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builder.py
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builder.py
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import json
import os
import sys
import warnings
from subprocess import call
import torch
from torch.utils.data import default_collate
from torchvision.datasets import (CIFAR10, CIFAR100, DTD, GTSRB, MNIST, PCAM,
STL10, SUN397, CocoCaptions, Country211,
EuroSAT, FGVCAircraft, Flowers102, Food101,
ImageFolder, ImageNet, OxfordIIITPet,
RenderedSST2, StanfordCars)
from . import (babel_imagenet, caltech101, flickr, imagenetv2, objectnet,
sugar_crepe, voc2007, winoground)
def build_dataset(dataset_name, root="root", transform=None, split="test", download=True, annotation_file=None, language="en", task="zeroshot_classification", wds_cache_dir=None, custom_classname_file=None, custom_template_file=None, **kwargs):
"""
Main function to use in order to build a dataset instance,
dataset_name: str
name of the dataset
root: str
root folder where the dataset is downloaded and stored. can be shared among datasets.
transform: torchvision transform applied to images
split: str
split to use, depending on the dataset can have different options.
In general, `train` and `test` are available.
For specific splits, please look at the corresponding dataset.
annotation_file: str or None
only for datasets with captions (used for retrieval) such as COCO
and Flickr.
custom_classname_file: str or None
Custom classname file where keys are dataset names and values are list of classnames.
custom_template_file: str or None
Custom template file where keys are dataset names and values are list of prompts, or dicts
where keys are classnames and values are class-specific prompts.
"""
use_classnames_and_templates = task in ('zeroshot_classification', 'linear_probe')
if use_classnames_and_templates: # Only load templates and classnames if we have to
current_folder = os.path.dirname(__file__)
# Load <LANG>_classnames.json (packaged with CLIP benchmark that are used by default)
default_classname_file = os.path.join(current_folder, language + "_classnames.json")
if os.path.exists(default_classname_file):
with open(default_classname_file, "r") as f:
default_classnames = json.load(f)
else:
default_classnames = None
# Load <LANG>_zeroshot_classification_templates.json (packaged with CLIP benchmark that are used by default)
default_template_file = os.path.join(current_folder, language + "_zeroshot_classification_templates.json")
if os.path.exists(default_template_file):
with open(default_template_file, "r") as f:
default_templates = json.load(f)
else:
default_templates = None
# Load custom classnames file if --custom_classname_file is specified
if custom_classname_file:
if not os.path.exists(custom_classname_file):
custom_classname_file = os.path.join(current_folder, custom_classname_file)
assert os.path.exists(custom_classname_file), f"Custom classname file '{custom_classname_file}' does not exist"
with open(custom_classname_file, "r") as f:
custom_classnames = json.load(f)
else:
custom_classnames = None
# Load custom template file if --custom_template_file is specified
if custom_template_file:
if not os.path.exists(custom_template_file):
# look at current_folder
custom_template_file = os.path.join(current_folder, custom_template_file)
assert os.path.exists(custom_template_file), f"Custom template file '{custom_template_file}' does not exist"
with open(custom_template_file, "r") as f:
custom_templates = json.load(f)
else:
custom_templates = None
def download_imagenet(r):
os.makedirs(r, exist_ok=True)
call(f"wget https://image-net.org/data/ILSVRC/2012/ILSVRC2012_devkit_t12.tar.gz --output-document={r}/ILSVRC2012_devkit_t12.tar.gz", shell=True)
call(f"wget https://image-net.org/data/ILSVRC/2012/ILSVRC2012_img_val.tar --output-document={r}/ILSVRC2012_img_val.tar", shell=True)
train = (split == "train")
if dataset_name == "cifar10":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
ds = CIFAR10(root=root, train=train, transform=transform, download=download, **kwargs)
elif dataset_name == "cifar100":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
ds = CIFAR100(root=root, train=train, transform=transform, download=download, **kwargs)
elif dataset_name == "imagenet1k":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
if not os.path.exists(root):
download_imagenet(root)
ds = ImageNet(root=root, split="train" if train else "val", transform=transform, **kwargs)
ds.classes = default_classnames["imagenet1k"]
elif dataset_name == "imagenet-w":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
from imagenet_w import AddWatermark
from torchvision.transforms import CenterCrop, Normalize
if not os.path.exists(root):
download_imagenet(root)
index_normalize = None
crop_size = None
for i, t in enumerate(transform.transforms):
if isinstance(t, Normalize):
index_normalize = i
elif isinstance(t, CenterCrop):
crop_size = min(t.size)
assert crop_size is not None, "CenterCrop not found in transform"
assert index_normalize is not None, "Normalize not found in transform"
transform.transforms.insert(index_normalize, AddWatermark(crop_size))
ds = ImageNet(root=root, split="train" if train else "val", transform=transform, **kwargs)
ds.classes = custom_classnames["imagenet1k"]
elif dataset_name == "babel_imagenet":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
# babel ImageNet from https://github.com/gregor-ge/Babel-ImageNet
if not os.path.exists(root):
download_imagenet(root)
classnames = json.load(open(os.path.join(current_folder, "babel_imagenet.json")))
assert language.upper() in classnames, f"Language '{language}' not supported for Babel-ImageNet"
classnames = classnames[language.upper()]
templates = json.load(open(os.path.join(current_folder, "nllb_dist13b_prompts.json")))
templates = templates[language.upper()]
templates = [t.replace('{}', '{c}') for t in templates]
idxs, classnames = classnames
ds = babel_imagenet.BabelImageNet(root=root, idxs=idxs, split="train" if train else "val", transform=transform, **kwargs)
ds.classes = classnames
ds.templates = templates
elif dataset_name == "imagenet1k-unverified":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
split = "train" if train else "val"
ds = ImageFolder(root=os.path.join(root, split), transform=transform, **kwargs)
# use classnames from OpenAI
ds.classes = default_classnames["imagenet1k"]
elif dataset_name == "imagenetv2":
assert split == "test", f"Only `test` split available for {dataset_name}"
os.makedirs(root, exist_ok=True)
ds = imagenetv2.ImageNetV2Dataset(variant="matched-frequency", transform=transform, location=root)
ds.classes = default_classnames["imagenet1k"]
elif dataset_name == "imagenet_sketch":
assert split == "test", f"Only `test` split available for {dataset_name}"
# Downloadable from https://drive.google.com/open?id=1Mj0i5HBthqH1p_yeXzsg22gZduvgoNeA
if not os.path.exists(root):
# Automatic download
print("Downloading imagenet_sketch...")
if not has_gdown():
print("GDown is needed to download the dataset. Please install it via `pip install gdown`")
sys.exit(1)
# Download ImageNet-Sketch.zip
call("gdown --id 1Mj0i5HBthqH1p_yeXzsg22gZduvgoNeA", shell=True)
assert os.path.exists("ImageNet-Sketch.zip")
# Unzip and move to `root`
call("unzip ImageNet-Sketch.zip", shell=True)
call(f"mv sketch {root}", shell=True)
ds = ImageFolder(root=root, transform=transform, **kwargs)
ds.classes = default_classnames["imagenet1k"]
elif dataset_name == "imagenet-a":
assert split == "test", f"Only `test` split available for {dataset_name}"
# Downloadable from https://people.eecs.berkeley.edu/~hendrycks/imagenet-a.tar
if not os.path.exists(root):
print("Downloading imagenet-a...")
