GLAMAR:用于工业自动化的地理定位辅助移动增强现实

M. Uddin, S. Mukherjee, M. Kodialam, T. Lakshman
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引用次数: 1

摘要

移动增强现实技术(MAR)将在工业自动化中发挥重要作用。为了标记MAR世界中的物理对象,运行基于MAR的应用程序的智能手机必须知道对象在现实世界中的精确位置。由于计算和电池需求,在工业环境中跟踪和定位大量对象可能成为智能手机的巨大负担。在本文中,我们提出了GLAMAR,这是一个新的框架,它利用外部提供的物体的地理位置和来自物体的IMU传感器信息(两者都可能有噪声),在MAR世界中精确地对它们进行定位。GLAMAR将繁重的计算任务转移到边缘,并支持使用商业开发包构建基于mar的应用程序。我们开发了再生粒子滤波器和不断改进的变换矩阵计算方法,以显着提高现实世界和AR世界中物体的位置精度。我们使用ARCore在Android平台上的原型实现显示了GLAMAR在开发基于mar的应用程序方面的实用性,具有高精度、高效率和更真实的体验。与静止和移动物体相比,GLAMAR能够实现小于10厘米的误差,并将CPU开销减少83%,移动设备的电池消耗减少80%。
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GLAMAR: Geo-Location Assisted Mobile Augmented Reality for Industrial Automation
Mobile Augmented Reality (MAR) is going to play an important role in industrial automation. In order to tag a physical object in the MAR world, a smart phone running MAR-based applications must know the precise location of an object in the real world. Tracking and localizing a large number of objects in an industrial environment can become a huge burden for the smart phone due to compute and battery requirements. In this paper we propose GLAMAR, a novel framework that leverages externally provided geo-location of the objects and IMU sensor information (both of which can be noisy) from the objects to 10-cate them precisely in the MAR world. GLAMAR offloads heavy-duty computation to the edge and supports building MAR-based applications using commercial development packages. We develop a regenerative particle filter and a continuously improving transformation matrix computation methodology to dramatically improve the positional accuracy of objects in the real and the AR world. Our prototype implementation on Android platform using ARCore shows the practicality of GLAMAR in developing MAR-based applications with high precision, efficiency, and more realistic experience. GLAMAR is able to achieve less then 10cm error compared to the ground truth for both stationary and moving objects and reduces the CPU overhead by 83% and battery consumption by 80% for mobile devices.
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