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import os
import time
import json
import torch
import numpy as np
import cv2
from torch.utils.data import Dataset, DistributedSampler, Sampler
from torchvision import transforms
from detectron2.utils.logger import setup_logger
from typing import Optional
from operator import itemgetter
from collections import defaultdict
from data.dim_dataset import GenBBox
def random_interp():
return np.random.choice([cv2.INTER_NEAREST, cv2.INTER_LINEAR, cv2.INTER_CUBIC, cv2.INTER_LANCZOS4])
class SplitConcatImage(object):
def __init__(self, concat_num=4, wo_mask_to_mattes=False):
self.concat_num = concat_num
self.wo_mask_to_mattes = wo_mask_to_mattes
if self.wo_mask_to_mattes:
assert self.concat_num == 5
def __call__(self, concat_image):
if isinstance(concat_image, list):
concat_image, image_path = concat_image[0], concat_image[1]
else:
image_path = None
H, W, _ = concat_image.shape
concat_num = self.concat_num
if image_path is not None:
if '06-14' in image_path:
concat_num = 4
elif 'ori_mask' in image_path or 'SEMat' in image_path:
concat_num = 3
else:
concat_num = 5
assert W % concat_num == 0
W = W // concat_num
image = concat_image[:H, :W]
if self.concat_num != 3:
trimap = concat_image[:H, (concat_num - 2) * W: (concat_num - 1) * W]
if self.wo_mask_to_mattes:
alpha = concat_image[:H, 2 * W: 3 * W]
else:
alpha = concat_image[:H, (concat_num - 1) * W: concat_num * W]
else:
trimap = concat_image[:H, (concat_num - 1) * W: concat_num * W]
alpha = concat_image[:H, (concat_num - 2) * W: (concat_num - 1) * W]
return {'image': image, 'trimap': trimap, 'alpha': alpha}
class RandomHorizontalFlip(object):
def __init__(self, prob=0.5):
self.prob = prob
def __call__(self, sample):
if np.random.uniform(0, 1) < self.prob:
for key in sample.keys():
sample[key] = cv2.flip(sample[key], 1)
return sample
class EmptyAug(object):
def __call__(self, sample):
return sample
class RandomReszieCrop(object):
def __init__(self, output_size=1024, aug_scale_min=0.5, aug_scale_max=1.5):
self.desired_size = output_size
self.aug_scale_min = aug_scale_min
self.aug_scale_max = aug_scale_max
def __call__(self, sample):
H, W, _ = sample['image'].shape
if self.aug_scale_min == 1.0 and self.aug_scale_max == 1.0:
crop_H, crop_W = H, W
crop_y1, crop_y2 = 0, crop_H
crop_x1, crop_x2 = 0, crop_W
scale_W, scaled_H = W, H
elif self.aug_scale_min == -1.0 and self.aug_scale_max == -1.0:
scale = min(self.desired_size / H, self.desired_size / W)
scaled_H, scale_W = round(H * scale), round(W * scale)
crop_H, crop_W = scaled_H, scale_W
crop_y1, crop_y2 = 0, crop_H
crop_x1, crop_x2 = 0, crop_W
else:
# random size
random_scale = np.random.uniform(0, 1) * (self.aug_scale_max - self.aug_scale_min) + self.aug_scale_min # random_val: 0.5 ~ 1.5
scaled_size = round(random_scale * self.desired_size)
scale = min(scaled_size / H, scaled_size / W)
scaled_H, scale_W = round(H * scale), round(W * scale)
# random crop
crop_H, crop_W = min(self.desired_size, scaled_H), min(self.desired_size, scale_W) # crop_size
margin_H, margin_W = max(scaled_H - crop_H, 0), max(scale_W - crop_W, 0)
offset_H, offset_W = np.random.randint(0, margin_H + 1), np.random.randint(0, margin_W + 1)
crop_y1, crop_y2 = offset_H, offset_H + crop_H
crop_x1, crop_x2 = offset_W, offset_W + crop_W
for key in sample.keys():
sample[key] = cv2.resize(sample[key], (scale_W, scaled_H), interpolation=random_interp())[crop_y1: crop_y2, crop_x1: crop_x2, :] # resize and crop
padding = np.zeros(shape=(self.desired_size, self.desired_size, 3), dtype=sample[key].dtype) # pad to desired_size
padding[: crop_H, : crop_W, :] = sample[key]
sample[key] = padding
return sample
class RandomJitter(object):
"""
Random change the hue of the image
"""
def __call__(self, sample):
image = sample['image']
