True, shader_target_use_gt_rgb_debug=False): |
| self.image_name_list = image_names_list |
| self.fg_img_lbl_transform = fg_img_lbl_transform |
| self.shader_pose_use_gt_udp_test = shader_pose_use_gt_udp_test |
| self.shader_target_use_gt_rgb_debug = shader_target_use_gt_rgb_debug |
|
|
| def __len__(self): |
| return len(self.image_name_list) |
|
|
| def get_gt_from_disk(self, idx, imname, read_label): |
| if read_label: |
| |
| with open(imname, mode="rb") as bio: |
| if imname.find(".npz") > 0: |
| label_np = np.load(bio, allow_pickle=True)[ |
| 'i'].astype(np.float32, copy=False) |
| else: |
| label_np = cv2.cvtColor(cv2.imdecode(np.frombuffer(bio.read( |
| ), np.uint8), cv2.IMREAD_ANYCOLOR | cv2.IMREAD_ANYDEPTH | cv2.IMREAD_UNCHANGED), cv2.COLOR_BGRA2RGBA) |
| assert (4 == label_np.shape[2]) |
| |
| image_np = (label_np*255).clip(0, 255).astype(np.uint8, copy=False) |
| |
| sample = {'imidx': np.array( |
| [idx]), "image_np": image_np, "labels": label_np} |
|
|
| else: |
| |
| with open(imname, mode="rb") as bio: |
| image_np = cv2.cvtColor(cv2.imdecode(np.frombuffer( |
| bio.read(), np.uint8), cv2.IMREAD_UNCHANGED), cv2.COLOR_BGRA2RGBA) |
| |
| |
| assert (3 == len(image_np.shape)) |
| if (image_np.shape[2] == 4): |
| mask_np = image_np[:, :, 3:4] |
| image_np = (image_np[:, :, :3] * |
| (image_np[:, :, 3][:, :, np.newaxis]/255.0)).clip(0, 255).astype(np.uint8, copy=False) |
| elif (image_np.shape[2] == 3): |
| |
| |
| mask_np = np.ones( |
| (image_np.shape[0], image_np.shape[1], 1), dtype=np.uint8)*255 |
| print("WARN: transparent background is preferred for image ", imname) |
| else: |
| raise ValueError("weird shape of image ", imname, image_np) |
| image_np = np.concatenate((image_np, mask_np), axis=2) |
| sample = {'imidx': np.array( |
| [idx]), "image_np": image_np} |
|
|
| |
| if self.fg_img_lbl_transform: |
| sample = self.fg_img_lbl_transform(sample) |
|
|
| if "labels" in sample: |
| |
| if "float" not in str(sample["labels"].dtype): |
| sample["labels"] = sample["labels"].astype(np.float32) / np.iinfo(sample["labels"].dtype).max |
| sample["labels"] = torch.from_numpy( |
| sample["labels"].transpose((2, 0, 1))) |
| assert (sample["labels"].dtype == torch.float32) |
|
|
| if "image_np" in sample: |
| |
| sample["mask"] = torch.from_numpy( |
| sample["image_np"][:, :, 3:4].transpose((2, 0, 1))) |
| assert (sample["mask"].dtype == torch.uint8) |
| sample["image"] = torch.from_numpy( |
| sample["image_np"][:, :, :3].transpose((2, 0, 1))) |
|
|
| assert (sample["image"].dtype == torch.uint8) |
| del sample["image_np"] |
| return sample |
|
|
| def __getitem__(self, idx): |
| sample = { |
| 'imidx': np.array([idx])} |
| target = self.get_gt_from_disk( |
| idx, imname=self.image_name_list[idx][0], read_label=self.shader_pose_use_gt_udp_test) |
| if self.shader_target_use_gt_rgb_debug: |
| sample["pose_images"] = torch.stack([target["image"]]) |
| sample["pose_mask"] = target["mask"] |
| elif self.shader_pose_use_gt_udp_test: |
| sample["pose_label"] = target["labels"] |
| sample["pose_mask"] = target["mask"] |
| else: |
| sample["pose_images"] = torch.stack([target["image"]]) |
| if "crop" in target: |
| sample["pose_crop"] = target["crop"] |
| character_images = [] |
| character_masks = [] |
| for i in range(1, len(self.image_name_list[idx])): |
| source = self.get_gt_from_disk( |
| idx, self.image_name_list[idx][i], read_label=False) |
| character_images.append(source["image"]) |
| character_masks.append(source["mask"]) |
| character_images = torch.stack(character_images) |
| character_masks = torch.stack(character_masks) |
| sample.update({ |
| "character_images": character_images, |
| "character_masks": character_masks |
| }) |
| |
| return sample |
|
|