Low-shot learning with large-scale diffusion
Computer Vision and Pattern Recognition
2018-06-18 v3 Machine Learning
Machine Learning
Abstract
This paper considers the problem of inferring image labels from images when only a few annotated examples are available at training time. This setup is often referred to as low-shot learning, where a standard approach is to re-train the last few layers of a convolutional neural network learned on separate classes for which training examples are abundant. We consider a semi-supervised setting based on a large collection of images to support label propagation. This is possible by leveraging the recent advances on large-scale similarity graph construction. We show that despite its conceptual simplicity, scaling label propagation up to hundred millions of images leads to state of the art accuracy in the low-shot learning regime.
Cite
@article{arxiv.1706.02332,
title = {Low-shot learning with large-scale diffusion},
author = {Matthijs Douze and Arthur Szlam and Bharath Hariharan and Hervé Jégou},
journal= {arXiv preprint arXiv:1706.02332},
year = {2018}
}