Datasets:
language:
- en
license: cc
size_categories:
- 10M<n<100M
pretty_name: ilias
configs:
- config_name: img_queries
data_files:
- split: img_queries
path: ilias-core-queries-img-000000.tar
- config_name: text_queries
data_files:
- split: text_queries
path: ilias-core-queries-text-000000.tar
- config_name: core_db
data_files:
- split: core_db
path: ilias-core-db-000000.tar
- config_name: mini_distractors
data_files:
- split: mini_distractors
path: mini_ilias_yfcc100m-*.tar
- config_name: distractors_100m
data_files:
- split: distractors_100m
path: yfcc100m-*.tar
dataset_info:
- config_name: img_queries
features:
- name: jpg
dtype: Image
- name: bbox.json
list:
list: int64
- name: download_url.txt
dtype: string
- name: __key__
dtype: string
- config_name: core_db
features:
- name: jpg
dtype: Image
- name: bbox.json
list:
list: int64
- name: download_url.txt
dtype: string
- name: __key__
dtype: string
- config_name: text_queries
features:
- name: txt
dtype: string
- name: __key__
dtype: string
- config_name: mini_distractors
features:
- name: jpg
dtype: Image
- name: __key__
dtype: string
- config_name: distractors_100m
features:
- name: jpg
dtype: Image
- name: __key__
dtype: string
tags:
- instance-level-retrieval
- image-retrieval
task_categories:
- image-to-image
- text-to-image
ILIAS is a large-scale test dataset for evaluation on Instance-Level Image retrieval At Scale. It is designed to support future research in image-to-image and text-to-image retrieval for particular objects and serves as a benchmark for evaluating representations of foundation or customized vision and vision-language models, as well as specialized retrieval techniques.
website | download | arxiv | github
Composition
The dataset includes 1,000 object instances across diverse domains, with:
- 5,947 images in total:
- 1,232 image queries, depicting query objects on clean or uniform background
- 4,715 positive images, featuring the query objects in real-world conditions with clutter, occlusions, scale variations, and partial views
- 1,000 text queries, providing fine-grained textual descriptions of the query objects
- 100M distractors from YFCC100M to evaluate retrieval performance under large-scale settings, while asserting noise-free ground truth
Dataset details
This repository contains the ILIAS dataset split into the following splits:
- ILIAS core collected by the ILIAS team:
- 1,232 image queries (
img_queries), - 4,715 positive images (
core_db), - 1,000 text queries (
text_queries),
- 1,232 image queries (
- mini set of 5M distractors from YFCC100M (
mini_distractors), - full set of 100M distractors from YFCC100M (
distractors_100m).
Loading the dataset
To load the dataset using HugginFace datasets, you first need to pip install datasets, then run the following code:
from datasets import load_dataset
ilias_core_img_queries = load_dataset("vrg-prague/ilias", name="img_queries") # or "text_queries" or "core_db" or "mini_distractors" or "distractors_100m"
Citation
If you use ILIAS in your research or find our work helpful, please consider citing our paper
@inproceedings{ilias2025,
title={{ILIAS}: Instance-Level Image retrieval At Scale},
author={Kordopatis-Zilos, Giorgos and Stojnić, Vladan and Manko, Anna and Šuma, Pavel and Ypsilantis, Nikolaos-Antonios and Efthymiadis, Nikos and Laskar, Zakaria and Matas, Jiří and Chum, Ondřej and Tolias, Giorgos},
booktitle={Computer Vision and Pattern Recognition (CVPR)},
year={2025},
}