Scenes and Surroundings: Scene Graph Generation using Relation Transformer

07/12/2021
by   Rajat Koner, et al.
1

Identifying objects in an image and their mutual relationships as a scene graph leads to a deep understanding of image content. Despite the recent advancement in deep learning, the detection and labeling of visual object relationships remain a challenging task. This work proposes a novel local-context aware architecture named relation transformer, which exploits complex global objects to object and object to edge (relation) interactions. Our hierarchical multi-head attention-based approach efficiently captures contextual dependencies between objects and predicts their relationships. In comparison to state-of-the-art approaches, we have achieved an overall mean 4.85% improvement and a new benchmark across all the scene graph generation tasks on the Visual Genome dataset.

READ FULL TEXT

page 2

page 7

page 8

research
04/13/2020

Relation Transformer Network

The identification of objects in an image, together with their mutual re...
research
11/20/2018

Scene Graph Generation via Conditional Random Fields

Despite the great success object detection and segmentation models have ...
research
11/30/2022

Iterative Scene Graph Generation with Generative Transformers

Scene graphs provide a rich, structured representation of a scene by enc...
research
11/15/2018

LinkNet: Relational Embedding for Scene Graph

Objects and their relationships are critical contents for image understa...
research
03/19/2022

Relationformer: A Unified Framework for Image-to-Graph Generation

A comprehensive representation of an image requires understanding object...
research
04/07/2023

Devil's on the Edges: Selective Quad Attention for Scene Graph Generation

Scene graph generation aims to construct a semantic graph structure from...
research
11/17/2017

Neural Motifs: Scene Graph Parsing with Global Context

We investigate the problem of producing structured graph representations...

Please sign up or login with your details

Forgot password? Click here to reset