English

Learning Visual N-Grams from Web Data

Computer Vision and Pattern Recognition 2017-08-08 v2

Abstract

Real-world image recognition systems need to recognize tens of thousands of classes that constitute a plethora of visual concepts. The traditional approach of annotating thousands of images per class for training is infeasible in such a scenario, prompting the use of webly supervised data. This paper explores the training of image-recognition systems on large numbers of images and associated user comments. In particular, we develop visual n-gram models that can predict arbitrary phrases that are relevant to the content of an image. Our visual n-gram models are feed-forward convolutional networks trained using new loss functions that are inspired by n-gram models commonly used in language modeling. We demonstrate the merits of our models in phrase prediction, phrase-based image retrieval, relating images and captions, and zero-shot transfer.

Keywords

Cite

@article{arxiv.1612.09161,
  title  = {Learning Visual N-Grams from Web Data},
  author = {Ang Li and Allan Jabri and Armand Joulin and Laurens van der Maaten},
  journal= {arXiv preprint arXiv:1612.09161},
  year   = {2017}
}