VrR-VG: Refocusing Visually-Relevant Relationships
Abstract
Relationships encode the interactions among individual instances, and play a critical role in deep visual scene understanding. Suffering from the high predictability with non-visual information, existing methods tend to fit the statistical bias rather than ``learning'' to ``infer'' the relationships from images. To encourage further development in visual relationships, we propose a novel method to automatically mine more valuable relationships by pruning visually-irrelevant ones. We construct a new scene-graph dataset named Visually-Relevant Relationships Dataset (VrR-VG) based on Visual Genome. Compared with existing datasets, the performance gap between learnable and statistical method is more significant in VrR-VG, and frequency-based analysis does not work anymore. Moreover, we propose to learn a relationship-aware representation by jointly considering instances, attributes and relationships. By applying the representation-aware feature learned on VrR-VG, the performances of image captioning and visual question answering are systematically improved with a large margin, which demonstrates the gain of our dataset and the features embedding schema. VrR-VG is available via http://vrr-vg.com/.
Cite
@article{arxiv.1902.00313,
title = {VrR-VG: Refocusing Visually-Relevant Relationships},
author = {Yuanzhi Liang and Yalong Bai and Wei Zhang and Xueming Qian and Li Zhu and Tao Mei},
journal= {arXiv preprint arXiv:1902.00313},
year = {2019}
}
Comments
Accepted by ICCV2019