Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Knowledge-Embedded Routing Network for Scene Graph Generation

About

To understand a scene in depth not only involves locating/recognizing individual objects, but also requires to infer the relationships and interactions among them. However, since the distribution of real-world relationships is seriously unbalanced, existing methods perform quite poorly for the less frequent relationships. In this work, we find that the statistical correlations between object pairs and their relationships can effectively regularize semantic space and make prediction less ambiguous, and thus well address the unbalanced distribution issue. To achieve this, we incorporate these statistical correlations into deep neural networks to facilitate scene graph generation by developing a Knowledge-Embedded Routing Network. More specifically, we show that the statistical correlations between objects appearing in images and their relationships, can be explicitly represented by a structured knowledge graph, and a routing mechanism is learned to propagate messages through the graph to explore their interactions. Extensive experiments on the large-scale Visual Genome dataset demonstrate the superiority of the proposed method over current state-of-the-art competitors.

Tianshui Chen, Weihao Yu, Riquan Chen, Liang Lin• 2019

Related benchmarks

TaskDatasetResultRank
Scene Graph GenerationVisual Genome (test)
R@5030.9
86
Scene Graph ClassificationVG150 (test)
mR@509.4
66
Scene Graph ClassificationVisual Genome (test)
Recall@10049
63
Predicate ClassificationVisual Genome
Recall@5065.8
54
Predicate ClassificationVisual Genome (test)
R@5081.9
50
Scene Graph ClassificationVisual Genome
R@509.4
45
Predicate ClassificationVisual Genome (VG) 150 object categories, 50 relationship categories (test)
mR@10049
44
Scene Graph DetectionVG150 (test)
ng-mR@5016
41
Scene Graph DetectionVG150
R@5027.1
31
Predicate ClassificationVG 50 (test)
Mean Recall@5017.7
29
Showing 10 of 32 rows

Other info

Follow for update