Datasets:
license: cc-by-4.0
dataset_info:
features:
- name: date_captured
dtype: string
- name: coco_url
dtype: string
- name: license_name
dtype: string
- name: license_url
dtype: string
- name: coco_id
dtype: string
- name: image
dtype: image
- name: label
dtype: int64
- name: flickr_url
dtype: string
splits:
- name: clean
num_bytes: 333801279.747
num_examples: 36157
- name: cocomagenet
num_bytes: 306403223
num_examples: 2000
- name: cocomagenet_mono
num_bytes: 18956338
num_examples: 2000
- name: synthetic_gan
num_bytes: 242598071.454
num_examples: 24999
- name: synthetic_diffusion
num_bytes: 283705025
num_examples: 25000
- name: adversarial_autoattack_resnet
num_bytes: 40058245
num_examples: 5000
- name: adversarial_autoattack_vit
num_bytes: 35610460
num_examples: 5000
- name: adversarial_pgd_resnet
num_bytes: 65806170
num_examples: 5000
- name: adversarial_pgd_vit
num_bytes: 51803590
num_examples: 5000
download_size: 1432934722
dataset_size: 1378742402.201
pretty_name: BROAD
size_categories:
- 10K<n<100K
tags:
- imagenet
- OOD detection
- distribution shift
Partial dataset used to build BROAD (Benchmarking Resilience Over Anomaly Diversity )
Refer to this repo to build the complete BROAD dataset.
The partial data included here contains synthetica images from BROAD and encoded unrecognizable images given by adversarial perturbations of imagenet samples. Decoding is implemented in the repo referred above.
Dataset Description
The BROAD dataset was introduced to benchmark OOD detection methods against a broader variety of distribution shifts in the paper Expecting The Unexpected: Towards Broad Out-Of-Distribution Detection.
Each split of BROAD is designed to be close (but different) to the ImageNet distribution.
Dataset Summary
BROAD is comprised of 16 splits, 9 of which can be downloaded from this page. The remaining 7 can be obtained through external links. We first describe the splits available from this hub, and then specify the external splits and how to get them. Please refer to Expecting The Unexpected: Towards Broad Out-Of-Distribution Detection for more detailed description of the data and its acquisition.
Included Splits
- Clean is comprised of 36157 images from the original validation set of ILSVRC2012. They are used as in-distribution in BROAD.
- Adversarial Autoattack Resnet, Adversarial Autoattack ViT, Adversarial PGD Resnet and Adversarial PGD ViT are splits each comprised of 5,000 adversarial perturbations of clean validation images, using a perturbation budget of 0.05 with the L-infinity norm. These attacks are computed against a trained ResNet-50 and a trained ViT-b/16. PGD uses 40 iterations and for Autoattack, only the attack model achieving the most confident misclassification is kept.
- Synthetic Gan and Synthetic Diffusion are each comprised of 25,000 synthetic images generated to imitate the ImageNet distribution. For Synthetic Gan, a conditional BigGan architecture was used to generate 25 artificial samples from each ImageNet class. For Synthetic diffusion, we leveraged stable diffusion models to generate 25 artificial samples per class using the prompt "High quality image of a {class_name}".
- CoComageNet is a novel split from the CoCo dataset comprised of 2000 images, each featuring multiple distinct classes of ImageNet. Each image of CoComageNet thus features multiple objects, at least two of which have distinct ImageNet labels. More details on the construction of CoComageNet can be found in the paper.
- CoComageNet-mono is built similarly to CoComageNet, except each image only has one object with ImageNet label. It is designed as an ablation, to isolate the effect of having instances of multiple labels from other distributional shifts in CoComageNet.
External Splits
- iNaturalist is a split of the original iNaturalist2017 dataset designed for OOD detection with ImageNet as in-distribution. It was introduced in MOS: Towards Scaling Out-of-distribution Detection for Large Semantic Space and can be downloaded here.
- ImageNet-O was introduced in Natural Adversarial Examples and is comprised of natural examples that were selected for their high classification confidence by CNNs. It can be downloaded here.
- OpenImage-O is a subset of the OpenImage dataset that was built similarly to ImageNet-O in ViM: Out-Of-Distribution with Virtual-logit Matching. The file list can be accessed here.
- Defocus blur, Gaussian noise, Snow and Brightness are all existing splits of the ImageNet-C dataset. For BROAD, only the highest strength of corruption (5/5) is used.
LICENSE
This work is licensed under a Creative Commons Attribution 4.0 Unported License.