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LLM Meets Scene Graph: Can Large Language Models Understand and Generate Scene Graphs? A Benchmark and Empirical Study

26 May 2025
Dongil Yang
Minjin Kim
Sunghwan Kim
Beong-woo Kwak
Minjun Park
Jinseok Hong
Woontack Woo
Jinyoung Yeo
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Abstract

The remarkable reasoning and generalization capabilities of Large Language Models (LLMs) have paved the way for their expanding applications in embodied AI, robotics, and other real-world tasks. To effectively support these applications, grounding in spatial and temporal understanding in multimodal environments is essential. To this end, recent works have leveraged scene graphs, a structured representation that encodes entities, attributes, and their relationships in a scene. However, a comprehensive evaluation of LLMs' ability to utilize scene graphs remains limited. In this work, we introduce Text-Scene Graph (TSG) Bench, a benchmark designed to systematically assess LLMs' ability to (1) understand scene graphs and (2) generate them from textual narratives. With TSG Bench we evaluate 11 LLMs and reveal that, while models perform well on scene graph understanding, they struggle with scene graph generation, particularly for complex narratives. Our analysis indicates that these models fail to effectively decompose discrete scenes from a complex narrative, leading to a bottleneck when generating scene graphs. These findings underscore the need for improved methodologies in scene graph generation and provide valuable insights for future research. The demonstration of our benchmark is available atthis https URL. Additionally, our code and evaluation data are publicly available atthis https URL.

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@article{yang2025_2505.19510,
  title={ LLM Meets Scene Graph: Can Large Language Models Understand and Generate Scene Graphs? A Benchmark and Empirical Study },
  author={ Dongil Yang and Minjin Kim and Sunghwan Kim and Beong-woo Kwak and Minjun Park and Jinseok Hong and Woontack Woo and Jinyoung Yeo },
  journal={arXiv preprint arXiv:2505.19510},
  year={ 2025 }
}
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