Publication | Closed Access
Active Neural Mapping
21
Citations
60
References
2023
Year
Unknown Venue
EngineeringMachine LearningNeural RecodingField RoboticsBrain MappingSocial SciencesMapping3D Computer VisionRobot LearningRobotics PerceptionInstant UncertaintyCartographyCognitive ScienceMachine VisionNeuroinformaticsVision RoboticsComputer Vision3D VisionComputational NeuroscienceActive MappingNeuroscienceRoboticsActive Neural MappingScene Modeling
We address the problem of active mapping with a continually-learned neural scene representation, namely Active Neural Mapping. The key lies in actively finding the target space to be explored with efficient agent movement, thus minimizing the map uncertainty on-the-fly within a previously unseen environment. In this paper, we examine the weight space of the continually-learned neural field, and show empirically that the neural variability, the prediction robustness against random weight perturbation, can be directly utilized to measure the instant uncertainty of the neural map. Together with the continuous geometric information inherited in the neural map, the agent can be guided to find a traversable path to gradually gain knowledge of the environment. We present for the first time an online active mapping system with a coordinate-based implicit neural representation. Experiments in the visually-realistic Gibson and Matterport3D environment demonstrate the efficacy of the proposed method.
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