Fast color fiducial detection and dynamic workspace extension in video see-through self-tracking augmented reality

Youngkwan Cho, Jun Park, U. Neumann
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引用次数: 26

Abstract

The registration problem is one of the major issues in augmented reality (AR). Fiducial tracking is gaining interest as a solution to this problem in video see-through AR because of the availability of digitized real scenes. There are several AR systems using fiducial tracking, but most of them operate in small desktop workspaces. It is difficult to apply them directly to large scale applications. The wide range of work distance and non-uniform lighting conditions make fiducial detection very difficult. Adding new fiducials requires off-line processing for measuring positions of new fiducials. We propose a fast and robust fiducial detection procedure with carefully designed color fiducials and noise analysis of digitized images. We also present a dynamic workspace extension method with on-line position determination of unknown features. We present a framework for applying AR to large scale applications.
视频透明自跟踪增强现实中的快速彩色基准检测和动态工作空间扩展
注册问题是增强现实(AR)中的主要问题之一。由于数字化真实场景的可用性,在视频透明增强现实中,基准跟踪作为解决这一问题的一种方法正引起人们的兴趣。有几个AR系统使用基准跟踪,但大多数都在小型桌面工作空间中运行。将它们直接应用于大规模应用是很困难的。大范围的工作距离和不均匀的光照条件使得基准检测非常困难。添加新基准需要离线处理以测量新基准的位置。我们提出了一个快速和鲁棒的基准检测程序,精心设计的彩色基准和噪声分析的数字化图像。提出了一种在线确定未知特征位置的动态工作空间扩展方法。我们提出了一个将AR应用于大规模应用的框架。
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