call("wget https://people.eecs.berkeley.edu/~hendrycks/imagenet-a.tar", shell=True)
# Untar and move to `root`
call("tar xvf imagenet-a.tar", shell=True)
call(f"mv imagenet-a {root}", shell=True)
ds = ImageFolder(root=root, transform=transform, **kwargs)
ds.classes = default_classnames["imagenet1k"]
imagenet_a_wnids = ['n01498041', 'n01531178', 'n01534433', 'n01558993', 'n01580077', 'n01614925', 'n01616318', 'n01631663', 'n01641577', 'n01669191', 'n01677366', 'n01687978', 'n01694178', 'n01698640', 'n01735189', 'n01770081', 'n01770393', 'n01774750', 'n01784675', 'n01819313', 'n01820546', 'n01833805', 'n01843383', 'n01847000', 'n01855672', 'n01882714', 'n01910747', 'n01914609', 'n01924916', 'n01944390', 'n01985128', 'n01986214', 'n02007558', 'n02009912', 'n02037110', 'n02051845', 'n02077923', 'n02085620', 'n02099601', 'n02106550', 'n02106662', 'n02110958', 'n02119022', 'n02123394', 'n02127052', 'n02129165', 'n02133161', 'n02137549', 'n02165456', 'n02174001', 'n02177972', 'n02190166', 'n02206856', 'n02219486', 'n02226429', 'n02231487', 'n02233338', 'n02236044', 'n02259212', 'n02268443', 'n02279972', 'n02280649', 'n02281787', 'n02317335', 'n02325366', 'n02346627', 'n02356798', 'n02361337', 'n02410509', 'n02445715', 'n02454379', 'n02486410', 'n02492035', 'n02504458', 'n02655020', 'n02669723', 'n02672831', 'n02676566', 'n02690373', 'n02701002', 'n02730930', 'n02777292', 'n02782093', 'n02787622', 'n02793495', 'n02797295', 'n02802426', 'n02814860', 'n02815834', 'n02837789', 'n02879718', 'n02883205', 'n02895154', 'n02906734', 'n02948072', 'n02951358', 'n02980441', 'n02992211', 'n02999410', 'n03014705', 'n03026506', 'n03124043', 'n03125729', 'n03187595', 'n03196217', 'n03223299', 'n03250847', 'n03255030', 'n03291819', 'n03325584', 'n03355925', 'n03384352', 'n03388043', 'n03417042', 'n03443371', 'n03444034', 'n03445924', 'n03452741', 'n03483316', 'n03584829', 'n03590841', 'n03594945', 'n03617480', 'n03666591', 'n03670208', 'n03717622', 'n03720891', 'n03721384', 'n03724870', 'n03775071', 'n03788195', 'n03804744', 'n03837869', 'n03840681', 'n03854065', 'n03888257', 'n03891332', 'n03935335', 'n03982430', 'n04019541', 'n04033901', 'n04039381', 'n04067472', 'n04086273', 'n04099969', 'n04118538', 'n04131690', 'n04133789', 'n04141076', 'n04146614', 'n04147183', 'n04179913', 'n04208210', 'n04235860', 'n04252077', 'n04252225', 'n04254120', 'n04270147', 'n04275548', 'n04310018', 'n04317175', 'n04344873', 'n04347754', 'n04355338', 'n04366367', 'n04376876', 'n04389033', 'n04399382', 'n04442312', 'n04456115', 'n04482393', 'n04507155', 'n04509417', 'n04532670', 'n04540053', 'n04554684', 'n04562935', 'n04591713', 'n04606251', 'n07583066', 'n07695742', 'n07697313', 'n07697537', 'n07714990', 'n07718472', 'n07720875', 'n07734744', 'n07749582', 'n07753592', 'n07760859', 'n07768694', 'n07831146', 'n09229709', 'n09246464', 'n09472597', 'n09835506', 'n11879895', 'n12057211', 'n12144580', 'n12267677']
imagenet_a_mask = [wnid in set(imagenet_a_wnids) for wnid in all_imagenet_wordnet_ids]
ds.classes = [cl for cl, mask in zip(ds.classes, imagenet_a_mask) if mask]
elif dataset_name == "imagenet-r":
assert split == "test", f"Only `test` split available for {dataset_name}"
# downloadable from https://people.eecs.berkeley.edu/~hendrycks/imagenet-r.tar
if not os.path.exists(root):
print("Downloading imagenet-r...")
call("wget https://people.eecs.berkeley.edu/~hendrycks/imagenet-r.tar", shell=True)
# Untar and move to `root`
call("tar xvf imagenet-r.tar", shell=True)
call(f"mv imagenet-r {root}", shell=True)
imagenet_r_wnids = {'n01443537', 'n01484850', 'n01494475', 'n01498041', 'n01514859', 'n01518878', 'n01531178', 'n01534433', 'n01614925', 'n01616318', 'n01630670', 'n01632777', 'n01644373', 'n01677366', 'n01694178', 'n01748264', 'n01770393', 'n01774750', 'n01784675', 'n01806143', 'n01820546', 'n01833805', 'n01843383', 'n01847000', 'n01855672', 'n01860187', 'n01882714', 'n01910747', 'n01944390', 'n01983481', 'n01986214', 'n02007558', 'n02009912', 'n02051845', 'n02056570', 'n02066245', 'n02071294', 'n02077923', 'n02085620', 'n02086240', 'n02088094', 'n02088238', 'n02088364', 'n02088466', 'n02091032', 'n02091134', 'n02092339', 'n02094433', 'n02096585', 'n02097298', 'n02098286', 'n02099601', 'n02099712', 'n02102318', 'n02106030', 'n02106166', 'n02106550', 'n02106662', 'n02108089', 'n02108915', 'n02109525', 'n02110185', 'n02110341', 'n02110958', 'n02112018', 'n02112137', 'n02113023', 'n02113624', 'n02113799', 'n02114367', 'n02117135', 'n02119022', 'n02123045', 'n02128385', 'n02128757', 'n02129165', 'n02129604', 'n02130308', 'n02134084', 'n02138441', 'n02165456', 'n02190166', 'n02206856', 'n02219486', 'n02226429', 'n02233338', 'n02236044', 'n02268443', 'n02279972', 'n02317335', 'n02325366', 'n02346627', 'n02356798', 'n02363005', 'n02364673', 'n02391049', 'n02395406', 'n02398521', 'n02410509', 'n02423022', 'n02437616', 'n02445715', 'n02447366', 'n02480495', 'n02480855', 'n02481823', 'n02483362', 'n02486410', 'n02510455', 'n02526121', 'n02607072', 'n02655020', 'n02672831', 'n02701002', 'n02749479', 'n02769748', 'n02793495', 'n02797295', 'n02802426', 'n02808440', 'n02814860', 'n02823750', 'n02841315', 'n02843684', 'n02883205', 'n02906734', 'n02909870', 'n02939185', 'n02948072', 'n02950826', 'n02951358', 'n02966193', 'n02980441', 'n02992529', 'n03124170', 'n03272010', 'n03345487', 'n03372029', 'n03424325', 'n03452741', 'n03467068', 'n03481172', 'n03494278', 'n03495258', 'n03498962', 'n03594945', 'n03602883', 'n03630383', 'n03649909', 'n03676483', 'n03710193', 'n03773504', 'n03775071', 'n03888257', 'n03930630', 'n03947888', 'n04086273', 'n04118538', 'n04133789', 'n04141076', 'n04146614', 'n04147183', 'n04192698', 'n04254680', 'n04266014', 'n04275548', 'n04310018', 'n04325704', 'n04347754', 'n04389033', 'n04409515', 'n04465501', 'n04487394', 'n04522168', 'n04536866', 'n04552348', 'n04591713', 'n07614500', 'n07693725', 'n07695742', 'n07697313', 'n07697537', 'n07714571', 'n07714990', 'n07718472', 'n07720875', 'n07734744', 'n07742313', 'n07745940', 'n07749582', 'n07753275', 'n07753592', 'n07768694', 'n07873807', 'n07880968', 'n07920052', 'n09472597', 'n09835506', 'n10565667', 'n12267677'}
imagenet_r_mask = [wnid in imagenet_r_wnids for wnid in all_imagenet_wordnet_ids]
ds = ImageFolder(root=root, transform=transform, **kwargs)
ds.classes = default_classnames["imagenet1k"]
ds.classes = [cl for cl, mask in zip(ds.classes, imagenet_r_mask) if mask]
elif dataset_name == "imagenet-o":
assert split == "test", f"Only `test` split available for {dataset_name}"
# downloadable from https://people.eecs.berkeley.edu/~hendrycks/imagenet-o.tar
if not os.path.exists(root):
print("Downloading imagenet-o...")
