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π-Map: A Decision-Based Sensor Fusion with Global Optimization for Indoor Mapping

Zhiliu Yang, Bo Yu, Wei Hu, Jie Tang, Shaoshan Liu, Chen Liu

Year
2020
Citations
2

Abstract

In this paper, we propose π-map, a tightly coupled fusion mechanism that dynamically consumes LiDAR and sonar data to generate reliable and scalable indoor maps for autonomous robot navigation. The key novelty of π-map over previous attempts is the utilization of a fusion mechanism that works in three stages: the first LiDAR scan matching stage efficiently generates initial key localization poses; the second optimization stage is used to eliminate errors accumulated from the previous stage and guarantees that accurate large-scale maps can be generated; then the final revisit scan fusion stage effectively fuses the LiDAR map and the sonar map to generate a highly accurate representation of the indoor environment. We evaluate π-map on both large and small environments and verify its superiority over existing fusion methods.

Keywords

Computer scienceLidarKey (lock)SonarSensor fusionScalabilityArtificial intelligenceComputer visionMatching (statistics)Simultaneous localization and mapping

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