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Continuum Robot Localization using Distributed Time-of-Flight Sensors

arXiv:2602.0720920.8h-index: 29
AI Analysis

It addresses the problem of localization and mapping for continuum robots in unstructured environments, which was previously largely untouched due to sensor size constraints.

This work presents a localization technique for continuum robots using small, low-resolution time-of-flight sensors distributed along the robot's length, achieving an average localization error of 2.5 cm in position and 7.2° in rotation with a 53 cm long robot.

Localization and mapping of an environment are crucial tasks for any robot operating in unstructured environments. Time-of-flight (ToF) sensors (e.g.,~lidar) have proven useful in mobile robotics, where high-resolution sensors can be used for simultaneous localization and mapping. In soft and continuum robotics, however, these high-resolution sensors are too large for practical use. This, combined with the deformable nature of such robots, has resulted in continuum robot (CR) localization and mapping in unstructured environments being a largely untouched area. In this work, we present a localization technique for CRs that relies on small, low-resolution ToF sensors distributed along the length of the robot. By fusing measurement information with a robot shape prior, we show that accurate localization is possible despite each sensor experiencing frequent degenerate scenarios. We achieve an average localization error of 2.5cm in position and 7.2° in rotation across all experimental conditions with a 53cm long robot. We demonstrate that the results are repeated across multiple environments, in both simulation and real-world experiments, and study robustness in the estimation to deviations in the prior map.

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