Learning IMU Bias with Diffusion Model

RPNG Group, University of Delaware
ICRA 2025
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TL;DR We design a lightweight diffusion model to learn IMU bias as conditional probabilistic distribution.

Abstract

Motion sensing and tracking with IMU data is essential for spatial intelligence, which however is challenging due to the presence of time-varying stochastic bias. IMU bias is affected by various factors such as temperature and vibration, making it highly complex and difficult to model analytically. Recent data-driven approaches using deep learning have shown promise in predicting bias from IMU readings. However, these methods often treat the task as a regression problem, overlooking the stochatic nature of bias. In contrast, we model bias, conditioned on IMU readings, as a probabilistic distribution and design a conditional diffusion model to approximate this distribution. Through this approach, we achieve improved performance and make predictions that align more closely with the known behavior of bias.

Paper

Poster

BibTeX


@inproceedings{zhou2025learn,
    title={Learning IMU Bias with Diffusion Model},
    author={Zhou, Shenghao and Katragadda, Saimouli, and Huang, Guoquan},
    booktitle={IEEE International Conference on Robotics and Automation (ICRA)},
    year={2025},
}