call("wget https://people.eecs.berkeley.edu/~hendrycks/imagenet-o.tar", shell=True)
# Untar and move to `root`
call("tar xvf imagenet-o.tar", shell=True)
call(f"mv imagenet-o {root}", shell=True)
ds = ImageFolder(root=root, transform=transform, **kwargs)
ds.classes = default_classnames["imagenet1k"]
imagenet_o_wnids = ['n01443537', 'n01704323', 'n01770081', 'n01784675', 'n01819313', 'n01820546', 'n01910747', 'n01917289', 'n01968897', 'n02074367', 'n02317335', 'n02319095', 'n02395406', 'n02454379', 'n02606052', 'n02655020', 'n02666196', 'n02672831', 'n02730930', 'n02777292', 'n02783161', 'n02786058', 'n02787622', 'n02791270', 'n02808304', 'n02817516', 'n02841315', 'n02865351', 'n02877765', 'n02892767', 'n02906734', 'n02910353', 'n02916936', 'n02948072', 'n02965783', 'n03000134', 'n03000684', 'n03017168', 'n03026506', 'n03032252', 'n03075370', 'n03109150', 'n03126707', 'n03134739', 'n03160309', 'n03196217', 'n03207743', 'n03218198', 'n03223299', 'n03240683', 'n03271574', 'n03291819', 'n03297495', 'n03314780', 'n03325584', 'n03344393', 'n03347037', 'n03372029', 'n03376595', 'n03388043', 'n03388183', 'n03400231', 'n03445777', 'n03457902', 'n03467068', 'n03482405', 'n03483316', 'n03494278', 'n03530642', 'n03544143', 'n03584829', 'n03590841', 'n03598930', 'n03602883', 'n03649909', 'n03661043', 'n03666591', 'n03676483', 'n03692522', 'n03706229', 'n03717622', 'n03720891', 'n03721384', 'n03724870', 'n03729826', 'n03733131', 'n03733281', 'n03742115', 'n03786901', 'n03788365', 'n03794056', 'n03804744', 'n03814639', 'n03814906', 'n03825788', 'n03840681', 'n03843555', 'n03854065', 'n03857828', 'n03868863', 'n03874293', 'n03884397', 'n03891251', 'n03908714', 'n03920288', 'n03929660', 'n03930313', 'n03937543', 'n03942813', 'n03944341', 'n03961711', 'n03970156', 'n03982430', 'n03991062', 'n03995372', 'n03998194', 'n04005630', 'n04023962', 'n04033901', 'n04040759', 'n04067472', 'n04074963', 'n04116512', 'n04118776', 'n04125021', 'n04127249', 'n04131690', 'n04141975', 'n04153751', 'n04154565', 'n04201297', 'n04204347', 'n04209133', 'n04209239', 'n04228054', 'n04235860', 'n04243546', 'n04252077', 'n04254120', 'n04258138', 'n04265275', 'n04270147', 'n04275548', 'n04330267', 'n04332243', 'n04336792', 'n04347754', 'n04371430', 'n04371774', 'n04372370', 'n04376876', 'n04409515', 'n04417672', 'n04418357', 'n04423845', 'n04429376', 'n04435653', 'n04442312', 'n04482393', 'n04501370', 'n04507155', 'n04525305', 'n04542943', 'n04554684', 'n04557648', 'n04562935', 'n04579432', 'n04591157', 'n04597913', 'n04599235', 'n06785654', 'n06874185', 'n07615774', 'n07693725', 'n07695742', 'n07697537', 'n07711569', 'n07714990', 'n07715103', 'n07716358', 'n07717410', 'n07718472', 'n07720875', 'n07742313', 'n07745940', 'n07747607', 'n07749582', 'n07753275', 'n07753592', 'n07754684', 'n07768694', 'n07836838', 'n07871810', 'n07873807', 'n07880968', 'n09229709', 'n09472597', 'n12144580', 'n12267677', 'n13052670']
imagenet_o_mask = [wnid in set(imagenet_o_wnids) for wnid in all_imagenet_wordnet_ids]
ds.classes = [cl for cl, mask in zip(ds.classes, imagenet_o_mask) if mask]
elif dataset_name == "objectnet":
assert split == "test", f"Only `test` split available for {dataset_name}"
# downloadable from https://objectnet.dev/downloads/objectnet-1.0.zip or https://www.dropbox.com/s/raw/cxeztdtm16nzvuw/objectnet-1.0.zip
if not os.path.exists(root):
print("Downloading objectnet...")
call("wget https://objectnet.dev/downloads/objectnet-1.0.zip", shell=True)
# Untar and move to `root`
call("UNZIP_DISABLE_ZIPBOMB_DETECTION=TRUE unzip -P objectnetisatestset objectnet-1.0.zip", shell=True)
os.makedirs(root)
call(f"mv objectnet-1.0 {root}", shell=True)
call(f"cp {root}/objectnet-1.0/mappings/* {root}", shell=True)
ds = objectnet.ObjectNetDataset(root=root, transform=transform)
elif dataset_name == "voc2007":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
ds = voc2007.PASCALVoc2007Cropped(root=root, set=split, transform=transform, download=download, **kwargs)
elif dataset_name == "voc2007_multilabel":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
ds = voc2007.PASCALVoc2007(root=root, set=split, transform=transform, download=download, **kwargs)
elif dataset_name.startswith("sugar_crepe"):
# https://github.com/RAIVNLab/sugar-crepe/tree/main
_, task = dataset_name.split("/")
assert task in ("add_att", "add_obj", "replace_att", "replace_obj", "replace_rel", "swap_att", "swap_obj"), f"Unknown task {task} for {dataset_name}"
assert split == "test", f"Only `test` split available for {dataset_name}"
archive_name = "val2017.zip"
root_split = os.path.join(root, archive_name.replace(".zip", ""))
if not os.path.exists(root_split):
print(f"Downloading coco captions {archive_name}...")
