ROMay 9

Continuum Robot Modeling with Action Conditioned Flow Matching

arXiv:2605.0921647.6
AI Analysis

For researchers working on continuum robot modeling, this work offers a practical data-driven alternative to analytical models, though the improvement is incremental over existing self-modeling techniques.

This paper presents a data-driven kinematic self-modeling approach for tendon-driven continuum robots (TDCRs) using a flow matching model conditioned on motor actuation, achieving improved shape prediction accuracy over prior methods in both simulation and real hardware experiments.

Predicting the shape of tendon driven continuum robots (TDCRs) at steady state from actuation remains challenging due to continuous deformation, complex tendon routing, compliance, friction, and fabrication variability. In this paper, we address this problem as kinematic self modeling conditioned on action. We present a lightweight 3D printed TDCR hardware platform and an RGB-D data collection pipeline with multiple cameras, and we learn a point cloud flow matching model that maps motor actuation states to the robot's settled 3D geometry. The model is trained from randomly sampled quasi static configurations and evaluated on test motor commands within the same TDCR design family and actuation range. We compare against prior 3D deformable object and robot self modeling approaches in both MuJoCo simulation and real hardware experiments. Experiments on simulated 2-, 3-, and 5-module TDCRs and real 2- and 3-module robots show improved shape prediction accuracy under CD and EMD metrics. We further show in simulation that the same conditional formulation generalizes to tip payload as a conditioning input, enabling payload conditioned steady-state shape prediction. These results demonstrate a data driven self modeling framework for quasi static TDCR geometry prediction.

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