ROCVLGOct 23, 2024

GenDP: 3D Semantic Fields for Category-Level Generalizable Diffusion Policy

arXiv:2410.17488v137 citationsh-index: 7CoRL
Originality Highly original
AI Analysis

This addresses generalization in robotic manipulation for unseen objects and layouts, representing a strong specific gain.

The paper tackled the problem of diffusion-based policies lacking explicit geometry and semantics, which limits generalization to unseen objects and layouts, and increased the average success rate on unseen instances from 20% to 93%.

Diffusion-based policies have shown remarkable capability in executing complex robotic manipulation tasks but lack explicit characterization of geometry and semantics, which often limits their ability to generalize to unseen objects and layouts. To enhance the generalization capabilities of Diffusion Policy, we introduce a novel framework that incorporates explicit spatial and semantic information via 3D semantic fields. We generate 3D descriptor fields from multi-view RGBD observations with large foundational vision models, then compare these descriptor fields against reference descriptors to obtain semantic fields. The proposed method explicitly considers geometry and semantics, enabling strong generalization capabilities in tasks requiring category-level generalization, resolving geometric ambiguities, and attention to subtle geometric details. We evaluate our method across eight tasks involving articulated objects and instances with varying shapes and textures from multiple object categories. Our method demonstrates its effectiveness by increasing Diffusion Policy's average success rate on unseen instances from 20% to 93%. Additionally, we provide a detailed analysis and visualization to interpret the sources of performance gain and explain how our method can generalize to novel instances.

Foundations

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