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Uncertainty-driven Planner for Exploration and Navigation

Georgios Georgakis, Bernadette Bucher, Anton Arapin, Karl Schmeckpeper, Nikolai Matni, Kostas Daniilidis

20222022 International Conference on Robotics and Automation (ICRA)54 citationsDOI

Abstract

We consider the problems of exploration and pointgoal navigation in previously unseen environments, where the spatial complexity of indoor scenes and partial observability constitute these tasks challenging. We argue that learning occupancy priors over indoor maps provides significant advantages towards addressing these problems. To this end, we present a novel planning framework that first learns to generate occupancy maps beyond the field-of-view of the agent, and second leverages the model uncertainty over the generated areas to formulate path selection policies for each task of interest. For pointgoal navigation the policy chooses paths with an upper confidence bound policy for efficient and traversable paths, while for exploration the policy maximizes model uncertainty over candidate paths. We perform experiments in the visually realistic environments of Matterport3D using the Habitat simulator and demonstrate: 1) Improved results on exploration and map quality metrics over competitive methods, and 2) The effectiveness of our planning module when paired with the state-of-the-art DD-PPO method for the point-goal navigation task.

Topics & Concepts

Computer scienceObservabilityPlannerTask (project management)Motion planningArtificial intelligenceField (mathematics)OccupancyPath (computing)Selection (genetic algorithm)Machine learningRobotMathematicsEngineeringPure mathematicsApplied mathematicsSystems engineeringArchitectural engineeringProgramming languageRobotics and Sensor-Based LocalizationRobotic Path Planning AlgorithmsMultimodal Machine Learning Applications
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