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# MIT License
# Copyright (c) [2023] [Anima-Lab]
import io
import os
import json
import zipfile
import lmdb
import numpy as np
from PIL import Image
import torch
from torchvision.datasets import ImageFolder, VisionDataset
def center_crop_arr(pil_image, image_size):
"""
Center cropping implementation from ADM.
https://github.com/openai/guided-diffusion/blob/8fb3ad9197f16bbc40620447b2742e13458d2831/guided_diffusion/image_datasets.py#L126
"""
while min(*pil_image.size) >= 2 * image_size:
pil_image = pil_image.resize(
tuple(x // 2 for x in pil_image.size), resample=Image.BOX
)
scale = image_size / min(*pil_image.size)
pil_image = pil_image.resize(
tuple(round(x * scale) for x in pil_image.size), resample=Image.BICUBIC
)
arr = np.array(pil_image)
crop_y = (arr.shape[0] - image_size) // 2
crop_x = (arr.shape[1] - image_size) // 2
return Image.fromarray(arr[crop_y: crop_y + image_size, crop_x: crop_x + image_size])
################################################################################
# ImageNet - LMDB
###############################################################################
def lmdb_loader(path, lmdb_data, resolution):
# In-memory binary streams
with lmdb_data.begin(write=False, buffers=True) as txn:
bytedata = txn.get(path.encode('ascii'))
img = Image.open(io.BytesIO(bytedata)).convert('RGB')
arr = center_crop_arr(img, resolution)
# arr = arr.astype(np.float32) / 127.5 - 1
# arr = np.transpose(arr, [2, 0, 1]) # CHW
return arr
def imagenet_lmdb_dataset(
root,
transform=None, target_transform=None,
resolution=256):
"""
You can create this dataloader using:
train_data = imagenet_lmdb_dataset(traindir, transform=train_transform)
valid_data = imagenet_lmdb_dataset(validdir, transform=val_transform)
"""
if root.endswith('/'):
root = root[:-1]
pt_path = os.path.join(
root + '_faster_imagefolder.lmdb.pt')
lmdb_path = os.path.join(
root + '_faster_imagefolder.lmdb')
if os.path.isfile(pt_path) and os.path.isdir(lmdb_path):
print('Loading pt {} and lmdb {}'.format(pt_path, lmdb_path))
data_set = torch.load(pt_path)
else:
data_set = ImageFolder(
root, None, None, None)
torch.save(data_set, pt_path, pickle_protocol=4)
print('Saving pt to {}'.format(pt_path))
print('Building lmdb to {}'.format(lmdb_path))
env = lmdb.open(lmdb_path, map_size=1e12)
with env.begin(write=True) as txn:
for path, class_index in data_set.imgs:
with open(path, 'rb') as f:
data = f.read()
txn.put(path.encode('ascii'), data)
lmdb_dataset = ImageLMDB(lmdb_path, transform, target_transform, resolution, data_set.imgs, data_set.class_to_idx, data_set.classes)
return lmdb_dataset
################################################################################
# ImageNet Dataset class- LMDB
###############################################################################
class ImageLMDB(VisionDataset):
"""
A data loader for ImageNet LMDB dataset, which is faster than the original ImageFolder.
"""
def __init__(self, root, transform=None, target_transform=None,
resolution=256, samples=None, class_to_idx=None, classes=None):
super().__init__(root, transform=transform,
target_transform=target_transform)
self.root = root
self.resolution = resolution
self.samples = samples
self.class_to_idx = class_to_idx
self.classes = classes
def __getitem__(self, index: int):
path, target = self.samples[index]
# load image from path
if not hasattr(self, 'txn'):
self.open_db()
bytedata = self.txn.get(path.encode('ascii'))
img = Image.open(io.BytesIO(bytedata)).convert('RGB')
arr = center_crop_arr(img, self.resolution)
if self.transform is not None:
arr = self.transform(arr)
if self.target_transform is not None:
target = self.target_transform(target)
return arr, target
def __len__(self) -> int:
return len(self.samples)
def open_db(self):
self.env = lmdb.open(self.root, readonly=True, max_readers=256, lock=False, readahead=False, meminit=False)
self.txn = self.env.begin(write=False, buffers=True)
################################################################################
# ImageNet - LMDB - latent space
###############################################################################
# ----------------------------------------------------------------------------
# Abstract base class for datasets.
class Dataset(torch.utils.data.Dataset):
def __init__(self,
name, # Name of the dataset.
raw_shape, # Shape of the raw image data (NCHW).
max_size=None, # Artificially limit the size of the dataset. None = no limit. Applied before xflip.
label_dim=1000, # Ensure specific number of classes
xflip=False, # Artificially double the size of the dataset via x-flips. Applied after max_size.
random_seed=0, # Random seed to use when applying max_size.
