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Unsupervised Object Localization in the Era of Self-Supervised ViTs: A Survey

Authors :
Siméoni, Oriane
Zablocki, Éloi
Gidaris, Spyros
Puy, Gilles
Pérez, Patrick
Publication Year :
2023

Abstract

The recent enthusiasm for open-world vision systems show the high interest of the community to perform perception tasks outside of the closed-vocabulary benchmark setups which have been so popular until now. Being able to discover objects in images/videos without knowing in advance what objects populate the dataset is an exciting prospect. But how to find objects without knowing anything about them? Recent works show that it is possible to perform class-agnostic unsupervised object localization by exploiting self-supervised pre-trained features. We propose here a survey of unsupervised object localization methods that discover objects in images without requiring any manual annotation in the era of self-supervised ViTs. We gather links of discussed methods in the repository https://github.com/valeoai/Awesome-Unsupervised-Object-Localization.<br />Comment: IJCV 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.12904
Document Type :
Working Paper