Benchmarking representation learning for natural world image collections

Publikation: Bidrag til tidsskriftKonferenceartikelForskningfagfællebedømt

  • Grant van Horn
  • Elijah Cole
  • Sara Beery
  • Kimberly Wilber
  • Belongie, Serge
  • Oisin Mac Aodha

Recent progress in self-supervised learning has resulted in models that are capable of extracting rich representations from image collections without requiring any explicit label supervision. However, to date the vast majority of these approaches have restricted themselves to training on standard benchmark datasets such as ImageNet. We argue that fine-grained visual categorization problems, such as plant and animal species classification, provide an informative testbed for self-supervised learning. In order to facilitate progress in this area we present two new natural world visual classification datasets, iNat2021 and NeWT. The former consists of 2.7M images from 10k different species uploaded by users of the citizen science application iNaturalist. We designed the latter, NeWT, in collaboration with domain experts with the aim of benchmarking the performance of representation learning algorithms on a suite of challenging natural world binary classification tasks that go beyond standard species classification. These two new datasets allow us to explore questions related to large-scale representation and transfer learning in the context of fine-grained categories. We provide a comprehensive analysis of feature extractors trained with and without supervision on ImageNet and iNat2021, shedding light on the strengths and weaknesses of different learned features across a diverse set of tasks. We find that features produced by standard supervised methods still outperform those produced by self-supervised approaches such as SimCLR. However, improved self-supervised learning methods are constantly being released and the iNat2021 and NeWT datasets are a valuable resource for tracking their progress.

OriginalsprogEngelsk
TidsskriftProceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition
Sider (fra-til)12879-12888
Antal sider10
ISSN1063-6919
DOI
StatusUdgivet - 2021
Eksternt udgivetJa
Begivenhed2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2021 - Virtual, Online, USA
Varighed: 19 jun. 202125 jun. 2021

Konference

Konference2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition, CVPR 2021
LandUSA
ByVirtual, Online
Periode19/06/202125/06/2021

Bibliografisk note

Publisher Copyright:
© 2021 IEEE

ID: 301817659