English

Thinking in Structures: Evaluating Spatial Intelligence through Reasoning on Constrained Manifolds

Computer Vision and Pattern Recognition 2026-02-10 v1

Abstract

Spatial intelligence is crucial for vision--language models (VLMs) in the physical world, yet many benchmarks evaluate largely unconstrained scenes where models can exploit 2D shortcuts. We introduce SSI-Bench, a VQA benchmark for spatial reasoning on constrained manifolds, built from complex real-world 3D structures whose feasible configurations are tightly governed by geometric, topological, and physical constraints. SSI-Bench contains 1,000 ranking questions spanning geometric and topological reasoning and requiring a diverse repertoire of compositional spatial operations, such as mental rotation, cross-sectional inference, occlusion reasoning, and force-path reasoning. It is created via a fully human-centered pipeline: ten researchers spent over 400 hours curating images, annotating structural components, and designing questions to minimize pixel-level cues. Evaluating 31 widely used VLMs reveals a large gap to humans: the best open-source model achieves 22.2% accuracy and the strongest closed-source model reaches 33.6%, while humans score 91.6%. Encouraging models to think yields only marginal gains, and error analysis points to failures in structural grounding and constraint-consistent 3D reasoning. Project page: https://ssi-bench.github.io.

Keywords

Cite

@article{arxiv.2602.07864,
  title  = {Thinking in Structures: Evaluating Spatial Intelligence through Reasoning on Constrained Manifolds},
  author = {Chen Yang and Guanxin Lin and Youquan He and Peiyao Chen and Guanghe Liu and Yufan Mo and Zhouyuan Xu and Linhao Wang and Guohui Zhang and Zihang Zhang and Shenxiang Zeng and Chen Wang and Jiansheng Fan},
  journal= {arXiv preprint arXiv:2602.07864},
  year   = {2026}
}
R2 v1 2026-07-01T10:26:33.137Z