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import json | |
import cv2 | |
import numpy as np | |
import os | |
from torch.utils.data import Dataset | |
from PIL import Image | |
import cv2 | |
from .data_utils import * | |
cv2.setNumThreads(0) | |
cv2.ocl.setUseOpenCL(False) | |
import albumentations as A | |
class BaseDataset(Dataset): | |
def __init__(self): | |
image_mask_dict = {} | |
self.data = [] | |
def __len__(self): | |
# We adjust the ratio of different dataset by setting the length. | |
pass | |
def aug_data_back(self, image): | |
transform = A.Compose([ | |
A.ColorJitter(p=0.5, brightness=0.5, contrast=0.5, saturation=0.5, hue=0.5), | |
A.ChannelShuffle() | |
]) | |
transformed = transform(image=image.astype(np.uint8)) | |
transformed_image = transformed["image"] | |
return transformed_image | |
def aug_data_mask(self, image, mask): | |
transform = A.Compose([ | |
A.HorizontalFlip(p=0.5), | |
A.RandomBrightnessContrast(p=0.5), | |
#A.Rotate(limit=20, border_mode=cv2.BORDER_CONSTANT, value=(0,0,0)), | |
]) | |
transformed = transform(image=image.astype(np.uint8), mask = mask) | |
transformed_image = transformed["image"] | |
transformed_mask = transformed["mask"] | |
return transformed_image, transformed_mask | |
def check_region_size(self, image, yyxx, ratio, mode = 'max'): | |
pass_flag = True | |
H,W = image.shape[0], image.shape[1] | |
H,W = H * ratio, W * ratio | |
y1,y2,x1,x2 = yyxx | |
h,w = y2-y1,x2-x1 | |
if mode == 'max': | |
if h > H or w > W: | |
pass_flag = False | |
elif mode == 'min': | |
if h < H or w < W: | |
pass_flag = False | |
return pass_flag | |
def __getitem__(self, idx): | |
while(True): | |
try: | |
idx = np.random.randint(0, len(self.data)-1) | |
item = self.get_sample(idx) | |
return item | |
except: | |
idx = np.random.randint(0, len(self.data)-1) | |
def get_sample(self, idx): | |
# Implemented for each specific dataset | |
pass | |
def sample_timestep(self, max_step =1000): | |
if np.random.rand() < 0.3: | |
step = np.random.randint(0,max_step) | |
return np.array([step]) | |
if self.dynamic == 1: | |
# coarse videos | |
step_start = max_step // 2 | |
step_end = max_step | |
elif self.dynamic == 0: | |
# static images | |
step_start = 0 | |
step_end = max_step // 2 | |
else: | |
# fine multi-view images/videos/3Ds | |
step_start = 0 | |
step_end = max_step | |
step = np.random.randint(step_start, step_end) | |
return np.array([step]) | |
def check_mask_area(self, mask): | |
H,W = mask.shape[0], mask.shape[1] | |
ratio = mask.sum() / (H * W) | |
if ratio > 0.8 * 0.8 or ratio < 0.1 * 0.1: | |
return False | |
else: | |
return True | |
def process_pairs(self, ref_image, ref_mask, tar_image, tar_mask, max_ratio = 0.8): | |
assert mask_score(ref_mask) > 0.90 | |
assert self.check_mask_area(ref_mask) == True | |
assert self.check_mask_area(tar_mask) == True | |
# ========= Reference =========== | |
''' | |
# similate the case that the mask for reference object is coarse. Seems useless :( | |
if np.random.uniform(0, 1) < 0.7: | |
ref_mask_clean = ref_mask.copy() | |
ref_mask_clean = np.stack([ref_mask_clean,ref_mask_clean,ref_mask_clean],-1) | |
ref_mask = perturb_mask(ref_mask, 0.6, 0.9) | |
# select a fake bg to avoid the background leakage | |
fake_target = tar_image.copy() | |
h,w = ref_image.shape[0], ref_image.shape[1] | |
fake_targe = cv2.resize(fake_target, (w,h)) | |
fake_back = np.fliplr(np.flipud(fake_target)) | |
fake_back = self.aug_data_back(fake_back) | |
ref_image = ref_mask_clean * ref_image + (1-ref_mask_clean) * fake_back | |
''' | |
# Get the outline Box of the reference image | |
ref_box_yyxx = get_bbox_from_mask(ref_mask) | |
assert self.check_region_size(ref_mask, ref_box_yyxx, ratio = 0.10, mode = 'min') == True | |
# Filtering background for the reference image | |
ref_mask_3 = np.stack([ref_mask,ref_mask,ref_mask],-1) | |
