Part-Aware Open-Vocabulary 3D Affordance Grounding via Prototypical Semantic and Geometric Alignment
arXiv cs.CV / 3/19/2026
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Key Points
- The paper presents a two-stage cross-modal framework for open-vocabulary 3D affordance grounding to improve semantic and geometric alignment.
- Stage 1 uses large language models to generate part-aware instructions that recover missing semantics and link semantically similar affordances.
- Stage 2 introduces Affordance Prototype Aggregation (APA) for cross-object geometric consistency and Intra-Object Relational Modeling (IORM) for refining within-object geometry to support precise semantic alignment.
- Robust experiments on a new benchmark and two existing benchmarks show superior performance compared with existing methods.
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