ROSep 4, 2025

Odometry Calibration and Pose Estimation of a 4WIS4WID Mobile Wall Climbing Robot

arXiv:2509.04016h-index: 15
Originality Synthesis-oriented
AI Analysis

For wall-climbing robots operating on building facades where GPS and traditional sensors are unreliable, this work provides a calibrated pose estimation approach.

This paper presents a pose estimator for a 4WIS4WID wall climbing robot using EKF and UKF fusion of wheel odometry, visual odometry, and IMU data, with kinematic parameter calibration via nonlinear optimization and stochastic methods. Experimental validation shows improved pose estimation accuracy.

This paper presents the design of a pose estimator for a four wheel independent steer four wheel independent drive (4WIS4WID) wall climbing mobile robot, based on the fusion of multimodal measurements, including wheel odometry, visual odometry, and an inertial measurement unit (IMU) data using Extended Kalman Filter (EKF) and Unscented Kalman Filter (UKF). The pose estimator is a critical component of wall climbing mobile robots, as their operational environment involves carrying precise measurement equipment and maintenance tools in construction, requiring information about pose on the building at the time of measurement. Due to the complex geometry and material properties of building facades, the use of traditional localization sensors such as laser, ultrasonic, or radar is often infeasible for wall-climbing robots. Moreover, GPS-based localization is generally unreliable in these environments because of signal degradation caused by reinforced concrete and electromagnetic interference. Consequently, robot odometry remains the primary source of velocity and position information, despite being susceptible to drift caused by both systematic and non-systematic errors. The calibrations of the robot's systematic parameters were conducted using nonlinear optimization and Levenberg-Marquardt methods as Newton-Gauss and gradient-based model fitting methods, while Genetic algorithm and Particle swarm were used as stochastic-based methods for kinematic parameter calibration. Performance and results of the calibration methods and pose estimators were validated in detail with experiments on the experimental mobile wall climbing robot.

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