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Multi-Layer Environmental Affordance Map for Robust Indoor Localization, Event Detection and Social Friendly Navigation

Ping-Tsang Wu, Chee-An Yu, Shao-Hung Chan, Ming‐Li Chiang, Li‐Chen Fu

Year
2019
Citations
10

Abstract

In this paper, we propose a novel system architecture called multi-layer environmental affordance map for social and service companion robots. Based on this architecture, robots can organize the perception and inference information efficiently and generate social friendly navigation strategies. In other words, robots are able to strengthen their perception and inference abilities to interact with domestic environment and users under our efficient framework. The main feature of this architecture is that the relations between layers can be viewed as affordances to improve the accuracy and the robustness of the detection and inference. The results show that our architecture achieves robust indoor localization, scene localization, human event detection and socially friendly navigation in real time under limited computational resource.

Keywords

AffordanceComputer scienceInferenceRobustness (evolution)ArchitectureRobotEvent (particle physics)Artificial intelligenceService robotSimultaneous localization and mapping

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