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Multi-sensor based real-time 6-DoF pose tracking for wearable augmented reality

机译:基于多传感器的实时6-DOF姿势跟踪可穿戴的增强现实

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摘要

Wearable augmented reality (WAR) combines a live view of a real scene with computer-generated graphic on resource-limited platforms. One of the crucial technologies for WAR is a real-time 6-DoF pose tracking, facilitating registration of virtual components within in a real scene. Generally, artificial markers are typically applied to provide pose tracking for WAR applications. However, these marker based methods suffer from marker occlusions or large viewpoint changes. Thus, a multi-sensor based tracking approach is applied in this paper, and it can perform real-time 6-DoF pose tracking with real-time scale estimation for WAR on a consumer smartphone. By combining a wide-angle monocular camera and an inertial sensor, a more robust 6-DoF motion tracking is demonstrated with the mutual compensations of the heterogeneous sensors. Moreover, with the help of the depth sensor, the scale initialization of the monocular tracking is addressed, where the initial scale is propagated within the subsequent sensor-fusion process, alleviating the scale drift in traditional monocular tracking approaches. In addition, a sliding-window based Kalman filter framework is used to provide a low jitter pose tracking for WAR. Finally, experiments are carried out to demonstrate the feasibility and robustness of the proposed tracking method for WAR applications. (C) 2017 Elsevier B.V. All rights reserved.
机译:可穿戴的增强现实(战争)将实际场景的实时视图与资源限制平台上的计算机生成的图形相结合。战争的一个重要技术是一个实时的6-DOF姿势跟踪,促进了真实场景中的虚拟组件的注册。通常,通常应用人造标记以提供用于战争应用的姿势跟踪。然而,这些基于标记的方法患有标记闭塞或大观点变化。因此,本文应用了基于多传感器的跟踪方法,它可以利用对消费者智能手机的实时尺度估计来执行实时6-DOF姿势跟踪。通过组合广角单眼相机和惯性传感器,通过异构传感器的相互补偿来说明更强大的6-DOF运动跟踪。此外,在深度传感器的帮助下,寻址单眼跟踪的刻度初始化,其中初始比例在随后的传感器融合过程中传播,减轻了传统的单手抄语方法中的比例漂移。另外,基于滑动窗口的卡尔曼滤波器框架用于提供用于战争的低抖动姿势跟踪。最后,进行了实验,以证明建议的战争应用跟踪方法的可行性和稳健性。 (c)2017 Elsevier B.v.保留所有权利。

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