# convert to HSV space, convert to float32 image to keep precision during space conversion.
image = cv2.cvtColor(image.astype(np.float32)/255.0, cv2.COLOR_BGR2HSV)
# Hue noise
hue_jitter = np.random.randint(-40, 40)
image[:, :, 0] = np.remainder(image[:, :, 0].astype(np.float32) + hue_jitter, 360)
# Saturation noise
sat_bar = image[:, :, 1].mean()
sat_jitter = np.random.rand()*(1.1 - sat_bar)/5 - (1.1 - sat_bar) / 10
sat = image[:, :, 1]
sat = np.abs(sat + sat_jitter)
sat[sat>1] = 2 - sat[sat>1]
image[:, :, 1] = sat
# Value noise
val_bar = image[:, :, 2].mean()
val_jitter = np.random.rand()*(1.1 - val_bar)/5-(1.1 - val_bar) / 10
val = image[:, :, 2]
val = np.abs(val + val_jitter)
val[val>1] = 2 - val[val>1]
image[:, :, 2] = val
# convert back to BGR space
image = cv2.cvtColor(image, cv2.COLOR_HSV2BGR)
sample['image'] = image * 255
return sample
class ToTensor(object):
def __call__(self, sample):
image, alpha, trimap = sample['image'][:, :, ::-1], sample['alpha'], sample['trimap']
# image
image = image.transpose((2, 0, 1)) / 255.
sample['image'] = torch.from_numpy(image).float()
# alpha
alpha = alpha.transpose((2, 0, 1))[0: 1] / 255.
alpha[alpha < 0 ] = 0
alpha[alpha > 1] = 1
sample['alpha'] = torch.from_numpy(alpha).float()
# trimap
trimap = trimap.transpose((2, 0, 1))[0: 1] / 1.
sample['trimap'] = torch.from_numpy(trimap).float()
sample['trimap'][sample['trimap'] < 85] = 0
sample['trimap'][sample['trimap'] >= 170] = 1
sample['trimap'][sample['trimap'] >= 85] = 0.5
return sample
class COCONutData(Dataset):
def __init__(
self,
json_path,
data_root_path,
output_size = 512,
aug_scale_min = 0.5,
aug_scale_max = 1.5,
with_bbox = False,
bbox_offset_factor = None,
phase = "train",
min_miou = 95,
miou_json = '',
remove_coco_transparent = False,
coconut_num_ratio = None,
return_multi_fg_info = False,
wo_accessory_fusion = False,
wo_mask_to_mattes = False,
return_image_name = False,
):
self.data_root_path = data_root_path
self.output_size = output_size
self.aug_scale_min = aug_scale_min
self.aug_scale_max = aug_scale_max
self.with_bbox = with_bbox
self.bbox_offset_factor = bbox_offset_factor
self.phase = phase
self.min_miou = min_miou
self.miou_json = miou_json
self.remove_coco_transparent = remove_coco_transparent
self.coconut_num_ratio = coconut_num_ratio
self.return_multi_fg_info = return_multi_fg_info
self.wo_accessory_fusion = wo_accessory_fusion # TODO
self.wo_mask_to_mattes = wo_mask_to_mattes
self.return_image_name = return_image_name
assert self.wo_accessory_fusion + self.wo_mask_to_mattes <= 1
assert self.phase == 'train'
self.data_path = []
with open(json_path, "r") as file:
coconut_matting_info = json.load(file)
if self.miou_json != '':
name_2_miou_dict = defaultdict(int)
with open(self.miou_json, "r") as file:
coconut_matting_miou = json.load(file)
for miou, name in coconut_matting_miou:
name_2_miou_dict[name] = miou
for i in coconut_matting_info:
if 'accessory' in i['save_path']:
self.data_path.append(i['save_path'])
elif name_2_miou_dict[i['save_path'].split('/')[-1]] >= self.min_miou:
if not (self.remove_coco_transparent and 'glass' in i['save_path']):
self.data_path.append(i['save_path'])
else:
for i in coconut_matting_info:
self.data_path.append(i['save_path'])
if 'accessory' in json_path:
concat_num = 5
elif 'ori_mask' in json_path:
concat_num = 3
else:
concat_num = 4
train_trans = [
SplitConcatImage(concat_num, wo_mask_to_mattes = self.wo_mask_to_mattes),
RandomHorizontalFlip(prob=0 if hasattr(self, 'return_image_name') and self.return_image_name else 0.5),
