CVApr 15, 2025

3DAffordSplat: Efficient Affordance Reasoning with 3D Gaussians

Peking U
arXiv:2504.11218v210 citationsh-index: 54MM
Originality Incremental advance
AI Analysis

This addresses the lack of 3DGS-specific datasets for affordance reasoning in embodied AI, enabling more precise task-oriented manipulations, though it is incremental as it builds on existing 3DGS techniques.

The authors tackled the problem of 3D affordance reasoning for embodied AI by creating 3DAffordSplat, the first large-scale dataset for 3D Gaussian Splatting (3DGS) with 23,677 Gaussian instances and 6,631 affordance labels, and developing AffordSplatNet, which outperforms existing methods with enhanced recognition accuracy and generalization.

3D affordance reasoning is essential in associating human instructions with the functional regions of 3D objects, facilitating precise, task-oriented manipulations in embodied AI. However, current methods, which predominantly depend on sparse 3D point clouds, exhibit limited generalizability and robustness due to their sensitivity to coordinate variations and the inherent sparsity of the data. By contrast, 3D Gaussian Splatting (3DGS) delivers high-fidelity, real-time rendering with minimal computational overhead by representing scenes as dense, continuous distributions. This positions 3DGS as a highly effective approach for capturing fine-grained affordance details and improving recognition accuracy. Nevertheless, its full potential remains largely untapped due to the absence of large-scale, 3DGS-specific affordance datasets. To overcome these limitations, we present 3DAffordSplat, the first large-scale, multi-modal dataset tailored for 3DGS-based affordance reasoning. This dataset includes 23,677 Gaussian instances, 8,354 point cloud instances, and 6,631 manually annotated affordance labels, encompassing 21 object categories and 18 affordance types. Building upon this dataset, we introduce AffordSplatNet, a novel model specifically designed for affordance reasoning using 3DGS representations. AffordSplatNet features an innovative cross-modal structure alignment module that exploits structural consistency priors to align 3D point cloud and 3DGS representations, resulting in enhanced affordance recognition accuracy. Extensive experiments demonstrate that the 3DAffordSplat dataset significantly advances affordance learning within the 3DGS domain, while AffordSplatNet consistently outperforms existing methods across both seen and unseen settings, highlighting its robust generalization capabilities.

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