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dataset_tool.py
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dataset_tool.py
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# Copyright (c) 2023, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
#
# NVIDIA CORPORATION and its licensors retain all intellectual property
# and proprietary rights in and to this software, related documentation
# and any modifications thereto. Any use, reproduction, disclosure or
# distribution of this software and related documentation without an express
# license agreement from NVIDIA CORPORATION is strictly prohibited.
"""Tool for creating ZIP/PNG based datasets."""
import functools
import PIL.Image
import gzip
import io
import json
import os
import pickle
import re
import sys
import tarfile
import zipfile
from pathlib import Path
from typing import Callable, Optional, Tuple, Union
import requests
import numpy as np
import click
from tqdm import tqdm
def parse_tuple(s: str) -> Tuple[int, int]:
"""
Parse a 'M,N' or 'MxN' integer tuple.
Example: '4x2' returns (4,2)
"""
m = re.match(r'^(\d+)[x,](\d+)$', s)
if m:
return int(m.group(1)), int(m.group(2))
raise click.ClickException(f'cannot parse tuple {s}')
def maybe_min(a: int, b: Optional[int]) -> int:
if b is not None:
return min(a, b)
return a
def file_ext(name: Union[str, Path]) -> str:
return str(name).split('.')[-1]
def is_image_ext(fname: Union[str, Path]) -> bool:
ext = file_ext(fname).lower()
return f'.{ext}' in PIL.Image.EXTENSION
def open_image_folder(source_dir, *, max_images: Optional[int]):
input_images = [str(f) for f in sorted(Path(source_dir).rglob('*')) if is_image_ext(f) and os.path.isfile(f)]
arch_fnames = {fname: os.path.relpath(fname, source_dir).replace('\\', '/') for fname in input_images}
max_idx = maybe_min(len(input_images), max_images)
# Load labels.
labels = dict()
meta_fname = os.path.join(source_dir, 'dataset.json')
if os.path.isfile(meta_fname):
with open(meta_fname, 'r') as file:
data = json.load(file)['labels']
if data is not None:
labels = {x[0]: x[1] for x in data}
# No labels available => determine from top-level directory names.
if len(labels) == 0:
toplevel_names = {arch_fname: arch_fname.split('/')[0] if '/' in arch_fname else '' for arch_fname in arch_fnames.values()}
toplevel_indices = {toplevel_name: idx for idx, toplevel_name in enumerate(sorted(set(toplevel_names.values())))}
if len(toplevel_indices) > 1:
labels = {arch_fname: toplevel_indices[toplevel_name] for arch_fname, toplevel_name in toplevel_names.items()}
def iterate_images():
for idx, fname in enumerate(input_images):
img = np.array(PIL.Image.open(fname))
yield dict(img=img, label=labels.get(arch_fnames.get(fname)))
if idx >= max_idx - 1:
break
return max_idx, iterate_images()
def open_image_zip(source, *, max_images: Optional[int]):
with zipfile.ZipFile(source, mode='r') as z:
input_images = [str(f) for f in sorted(z.namelist()) if is_image_ext(f)]
max_idx = maybe_min(len(input_images), max_images)
# Load labels.
labels = dict()
if 'dataset.json' in z.namelist():
with z.open('dataset.json', 'r') as file:
data = json.load(file)['labels']
if data is not None:
labels = {x[0]: x[1] for x in data}
def iterate_images():
with zipfile.ZipFile(source, mode='r') as z:
for idx, fname in enumerate(input_images):
with z.open(fname, 'r') as file:
img = np.array(PIL.Image.open(file))
yield dict(img=img, label=labels.get(fname))
if idx >= max_idx - 1:
break
return max_idx, iterate_images()
def open_lmdb(lmdb_dir: str, *, max_images: Optional[int]):
import cv2 # pyright: ignore [reportMissingImports] # pip install opencv-python
import lmdb # pyright: ignore [reportMissingImports] # pip install lmdb
with lmdb.open(lmdb_dir, readonly=True, lock=False).begin(write=False) as txn:
max_idx = maybe_min(txn.stat()['entries'], max_images)
def iterate_images():
with lmdb.open(lmdb_dir, readonly=True, lock=False).begin(write=False) as txn:
for idx, (_key, value) in enumerate(txn.cursor()):
try:
try:
img = cv2.imdecode(np.frombuffer(value, dtype=np.uint8), 1)
if img is None:
raise IOError('cv2.imdecode failed')
img = img[:, :, ::-1] # BGR => RGB
except IOError:
img = np.array(PIL.Image.open(io.BytesIO(value)))
yield dict(img=img, label=None)
if idx >= max_idx - 1:
break
except:
print(sys.exc_info()[1])
return max_idx, iterate_images()
def open_coco(source: str, *, max_images: Optional[int]):
''' Not the most efficient way, but only needs to run once'''
with open(source, 'r') as file:
data = json.load(file)
ids = []
id2url = dict()
id2captions = dict()