if not os.path.exists(os.path.join(root, archive_name)):
call(f"wget http://images.cocodataset.org/zips/{archive_name} --output-document={root}/{archive_name}", shell=True)
call(f"unzip {root}/{archive_name} -d {root}", shell=True)
ann = f"{root}/{task}.json"
if not os.path.exists(ann):
url = f"https://raw.githubusercontent.com/RAIVNLab/sugar-crepe/main/data/{task}.json"
call(f"wget {url} --output-document={ann}", shell=True)
ds = sugar_crepe.SugarCrepe(root=os.path.join(root, "val2017"), ann_file=ann, transform=transform, **kwargs)
elif dataset_name == "winoground":
ds = winoground.WinoGround(root=root, transform=transform)
elif dataset_name == "mscoco_captions":
# https://github.com/mehdidc/retrieval_annotations/releases/tag/1.0.0(annotations)
if split == "train":
archive_name = "train2014.zip"
elif split in ("val", "test"):
archive_name = "val2014.zip"
else:
raise ValueError(f"split should be `train` or `val` or `test` for `{dataset_name}`")
root_split = os.path.join(root, archive_name.replace(".zip", ""))
if not os.path.exists(root_split):
print(f"Downloading mscoco_captions {archive_name}...")
if not os.path.exists(os.path.join(root, archive_name)):
call(f"wget http://images.cocodataset.org/zips/{archive_name} --output-document={root}/{archive_name}", shell=True)
call(f"unzip {root}/{archive_name} -d {root}", shell=True)
if not annotation_file:
annotation_file = f"{root}/coco_{split}_karpathy.json"
if not os.path.exists(annotation_file):
call(f"wget https://github.com/mehdidc/retrieval_annotations/releases/download/1.0.0/coco_{split}_karpathy.json --output-document={annotation_file}", shell=True)
ds = CocoCaptions(root=root_split, annFile=annotation_file, transform=transform, **kwargs)
elif dataset_name == 'multilingual_mscoco_captions':
from clip_benchmark.datasets import multilingual_mscoco
if language not in multilingual_mscoco.SUPPORTED_LANGUAGES:
raise ValueError("Unsupported language for multilingual_ms_coco:", language)
annotation_file = os.path.join(root, multilingual_mscoco.OUTPUT_FILENAME_TEMPLATE.format(language))
if not os.path.exists(annotation_file):
multilingual_mscoco.create_annotation_file(root, language)
ds = multilingual_mscoco.Multilingual_MSCOCO(root=root, ann_file=annotation_file, transform=transform, **kwargs)
elif dataset_name == 'crossmodal3600':
from clip_benchmark.datasets import crossmodal3600
if language not in crossmodal3600.SUPPORTED_LANGUAGES:
raise ValueError("Unsupported language for Crossmodal-3600:", language)
annotation_file = os.path.join(root, crossmodal3600.OUTPUT_FILENAME_TEMPLATE.format(language))
if not os.path.exists(annotation_file):
crossmodal3600.create_annotation_file(root, language)
ds = crossmodal3600.Crossmodal3600(root=root, ann_file=annotation_file, transform=transform, **kwargs)
elif dataset_name == 'xtd200':
from clip_benchmark.datasets import xtd200
if language not in xtd200.SUPPORTED_LANGUAGES:
raise ValueError("Unsupported language for xtd200:", language)
annotation_file = os.path.join(root, xtd200.OUTPUT_FILENAME_TEMPLATE.format(language))
if not os.path.exists(annotation_file):
xtd200.create_annotation_file(root, language)
ds = xtd200.XTD200(root=root, ann_file=annotation_file, transform=transform, **kwargs)
elif dataset_name == 'flickr30k-200':
from clip_benchmark.datasets import flickr30k_200
if language not in flickr30k_200.SUPPORTED_LANGUAGES:
raise ValueError("Unsupported language for flickr30k-200:", language)
annotation_file = os.path.join(root, flickr30k_200.OUTPUT_FILENAME_TEMPLATE.format(language))
if not os.path.exists(annotation_file):
flickr30k_200.create_annotation_file(root, language)
ds = flickr30k_200.Flickr30k_200(root=root, ann_file=annotation_file, transform=transform, **kwargs)
elif dataset_name == "flickr30k":
# downloadable from https://www.kaggle.com/datasets/adityajn105/flickr30k
# https://github.com/mehdidc/retrieval_annotations/releases/tag/1.0.0(annotations)
# `kaggle datasets download -d adityajn105/flickr30k`
assert split in ("train", "val", "test"), f"Only `train` and `val` and `test` split available for {dataset_name}"
if not os.path.exists(root):
# Automatic download
print("Downloading flickr30k...")
if not has_kaggle():
print("Kaggle is needed to download the dataset. Please install it via `pip install kaggle`")
sys.exit(1)
call("kaggle datasets download -d hsankesara/flickr-image-dataset", shell=True)
call(f"unzip flickr-image-dataset.zip", shell=True)
call(f"mv flickr30k_images/flickr30k_images {root} && rm -rf flickr30k_images", shell=True)
if not annotation_file:
if language == "en":
annotation_file = f"{root}/flickr30k_{split}_karpathy.txt"
elif language == "zh":
annotation_file = f"{root}/flickr30k_{split}_zh.txt"
else:
raise ValueError(f"Unsupported language {language} for `{dataset_name}`")
if not os.path.exists(annotation_file):
# Download Flickr30K Karpathy test set
if language== "en":
call(f"wget https://github.com/mehdidc/retrieval_annotations/releases/download/1.0.0/flickr30k_{split}_karpathy.txt --output-document={annotation_file}", shell=True)
elif language =="zh":
call(f"wget https://github.com/mehdidc/retrieval_annotations/releases/download/1.0.0/flickr30k_{split}_zh.txt --output-document={annotation_file}", shell=True)
else:
raise ValueError(f"Unsupported language {language} for `{dataset_name}`")
ds = flickr.Flickr(root=root, ann_file=annotation_file, transform=transform, **kwargs)
elif dataset_name == "flickr8k":
assert split in ("train", "val", "test"), f"Only `train` and `val` and `test` split available for {dataset_name}"
# downloadable from https://www.kaggle.com/datasets/adityajn105/flickr8k
# `kaggle datasets download -d adityajn105/flickr8k`
# https://github.com/mehdidc/retrieval_annotations/releases/tag/1.0.0(annotations)
if not os.path.exists(root):
# Automatic download
print("Downloading flickr8k...")