):
self._name = name
self._raw_shape = list(raw_shape)
self._label_dim = label_dim
self._label_shape = None
# Apply max_size.
self._raw_idx = np.arange(self._raw_shape[0], dtype=np.int64)
if (max_size is not None) and (self._raw_idx.size > max_size):
np.random.RandomState(random_seed % (1 << 31)).shuffle(self._raw_idx)
self._raw_idx = np.sort(self._raw_idx[:max_size])
# Apply xflip. (Assume the dataset already contains the same number of xflipped samples)
if xflip:
self._raw_idx = np.concatenate([self._raw_idx, self._raw_idx + self._raw_shape[0]])
def close(self): # to be overridden by subclass
pass
def _load_raw_data(self, raw_idx): # to be overridden by subclass
raise NotImplementedError
def __getstate__(self):
return dict(self.__dict__, _raw_labels=None)
def __del__(self):
try:
self.close()
except:
pass
def __len__(self):
return self._raw_idx.size
def __getitem__(self, idx):
raw_idx = self._raw_idx[idx]
image, cond = self._load_raw_data(raw_idx)
assert isinstance(image, np.ndarray)
if isinstance(cond, list): # [label, feature]
cond[0] = self._get_onehot(cond[0])
else: # label
cond = self._get_onehot(cond)
return image.copy(), cond
def _get_onehot(self, label):
if isinstance(label, int) or label.dtype == np.int64:
onehot = np.zeros(self.label_shape, dtype=np.float32)
onehot[label] = 1
label = onehot
assert isinstance(label, np.ndarray)
return label.copy()
@property
def name(self):
return self._name
@property
def image_shape(self):
return list(self._raw_shape[1:])
@property
def num_channels(self):
assert len(self.image_shape) == 3 # CHW
return self.image_shape[0]
@property
def resolution(self):
assert len(self.image_shape) == 3 # CHW
assert self.image_shape[1] == self.image_shape[2]
return self.image_shape[1]
@property
def label_shape(self):
if self._label_shape is None:
self._label_shape = [self._label_dim]
return list(self._label_shape)
@property
def label_dim(self):
assert len(self.label_shape) == 1
return self.label_shape[0]
@property
def has_labels(self):
return True
# ----------------------------------------------------------------------------
# Dataset subclass that loads latent images recursively from the specified lmdb file.
class ImageNetLatentDataset(Dataset):
def __init__(self,
path, # Path to directory or zip.
resolution=32, # Ensure specific resolution, default 32.
num_channels=4, # Ensure specific number of channels, default 4.
split='train', # train or val split
feat_path=None, # Path to features lmdb file (only works when feat_cond=True)
feat_dim=0, # feature dim
**super_kwargs, # Additional arguments for the Dataset base class.
):
self._path = os.path.join(path, split)
self.feat_dim = feat_dim
if not hasattr(self, 'txn'):
self.open_lmdb()
self.feat_txn = None
if feat_path is not None and os.path.isdir(feat_path):
assert self.feat_dim > 0
self._feat_path = os.path.join(feat_path, split)
self.open_feat_lmdb()
length = int(self.txn.get('length'.encode('utf-8')).decode('utf-8'))
name = os.path.basename(path)
raw_shape = [length, num_channels, resolution, resolution] # 1281167 x 4 x 32 x 32
if raw_shape[2] != resolution or raw_shape[3] != resolution:
raise IOError('Image files do not match the specified resolution')
super().__init__(name=name, raw_shape=raw_shape, **super_kwargs)
def open_lmdb(self):
self.env = lmdb.open(self._path, readonly=True, lock=False, create=False)
self.txn = self.env.begin(write=False)
def open_feat_lmdb(self):
self.feat_env = lmdb.open(self._feat_path, readonly=True, lock=False, create=False)
self.feat_txn = self.feat_env.begin(write=False)
def _load_raw_data(self, idx):
if not hasattr(self, 'txn'):
self.open_lmdb()
z_bytes = self.txn.get(f'z-{str(idx)}'.encode('utf-8'))
y_bytes = self.txn.get(f'y-{str(idx)}'.encode('utf-8'))
z = np.frombuffer(z_bytes, dtype=np.float32).reshape([-1, self.resolution, self.resolution]).copy()
y = int(y_bytes.decode('utf-8'))
cond = y
if self.feat_txn is not None:
feat_bytes = self.feat_txn.get(f'feat-{str(idx)}'.encode('utf-8'))
feat_y_bytes = self.feat_txn.get(f'y-{str(idx)}'.encode('utf-8'))
feat = np.frombuffer(feat_bytes, dtype=np.float32).reshape([self.feat_dim]).copy()
feat_y = int(feat_y_bytes.decode('utf-8'))
assert y == feat_y, 'Ordering mismatch between txn and feat_txn!'
