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http://dx.doi.org/10.15701/kcgs.2017.23.3.115

A Precise Tracking System for Dynamic Object using IR sensor for Spatial Augmented Reality  

Oh, JiSoo (Global School of Media, Soongsil University)
Park, Jinho (Global School of Media, Soongsil University)
Abstract
As the era of the fourth industrial revolution began, augmented reality showed infinite possibilities throughout society. However, current augmented reality systems such as head-mount display and hand-held display systems suffer from various problems such as weariness and nausea, and thus space-augmented reality, which is a projector-based augmented reality technology, is attracting attention. Spacial augmented reality requires precise tracking of dynamic objects to project virtual images in order to increase realism of augmented reality and induce user 's immersion. The infrared sensor-based precision tracking algorithm developed in this paper demonstrates very robust tracking performance with an average error rate of less than 1.5% and technically opens the way towards advanced augmented reality technologies such as tracking for arbitrary objects, and Socially, by easy-to-use tracking algorithms for non-specialists, it allows designers, students, and children to easily create and enjoy their own augmented reality content.
Keywords
Spatial augmented reality; Object tracking based on infrared sensor; Dynamic projection mapping;
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