# Get ids and urls.
for imgdir in data['images']:
ids.append(imgdir['id'])
id2url[imgdir['id']] = imgdir['coco_url']
id2captions[imgdir['id']] = list()
max_idx = maybe_min(len(ids), max_images)
for capdir in data['annotations']:
# In average, there are 5 captions per image.
id2captions[capdir["image_id"]].append(capdir["caption"])
def iterate_images():
for idx in range(len(ids)):
# Stream the image.
url = id2url[ids[idx]]
response = requests.get(url)
img = PIL.Image.open(io.BytesIO(response.content))
img = np.array(img)
# Get caption and sample one randomly.
captions = id2captions[ids[idx]]
caption = captions[np.random.randint(0, len(captions))]
yield dict(img=img, label=caption)
if idx >= max_idx - 1:
break
return max_idx, iterate_images()
def open_cifar10(tarball: str, *, max_images: Optional[int]):
images = []
labels = []
with tarfile.open(tarball, 'r:gz') as tar:
for batch in range(1, 6):
member = tar.getmember(f'cifar-10-batches-py/data_batch_{batch}')
with tar.extractfile(member) as file:
data = pickle.load(file, encoding='latin1')
images.append(data['data'].reshape(-1, 3, 32, 32))
labels.append(data['labels'])
images = np.concatenate(images)
labels = np.concatenate(labels)
images = images.transpose([0, 2, 3, 1]) # NCHW -> NHWC
assert images.shape == (50000, 32, 32, 3) and images.dtype == np.uint8
assert labels.shape == (50000,) and labels.dtype in [np.int32, np.int64]
assert np.min(images) == 0 and np.max(images) == 255
assert np.min(labels) == 0 and np.max(labels) == 9
max_idx = maybe_min(len(images), max_images)
def iterate_images():
for idx, img in enumerate(images):
yield dict(img=img, label=int(labels[idx]))
if idx >= max_idx - 1:
break
return max_idx, iterate_images()
def open_mnist(images_gz: str, *, max_images: Optional[int]):
labels_gz = images_gz.replace('-images-idx3-ubyte.gz', '-labels-idx1-ubyte.gz')
assert labels_gz != images_gz
images = []
labels = []
with gzip.open(images_gz, 'rb') as f:
images = np.frombuffer(f.read(), np.uint8, offset=16)
with gzip.open(labels_gz, 'rb') as f:
labels = np.frombuffer(f.read(), np.uint8, offset=8)
images = images.reshape(-1, 28, 28)
images = np.pad(images, [(0,0), (2,2), (2,2)], 'constant', constant_values=0)
assert images.shape == (60000, 32, 32) and images.dtype == np.uint8
assert labels.shape == (60000,) and labels.dtype == np.uint8
assert np.min(images) == 0 and np.max(images) == 255
assert np.min(labels) == 0 and np.max(labels) == 9
max_idx = maybe_min(len(images), max_images)
def iterate_images():
for idx, img in enumerate(images):
yield dict(img=img, label=int(labels[idx]))
if idx >= max_idx - 1:
break
return max_idx, iterate_images()
def make_transform(
transform: Optional[str],
output_width: Optional[int],
output_height: Optional[int]
) -> Callable[[np.ndarray], Optional[np.ndarray]]:
def scale(width, height, img):
w = img.shape[1]
h = img.shape[0]
if width == w and height == h:
return img
img = PIL.Image.fromarray(img)
ww = width if width is not None else w
hh = height if height is not None else h
img = img.resize((ww, hh), PIL.Image.Resampling.LANCZOS)
return np.array(img)
def center_crop(width, height, img):
crop = np.min(img.shape[:2])
img = img[(img.shape[0] - crop) // 2 : (img.shape[0] + crop) // 2, (img.shape[1] - crop) // 2 : (img.shape[1] + crop) // 2]
if img.ndim == 2:
img = img[:, :, np.newaxis].repeat(3, axis=2)
img = PIL.Image.fromarray(img, 'RGB')
img = img.resize((width, height), PIL.Image.Resampling.LANCZOS)
return np.array(img)
def center_crop_wide(width, height, img):
ch = int(np.round(width * img.shape[0] / img.shape[1]))
if img.shape[1] < width or ch < height:
return None