if not has_kaggle():
print("Kaggle is needed to download the dataset. Please install it via `pip install kaggle`")
sys.exit(1)
call("kaggle datasets download -d adityajn105/flickr8k", shell=True)
call(f"unzip flickr8k.zip", shell=True)
call(f"mv Images {root}", shell=True)
call(f"mv captions.txt {root}", shell=True)
if not annotation_file:
if language == "en":
annotation_file = f"{root}/flickr8k_{split}_karpathy.txt"
elif language == "zh":
annotation_file = f"{root}/flickr8k_{split}_zh.txt"
else:
raise ValueError(f"Unsupported language {language} for `{dataset_name}`")
if not os.path.exists(annotation_file):
# Download Flickr8K Karpathy test set
if language == "en":
call(f"wget https://github.com/mehdidc/retrieval_annotations/releases/download/1.0.0/flickr8k_{split}_karpathy.txt --output-document={annotation_file}", shell=True)
elif language == "zh":
call(f"wget https://github.com/mehdidc/retrieval_annotations/releases/download/1.0.0/flickr8k_{split}_zh.txt --output-document={annotation_file}", shell=True)
else:
raise ValueError(f"Unsupported language {language} for `{dataset_name}`")
ds = flickr.Flickr(root=root, ann_file=annotation_file, transform=transform, **kwargs)
elif dataset_name == "food101":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
ds = Food101(root=root, split=split, transform=transform, download=download, **kwargs)
# we use the default class names, we just replace "_" by spaces
# to delimit words
ds.classes = [cl.replace("_", " ") for cl in ds.classes]
elif dataset_name == "sun397":
warnings.warn(f"split argument ignored for `{dataset_name}`, there are no pre-defined train/test splits for this dataset")
# we use the default class names, we just replace "_" and "/" by spaces
# to delimit words
ds = SUN397(root=root, transform=transform, download=download, **kwargs)
ds.classes = [cl.replace("_", " ").replace("/", " ") for cl in ds.classes]
elif dataset_name == "cars":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
ds = StanfordCars(root=root, split=split, transform=transform, download=download, **kwargs)
elif dataset_name == "fgvc_aircraft":
assert split in ("train", "val", "trainval", "test"), f"Only `train` and `val` and `trainval` and `test` split available for {dataset_name}"
ds = FGVCAircraft(root=root, annotation_level="variant", split=split, transform=transform, download=download, **kwargs)
elif dataset_name == "dtd":
assert split in ("train", "val", "test"), f"Only `train` and `val` and `test` split available for {dataset_name}"
ds = DTD(root=root, split=split, transform=transform, download=download, **kwargs)
elif dataset_name == "pets":
assert split in ("trainval", "test"), f"Only `trainval` and `test` split available for {dataset_name}"
ds = OxfordIIITPet(root=root, split=split, target_types="category", transform=transform, download=download, **kwargs)
elif dataset_name == "caltech101":
warnings.warn(f"split argument ignored for `{dataset_name}`, there are no pre-defined train/test splits for this dataset")
# broken download link (can't download google drive), fixed by this PR https://github.com/pytorch/vision/pull/5645
# also available in "vtab/caltech101" using VTAB splits, we advice to use VTAB version rather than this one
# since in this one (torchvision) there are no pre-defined test splits
ds = caltech101.Caltech101(root=root, target_type="category", transform=transform, download=download, **kwargs)
ds.classes = default_classnames["caltech101"]
elif dataset_name == "flowers":
assert split in ("train", "val", "test"), f"Only `train` and `val` and `test` split available for {dataset_name}"
ds = Flowers102(root=root, split=split, transform=transform, download=download, **kwargs)
# class indices started by 1 until it was fixed in a PR (#TODO link of the PR)
# if older torchvision version, fix it using a target transform that decrements label index
# TODO figure out minimal torchvision version needed instead of decrementing
if ds[0][1] == 1:
ds.target_transform = lambda y:y-1
ds.classes = default_classnames["flowers"]
elif dataset_name == "mnist":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
ds = MNIST(root=root, train=train, transform=transform, download=download, **kwargs)
ds.classes = default_classnames["mnist"]
elif dataset_name == "stl10":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
ds = STL10(root=root, split=split, transform=transform, download=download, **kwargs)
elif dataset_name == "eurosat":
warnings.warn(f"split argument ignored for `{dataset_name}`, there are no pre-defined train/test splits for this dataset")
ds = EuroSAT(root=root, transform=transform, download=download, **kwargs)
ds.classes = default_classnames["eurosat"]
elif dataset_name == "gtsrb":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
ds = GTSRB(root=root, split=split, transform=transform, download=download, **kwargs)
ds.classes = default_classnames["gtsrb"]
elif dataset_name == "country211":
assert split in ("train", "valid", "test"), f"Only `train` and `valid` and `test` split available for {dataset_name}"
ds = Country211(root=root, split=split, transform=transform, download=download, **kwargs)
ds.classes = default_classnames["country211"]
elif dataset_name == "pcam":
assert split in ("train", "val", "test"), f"Only `train` and `val` and `test` split available for {dataset_name}"
# Dead link. Fixed by this PR on torchvision https://github.com/pytorch/vision/pull/5645
# TODO figure out minimal torchvision version needed
ds = PCAM(root=root, split=split, transform=transform, download=download, **kwargs)
ds.classes = default_classnames["pcam"]
elif dataset_name == "renderedsst2":
assert split in ("train", "val", "test"), f"Only `train` and `val` and `test` split available for {dataset_name}"
ds = RenderedSST2(root=root, split=split, transform=transform, download=download, **kwargs)
elif dataset_name == "fer2013":
assert split in ("train", "test"), f"Only `train` and `test` split available for {dataset_name}"
# Downloadable from https://www.kaggle.com/datasets/msambare/fer2013
# `kaggle datasets download -d msambare/fer2013`
if not os.path.exists(root):
# Automatic download
print("Downloading fer2013...")
if not has_kaggle():
print("Kaggle is needed to download the dataset. Please install it via `pip install kaggle`")
sys.exit(1)
call("kaggle datasets download -d msambare/fer2013", shell=True)
call(f"unzip fer2013.zip -d {root}", shell=True)
root = os.path.join(root, "train" if train else "test")
ds = ImageFolder(root=root, transform=transform)
ds.classes = default_classnames["fer2013"]
elif dataset_name.startswith("tfds/"):
# TFDS datasets support using `timm` and `tensorflow_datasets`
prefix, *name_list = dataset_name.split("/")
name = "/".join(name_list)
ds = build_tfds_dataset(name, download=download, split=split, data_dir=root, transform=transform)
elif dataset_name.startswith("vtab/"):
# VTAB datasets support using `tensorflow_datasets` and `task_adaptation`
prefix, *name_list = dataset_name.split("/")
name = "/".join(name_list)
ds = build_vtab_dataset(name, download=download, split=split, data_dir=root, transform=transform, classnames=default_classnames)
elif dataset_name.startswith("wds/"):
# WebDataset support using `webdataset` library
name = dataset_name.split("/", 1)[1]
ds = build_wds_dataset(name, transform=transform, split=split, data_dir=root, cache_dir=wds_cache_dir)
# WDS specify classnames and templates on its own.
elif dataset_name == "dummy":
ds = Dummy()
else:
raise ValueError(f"Unsupported dataset: {dataset_name}.")
default_dataset_for_templates = "imagenet1k"
if dataset_name.startswith("tfds/") or dataset_name.startswith("vtab/") or dataset_name.startswith("wds/"):
prefix, *rest = dataset_name.split("/")
short_name = "/".join(rest)
# if it's a vtab/tfds/wds/ dataset, we look for e.g. vtab/<name>
# as well as <name> in the custom template file/classname file,
# whichever is found.
keys_to_lookup = [dataset_name, short_name]
else:
keys_to_lookup = [dataset_name]
if use_classnames_and_templates:
# Specify templates for the dataset (if needed)
if custom_templates:
# We override with custom templates ONLY if they are provided,
# which is the case when `custom_templates` is loaded.
ds.templates = value_from_first_key_found(
custom_templates, keys=keys_to_lookup + [default_dataset_for_templates]
)
assert ds.templates is not None, f"Templates not specified for {dataset_name}"
elif not hasattr(ds, "templates"):
# No templates specified by the dataset itself,
# so we use templates are packaged with CLIP benchmark
# (loaded from <LANG>_zeroshot_classification_templates.json).
ds.templates = value_from_first_key_found(default_templates, keys=keys_to_lookup + [default_dataset_for_templates])
assert ds.templates is not None, f"Templates not specified for {dataset_name}"
else:
