Skip to main content

Open, Clean Datasets for Computer Vision.

Project description

PyPi PyPi PyPi License


Visual Layer Logo

Open, Clean Datasets for Computer Vision


🔥 We use fastdup - a free tool to clean all datasets shared in this repo.
Explore the docs »
Report Issues · Read Blog · Get In Touch · About Us

Logo Logo Logo Logo Logo

Description

vl-datasets is a collection of clean computer vision datasets, carefully analyzed and processed to avoid common image dataset issues such as:

  • Duplicates.
  • Broken images.
  • Outliers.
  • Dark/Bright/Blurry images.

For each dataset in this repo, we provide a .csv file that lists the problematic images from the dataset. You can use the listed images in the .csv to improve the model by re-labeling the them or just simply remove it from the dataset.

Why?

Computer vision is an exciting and rapidly advancing field, with new techniques and models emerging now and then. However, to develop and evaluate these models, it's essential to have reliable and standardized datasets to work with.

Even with the recent success of generative models, data quality remains an issue that's mainly overlooked. Training models will erroneours data impacts model accuracy, incurs costs in time, storage and computational resources.

We believe that access to clean and high-quality computer vision datasets leads to accurate, non-biased, and efficient model. By providing public access to vl-datasets we hope it helps advance the field of computer vision.

Datasets & Access

We're a startup and we'd like to offer free access to the datasets as much as we can afford to. But in doing so, we'd also need your support.

We're offering select .csv files completely free with no strings attached. For access to our complete dataset and exclusive beta features, all we ask is that you sign up to be a beta tester – it's completely free and your feedback will help shape the future of our platform.

Join us in unlocking the full potential of our data and revolutionizing the industry!

Here is a table of widely used computer vision datasets, issues we found and a link to access the .csv file.

Dataset Issues (WIP) CSV
Food-101
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Download here.
Oxford-IIIT Pet
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Download here.
Imagenette
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Download here.
LAION-1B
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Sign up here.
Imagenet-21k
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Sign up here.
Imagenet-1k
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Sign up here.
KITTI
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Sign up here.
DeepFashion
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Sign up here.
Places365
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Sign up here.
CelebA-HQ
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Sign up here.
ADE20K
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Sign up here.
COCO
  • Duplicates - 0.24% (12,345)
  • Outliers - 0.85% (456)
  • Broken - 0.85% (456)
  • Blur - 0.85% (456)
  • Dark - 0.85% (456)
  • Bright - 0.85% (456)
Sign up here.

Installation

Option 1 - Install vl_datasets package from PyPI.

pip install vl-datasets

Option 2 - Install the bleeding edge version on GitHub

pip install git+https://github.com/visual-layer/vl-datasets.git@main --upgrade

Usage

To start using vl-datasets, you can import the clean version of the dataset with:

from vl_datasets import CleanFood101

This should import the clean version of the Food101 dataset.

Next, you can load the dataset as a PyTorch Dataset.

train_dataset = CleanFood101('./', split='train')
valid_dataset = CleanFood101('./', split='test')

NOTE: Sign up here for free to be our beta testers and get full access to the all the .csv files for the dataset listed in this repo.

With the dataset loaded you can train a model using PyTorch training loop.

Learn from Examples

  • Dataset: CleanFood101
  • Framework: PyTorch.
  • Description: Load a dataset and train a PyTorch model.
  • Dataset: CleanPets
  • Framework: fast.ai.
  • Description: Finetune a pretrained DINOv2 model using fastai.

License

vl-datasets is licensed under the Apache 2.0 License. See LICENSE.

However, you are bound to the usage license of the original dataset. It is your responsibility to determine whether you have permission to use the dataset under the dataset's license. We provide no warranty or guarantee of accuracy or completeness.

Getting Help

Get help from the Visual Layer team or community members via the following channels -

About Visual-Layer

Visual Layer is founded by the authors of XGBoost, Apache TVM & Turi Create - Danny Bickson, Carlos Guestrin and Amir Alush.

Learn more about Visual Layer here.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distributions

vl_datasets-0.0.5-py3.10-none-any.whl (12.6 kB view details)

Uploaded Python 3

vl_datasets-0.0.5-py3.9-none-any.whl (12.6 kB view details)

Uploaded Python 3

File details

Details for the file vl_datasets-0.0.5-py3.10-none-any.whl.

File metadata

File hashes

Hashes for vl_datasets-0.0.5-py3.10-none-any.whl
Algorithm Hash digest
SHA256 f7383aec427a0ac35ea003441b2fb05feb6482aa011d9993a6aaa7ff43e6d203
MD5 06d9217a5e7201d3114feac32b4869b6
BLAKE2b-256 6b06452976c506050af719cff0c543787cc52fecc3b0eeccbf1cbf24095b1efb

See more details on using hashes here.

File details

Details for the file vl_datasets-0.0.5-py3.9-none-any.whl.

File metadata

File hashes

Hashes for vl_datasets-0.0.5-py3.9-none-any.whl
Algorithm Hash digest
SHA256 e121b836816b89ba8c6b366dbaf33e2a832ce781472c6e74c61a39091ea7a35e
MD5 97c7723e135ffd34e22e6dcab7c51d3c
BLAKE2b-256 aecae0e601985bc5b4b271b932be2eb185452ba19008021b6e79a4acb56e626f

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page