img = img[(img.shape[0] - ch) // 2 : (img.shape[0] + ch) // 2]
if img.ndim == 2:
img = img[:, :, np.newaxis].repeat(3, axis=2)
img = PIL.Image.fromarray(img, 'RGB')
img = img.resize((width, height), PIL.Image.Resampling.LANCZOS)
img = np.array(img)
canvas = np.zeros([width, width, 3], dtype=np.uint8)
canvas[(width - height) // 2 : (width + height) // 2, :] = img
return canvas
if transform is None:
return functools.partial(scale, output_width, output_height)
if transform == 'center-crop':
if output_width is None or output_height is None:
raise click.ClickException('must specify --resolution=WxH when using ' + transform + 'transform')
return functools.partial(center_crop, output_width, output_height)
if transform == 'center-crop-wide':
if output_width is None or output_height is None:
raise click.ClickException('must specify --resolution=WxH when using ' + transform + ' transform')
return functools.partial(center_crop_wide, output_width, output_height)
assert False, 'unknown transform'
def open_dataset(source, *, max_images: Optional[int]):
if os.path.isdir(source):
if source.rstrip('/').endswith('_lmdb'):
return open_lmdb(source, max_images=max_images)
else:
return open_image_folder(source, max_images=max_images)
elif os.path.isfile(source):
if os.path.basename(source) == 'cifar-10-python.tar.gz':
return open_cifar10(source, max_images=max_images)
elif os.path.basename(source) == 'captions_val2014.json':
return open_coco(source, max_images=max_images)
elif os.path.basename(source) == 'train-images-idx3-ubyte.gz':
return open_mnist(source, max_images=max_images)
elif file_ext(source) == 'zip':
return open_image_zip(source, max_images=max_images)
else:
assert False, 'unknown archive type'
else:
raise click.ClickException(f'Missing input file or directory: {source}')
def open_dest(dest: str) -> Tuple[str, Callable[[str, Union[bytes, str]], None], Callable[[], None]]:
dest_ext = file_ext(dest)
if dest_ext == 'zip':
if os.path.dirname(dest) != '':
os.makedirs(os.path.dirname(dest), exist_ok=True)
zf = zipfile.ZipFile(file=dest, mode='w', compression=zipfile.ZIP_STORED)
def zip_write_bytes(fname: str, data: Union[bytes, str]):
zf.writestr(fname, data)
return '', zip_write_bytes, zf.close
else:
# If the output folder already exists, check that is is
# empty.
#
# Note: creating the output directory is not strictly
# necessary as folder_write_bytes() also mkdirs, but it's better
# to give an error message earlier in case the dest folder
# somehow cannot be created.
if os.path.isdir(dest) and len(os.listdir(dest)) != 0:
raise click.ClickException('--dest folder must be empty')
os.makedirs(dest, exist_ok=True)
def folder_write_bytes(fname: str, data: Union[bytes, str]):
os.makedirs(os.path.dirname(fname), exist_ok=True)
with open(fname, 'wb') as fout:
if isinstance(data, str):
data = data.encode('utf8')
fout.write(data)
return dest, folder_write_bytes, lambda: None
@click.command()
@click.option('--source', help='Input directory or archive name', metavar='PATH', type=str, required=True)
@click.option('--dest', help='Output directory or archive name', metavar='PATH', type=str, required=True)
@click.option('--max-images', help='Maximum number of images to output', metavar='INT', type=int)
@click.option('--transform', help='Input crop/resize mode', metavar='MODE', type=click.Choice(['center-crop', 'center-crop-wide']))
@click.option('--resolution', help='Output resolution (e.g., 512x512)', metavar='WxH', type=parse_tuple)
def main(
source: str,
dest: str,
max_images: Optional[int],
transform: Optional[str],
resolution: Optional[Tuple[int, int]]
):
"""Convert an image dataset into a dataset archive usable with StyleGAN2 ADA PyTorch.
