ROAICVLGOct 25, 2024

Non-rigid Relative Placement through 3D Dense Diffusion

arXiv:2410.19247v24 citationsh-index: 10CoRL
Originality Incremental advance
AI Analysis

This addresses a gap in robot manipulation for deformable objects, which is incremental as it builds on existing rigid-body methods.

The paper tackles the problem of predicting placements for deformable objects, extending relative placement to non-rigid bodies, and demonstrates generalization to unseen instances and configurations with results in simulation and real-world tasks.

The task of "relative placement" is to predict the placement of one object in relation to another, e.g. placing a mug onto a mug rack. Through explicit object-centric geometric reasoning, recent methods for relative placement have made tremendous progress towards data-efficient learning for robot manipulation while generalizing to unseen task variations. However, they have yet to represent deformable transformations, despite the ubiquity of non-rigid bodies in real world settings. As a first step towards bridging this gap, we propose ``cross-displacement" - an extension of the principles of relative placement to geometric relationships between deformable objects - and present a novel vision-based method to learn cross-displacement through dense diffusion. To this end, we demonstrate our method's ability to generalize to unseen object instances, out-of-distribution scene configurations, and multimodal goals on multiple highly deformable tasks (both in simulation and in the real world) beyond the scope of prior works. Supplementary information and videos can be found at https://sites.google.com/view/tax3d-corl-2024 .

Foundations

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