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PERCEPTION

Visually augmented navigation in an unstructured environment using a delayed state history

Ryan M. Eustice, Oscar Pizarro, Hanumant Singh

发表年份
2004
引用次数
79

摘要

This work describes a framework for sensor fusion of navigation data with camera-based 5 DOF relative pose measurements for 6 DOF vehicle motion in an unstructured 3D underwater environment. The fundamental goal of this work is to concurrently estimate online current vehicle position and its past trajectory. This goal is framed within the context of improving mobile robot navigation to support sub-sea science and exploration. Vehicle trajectory is represented by a history of poses in an augmented state Kalman filter. Camera spatial constraints from overlapping imagery provide partial observation of these poses and are used to enforce consistency and provide a mechanism for loop-closure. The multi-sensor camera + navigation framework is shown to have compelling advantages over a camera-only based approach by: 1) improving the robustness of pairwise image registration, 2) setting the free gauge scale, and 3) allowing for a unconnected camera graph topology. Results are shown for a real world data set collected by an autonomous underwater vehicle in an unstructured undersea environment.

关键词

Computer scienceComputer visionArtificial intelligenceRobustness (evolution)Sensor fusionTrajectoryBundle adjustmentGNSS applicationsMobile robotKalman filter

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