# dataset has templates already (e.g., WDS case), so we keep it as is.
pass
# We override with custom classnames ONLY if they are provided.
if custom_classnames:
ds.classes = value_from_first_key_found(custom_classnames, keys=keys_to_lookup)
assert ds.classes is not None, f"Classes not specified for {dataset_name}"
assert ds.templates is not None, f"Templates not specified for {dataset_name}"
return ds
def value_from_first_key_found(dic, keys):
for k in keys:
if k in dic:
return dic[k]
class Dummy():
def __init__(self):
self.classes = ["blank image", "noisy image"]
def __getitem__(self, i):
return torch.zeros(3,224,224), 0
def __len__(self):
return 1
def get_dataset_default_task(dataset):
if dataset in ("flickr30k", "flickr8k", "mscoco_captions", "multilingual_mscoco_captions", "flickr30k-200", "crossmodal3600", "xtd200"):
return "zeroshot_retrieval"
elif dataset.startswith("sugar_crepe") or dataset == "winoground":
return "image_caption_selection"
else:
return "zeroshot_classification"
def get_dataset_collate_fn(dataset_name):
if dataset_name in ("mscoco_captions", "multilingual_mscoco_captions", "flickr30k", "flickr8k", "flickr30k-200", "crossmodal3600", "xtd200", "winoground") or dataset_name.startswith("sugar_crepe"):
return image_captions_collate_fn
else:
return default_collate
def has_gdown():
return call("which gdown", shell=True) == 0
def has_kaggle():
return call("which kaggle", shell=True) == 0
def build_vtab_dataset(dataset_name, transform, download=True, split="test", data_dir="root", classnames=[]):
# Using VTAB splits instead of default TFDS splits
from .tfds import (VTABIterableDataset, disable_gpus_on_tensorflow,
download_tfds_dataset)
# avoid Tensorflow owning GPUs to not clash with PyTorch
disable_gpus_on_tensorflow()
# by default we take classes from TFDS (default behavior if `classes` stays None),
# except for the datasets that will override `classes` (e.g., clevr_*)
classes = None
if dataset_name == "caltech101":
from task_adaptation.data.caltech import Caltech101
tfds_dataset = Caltech101(data_dir=data_dir)
classes = classnames["caltech101_vtab"]
elif dataset_name == "cars":
from task_adaptation.data.cars import CarsData
tfds_dataset = CarsData(data_dir=data_dir)
elif dataset_name in ("cifar10", "cifar100"):
from task_adaptation.data.cifar import CifarData
tfds_dataset = CifarData(data_dir=data_dir, num_classes=10 if dataset_name == "cifar10" else 100)
elif dataset_name.startswith("clevr_"):
from task_adaptation.data.clevr import CLEVRData
task = _extract_task(dataset_name)
assert task in ("count_all", "closest_object_distance")
tfds_dataset = CLEVRData(task=task, data_dir=data_dir)
if task == "count_all":
classes = classnames["clevr_count_all"]
elif task == "closest_object_distance":
classes = classnames["clevr_closest_object_distance"]
else:
raise ValueError(f"non supported: {task}")
elif dataset_name == "cub":
from task_adaptation.data.cub import CUB2011Data
tfds_dataset = CUB2011Data(data_dir=data_dir)
elif dataset_name == "diabetic_retinopathy":
# Needs manual download from Kaggle
# 1) `kaggle competitions download -c diabetic-retinopathy-detection` on $ROOT/downloads/manual
# 2) extract archives on $ROOT/downloads/manual
if not os.path.exists(data_dir):
# Automatic download
print("Downloading diabetic_retinopathy...")
if not has_kaggle():
print("Kaggle is needed to download the dataset. Please install it via `pip install kaggle`")
sys.exit(1)
os.makedirs(os.path.join(data_dir, "downloads", "manual"))
call(f"kaggle competitions download -c diabetic-retinopathy-detection -p {data_dir}/downloads/manual", shell=True)
call(f"cd {data_dir}/downloads/manual;unzip diabetic-retinopathy-detection.zip;cat train.zip*>train.zip;cat test.zip*>test.zip;unzip train.zip; unzip test.zip;unzip sample.zip;unzip trainLabels.csv.zip", shell=True)
from task_adaptation.data.diabetic_retinopathy import RetinopathyData
tfds_dataset = RetinopathyData(config="btgraham-300", data_dir=data_dir)
classes = classnames["diabetic_retinopathy"]
elif dataset_name == "dmlab":
from task_adaptation.data.dmlab import DmlabData
download_tfds_dataset("dmlab", data_dir=data_dir) # it's not called in the original VTAB code, so we do it explictly
tfds_dataset = DmlabData(data_dir=data_dir)
classes = classnames["dmlab"]
elif dataset_name.startswith("dsprites_"):
from task_adaptation.data.dsprites import DSpritesData
task = _extract_task(dataset_name)
assert task in ("label_shape", "label_scale", "label_orientation", "label_x_position", "label_y_position")
tfds_dataset = DSpritesData(task, data_dir=data_dir)
classes = tfds_dataset._dataset_builder.info.features[task].names
elif dataset_name == "dtd":
from task_adaptation.data.dtd import DTDData
tfds_dataset = DTDData(data_dir=data_dir)
elif dataset_name == "eurosat":
from task_adaptation.data.eurosat import EurosatData
tfds_dataset = EurosatData(subset="rgb", data_key="image", data_dir=data_dir)
classes = classnames["eurosat"]
elif dataset_name == "food101":
from task_adaptation.data.food101 import Food101Data
tfds_dataset = Food101Data(data_dir=data_dir)
elif dataset_name == "inaturalist":
from task_adaptation.data.inaturalist import INaturalistData
tfds_dataset = INaturalistData(data_dir=data_dir, year=2017)
elif dataset_name.startswith("kitti_"):
from .kitti import KittiData
task = _extract_task(dataset_name)
assert task in (
"count_all", "count_left", "count_far", "count_near",
"closest_object_distance", "closest_object_x_location",
"count_vehicles", "closest_vehicle_distance",
)
tfds_dataset = KittiData(task=task, data_dir=data_dir)
if task == "closest_vehicle_distance":
classes = classnames["kitti_closest_vehicle_distance"]
else:
raise ValueError(f"Unsupported task: {task}")
elif dataset_name == "flowers":
from task_adaptation.data.oxford_flowers102 import OxfordFlowers102Data
tfds_dataset = OxfordFlowers102Data(data_dir=data_dir)
elif dataset_name == "pets":
from task_adaptation.data.oxford_iiit_pet import OxfordIIITPetData
tfds_dataset = OxfordIIITPetData(data_dir=data_dir)
classes = classnames["pets"]
elif dataset_name == "pcam":
from task_adaptation.data.patch_camelyon import PatchCamelyonData
tfds_dataset = PatchCamelyonData(data_dir=data_dir)
classes = classnames["pcam"]
elif dataset_name == "resisc45":
# Needs download from OneDrive: https://1drv.ms/u/s!AmgKYzARBl5ca3HNaHIlzp_IXjs
# The archive needs to to be put at <DATASET_ROOT>/downloads/manual then extracted
if not os.path.exists(data_dir):
os.makedirs(os.path.join(data_dir, "downloads", "manual"))
call(f"wget 'https://onedrive.live.com/download?resid=5C5E061130630A68!107&authkey=!AHHNaHIlzp_IXjs' --output-document={data_dir}/downloads/manual/resisc45.rar", shell=True)
call(f"cd {data_dir}/downloads/manual;unrar x resisc45.rar", shell=True)
from task_adaptation.data.resisc45 import Resisc45Data
tfds_dataset = Resisc45Data(data_dir=data_dir)
elif dataset_name.startswith("smallnorb_"):
from task_adaptation.data.smallnorb import SmallNORBData
task = _extract_task(dataset_name)
assert task in ("label_category", "label_elevation", "label_azimuth", "label_lighting")
tfds_dataset = SmallNORBData(predicted_attribute=task, data_dir=data_dir)
classes = tfds_dataset._dataset_builder.info.features[task].names
elif dataset_name == "sun397":