cond = [y, feat]
return z, cond
def close(self):
try:
if self.env is not None:
self.env.close()
if self.feat_env is not None:
self.feat_env.close()
finally:
self.env = None
self.feat_env = None
# ----------------------------------------------------------------------------
# Dataset subclass that loads images recursively from the specified directory or zip file.
class ImageFolderDataset(Dataset):
def __init__(self,
path, # Path to directory or zip.
resolution=None, # Ensure specific resolution, None = highest available.
use_labels=False, # Enable conditioning labels? False = label dimension is zero.
**super_kwargs, # Additional arguments for the Dataset base class.
):
self._path = path
self._zipfile = None
self._raw_labels = None
self._use_labels = use_labels
if os.path.isdir(self._path):
self._type = 'dir'
self._all_fnames = {os.path.relpath(os.path.join(root, fname), start=self._path) for root, _dirs, files in
os.walk(self._path) for fname in files}
elif self._file_ext(self._path) == '.zip':
self._type = 'zip'
self._all_fnames = set(self._get_zipfile().namelist())
else:
raise IOError('Path must point to a directory or zip')
Image.init()
self._image_fnames = sorted(fname for fname in self._all_fnames if self._file_ext(fname) in Image.EXTENSION)
if len(self._image_fnames) == 0:
raise IOError('No image files found in the specified path')
name = os.path.splitext(os.path.basename(self._path))[0]
raw_shape = [len(self._image_fnames)] + list(self._load_raw_image(0).shape)
if resolution is not None and (raw_shape[2] != resolution or raw_shape[3] != resolution):
raise IOError('Image files do not match the specified resolution')
super().__init__(name=name, raw_shape=raw_shape, **super_kwargs)
@staticmethod
def _file_ext(fname):
return os.path.splitext(fname)[1].lower()
def _get_zipfile(self):
assert self._type == 'zip'
if self._zipfile is None:
self._zipfile = zipfile.ZipFile(self._path)
return self._zipfile
def _open_file(self, fname):
if self._type == 'dir':
return open(os.path.join(self._path, fname), 'rb')
if self._type == 'zip':
return self._get_zipfile().open(fname, 'r')
return None
def close(self):
try:
if self._zipfile is not None:
self._zipfile.close()
finally:
self._zipfile = None
def __getstate__(self):
return dict(super().__getstate__(), _zipfile=None)
def _load_raw_data(self, raw_idx):
image = self._load_raw_image(raw_idx)
assert image.dtype == np.uint8
label = self._get_raw_labels()[raw_idx]
return image, label
def _load_raw_image(self, raw_idx):
fname = self._image_fnames[raw_idx]
with self._open_file(fname) as f:
image = np.array(Image.open(f))
if image.ndim == 2:
image = image[:, :, np.newaxis] # HW => HWC
image = image.transpose(2, 0, 1) # HWC => CHW
return image
def _get_raw_labels(self):
if self._raw_labels is None:
self._raw_labels = self._load_raw_labels() if self._use_labels else None
if self._raw_labels is None:
self._raw_labels = np.zeros([self._raw_shape[0], 0], dtype=np.float32)
assert isinstance(self._raw_labels, np.ndarray)
assert self._raw_labels.shape[0] == self._raw_shape[0]
assert self._raw_labels.dtype in [np.float32, np.int64]
if self._raw_labels.dtype == np.int64:
assert self._raw_labels.ndim == 1
assert np.all(self._raw_labels >= 0)
return self._raw_labels
def _load_raw_labels(self):
fname = 'dataset.json'
if fname not in self._all_fnames:
return None
with self._open_file(fname) as f:
labels = json.load(f)['labels']
if labels is None:
return None
labels = dict(labels)
labels = [labels[fname.replace('\\', '/')] for fname in self._image_fnames]
labels = np.array(labels)
labels = labels.astype({1: np.int64, 2: np.float32}[labels.ndim])
return labels
# ----------------------------------------------------------------------------
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