Tracking and pose estimation for computer assisted localization in industrial environments

Xiang Zhang, Nassir Navab
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引用次数: 29

Abstract

One of the common needs for many real-time augmented reality (AR) applications is the precise 'localization'. Currently at Siemens Corporate Research (SCR), we are developing a real-time system for industrial maintenance assistance. The user is moving within a large industrial site. In order to provide the user with additional information the system needs to locate the user in both real and virtual world. In this scenario, the user is equipped with a mobile computer. The objective is to track and locate the user using a camera attached to the mobile computer. With a set of coded visual markers pre-registered with the global coordinate system, the optical localization could be solved by marker detection, tracking and pose estimation. In this paper, we present the real-time marker detection and pose estimation algorithms used in our mobile localization application. To work in large and complicated industrial environments, our system needs to recover localization information from limited correspondences. We consider two different pose estimation algorithms: the homography based algorithm and the 3-point algorithm. In this paper, we present the results of the numerical experiments comparing these two methods. The experiments are carried out to determine the best approach for our application and to evaluate the accuracy and limitations of the algorithms.
工业环境中计算机辅助定位的跟踪和姿态估计
许多实时增强现实(AR)应用程序的共同需求之一是精确的“定位”。目前在西门子企业研究中心(SCR),我们正在开发一个用于工业维护辅助的实时系统。用户在一个大型工业场地内移动。为了向用户提供额外的信息,系统需要在现实世界和虚拟世界中定位用户。在这个场景中,用户配备了一台移动计算机。目标是使用连接在移动计算机上的摄像头跟踪和定位用户。利用一组与全局坐标系预配的编码视觉标记,通过标记检测、跟踪和姿态估计实现光学定位。在本文中,我们提出了在移动定位应用中使用的实时标记检测和姿态估计算法。为了在大型和复杂的工业环境中工作,我们的系统需要从有限的通信中恢复定位信息。我们考虑了两种不同的姿态估计算法:基于单应性的算法和三点算法。本文给出了两种方法的数值对比实验结果。实验是为了确定我们应用的最佳方法,并评估算法的准确性和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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