The input dataset format is guessed from the --source argument:
\b
--source *_lmdb/ Load LSUN dataset
--source cifar-10-python.tar.gz Load CIFAR-10 dataset
--source train-images-idx3-ubyte.gz Load MNIST dataset
--source path/ Recursively load all images from path/
--source dataset.zip Recursively load all images from dataset.zip
Specifying the output format and path:
\b
--dest /path/to/dir Save output files under /path/to/dir
--dest /path/to/dataset.zip Save output files into /path/to/dataset.zip
The output dataset format can be either an image folder or an uncompressed zip archive.
Zip archives makes it easier to move datasets around file servers and clusters, and may
offer better training performance on network file systems.
Images within the dataset archive will be stored as uncompressed PNG.
Uncompresed PNGs can be efficiently decoded in the training loop.
Class labels are stored in a file called 'dataset.json' that is stored at the
dataset root folder. This file has the following structure:
\b
{
"labels": [
["00000/img00000000.png",6],
["00000/img00000001.png",9],
... repeated for every image in the datase
["00049/img00049999.png",1]
]
}
If the 'dataset.json' file cannot be found, class labels are determined from
top-level directory names.
Image scale/crop and resolution requirements:
Output images must be square-shaped and they must all have the same power-of-two
dimensions.
To scale arbitrary input image size to a specific width and height, use the
--resolution option. Output resolution will be either the original
input resolution (if resolution was not specified) or the one specified with
--resolution option.
Use the --transform=center-crop or --transform=center-crop-wide options to apply a
center crop transform on the input image. These options should be used with the
--resolution option. For example:
\b
python dataset_tool.py --source LSUN/raw/cat_lmdb --dest /tmp/lsun_cat \\
--transform=center-crop-wide --resolution=512x384
"""
PIL.Image.init()
if dest == '':
raise click.ClickException('--dest output filename or directory must not be an empty string')
num_files, input_iter = open_dataset(source, max_images=max_images)
archive_root_dir, save_bytes, close_dest = open_dest(dest)
if resolution is None: resolution = (None, None)
transform_image = make_transform(transform, *resolution)
dataset_attrs = None
labels = []
for idx, image in tqdm(enumerate(input_iter), total=num_files):
idx_str = f'{idx:08d}'
archive_fname = f'{idx_str[:5]}/img{idx_str}.png'
# Apply crop and resize.
img = transform_image(image['img'])
if img is None:
continue
# Error check to require uniform image attributes across
# the whole dataset.
channels = img.shape[2] if img.ndim == 3 else 1
cur_image_attrs = {'width': img.shape[1], 'height': img.shape[0], 'channels': channels}
if dataset_attrs is None:
dataset_attrs = cur_image_attrs
width = dataset_attrs['width']
height = dataset_attrs['height']
if width != height:
raise click.ClickException(f'Image dimensions after scale and crop are required to be square. Got {width}x{height}')
if dataset_attrs['channels'] not in [1, 3]:
raise click.ClickException('Input images must be stored as RGB or grayscale')
if width != 2 ** int(np.floor(np.log2(width))):
raise click.ClickException('Image width/height after scale and crop are required to be power-of-two')
elif dataset_attrs != cur_image_attrs:
err = [f' dataset {k}/cur image {k}: {dataset_attrs[k]}/{cur_image_attrs[k]}' for k in dataset_attrs.keys()]
raise click.ClickException(f'Image {archive_fname} attributes must be equal across all images of the dataset. Got:\n' + '\n'.join(err))
# Save the image as an uncompressed PNG.
img = PIL.Image.fromarray(img, {1: 'L', 3: 'RGB'}[channels])
image_bits = io.BytesIO()
img.save(image_bits, format='png', compress_level=0, optimize=False)
save_bytes(os.path.join(archive_root_dir, archive_fname), image_bits.getbuffer())
labels.append([archive_fname, image['label']] if image['label'] is not None else None)
metadata = {'labels': labels if all(x is not None for x in labels) else None}
save_bytes(os.path.join(archive_root_dir, 'dataset.json'), json.dumps(metadata))
close_dest()
if __name__ == "__main__":
main()