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arxiv: 2502.01773 · v1 · pith:KSL3YSDGnew · submitted 2025-02-03 · 💻 cs.RO · cs.CV

Coarse-to-Fine 3D Keyframe Transporter

classification 💻 cs.RO cs.CV
keywords keyframeactiontransporteraveragecoarse-to-finefeaturesgraspedpropose
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Recent advances in Keyframe Imitation Learning (IL) have enabled learning-based agents to solve a diverse range of manipulation tasks. However, most approaches ignore the rich symmetries in the problem setting and, as a consequence, are sample-inefficient. This work identifies and utilizes the bi-equivariant symmetry within Keyframe IL to design a policy that generalizes to transformations of both the workspace and the objects grasped by the gripper. We make two main contributions: First, we analyze the bi-equivariance properties of the keyframe action scheme and propose a Keyframe Transporter derived from the Transporter Networks, which evaluates actions using cross-correlation between the features of the grasped object and the features of the scene. Second, we propose a computationally efficient coarse-to-fine SE(3) action evaluation scheme for reasoning the intertwined translation and rotation action. The resulting method outperforms strong Keyframe IL baselines by an average of >10% on a wide range of simulation tasks, and by an average of 55% in 4 physical experiments.

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  1. Improving Vision-Language-Action Model Fine-Tuning with Structured Stage and Keyframe Supervision

    cs.RO 2026-06 unverdicted novelty 6.0

    StaKe adds lightweight auxiliary heads for manipulation stage identification and next-gripper-transition keyframe prediction to VLA fine-tuning, reporting relative success rate gains of 14% in bimanual simulation and ...