ArXiv TLDR

Optimal Uncertainty-Aware Calibration for the AX=YB Problem

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2605.04809

Yanjia Chen, Xiangfei Li, Huan Zhao, Yiyuan Hong, Guanxiao Xia + 2 more

cs.RO

TLDR

This paper introduces an uncertainty-aware Lie algebra-based optimization for AX=YB hand-eye calibration, achieving global optimal solutions and significantly improving accuracy.

Key contributions

  • Develops an iterative Lie algebra-based algorithm for approximately global optimal AX=YB hand-eye calibration.
  • Preserves structural constraints and enables synchronized updates of calibration parameters during optimization.
  • Introduces an uncertainty metric to dynamically refine the iterative process, avoiding explicit uncertainty modeling.
  • Includes an effective initial solution generation method, enhancing convergence, stability, and overall accuracy.

Why it matters

Real-world hand-eye calibration often suffers from significant uncertainty, which traditional methods struggle to handle. This paper offers a robust solution by dynamically accounting for uncertainty, leading to much higher accuracy, especially in challenging industrial robot scenarios.

Original Abstract

This article proposes a general optimization framework for solving hand-eye calibration problem. Unlike traditional methods, an iterative algorithm based on Lie algebra that achieves approximately global optimal solutions is developed. During the optimization process, the method strictly preserves the structural constraints of the calibration parameters and enables synchronized updates between calibration parameters. Recognizing that data used in real-word hand-eye calibration often contain uncertainty, especially in over-loading and large workspace industrial robot scenarios, which can significantly degrade accuracy, and accurately modeling such uncertainty is inherently difficult, this article avoids explicit uncertainty modeling. Instead, an uncertainty metric to evaluate the relative uncertainty between data sources is introduced and used to dynamically refine the iterative process. To further enhance convergence efficiency, an effective initial solution generation method that improves overall stability and accuracy is designed. Numerical simulations and real-world experiments validate the effectiveness of the proposed approach, and in synthetic datasets, the proposed approach improves the estimation accuracy by at least 67\% under high-uncertainty conditions compared with the existing methods.

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