RandomReszieCrop(self.output_size, self.aug_scale_min, self.aug_scale_max),
EmptyAug() if hasattr(self, 'return_image_name') and self.return_image_name else RandomJitter(),
ToTensor(),
GenBBox(bbox_offset_factor=self.bbox_offset_factor)
]
self.transform = transforms.Compose(train_trans)
print('coconut num: ', len(self.data_path) * self.coconut_num_ratio if self.coconut_num_ratio is not None else len(self.data_path))
def __getitem__(self, idx):
if self.coconut_num_ratio is not None:
if self.coconut_num_ratio < 1.0 or idx >= len(self.data_path):
idx = np.random.randint(0, len(self.data_path))
concat_image = cv2.imread(os.path.join(self.data_root_path, self.data_path[idx]))
sample = self.transform([concat_image, self.data_path[idx]])
sample['dataset_name'] = 'COCONut'
if self.return_multi_fg_info:
sample['multi_fg'] = False
if hasattr(self, 'return_image_name') and self.return_image_name:
sample['image_name'] = self.data_path[idx]
return sample
def __len__(self):
if self.coconut_num_ratio is not None:
return int(len(self.data_path) * self.coconut_num_ratio)
else:
return len(self.data_path)
class DatasetFromSampler(Dataset):
"""Dataset to create indexes from `Sampler`.
Args:
sampler: PyTorch sampler
"""
def __init__(self, sampler: Sampler):
"""Initialisation for DatasetFromSampler."""
self.sampler = sampler
self.sampler_list = None
def __getitem__(self, index: int):
"""Gets element of the dataset.
Args:
index: index of the element in the dataset
Returns:
Single element by index
"""
if self.sampler_list is None:
self.sampler_list = list(self.sampler)
return self.sampler_list[index]
def __len__(self) -> int:
"""
Returns:
int: length of the dataset
"""
return len(self.sampler)
class DistributedSamplerWrapper(DistributedSampler):
"""
Wrapper over `Sampler` for distributed training.
Allows you to use any sampler in distributed mode.
It is especially useful in conjunction with
`torch.nn.parallel.DistributedDataParallel`. In such case, each
process can pass a DistributedSamplerWrapper instance as a DataLoader
sampler, and load a subset of subsampled data of the original dataset
that is exclusive to it.
.. note::
Sampler is assumed to be of constant size.
"""
def __init__(
self,
sampler,
num_replicas: Optional[int] = None,
rank: Optional[int] = None,
shuffle: bool = True,
):
"""
Args:
sampler: Sampler used for subsampling
num_replicas (int, optional): Number of processes participating in
distributed training
rank (int, optional): Rank of the current process
within ``num_replicas``
shuffle (bool, optional): If true (default),
sampler will shuffle the indices
"""
super(DistributedSamplerWrapper, self).__init__(
DatasetFromSampler(sampler),
num_replicas=num_replicas,
rank=rank,
shuffle=shuffle,
)
self.sampler = sampler
def __iter__(self):
"""@TODO: Docs. Contribution is welcome."""
self.dataset = DatasetFromSampler(self.sampler)
indexes_of_indexes = super().__iter__()
subsampler_indexes = self.dataset
return iter(itemgetter(*indexes_of_indexes)(subsampler_indexes))
if __name__ == '__main__':
dataset = COCONutData(
json_path = '/root/data/my_path/Matting/DiffMatte-main/24-06-14_coco-nut_matting.json',
data_root_path = '/root/data/my_path/Matting/DiffMatte-main',
output_size = 1024,
aug_scale_min = 0.5,
aug_scale_max = 1.5,
with_bbox = True,
bbox_offset_factor = 0.1,
phase = "train"
)
data = dataset[0]
for key, val in data.items():
print(key, val.shape, torch.min(val), torch.max(val)) |