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Meta-Album: Multi-domain Meta-Dataset for Few-Shot Image Classification

Authors :
Ullah, Ihsan
Carrión-Ojeda, Dustin
Escalera, Sergio
Guyon, Isabelle
Huisman, Mike
Mohr, Felix
van Rijn, Jan N
Sun, Haozhe
Vanschoren, Joaquin
Vu, Phan Anh
Source :
36th Conference on Neural Information Processing Systems (NeurIPS 2022) Track on Datasets and Benchmarks., NeurIPS, Nov 2022, New Orleans, United States
Publication Year :
2023

Abstract

We introduce Meta-Album, an image classification meta-dataset designed to facilitate few-shot learning, transfer learning, meta-learning, among other tasks. It includes 40 open datasets, each having at least 20 classes with 40 examples per class, with verified licences. They stem from diverse domains, such as ecology (fauna and flora), manufacturing (textures, vehicles), human actions, and optical character recognition, featuring various image scales (microscopic, human scales, remote sensing). All datasets are preprocessed, annotated, and formatted uniformly, and come in 3 versions (Micro $\subset$ Mini $\subset$ Extended) to match users' computational resources. We showcase the utility of the first 30 datasets on few-shot learning problems. The other 10 will be released shortly after. Meta-Album is already more diverse and larger (in number of datasets) than similar efforts, and we are committed to keep enlarging it via a series of competitions. As competitions terminate, their test data are released, thus creating a rolling benchmark, available through OpenML.org. Our website https://meta-album.github.io/ contains the source code of challenge winning methods, baseline methods, data loaders, and instructions for contributing either new datasets or algorithms to our expandable meta-dataset.

Details

Database :
arXiv
Journal :
36th Conference on Neural Information Processing Systems (NeurIPS 2022) Track on Datasets and Benchmarks., NeurIPS, Nov 2022, New Orleans, United States
Publication Type :
Report
Accession number :
edsarx.2302.08909
Document Type :
Working Paper