Radar-Based Localization For Autonomous Ground Vehicles In Suburban Neighborhoods
arxiv(2024)
摘要
For autonomous ground vehicles (AGVs) deployed in suburban neighborhoods and
other human-centric environments the problem of localization remains a
fundamental challenge. There are well established methods for localization with
GPS, lidar, and cameras. But even in ideal conditions these have limitations.
GPS is not always available and is often not accurate enough on its own, visual
methods have difficulty coping with appearance changes due to weather and other
factors, and lidar methods are prone to defective solutions due to ambiguous
scene geometry. Radar on the other hand is not highly susceptible to these
problems, owing in part to its longer range. Further, radar is also robust to
challenging conditions that interfere with vision and lidar including fog,
smoke, rain, and darkness. We present a radar-based localization system that
includes a novel method for highly-accurate radar odometry for smooth,
high-frequency relative pose estimation and a novel method for radar-based
place recognition and relocalization. We present experiments demonstrating our
methods' accuracy and reliability, which are comparable with other
methods' published results for radar localization and we find outperform a
similar method as ours applied to lidar measurements. Further, we show our
methods are lightweight enough to run on common low-power embedded hardware
with ample headroom for other autonomy functions.
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