Datasets:
annotations_creators:
- no-annotation
language:
- en
language_creators:
- other
license:
- cc-by-4.0
multilinguality:
- monolingual
pretty_name: COYO-700M
size_categories:
- 100M<n<1B
source_datasets:
- original
tags:
- image-text pairs
task_categories:
- text-to-image
- image-to-text
- zero-shot-classification
task_ids:
- image-captioning
Dataset Card for COYO-700M
Table of Contents
- Table of Contents
- Dataset Description
- Dataset Structure
- Dataset Creation
- Considerations for Using the Data
- Additional Information
Dataset Description
- Homepage: COYO homepage
- Repository: COYO repository
- Paper:
- Leaderboard:
- Point of Contact: COYO email
Dataset Summary
COYO-700M is a large-scale dataset that contains 747M image-text pairs as well as many other meta-attributes to increase the usability to train various models. Our dataset follows the similar strategy in previous vision-and-language datasets, collecting many informative pairs of alt-text and its associated image in HTML documents. We expect COYO to be used to train popular large-scale foundation models complementary to other similar datasets. For more details on the data acquisition process, please refer to the technical paper to be released later.
Supported Tasks and Leaderboards
We empirically validated the quality of COYO dataset by re-implementing popular models such as ALIGN, unCLIP, and ViT. We trained these models on COYO-700M or its subsets from scratch, achieving competitive performance to the reported numbers or generated samples in the original papers. Our pre-trained models and training codes will be released soon along with the technical paper.
Languages
The texts in the COYO-700M dataset consist of English.
Dataset Structure
Data Instances
Each instance in COYO-700M represents single image-text pair information with meta-attributes:
{
'id': 841814333321,
'url': 'https://blog.dogsof.com/wp-content/uploads/2021/03/Image-from-iOS-5-e1614711641382.jpg',
'text': 'A Pomsky dog sitting and smiling in field of orange flowers',
'width': 1000,
'height': 988,
'image_phash': 'c9b6a7d8469c1959',
'text_length': 59,
'word_count': 11,
'num_tokens_bert': 13,
'num_tokens_gpt': 12,
'num_faces': 0,
'clip_similarity_vitb32': 0.4296875,
'clip_similarity_vitl14': 0.35205078125,
'nsfw_score_opennsfw2': 0.00031447410583496094,
'nsfw_score_gantman': 0.03298913687467575,
'watermark_score': 0.1014641746878624,
'aesthetic_score_laion_v2': 5.435476303100586
}
Data Fields
name | type | description |
---|---|---|
id | long | Unique 64-bit integer ID generated by monotonically_increasing_id() |
url | string | The image URL extracted from the src attribute of the <img> tag |
text | string | The text extracted from the alt attribute of the <img> tag |
width | integer | The width of the image |
height | integer | The height of the image |
image_phash | string | The perceptual hash(pHash) of the image |
text_length | integer | The length of the text |
word_count | integer | The number of words seperated by spaces. |
num_tokens_bert | integer | The number of tokens using BertTokenizer |
num_tokens_gpt | integer | The number of tokens using GPT2TokenizerFast |
num_faces | integer | The number of faces in the image detected by SCRFD |
clip_similarity_vitb32 | float | The cosine similarity between text and image(ViT-B/32) embeddings by OpenAI CLIP |
clip_similarity_vitl14 | float | The cosine similarity between text and image(ViT-L/14) embeddings by OpenAI CLIP |
nsfw_score_opennsfw2 | float | The NSFW score of the image by OpenNSFW2 |
nsfw_score_gantman | float | The NSFW score of the image by GantMan/NSFW |
watermark_score | float | The watermark probability of the image by our internal model |
aesthetic_score_laion_v2 | float | The aesthetic score of the image by LAION-Aesthetics-Predictor-V2 |
Data Splits
Data was not split, since the evaluation was expected to be performed on more widely used downstream task(s).
Dataset Creation
Curation Rationale
Similar to most vision-and-language datasets, our primary goal in the data creation process is to collect many pairs of alt-text and image sources in HTML documents crawled from the web. Therefore, We attempted to eliminate uninformative images or texts with minimal cost and improve our dataset's usability by adding various meta-attributes. Users can use these meta-attributes to sample a subset from COYO-700M and use it to train the desired model. For instance, the num_faces attribute could be used to make a subset like COYO-Faces and develop a privacy-preserving generative model.
