English

Learning Human Visual Attention on 3D Surfaces through Geometry-Queried Semantic Priors

Computer Vision and Pattern Recognition 2026-02-09 v1

Abstract

Human visual attention on three-dimensional objects emerges from the interplay between bottom-up geometric processing and top-down semantic recognition. Existing 3D saliency methods rely on hand-crafted geometric features or learning-based approaches that lack semantic awareness, failing to explain why humans fixate on semantically meaningful but geometrically unremarkable regions. We introduce SemGeo-AttentionNet, a dual-stream architecture that explicitly formalizes this dichotomy through asymmetric cross-modal fusion, leveraging diffusion-based semantic priors from geometry-conditioned multi-view rendering and point cloud transformers for geometric processing. Cross-attention ensures geometric features query semantic content, enabling bottom-up distinctiveness to guide top-down retrieval. We extend our framework to temporal scanpath generation through reinforcement learning, introducing the first formulation respecting 3D mesh topology with inhibition-of-return dynamics. Evaluation on SAL3D, NUS3D and 3DVA datasets demonstrates substantial improvements, validating how cognitively motivated architectures effectively model human visual attention on three-dimensional surfaces.

Keywords

Cite

@article{arxiv.2602.06419,
  title  = {Learning Human Visual Attention on 3D Surfaces through Geometry-Queried Semantic Priors},
  author = {Soham Pahari and Sandeep C. Kumain},
  journal= {arXiv preprint arXiv:2602.06419},
  year   = {2026}
}
R2 v1 2026-07-01T10:23:46.782Z