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| import functools |
| import io |
| import json |
| import os |
| import pickle |
| import sys |
| import tarfile |
| import gzip |
| import zipfile |
| from pathlib import Path |
| from typing import Callable, Optional, Tuple, Union |
|
|
| import click |
| import numpy as np |
| import PIL.Image |
| from tqdm import tqdm |
| import h5py as h5 |
|
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| |
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|
|
| def error(msg): |
| print("Error: " + msg) |
| sys.exit(1) |
|
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| |
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|
|
| def maybe_min(a: int, b: Optional[int]) -> int: |
| if b is not None: |
| return min(a, b) |
| return a |
|
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| |
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|
|
| def file_ext(name: Union[str, Path]) -> str: |
| return str(name).split(".")[-1] |
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| |
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|
|
| def is_image_ext(fname: Union[str, Path]) -> bool: |
| ext = file_ext(fname).lower() |
| return f".{ext}" in PIL.Image.EXTENSION |
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| |
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|
| 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) |
| ] |
|
|
| |
| labels = {} |
| meta_fname = os.path.join(source_dir, "dataset.json") |
| if os.path.isfile(meta_fname): |
| with open(meta_fname, "r") as file: |
| labels = json.load(file)["labels"] |
| if labels is not None: |
| labels = {x[0]: x[1] for x in labels} |
| else: |
| labels = {} |
|
|
| max_idx = maybe_min(len(input_images), max_images) |
|
|
| def iterate_images(): |
| for idx, fname in enumerate(input_images): |
| arch_fname = os.path.relpath(fname, source_dir) |
| arch_fname = arch_fname.replace("\\", "/") |
| img = np.array(PIL.Image.open(fname).convert("RGB")) |
| yield dict(img=img, label=labels.get(arch_fname)) |
| if idx >= max_idx - 1: |
| break |
|
|
| return max_idx, iterate_images() |
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| |
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|
| 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)] |
|
|
| |
| labels = {} |
| if "dataset.json" in z.namelist(): |
| with z.open("dataset.json", "r") as file: |
| labels = json.load(file)["labels"] |
| if labels is not None: |
| labels = {x[0]: x[1] for x in labels} |
| else: |
| labels = {} |
|
|
| max_idx = maybe_min(len(input_images), max_images) |
|
|
| 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 = PIL.Image.open(file) |
| img = np.array(img) |
| yield dict(img=img, label=labels.get(fname)) |
| if idx >= max_idx - 1: |
| break |
|
|
| return max_idx, iterate_images() |
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| |
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|
|
| def open_image_hdf5(source, *, max_images: Optional[int]): |
| with h5.File(source, "r") as f: |
| all_imgs = f["imgs"][:] |
| all_imgs = all_imgs.transpose(0, 2, 3, 1) |
| all_labels = f["labels"][:] |
| all_labels = all_labels.astype("int32") |
|
|
| max_idx = len(all_imgs) |
| print("max images is ", max_idx) |
|
|
| def iterate_images(): |
| for idx, img in enumerate(all_imgs): |
| yield dict(img=img, label=all_labels[idx]) |
| if idx >= max_idx - 1: |
| break |
|
|
| return max_idx, iterate_images() |
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| |
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|
|
| def open_lmdb(lmdb_dir: str, *, max_images: Optional[int]): |
| import cv2 |
| import 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] |
| 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() |
|
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| |
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|
|
| 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]) |
| 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() |
|
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|
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| |
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|
|
| 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() |
|
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| |
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|
|
| def make_transform( |
| transform: Optional[str], |
| output_width: Optional[int], |
| output_height: Optional[int], |
| resize_filter: str, |
| ) -> Callable[[np.ndarray], Optional[np.ndarray]]: |
| resample = {"box": PIL.Image.BOX, "lanczos": PIL.Image.LANCZOS}[resize_filter] |
|
|
| 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), resample) |
| 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, |
| ] |
| img = PIL.Image.fromarray(img, "RGB") |
| img = img.resize((width, height), resample) |
| 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] |
| img = PIL.Image.fromarray(img, "RGB") |
| img = img.resize((width, height), resample) |
| 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): |
| error( |
| "must specify --width and --height 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): |
| error( |
| "must specify --width and --height 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 source.rstrip("/").endswith(".hdf5"): |
| return open_image_hdf5(source, max_images=max_images) |
| elif os.path.basename(source) == "cifar-10-python.tar.gz": |
| return open_cifar10(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: |
| error(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 os.path.isdir(dest) and len(os.listdir(dest)) != 0: |
| error("--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.pass_context |
| @click.option( |
| "--source", |
| help="Directory or archive name for input dataset", |
| required=True, |
| metavar="PATH", |
| ) |
| @click.option( |
| "--dest", |
| help="Output directory or archive name for output dataset", |
| required=True, |
| metavar="PATH", |
| ) |
| @click.option( |
| "--max-images", help="Output only up to `max-images` images", type=int, default=None |
| ) |
| @click.option( |
| "--resize-filter", |
| help="Filter to use when resizing images for output resolution", |
| type=click.Choice(["box", "lanczos"]), |
| default="lanczos", |
| show_default=True, |
| ) |
| @click.option( |
| "--transform", |
| help="Input crop/resize mode", |
| type=click.Choice(["center-crop", "center-crop-wide"]), |
| ) |
| @click.option("--width", help="Output width", type=int) |
| @click.option("--height", help="Output height", type=int) |
| def convert_dataset( |
| ctx: click.Context, |
| source: str, |
| dest: str, |
| max_images: Optional[int], |
| transform: Optional[str], |
| resize_filter: str, |
| width: Optional[int], |
| height: Optional[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, the dataset is interpreted as |
| not containing class labels. |
| |
| 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 |
| --width and --height options. Output resolution will be either the original |
| input resolution (if --width/--height was not specified) or the one specified with |
| --width/height. |
| |
| 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 |
| --width and --height options. For example: |
| |
| \b |
| python dataset_tool.py --source LSUN/raw/cat_lmdb --dest /tmp/lsun_cat \\ |
| --transform=center-crop-wide --width 512 --height=384 |
| """ |
|
|
| PIL.Image.init() |
|
|
| if dest == "": |
| ctx.fail("--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) |
|
|
| transform_image = make_transform(transform, width, height, resize_filter) |
|
|
| 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" |
|
|
| |
| img = transform_image(image["img"]) |
|
|
| |
| if img is None: |
| continue |
|
|
| |
| |
| 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: |
| error( |
| f"Image dimensions after scale and crop are required to be square. Got {width}x{height}" |
| ) |
| if dataset_attrs["channels"] not in [1, 3]: |
| error("Input images must be stored as RGB or grayscale") |
| if width != 2 ** int(np.floor(np.log2(width))): |
| error( |
| "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() |
| ] |
| error( |
| f"Image {archive_fname} attributes must be equal across all images of the dataset. Got:\n" |
| + "\n".join(err) |
| ) |
|
|
| |
| 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__": |
| convert_dataset() |
|
|