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Integration of Real-Time Semantic Building Map Updating with Adaptive Monte Carlo Localization (AMCL) for Robust Indoor Mobile Robot Localization

Matthew Peavy, Pileun Kim, Hafiz Oyediran, Kyungki Kim

2023Applied Sciences21 citationsDOIOpen Access PDF

Abstract

A robot can accurately localize itself and navigate in an indoor environment based on information about the operating environment, often called a world or a map. While typical maps describe structural layouts of buildings, the accuracy of localization is significantly affected by non-structural building elements and common items, such as doors, appliances, and furniture. This study enhances the robustness and accuracy of indoor robot localization by dynamically updating the semantic building map with non-structural elements detected by sensors. We propose modified Adaptive Monte Carlo Localization (AMCL), integrating object recognition and map updating into the traditional probabilistic localization. With the proposed approach, a robot can automatically correct errors caused by non-structural elements by updating a semantic building map reflecting the current state of the environment. Evaluations in kidnapped robot and traditional localization scenarios indicate that more accurate and robust pose estimation can be achieved with the map updating capability.

Topics & Concepts

Monte Carlo localizationComputer scienceRobustness (evolution)RobotSemantic mappingArtificial intelligenceProbabilistic logicMobile robotComputer visionMonte Carlo methodData miningMathematicsChemistryBiochemistryGeneStatisticsRobotics and Sensor-Based LocalizationIndoor and Outdoor Localization TechnologiesRobotic Path Planning Algorithms