masked_ref_image = ref_image * ref_mask_3 + np.ones_like(ref_image) * 255 * (1-ref_mask_3) | |
y1,y2,x1,x2 = ref_box_yyxx | |
masked_ref_image = masked_ref_image[y1:y2,x1:x2,:] | |
ref_mask = ref_mask[y1:y2,x1:x2] | |
ratio = np.random.randint(11, 15) / 10 | |
masked_ref_image, ref_mask = expand_image_mask(masked_ref_image, ref_mask, ratio=ratio) | |
ref_mask_3 = np.stack([ref_mask,ref_mask,ref_mask],-1) | |
# Padding reference image to square and resize to 224 | |
masked_ref_image = pad_to_square(masked_ref_image, pad_value = 255, random = False) | |
masked_ref_image = cv2.resize(masked_ref_image.astype(np.uint8), (224,224) ).astype(np.uint8) | |
ref_mask_3 = pad_to_square(ref_mask_3 * 255, pad_value = 0, random = False) | |
ref_mask_3 = cv2.resize(ref_mask_3.astype(np.uint8), (224,224) ).astype(np.uint8) | |
ref_mask = ref_mask_3[:,:,0] | |
# Augmenting reference image | |
#masked_ref_image_aug = self.aug_data(masked_ref_image) | |
# Getting for high-freqency map | |
masked_ref_image_compose, ref_mask_compose = self.aug_data_mask(masked_ref_image, ref_mask) | |
masked_ref_image_aug = masked_ref_image_compose.copy() | |
ref_mask_3 = np.stack([ref_mask_compose,ref_mask_compose,ref_mask_compose],-1) | |
ref_image_collage = sobel(masked_ref_image_compose, ref_mask_compose/255) | |
# ========= Training Target =========== | |
tar_box_yyxx = get_bbox_from_mask(tar_mask) | |
tar_box_yyxx = expand_bbox(tar_mask, tar_box_yyxx, ratio=[1.1,1.2]) #1.1 1.3 | |
assert self.check_region_size(tar_mask, tar_box_yyxx, ratio = max_ratio, mode = 'max') == True | |
# Cropping around the target object | |
tar_box_yyxx_crop = expand_bbox(tar_image, tar_box_yyxx, ratio=[1.3, 3.0]) | |
tar_box_yyxx_crop = box2squre(tar_image, tar_box_yyxx_crop) # crop box | |
y1,y2,x1,x2 = tar_box_yyxx_crop | |
cropped_target_image = tar_image[y1:y2,x1:x2,:] | |
cropped_tar_mask = tar_mask[y1:y2,x1:x2] | |
tar_box_yyxx = box_in_box(tar_box_yyxx, tar_box_yyxx_crop) | |
y1,y2,x1,x2 = tar_box_yyxx | |
# Prepairing collage image | |
ref_image_collage = cv2.resize(ref_image_collage.astype(np.uint8), (x2-x1, y2-y1)) | |
ref_mask_compose = cv2.resize(ref_mask_compose.astype(np.uint8), (x2-x1, y2-y1)) | |
ref_mask_compose = (ref_mask_compose > 128).astype(np.uint8) | |
collage = cropped_target_image.copy() | |
collage[y1:y2,x1:x2,:] = ref_image_collage | |
collage_mask = cropped_target_image.copy() * 0.0 | |
collage_mask[y1:y2,x1:x2,:] = 1.0 | |
if np.random.uniform(0, 1) < 0.7: | |
cropped_tar_mask = perturb_mask(cropped_tar_mask) | |
collage_mask = np.stack([cropped_tar_mask,cropped_tar_mask,cropped_tar_mask],-1) | |
H1, W1 = collage.shape[0], collage.shape[1] | |
cropped_target_image = pad_to_square(cropped_target_image, pad_value = 0, random = False).astype(np.uint8) | |
collage = pad_to_square(collage, pad_value = 0, random = False).astype(np.uint8) | |
collage_mask = pad_to_square(collage_mask, pad_value = 2, random = False).astype(np.uint8) | |
H2, W2 = collage.shape[0], collage.shape[1] | |
cropped_target_image = cv2.resize(cropped_target_image.astype(np.uint8), (512,512)).astype(np.float32) | |
collage = cv2.resize(collage.astype(np.uint8), (512,512)).astype(np.float32) | |
collage_mask = cv2.resize(collage_mask.astype(np.uint8), (512,512), interpolation = cv2.INTER_NEAREST).astype(np.float32) | |
collage_mask[collage_mask == 2] = -1 | |
# Prepairing dataloader items | |
masked_ref_image_aug = masked_ref_image_aug / 255 | |
cropped_target_image = cropped_target_image / 127.5 - 1.0 | |
collage = collage / 127.5 - 1.0 | |
collage = np.concatenate([collage, collage_mask[:,:,:1] ] , -1) | |
item = dict( | |
ref=masked_ref_image_aug.copy(), | |
jpg=cropped_target_image.copy(), | |
hint=collage.copy(), | |
extra_sizes=np.array([H1, W1, H2, W2]), | |
tar_box_yyxx_crop=np.array(tar_box_yyxx_crop) | |
) | |
return item | |