from task_adaptation.data.sun397 import Sun397Data
#FIXME There is a problem in `sun397`, when TFDS tries download it
# there is an image that cannot be decoded. For the time being
# we will use torchvision's SUN397 instead.
tfds_dataset = Sun397Data(config="tfds", data_dir=data_dir)
elif dataset_name == "svhn":
from task_adaptation.data.svhn import SvhnData
tfds_dataset = SvhnData(data_dir=data_dir)
classes = classnames["svhn"]
else:
raise ValueError(f"Unsupported dataset: {dataset_name}")
ds = VTABIterableDataset(
tfds_dataset,
input_name="image", label_name="label",
transform=transform,
target_transform=int,
split=split,
classes=classes,
)
return ds
def build_tfds_dataset(name, transform, download=True, split="test", data_dir="root", classes=None):
from .tfds import disable_gpus_on_tensorflow
disable_gpus_on_tensorflow()
import tensorflow_datasets as tfds
import timm
builder = tfds.builder(name, data_dir=data_dir)
if download:
builder.download_and_prepare()
splits = list(builder.info.splits.keys())
assert split in splits, (split, splits)
ds = timm.data.create_dataset(f"tfds/{name}", data_dir, split=split, transform=transform, target_transform=int)
ds.classes = builder.info.features['label'].names if classes is None else classes
return ds
def build_wds_dataset(dataset_name, transform, split="test", data_dir="root", cache_dir=None):
"""
Load a dataset in WebDataset format. Either local paths or HTTP URLs can be specified.
Expected file structure is:
```
data_dir/
train/
nshards.txt
0.tar
1.tar
...
test/
nshards.txt
0.tar
1.tar
...
classnames.txt
zeroshot_classification_templates.txt
dataset_type.txt
```
Classnames and templates are required for zeroshot classification, while dataset type
(equal to "retrieval") is required for zeroshot retrieval datasets.
You can use the `clip_benchmark_export_wds` or corresponding API
(`clip_benchmark.webdataset_builder.convert_dataset`) to convert datasets to this format.
Set `cache_dir` to a path to cache the dataset, otherwise, no caching will occur.
"""
import webdataset as wds
def read_txt(fname):
if "://" in fname:
stream = os.popen("curl -L -s --fail '%s'" % fname, "r")
value = stream.read()
if stream.close():
raise FileNotFoundError("Failed to retreive data")
else:
with open(fname, "r") as file:
value = file.read()
return value
# Special handling for Huggingface datasets
# Git LFS files have a different file path to access the raw data than other files
if data_dir.startswith("https://huggingface.co/datasets"):
# Format: https://huggingface.co/datasets/<USERNAME>/<REPO>/tree/<BRANCH>
*split_url_head, _, url_path = data_dir.split("/", 7)
url_head = "/".join(split_url_head)
metadata_dir = "/".join([url_head, "raw", url_path])
tardata_dir = "/".join([url_head, "resolve", url_path])
else:
metadata_dir = tardata_dir = data_dir
# Get number of shards
nshards_fname = os.path.join(metadata_dir, split, "nshards.txt")
nshards = int(read_txt(nshards_fname)) # Do not catch FileNotFound, nshards.txt should be mandatory
# Get dataset type (classification or retrieval)
type_fname = os.path.join(metadata_dir, "dataset_type.txt")
try:
dataset_type = read_txt(type_fname).strip().lower()
except FileNotFoundError:
# print("WARNING: dataset_type.txt not found, assuming type=classification")
dataset_type = "classification"
#
filepattern = os.path.join(tardata_dir, split, "{0..%d}.tar" % (nshards - 1))
# Load webdataset (support WEBP, PNG, and JPG for now)
if not cache_dir or not isinstance(cache_dir, str):
cache_dir = None
dataset = (
wds.WebDataset(filepattern, cache_dir=cache_dir, nodesplitter=lambda src: src)
.decode(wds.autodecode.ImageHandler("pil", extensions=["webp", "png", "jpg", "jpeg"]))
)
# Load based on classification or retrieval task
if dataset_type == "retrieval":
dataset = (dataset
.to_tuple(["webp", "png", "jpg", "jpeg"], "txt")
.map_tuple(transform, str.splitlines)
)
dataset.classes = dataset.templates = None
else:
label_type = "npy" if dataset_type == "multilabel" else "cls" # Special case for multilabel
dataset = (dataset
.to_tuple(["webp", "png", "jpg", "jpeg"], label_type)
.map_tuple(transform, None)
)
# Get class names if present
classnames_fname = os.path.join(metadata_dir, "classnames.txt")
try:
dataset.classes = [line.strip() for line in read_txt(classnames_fname).splitlines()]
except FileNotFoundError:
print("WARNING: classnames.txt not found")
dataset.classes = None
# Get zeroshot classification templates if present
templates_fname = os.path.join(metadata_dir, "zeroshot_classification_templates.txt")
try:
dataset.templates = [line.strip() for line in read_txt(templates_fname).splitlines()]
except FileNotFoundError:
print("WARNING: zeroshot_classification_templates.txt not found")
dataset.templates = None
return dataset
def _extract_task(dataset_name):
prefix, *task_name_list = dataset_name.split("_")
task = "_".join(task_name_list)
return task
def image_captions_collate_fn(batch):
transposed = list(zip(*batch))
imgs = default_collate(transposed[0])
texts = transposed[1]
return imgs, texts
def get_dataset_collection_from_file(path):
return [l.strip() for l in open(path).readlines()]
dataset_collection = {
"vtab": [
"vtab/caltech101",
"vtab/cifar100",
"vtab/clevr_count_all",
"vtab/clevr_closest_object_distance",
"vtab/diabetic_retinopathy",
"vtab/dmlab",
"vtab/dsprites_label_orientation",
"vtab/dsprites_label_x_position",
"vtab/dtd",
"vtab/eurosat",
"vtab/kitti_closest_vehicle_distance",
"vtab/flowers",
"vtab/pets",
"vtab/pcam",
"vtab/resisc45",
"vtab/smallnorb_label_azimuth",
"vtab/smallnorb_label_elevation",
"sun397",
"vtab/svhn",
],
"vtab+":[
"imagenet1k",
"imagenetv2",
"imagenet_sketch",
"imagenet-a",
"imagenet-r",
"objectnet",
"fer2013",
"voc2007",
"voc2007_multilabel",
"sun397",
"cars",
"fgvc_aircraft",
"mnist",
"stl10",
"gtsrb",
"country211",
"renderedsst2",
"vtab/caltech101",
"vtab/cifar10",
