Towards Physics-Informed Spatial Intelligence with Human Priors: An Autonomous Driving Pilot Study
Abstract
How to integrate and verify spatial intelligence in foundation models remains an open challenge. Current practice often proxies Visual-Spatial Intelligence (VSI) with purely textual prompts and VQA-style scoring, which obscures geometry, invites linguistic shortcuts, and weakens attribution to genuinely spatial skills. We introduce Spatial Intelligence Grid (SIG): a structured, grid-based schema that explicitly encodes object layouts, inter-object relations, and physically grounded priors. As a complementary channel to text, SIG provides a faithful, compositional representation of scene structure for foundation-model reasoning. Building on SIG, we derive SIG-informed evaluation metrics that quantify a model’s intrinsic VSI, which separates spatial capability from language priors. In few-shot in-context learning with state-of-the-art multimodal LLMs (e.g. GPT- and Gemini-family models), SIG yields consistently larger, more stable, and more comprehensive gains across all VSI metrics compared to VQA-only representations, indicating its promise as a data-labeling and training schema for learning VSI. We also release SIGBench, a benchmark of 1.4K driving frames annotated with ground-truth SIG labels and human gaze traces, supporting both grid-based machine VSI tasks and attention-driven, human-like VSI tasks in autonomous-driving scenarios.
Cite
Text
Wu et al. "Towards Physics-Informed Spatial Intelligence with Human Priors: An Autonomous Driving Pilot Study." Advances in Neural Information Processing Systems, 2025.Markdown
[Wu et al. "Towards Physics-Informed Spatial Intelligence with Human Priors: An Autonomous Driving Pilot Study." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/wu2025neurips-physicsinformed/)BibTeX
@inproceedings{wu2025neurips-physicsinformed,
title = {{Towards Physics-Informed Spatial Intelligence with Human Priors: An Autonomous Driving Pilot Study}},
author = {Wu, Guanlin and Su, Boyan and Zhao, Yang and Wang, Pu and Lin, Yichen and Yang, Hao Frank},
booktitle = {Advances in Neural Information Processing Systems},
year = {2025},
url = {https://mlanthology.org/neurips/2025/wu2025neurips-physicsinformed/}
}