RESPLE: Recursive Spline Estimation for LiDAR-Based Odometry

1Linköping University, 2Robotic Systems Lab (RSL), ETH Zurich, 3University of Groningen

IEEE Robotics and Automation Letters, 2025

RESPLE deployed onboard a bipedal wheeled robot for mobile mapping of a campus.

Abstract

We present a novel recursive Bayesian estimation framework using B-splines for continuous-time 6-DoF dynamic motion estimation. The state vector consists of a recurrent set of position control points and orientation control point increments, enabling efficient estimation via a modified iterated extended Kalman filter without involving error-state formulations. The resulting recursive spline estimator (RESPLE) is further leveraged to develop a versatile suite of direct LiDAR-based odometry solutions, supporting the integration of one or multiple LiDARs and an IMU. We conduct extensive real-world evaluations using public datasets and our own experiments, covering diverse sensor setups, platforms, and environments. Compared to existing systems, RESPLE achieves comparable or superior estimation accuracy and robustness, while attaining real-time efficiency. Our results and analysis demonstrate RESPLE's strength in handling highly dynamic motions and complex scenes within a lightweight and flexible design, showing strong potential as a universal framework for multi-sensor motion estimation.


Recursive Spline Estimation

System pipeline of RESPLE-based multi-LiDAR-inertial odometry.

YouTube

BibTeX


      @ARTICLE{cao2025resple,
        author={Cao, Ziyu and Talbot, William and Li, Kailai},
        title={RESPLE: Recursive Spline Estimation for LiDAR-Based Odometry}, 
        journal={IEEE Robotics and Automation Letters},
        volume={10},
        number={10},
        pages={10666-10673},
        year={2025}
      }