Paper ID: 2502.20054 • Published Feb 27, 2025
Night-Voyager: Consistent and Efficient Nocturnal Vision-Aided State Estimation in Object Maps
Tianxiao Gao, Mingle Zhao, Chengzhong Xu, Hui Kong
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TL;DR
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Accurate and robust state estimation at nighttime is essential for autonomous
robotic navigation to achieve nocturnal or round-the-clock tasks. An intuitive
question arises: Can low-cost standard cameras be exploited for nocturnal state
estimation? Regrettably, most existing visual methods may fail under adverse
illumination conditions, even with active lighting or image enhancement. A
pivotal insight, however, is that streetlights in most urban scenarios act as
stable and salient prior visual cues at night, reminiscent of stars in deep
space aiding spacecraft voyage in interstellar navigation. Inspired by this, we
propose Night-Voyager, an object-level nocturnal vision-aided state estimation
framework that leverages prior object maps and keypoints for versatile
localization. We also find that the primary limitation of conventional visual
methods under poor lighting conditions stems from the reliance on pixel-level
metrics. In contrast, metric-agnostic, non-pixel-level object detection serves
as a bridge between pixel-level and object-level spaces, enabling effective
propagation and utilization of object map information within the system.
Night-Voyager begins with a fast initialization to solve the global
localization problem. By employing an effective two-stage cross-modal data
association, the system delivers globally consistent state updates using
map-based observations. To address the challenge of significant uncertainties
in visual observations at night, a novel matrix Lie group formulation and a
feature-decoupled multi-state invariant filter are introduced, ensuring
consistent and efficient estimation. Through comprehensive experiments in both
simulation and diverse real-world scenarios (spanning approximately 12.3 km),
Night-Voyager showcases its efficacy, robustness, and efficiency, filling a
critical gap in nocturnal vision-aided state estimation.
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