Humans are integral components of the transportation ecosystem, and understanding their behaviors is crucial to facilitating the development of safe driving systems. Although recent progress has explored various aspects of human behavior\unicodex2014such as motion, trajectories, and intention\unicodex2014a comprehensive benchmark for evaluating human behavior understanding in autonomous driving remains unavailable. In this work, we propose MMHU, a large-scale benchmark for human behavior analysis featuring rich annotations, such as human motion and trajectories, text description for human motions, human intention, and critical behavior labels relevant to driving safety. Our dataset encompasses 57k human motion clips and 1.73M frames gathered from diverse sources, including established driving datasets such as Waymo, in-the-wild videos from YouTube, and self-collected data. A human-in-the-loop annotation pipeline is developed to generate rich behavior captions. We provide a thorough dataset analysis and benchmark multiple tasks\unicodex2014ranging from motion prediction to motion generation and human behavior question answering\unicodex2014thereby offering a broad evaluation suite. Project page : https://MMHU-Benchmark.github.io.
@article{arxiv.2507.12463,
title = {MMHU: A Massive-Scale Multimodal Benchmark for Human Behavior Understanding},
author = {Renjie Li and Ruijie Ye and Mingyang Wu and Hao Frank Yang and Zhiwen Fan and Hezhen Hu and Zhengzhong Tu},
journal= {arXiv preprint arXiv:2507.12463},
year = {2025}
}