Factor Graph-Based Shape Estimation for Continuum Robots via Magnus Expansion
Lorenzo Ticozzi, Patricio A. Vela, Panagiotis Tsiotras
TLDR
This paper proposes a factor graph-based method using Magnus expansion to estimate continuum robot shape, combining compact GVS parameterization with probabilistic inference.
Key contributions
- Estimates low-dimensional Geometric Variable Strain (GVS) coefficients within a factor graph framework.
- Introduces a novel kinematic factor derived from Magnus expansion for closed-form rod geometry.
- Links GVS strain coefficients to backbone pose variables, enabling a compact state representation.
- Achieves mean position errors below 2mm and a sixfold orientation error reduction in simulations.
Why it matters
This method offers a robust and efficient way to estimate continuum robot shapes, crucial for precise control in complex environments. By combining compact state representation with probabilistic uncertainty, it advances the field of continuum robotics, enabling more reliable and accurate manipulation.
Original Abstract
Reconstructing the shape of continuum manipulators from sparse, noisy sensor data is a challenging task, owing to the infinite-dimensional nature of such systems. Existing approaches broadly trade off between parametric methods that yield compact state representations but lack probabilistic structure, and Cosserat rod inference on factor graphs, which provides principled uncertainty quantification at the cost of a state dimension that grows with the spatial discretization. This letter combines the strength of both paradigms by estimating the coefficients of a low-dimensional Geometric Variable Strain (GVS) parameterization within a factor graph framework. A novel kinematic factor, derived from the Magnus expansion of the strain field, encodes the closed-form rod geometry as a prior constraint linking the GVS strain coefficients to the backbone pose variables. The resulting formulation yields a compact state vector directly amenable to model-based control, while retaining the modularity, probabilistic treatment and computational efficiency of factor graph inference. The proposed method is evaluated in simulation on a 0.4 m long tendon-driven continuum robot under three measurement configurations, achieving mean position errors below 2 mm for all three scenarios and demonstrating a sixfold reduction in orientation error compared to a Gaussian process regression baseline when only position measurements are available.
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