Source Data
Initial Data Collection and Normalization
We collected about 10 billion pairs of alt-text and image source in HTML documents in CommonCrawl from Oct. 2020 to Aug. 2021. and eliminated uninformative pairs through the image and/or text level filtering process with minimal cost.
Image Level
- Include all image formats that Pillow library can decode
- Less than 5KB image size are dropped
- Images with aspect ratio is greater than 3.0 are dropped
- Images with min(width, height) < 200 are dropped
- Images are dropped if the score of OpenNSFW2 or GantMan/NSFW is higher than 0.5
- Based on the image pHash value, we removed all duplicate images from external public datasets. (ImageNet-1K/21K, Flickr-30K, MS-COCO, CC-3M, CC-12M)
Text Level
- We collected only english text using cld3
- Consecutive whitespace characters are replaced with a single whitespace and whitespace before and after the sentence are removed
(e.g.
"\n \n Load image into Gallery viewer, valentine&#39;s day roses\n \n" → "Load image into Gallery viewer, valentine&#39;s day roses"
) - Any text with a length of 5 or less has been dropped
- Text that does not have a noun form has been dropped
- Text less than 3 words or more than 256 words and text over 1000 words were dropped
- All texts appearing more than 10 times have been dropped
(e.g.
“thumbnail for”, “image for”, “picture of”
)
Image-Text Level
- Based on (image_phash, text), duplicated samples have been dropped (Different text may exist for the same image URL.)
Who are the source language producers?
Common Crawl is the data source for COYO-700M.
Annotations
Annotation process
The dataset was built in a fully automated process that did not require human annotation.
Who are the annotators?
No human annotation
Personal and Sensitive Information
The COYO dataset is recommended to be used for research purposes. Kakao Brain tried to construct a "Safe" dataset when building the COYO dataset. (See Data Filtering Section) Kakao Brain is constantly making efforts to create more "Safe" datasets. However, despite these efforts, this large-scale dataset was not hand-picked by humans to avoid the risk due to its very large size (over 700M). Keep in mind that the unscreened nature of the dataset means that the collected images can lead to strongly discomforting and disturbing content for humans. The COYO dataset may contain some inappropriate data, and any problems resulting from such data are the full responsibility of the user who used it. Therefore, it is strongly recommended that this dataset be used only for research, keeping this in mind when using the dataset, and Kakao Brain does not recommend using this dataset as it is without special processing to clear inappropriate data to create commercial products.
Considerations for Using the Data
Social Impact of Dataset
It will be described in a paper to be released soon.
Discussion of Biases
It will be described in a paper to be released soon.
Other Known Limitations
It will be described in a paper to be released soon.
Additional Information
Dataset Curators
COYO dataset was released as an open source in the hope that it will be helpful to many research institutes and startups for research purposes. We look forward to contacting us from various places who wish to cooperate with us.
Licensing Information
The COYO dataset of Kakao Brain is licensed under CC-BY-4.0 License. The dataset includes “Image URL” and “Text” collected from various sites by analyzing Common Crawl data, an open data web crawling project. The collected data (images and text) is subject to the license to which each content belongs.
Citation Information
If you apply this dataset to any project and research, please cite our code:
@misc{kakaobrain2022coyo-700m,
title = {COYO-700M: Image-Text Pair Dataset},
author = {Minwoo Byeon, Beomhee Park, Haecheon Kim, Sungjun Lee, Woonhyuk Baek, Saehoon Kim},
year = {2022},
howpublished = {\url{https://github.com/kakaobrain/coyo-dataset}},
}
Contributions
- Minwoo Byeon (@mwbyeon)
- Beomhee Park (@beomheepark)
- Haecheon Kim (@HaecheonKim)
- Sungjun Lee (@justhungryman)
- Woonhyuk Baek (@wbaek)
- Saehoon Kim (@saehoonkim)
- and Kakao Brain Large-Scale AI Studio