GLASS: Graph and Vision-Language Assisted Semantic Shape Correspondence
Qinfeng Xiao, Guofeng Mei, Qilong Liu, Chenyuan Yi, Fabio Poiesi, Jian Zhang, Bo Yang, Yick Kit-lun

TL;DR
GLASS is a novel framework that combines geometric spectral analysis with vision-language models to establish accurate, semantically meaningful shape correspondences across 3D shapes without supervision, excelling in challenging non-isometric and inter-class scenarios.
Contribution
The paper introduces GLASS, integrating multi-view visual features, language embeddings, and a graph contrastive loss to improve unsupervised 3D shape correspondence learning.
Findings
Achieves state-of-the-art accuracy on multiple benchmarks.
Reduces geodesic error significantly compared to baselines.
Performs well across isometric and non-isometric shape matching tasks.
Abstract
Establishing dense correspondence across 3D shapes is crucial for fundamental downstream tasks, including texture transfer, shape interpolation, and robotic manipulation. However, learning these mappings without manual supervision remains a formidable challenge, particularly under severe non-isometric deformations and in inter-class settings where geometric cues are ambiguous. Conventional functional map methods, while elegant, typically struggle in these regimes due to their reliance on isometry. To address this, we present GLASS, a framework that bridges the gap by integrating geometric spectral analysis with rich semantic priors from vision-language foundation models. GLASS introduces three key innovations: (i) a view-consistent strategy that enables robust multi-view visual feature extraction from powerful vision foundation models; (ii) the injection of language embeddings into…
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Taxonomy
Topics3D Shape Modeling and Analysis · Robot Manipulation and Learning · Robotics and Sensor-Based Localization