"vtab/cifar100",
"vtab/clevr_count_all",
"vtab/clevr_closest_object_distance",
"vtab/diabetic_retinopathy",
"vtab/dmlab",
"vtab/dsprites_label_orientation",
"vtab/dsprites_label_x_position",
"vtab/dtd",
"vtab/eurosat",
"vtab/kitti_closest_vehicle_distance",
"vtab/flowers",
"vtab/pets",
"vtab/pcam",
"vtab/resisc45",
"vtab/smallnorb_label_azimuth",
"vtab/smallnorb_label_elevation",
"vtab/svhn",
],
"retrieval": [
"mscoco_captions",
"flickr8k",
"flickr30k",
],
"imagenet_robustness": [
"imagenetv2",
"imagenet_sketch",
"imagenet-a",
"imagenet-r",
"objectnet",
],
"sugar_crepe":[
"sugar_crepe/add_att",
"sugar_crepe/add_obj",
"sugar_crepe/replace_att",
"sugar_crepe/replace_obj",
"sugar_crepe/replace_rel",
"sugar_crepe/swap_att",
"sugar_crepe/swap_obj",
]
}
# use by imagenet robustness datasets
all_imagenet_wordnet_ids = ['n01440764', 'n01443537', 'n01484850', 'n01491361', 'n01494475', 'n01496331', 'n01498041', 'n01514668', 'n01514859', 'n01518878', 'n01530575', 'n01531178', 'n01532829', 'n01534433', 'n01537544', 'n01558993', 'n01560419', 'n01580077', 'n01582220', 'n01592084', 'n01601694', 'n01608432', 'n01614925', 'n01616318', 'n01622779', 'n01629819', 'n01630670', 'n01631663', 'n01632458', 'n01632777', 'n01641577', 'n01644373', 'n01644900', 'n01664065', 'n01665541', 'n01667114', 'n01667778', 'n01669191', 'n01675722', 'n01677366', 'n01682714', 'n01685808', 'n01687978', 'n01688243', 'n01689811', 'n01692333', 'n01693334', 'n01694178', 'n01695060', 'n01697457', 'n01698640', 'n01704323', 'n01728572', 'n01728920', 'n01729322', 'n01729977', 'n01734418', 'n01735189', 'n01737021', 'n01739381', 'n01740131', 'n01742172', 'n01744401', 'n01748264', 'n01749939', 'n01751748', 'n01753488', 'n01755581', 'n01756291', 'n01768244', 'n01770081', 'n01770393', 'n01773157', 'n01773549', 'n01773797', 'n01774384', 'n01774750', 'n01775062', 'n01776313', 'n01784675', 'n01795545', 'n01796340', 'n01797886', 'n01798484', 'n01806143', 'n01806567', 'n01807496', 'n01817953', 'n01818515', 'n01819313', 'n01820546', 'n01824575', 'n01828970', 'n01829413', 'n01833805', 'n01843065', 'n01843383', 'n01847000', 'n01855032', 'n01855672', 'n01860187', 'n01871265', 'n01872401', 'n01873310', 'n01877812', 'n01882714', 'n01883070', 'n01910747', 'n01914609', 'n01917289', 'n01924916', 'n01930112', 'n01943899', 'n01944390', 'n01945685', 'n01950731', 'n01955084', 'n01968897', 'n01978287', 'n01978455', 'n01980166', 'n01981276', 'n01983481', 'n01984695', 'n01985128', 'n01986214', 'n01990800', 'n02002556', 'n02002724', 'n02006656', 'n02007558', 'n02009229', 'n02009912', 'n02011460', 'n02012849', 'n02013706', 'n02017213', 'n02018207', 'n02018795', 'n02025239', 'n02027492', 'n02028035', 'n02033041', 'n02037110', 'n02051845', 'n02056570', 'n02058221', 'n02066245', 'n02071294', 'n02074367', 'n02077923', 'n02085620', 'n02085782', 'n02085936', 'n02086079', 'n02086240', 'n02086646', 'n02086910', 'n02087046', 'n02087394', 'n02088094', 'n02088238', 'n02088364', 'n02088466', 'n02088632', 'n02089078', 'n02089867', 'n02089973', 'n02090379', 'n02090622', 'n02090721', 'n02091032', 'n02091134', 'n02091244', 'n02091467', 'n02091635', 'n02091831', 'n02092002', 'n02092339', 'n02093256', 'n02093428', 'n02093647', 'n02093754', 'n02093859', 'n02093991', 'n02094114', 'n02094258', 'n02094433', 'n02095314', 'n02095570', 'n02095889', 'n02096051', 'n02096177', 'n02096294', 'n02096437', 'n02096585', 'n02097047', 'n02097130', 'n02097209', 'n02097298', 'n02097474', 'n02097658', 'n02098105', 'n02098286', 'n02098413', 'n02099267', 'n02099429', 'n02099601', 'n02099712', 'n02099849', 'n02100236', 'n02100583', 'n02100735', 'n02100877', 'n02101006', 'n02101388', 'n02101556', 'n02102040', 'n02102177', 'n02102318', 'n02102480', 'n02102973', 'n02104029', 'n02104365', 'n02105056', 'n02105162', 'n02105251', 'n02105412', 'n02105505', 'n02105641', 'n02105855', 'n02106030', 'n02106166', 'n02106382', 'n02106550', 'n02106662', 'n02107142', 'n02107312', 'n02107574', 'n02107683', 'n02107908', 'n02108000', 'n02108089', 'n02108422', 'n02108551', 'n02108915', 'n02109047', 'n02109525', 'n02109961', 'n02110063', 'n02110185', 'n02110341', 'n02110627', 'n02110806', 'n02110958', 'n02111129', 'n02111277', 'n02111500', 'n02111889', 'n02112018', 'n02112137', 'n02112350', 'n02112706', 'n02113023', 'n02113186', 'n02113624', 'n02113712', 'n02113799', 'n02113978', 'n02114367', 'n02114548', 'n02114712', 'n02114855', 'n02115641', 'n02115913', 'n02116738', 'n02117135', 'n02119022', 'n02119789', 'n02120079', 'n02120505', 'n02123045', 'n02123159', 'n02123394', 'n02123597', 'n02124075', 'n02125311', 'n02127052', 'n02128385', 'n02128757', 'n02128925', 'n02129165', 'n02129604', 'n02130308', 'n02132136', 'n02133161', 'n02134084', 'n02134418', 'n02137549', 'n02138441', 'n02165105', 'n02165456', 'n02167151', 'n02168699', 'n02169497', 'n02172182', 'n02174001', 'n02177972', 'n02190166', 'n02206856', 'n02219486', 'n02226429', 'n02229544', 'n02231487', 'n02233338', 'n02236044', 'n02256656', 'n02259212', 'n02264363', 'n02268443', 'n02268853', 'n02276258', 'n02277742', 'n02279972', 'n02280649', 'n02281406', 'n02281787', 'n02317335', 'n02319095', 'n02321529', 'n02325366', 'n02326432', 'n02328150', 'n02342885', 'n02346627', 'n02356798', 'n02361337', 'n02363005', 'n02364673', 'n02389026', 'n02391049', 'n02395406', 'n02396427', 'n02397096', 'n02398521', 'n02403003', 'n02408429', 'n02410509', 'n02412080', 'n02415577', 'n02417914', 'n02422106', 'n02422699', 'n02423022', 'n02437312', 'n02437616', 'n02441942', 'n02442845', 'n02443114', 'n02443484', 'n02444819', 'n02445715', 'n02447366', 'n02454379', 'n02457408', 'n02480495', 'n02480855', 'n02481823', 'n02483362', 'n02483708', 'n02484975', 'n02486261', 'n02486410', 'n02487347', 'n02488291', 'n02488702', 'n02489166', 'n02490219', 'n02492035', 'n02492660', 'n02493509', 'n02493793', 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'n13133613', 'n15075141']