Factor Graph-Based Smoothing Without Matrix Inversion for Highly Precise Localization
Paul Chauchat (ISAE-SUPAERO), Axel Barrau, Silv\`ere Bonnabel (CAOR)

TL;DR
This paper introduces a novel smoothing algorithm for vehicle localization that avoids matrix inversion, addressing numerical issues with high-precision sensors, and demonstrates its effectiveness through real autonomous vehicle experiments.
Contribution
The paper proposes a matrix-inversion-free smoothing method for SLAM, improving numerical stability with high-precision sensors and integrating it into a fusion-based localization system.
Findings
Effective localization with high-precision IMU and LiDAR
Improved numerical stability in smoothing algorithms
Successful real-world autonomous vehicle experiments
Abstract
We consider the problem of localizing a manned, semi-autonomous, or autonomous vehicle in the environment using information coming from the vehicle's sensors, a problem known as navigation or simultaneous localization and mapping (SLAM) depending on the context. To infer knowledge from sensors' measurements, while drawing on a priori knowledge about the vehicle's dynamics, modern approaches solve an optimization problem to compute the most likely trajectory given all past observations, an approach known as smoothing. Improving smoothing solvers is an active field of research in the SLAM community. Most work is focused on reducing computation load by inverting the involved linear system while preserving its sparsity. The present paper raises an issue which, to the knowledge of the authors, has not been addressed yet: standard smoothing solvers require explicitly using the inverse of…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Medical Image Segmentation Techniques · Advanced Image and Video Retrieval Techniques
