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Browsing by Subject "visual simultaneous localization and mapping"
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Item A Collaborative Augmented Reality Framework Based on Distributed Visual Slam(IEEE, 2017-09) Egodagamage, Ruwan; Tuceryan, Mihran; Computer and Information Science, School of ScienceVisual Simultaneous Localization and Mapping (SLAM) has been used for markerless tracking in augmented reality applications. Distributed SLAM helps multiple agents to collaboratively explore and build a global map of the environment while estimating their locations in it. One of the main challenges in Distributed SLAM is to identify local map overlaps of these agents, especially when their initial relative positions are not known. We developed a collaborative AR framework with freely moving agents having no knowledge of their initial relative positions. Each agent in our framework uses a camera as the only input device for its SLAM process. Furthermore, the framework identifies map overlaps of agents using an appearance-based method.