StyleNeRF / training /dataset.py
Jiatao Gu
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# Copyright (c) Facebook, Inc. and its affiliates. All Rights Reserved
# Copyright (c) 2021, NVIDIA CORPORATION. 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.
from curses import raw
import os
from urllib import response
import numpy as np
import zipfile
import PIL.Image
import cv2
import json
import torch
import dnnlib
try:
import pyspng
except ImportError:
pyspng = None
#----------------------------------------------------------------------------
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.
use_labels = False, # Enable conditioning labels? False = label dimension is zero.
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._use_labels = use_labels
self._raw_labels = None
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).shuffle(self._raw_idx)
self._raw_idx = np.sort(self._raw_idx[:max_size])
# Apply xflip.
self.xflip = xflip
self._xflip = np.zeros(self._raw_idx.size, dtype=np.uint8)
if xflip:
self._raw_idx = np.tile(self._raw_idx, 2)
self._xflip = np.concatenate([self._xflip, np.ones_like(self._xflip)])
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 close(self): # to be overridden by subclass
pass
def _load_raw_image(self, raw_idx): # to be overridden by subclass
raise NotImplementedError
def _load_raw_labels(self): # 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):
image = self._load_raw_image(self._raw_idx[idx])
assert isinstance(image, np.ndarray)
assert list(image.shape) == self.image_shape
assert image.dtype == np.uint8
if self._xflip[idx]:
assert image.ndim == 3 # CHW
image = image[:, :, ::-1]
return image.copy(), self.get_label(idx), idx
def get_label(self, idx):
label = self._get_raw_labels()[self._raw_idx[idx]]
if label.dtype == np.int64:
onehot = np.zeros(self.label_shape, dtype=np.float32)
onehot[label] = 1
label = onehot
return label.copy()
def get_details(self, idx):
d = dnnlib.EasyDict()
d.raw_idx = int(self._raw_idx[idx])
d.xflip = (int(self._xflip[idx]) != 0)
d.raw_label = self._get_raw_labels()[d.raw_idx].copy()
return d
@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:
raw_labels = self._get_raw_labels()
if raw_labels.dtype == np.int64:
self._label_shape = [int(np.max(raw_labels)) + 1]
else:
self._label_shape = raw_labels.shape[1:]
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 any(x != 0 for x in self.label_shape)
@property
def has_onehot_labels(self):
return self._get_raw_labels().dtype == np.int64
#----------------------------------------------------------------------------
class ImageFolderDataset(Dataset):
def __init__(self,
path, # Path to directory or zip.
resolution = None, # Ensure specific resolution, None = highest available.
**super_kwargs, # Additional arguments for the Dataset base class.
):
self._path = path
self._zipfile = None
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')
PIL.Image.init()
self._image_fnames = sorted(fname for fname in self._all_fnames if self._file_ext(fname) in PIL.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:
raw_shape[2] = raw_shape[3] = resolution
# 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_image(self, raw_idx):
fname = self._image_fnames[raw_idx]
with self._open_file(fname) as f:
if pyspng is not None and self._file_ext(fname) == '.png':
image = pyspng.load(f.read())
else:
image = np.array(PIL.Image.open(f))
if image.ndim == 2:
image = image[:, :, np.newaxis] # HW => HWC
if hasattr(self, '_raw_shape') and image.shape[-1] != self.resolution: # resize input image
image = cv2.resize(image, (self.resolution, self.resolution), interpolation=cv2.INTER_AREA)
image = image.transpose(2, 0, 1) # HWC => CHW
return image
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
def get_dali_dataloader(self, batch_size, world_size, rank, gpu): # TODO
from nvidia.dali import pipeline_def, Pipeline
import nvidia.dali.fn as fn
import nvidia.dali.types as types
from nvidia.dali.plugin.pytorch import DALIGenericIterator
@pipeline_def
def pipeline():
jpegs, _ = fn.readers.file(
file_root=self._path,
files=list(self._all_fnames),
random_shuffle=True,
shard_id=rank,
num_shards=world_size,
name='reader')
images = fn.decoders.image(jpegs, device='mixed')
mirror = fn.random.coin_flip(probability=0.5) if self.xflip else False
images = fn.crop_mirror_normalize(
images.gpu(), output_layout="CHW", dtype=types.UINT8, mirror=mirror)
labels = np.zeros([1, 0], dtype=np.float32)
return images, labels
dali_pipe = pipeline(batch_size=batch_size//world_size, num_threads=2, device_id=gpu)
dali_pipe.build()
training_set_iterator = DALIGenericIterator([dali_pipe], ['img', 'label'])
for data in training_set_iterator:
yield data[0]['img'], data[0]['label']
#----------------------------------------------------------------------------