Litcius/Paper detail

RelTR: Relation Transformer for Scene Graph Generation

Yuren Cong, Michael Ying Yang, Bodo Rosenhahn

2023IEEE Transactions on Pattern Analysis and Machine Intelligence211 citationsDOI

Abstract

Different objects in the same scene are more or less related to each other, but only a limited number of these relationships are noteworthy. Inspired by Detection Transformer, which excels in object detection, we view scene graph generation as a set prediction problem. In this article, we propose an end-to-end scene graph generation model Relation Transformer (RelTR), which has an encoder-decoder architecture. The encoder reasons about the visual feature context while the decoder infers a fixed-size set of triplets subject-predicate-object using different types of attention mechanisms with coupled subject and object queries. We design a set prediction loss performing the matching between the ground truth and predicted triplets for the end-to-end training. In contrast to most existing scene graph generation methods, RelTR is a one-stage method that predicts sparse scene graphs directly only using visual appearance without combining entities and labeling all possible predicates. Extensive experiments on the Visual Genome, Open Images V6, and VRD datasets demonstrate the superior performance and fast inference of our model.

Topics & Concepts

Computer scienceScene graphArtificial intelligenceTransformerInferenceEncoderGround truthPattern recognition (psychology)Computer visionGraphFeature extractionTheoretical computer scienceVoltageRendering (computer graphics)Operating systemPhysicsQuantum mechanicsMultimodal Machine Learning ApplicationsAdvanced Image and Video Retrieval TechniquesAdvanced Neural Network Applications