Detector-Free Weakly Supervised Grounding by Separation
Authors
Authors
- Hildegard Kühne
- Prasanna Sattigeri
- Rameswar Panda
- Rogerio Feris
- Assaf Arbelle
- Sivan Doveh
- Amit Alfassy
- Joseph Shtok
- Guy Lev
- Eli Schwartz
- Hila Barak Levi
- Chun-Fu (Richard) Chen
- Alex Bronstein
- Kate Saenko
- Shimon Ullman
- Raja Giryes
- Leonid Karlinsky
Authors
- Hildegard Kühne
- Prasanna Sattigeri
- Rameswar Panda
- Rogerio Feris
- Assaf Arbelle
- Sivan Doveh
- Amit Alfassy
- Joseph Shtok
- Guy Lev
- Eli Schwartz
- Hila Barak Levi
- Chun-Fu (Richard) Chen
- Alex Bronstein
- Kate Saenko
- Shimon Ullman
- Raja Giryes
- Leonid Karlinsky
Published on
10/17/2021
Nowadays, there is an abundance of data involving images and surrounding free-form text weakly corresponding to those images. Weakly Supervised phrase-Grounding (WSG) deals with the task of using this data to learn to localize (or to ground) arbitrary text phrases in images without any additional annotations. However, most recent SotA methods for WSG assume an existence of a pre-trained object detector, relying on it to produce the ROIs for localization. In this work, we focus on the task of Detector-Free WSG (DF-WSG) to solve WSG without relying on a pre-trained detector. We directly learn everything from the images and associated free-form text pairs, thus potentially gaining advantage on the categories unsupported by the detector. The key idea behind our proposed Grounding by Separation (GbS) method is synthesizing `text to image-regions’ associations by random alpha-blending of arbitrary image pairs and using the corresponding texts of the pair as conditions to recover the alpha map from the blended image via a segmentation network. At test time, this allows using the query phrase as a condition for a non-blended query image, thus interpreting the test image as a composition of a region corresponding to the phrase and the complement region. Using this approach we demonstrate a significant accuracy improvement, up to 8.5% over previous DF-WSG SotA, for a range of benchmarks including Flickr30K, Visual Genome, and ReferIt, as well as a significant complementary improvement (above 7%) over the detector-based approaches for WSG.
Please cite our work using the BibTeX below.
@InProceedings{Arbelle_2021_ICCV,
author = {Arbelle, Assaf and Doveh, Sivan and Alfassy, Amit and Shtok, Joseph and Lev, Guy and Schwartz, Eli and Kuehne, Hilde and Levi, Hila Barak and Sattigeri, Prasanna and Panda, Rameswar and Chen, Chun-Fu (Richard) and Bronstein, Alex and Saenko, Kate and Ullman, Shimon and Giryes, Raja and Feris, Rogerio and Karlinsky, Leonid},
title = {Detector-Free Weakly Supervised Grounding by Separation},
booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
month = {October},
year = {2021},
pages = {1801-1812}
}