移动增强现实中使用在线关键点学习的未知环境中的3D跟踪

Gerhard Schall, H. Grabner, Michael Grabner, Paul Wohlhart, D. Schmalstieg, H. Bischof
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引用次数: 16

摘要

本文提出了一种基于在线增强的自然特征跟踪算法,用于移动计算机的定位。移动增强现实需要高度准确和快速的六自由度跟踪,以便向移动用户提供注册的图形叠加。随着移动计算机硬件的进步,与目前占主导地位的基于标记的方法相比,基于视觉的跟踪方法有可能提供有效的非侵入性解决方案。我们建议使用一种可以在未知环境中使用的跟踪方法,即事先不知道目标。跟踪器的核心是一个在线学习算法,当新的数据可用时,它会更新跟踪器。这适用于许多移动增强现实应用程序。我们证明了我们的方法在目标对象事先未知的任务上的适用性,即交互式规划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D tracking in unknown environments using on-line keypoint learning for mobile augmented reality
In this paper we present a natural feature tracking algorithm based on on-line boosting used for localizing a mobile computer. Mobile augmented reality requires highly accurate and fast six degrees of freedom tracking in order to provide registered graphical overlays to a mobile user. With advances in mobile computer hardware, vision-based tracking approaches have the potential to provide efficient solutions that are non-invasive in contrast to the currently dominating marker-based approaches. We propose to use a tracking approach which can use in an unknown environment, i.e. the target has not be known beforehand. The core of the tracker is an on-line learning algorithm, which updates the tracker as new data becomes available. This is suitable in many mobile augmented reality applications. We demonstrate the applicability of our approach on tasks where the target objects are not known beforehand, i.e. interactive planing.
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