English

TR-LLM: Integrating Trajectory Data for Scene-Aware LLM-Based Human Action Prediction

Human-Computer Interaction 2025-07-21 v4

Abstract

Accurate prediction of human behavior is crucial for AI systems to effectively support real-world applications, such as autonomous robots anticipating and assisting with human tasks. Real-world scenarios frequently present challenges such as occlusions and incomplete scene observations, which can compromise predictive accuracy. Thus, traditional video-based methods often struggle due to limited temporal and spatial perspectives. Large Language Models (LLMs) offer a promising alternative. Having been trained on a large text corpus describing human behaviors, LLMs likely encode plausible sequences of human actions in a home environment. However, LLMs, trained primarily on text data, lack inherent spatial awareness and real-time environmental perception. They struggle with understanding physical constraints and spatial geometry. Therefore, to be effective in a real-world spatial scenario, we propose a multimodal prediction framework that enhances LLM-based action prediction by integrating physical constraints derived from human trajectories. Our experiments demonstrate that combining LLM predictions with trajectory data significantly improves overall prediction performance. This enhancement is particularly notable in situations where the LLM receives limited scene information, highlighting the complementary nature of linguistic knowledge and physical constraints in understanding and anticipating human behavior.

Keywords

Cite

@article{arxiv.2410.03993,
  title  = {TR-LLM: Integrating Trajectory Data for Scene-Aware LLM-Based Human Action Prediction},
  author = {Kojiro Takeyama and Yimeng Liu and Misha Sra},
  journal= {arXiv preprint arXiv:2410.03993},
  year   = {2025}
}

Comments

Accepted to IROS 2025

R2 v1 2026-06-28T19:09:30.216Z