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IAAO: Interactive Affordance Learning for Articulated Objects in 3D Environments

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This work presents IAAO, a novel framework that builds an explicit 3D model for intelligent agents to gain understanding of articulated objects in their environment through interaction. Unlike prior methods that rely on task-specific networks and assumptions about movable parts, our IAAO leverages large foundation models to estimate interactive affordances and part articulations in three stages. We first build hierarchical features and label fields for each object state using 3D Gaussian Splatting (3DGS) by distilling mask features and view-consistent labels from multi-view images. We then perform object- and part-level queries on the 3D Gaussian primitives to identify static and articulated elements, estimating global transformations and local articulation parameters along with affordances. Finally, scenes from different states are merged and refined based on the estimated transformations, enabling robust affordance-based interaction and manipulation of objects. Experimental results demonstrate the effectiveness of our method.

Can Zhang, Gim Hee Lee• 2025

Related benchmarks

TaskDatasetResultRank
Articulated Object Reconstruction and Motion EstimationPARIS Simulation
Axis Angle Error0.11
6
Articulated Object Reconstruction and Motion EstimationPARIS Real
Axis Angle Error8.86
6
Articulated Object ReconstructionMulti-part object dataset Storage-m 1.0 (test)
Axis Angle Error 00.18
3
Articulated Object ReconstructionMulti-part object dataset Fridge-m 1.0 (test)
Axis Angle Error (0)0.16
3
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