AS-LIO: Spatial Overlap Guided Adaptive Sliding Window LiDAR-Inertial Odometry for Aggressive FOV Variation
LiDAR-Inertial Odometry (LIO) demonstrates outstanding accuracy and stability in general low-speed and smooth motion scenarios. However, in high-speed and intense motion scenarios, such as sharp turns, two primary challenges arise: firstly, due to the limitations of IMU frequency, the error in estim...
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Zusammenfassung: | LiDAR-Inertial Odometry (LIO) demonstrates outstanding accuracy and stability
in general low-speed and smooth motion scenarios. However, in high-speed and
intense motion scenarios, such as sharp turns, two primary challenges arise:
firstly, due to the limitations of IMU frequency, the error in estimating
significantly non-linear motion states escalates; secondly, drastic changes in
the Field of View (FOV) may diminish the spatial overlap between LiDAR frame
and pointcloud map (or between frames), leading to insufficient data
association and constraint degradation.
To address these issues, we propose a novel Adaptive Sliding window LIO
framework (AS-LIO) guided by the Spatial Overlap Degree (SOD). Initially, we
assess the SOD between the LiDAR frames and the registered map, directly
evaluating the adverse impact of current FOV variation on pointcloud alignment.
Subsequently, we design an adaptive sliding window to manage the continuous
LiDAR stream and control state updates, dynamically adjusting the update step
according to the SOD. This strategy enables our odometry to adaptively adopt
higher update frequency to precisely characterize trajectory during aggressive
FOV variation, thus effectively reducing the non-linear error in positioning.
Meanwhile, the historical constraints within the sliding window reinforce the
frame-to-map data association, ensuring the robustness of state estimation.
Experiments show that our AS-LIO framework can quickly perceive and respond to
challenging FOV change, outperforming other state-of-the-art LIO frameworks in
terms of accuracy and robustness. |
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DOI: | 10.48550/arxiv.2408.11426 |