TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Energy-Based Learning for Scene Graph Generation

Energy-Based Learning for Scene Graph Generation

Mohammed Suhail, Abhay Mittal, Behjat Siddiquie, Chris Broaddus, Jayan Eledath, Gerard Medioni, Leonid Sigal

2021-03-03CVPR 2021 1Structured PredictionScene Graph GenerationScene Graph DetectionScene Graph ClassificationGraph Generation
PaperPDFCode(official)

Abstract

Traditional scene graph generation methods are trained using cross-entropy losses that treat objects and relationships as independent entities. Such a formulation, however, ignores the structure in the output space, in an inherently structured prediction problem. In this work, we introduce a novel energy-based learning framework for generating scene graphs. The proposed formulation allows for efficiently incorporating the structure of scene graphs in the output space. This additional constraint in the learning framework acts as an inductive bias and allows models to learn efficiently from a small number of labels. We use the proposed energy-based framework to train existing state-of-the-art models and obtain a significant performance improvement, of up to 21% and 27%, on the Visual Genome and GQA benchmark datasets, respectively. Furthermore, we showcase the learning efficiency of the proposed framework by demonstrating superior performance in the zero- and few-shot settings where data is scarce.

Results

TaskDatasetMetricValueModel
Scene ParsingVisual GenomeRecall@5031.74SG-EBM
Scene ParsingVisual Genomemean Recall @207.1SG-EBM
2D Semantic SegmentationVisual GenomeRecall@5031.74SG-EBM
2D Semantic SegmentationVisual Genomemean Recall @207.1SG-EBM
Scene Graph GenerationVisual GenomeRecall@5031.74SG-EBM
Scene Graph GenerationVisual Genomemean Recall @207.1SG-EBM

Related Papers

NGTM: Substructure-based Neural Graph Topic Model for Interpretable Graph Generation2025-07-17GNN-CNN: An Efficient Hybrid Model of Convolutional and Graph Neural Networks for Text Representation2025-07-10SPADE: Spatial-Aware Denoising Network for Open-vocabulary Panoptic Scene Graph Generation with Long- and Local-range Context Reasoning2025-07-08GDGB: A Benchmark for Generative Dynamic Text-Attributed Graph Learning2025-07-04CoPa-SG: Dense Scene Graphs with Parametric and Proto-Relations2025-06-26CAT-SG: A Large Dynamic Scene Graph Dataset for Fine-Grained Understanding of Cataract Surgery2025-06-26HOIverse: A Synthetic Scene Graph Dataset With Human Object Interactions2025-06-24DiscoSG: Towards Discourse-Level Text Scene Graph Parsing through Iterative Graph Refinement2025-06-18