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Concept Generalization in Visual Representation Learning

Authors :
Sariyildiz, Mert Bulent
Kalantidis, Yannis
Larlus, Diane
Alahari, Karteek
Publication Year :
2020

Abstract

Measuring concept generalization, i.e., the extent to which models trained on a set of (seen) visual concepts can be leveraged to recognize a new set of (unseen) concepts, is a popular way of evaluating visual representations, especially in a self-supervised learning framework. Nonetheless, the choice of unseen concepts for such an evaluation is usually made arbitrarily, and independently from the seen concepts used to train representations, thus ignoring any semantic relationships between the two. In this paper, we argue that the semantic relationships between seen and unseen concepts affect generalization performance and propose ImageNet-CoG, a novel benchmark on the ImageNet-21K (IN-21K) dataset that enables measuring concept generalization in a principled way. Our benchmark leverages expert knowledge that comes from WordNet in order to define a sequence of unseen IN-21K concept sets that are semantically more and more distant from the ImageNet-1K (IN-1K) subset, a ubiquitous training set. This allows us to benchmark visual representations learned on IN-1K out-of-the box. We conduct a large-scale study encompassing 31 convolution and transformer-based models and show how different architectures, levels of supervision, regularization techniques and use of web data impact the concept generalization performance.<br />Comment: Accepted to ICCV 2021. See our project website: https://europe.naverlabs.com/cog-benchmark for code and ImageNet-CoG level files

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2012.05649
Document Type :
Working Paper