Robust visual-inertial localization with weak GPS priors for repetitive UAV flights.

ICRA(2017)

引用 53|浏览41
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摘要
Agile robots, such as small Unmanned Aerial Vehicles (UAVs) can have a great impact on the automation of tasks, such as industrial inspection and maintenance or crop monitoring and fertilization in agriculture. Their deploy-ability, however, relies on the UAVu0027s ability to self-localize with precision and exhibit robustness to common sources of uncertainty in real missions. Here, we propose a new system using the UAVu0027s onboard visual-inertial sensor suite to first build a Reference Map of the UAVu0027s workspace during a piloted reconnaissance flight. In subsequent flights over this area, the proposed framework combines keyframe-based visual-inertial odometry with novel geometric image-based localization, to provide a real-time estimate of the UAVu0027s pose with respect to the Reference Map paving the way towards completely automating repeated navigation in this workspace. The stability of the system is ensured by decoupling the local visual-inertial odometry from the global registration to the Reference Map, while GPS feeds are used as a weak prior for suggesting loop closures. The proposed framework is shown to outperform GPS localization significantly and diminishes drift effects via global image-based alignment for consistently robust performance.
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关键词
robust visual-inertial localization,weak GPS priors,repetitive UAV flights,unmanned aerial vehicles,agile robots,precision self-localization,visual-inertial sensor,reference map,UAV workspace,piloted reconnaissance flight,keyframe-based visual-inertial odometry,geometric image-based localization,UAV pose,system stability,global registration,loop closures,GPS localization,global image-based alignment
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