交叉运动:用于用户识别、跟踪和设备关联的融合设备和图像运动

Andrew D. Wilson, Hrvoje Benko
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引用次数: 32

摘要

识别和跟踪室内人员和移动设备有许多应用,但仍然是一个具有挑战性的问题。我们引入了一种跨模态传感器融合方法来跟踪移动设备和携带它们的用户。CrossMotion技术将移动设备的加速度(由机载内部测量单元测量)与微软Kinect v2相机的红外和深度图像中观察到的类似加速度相匹配。这个匹配过程在概念上很简单,并且避免了许多常见的基于外观的方法所特有的困难。特别是,CrossMotion不需要用户或设备的外观模型,也不需要在许多情况下直接看到设备。我们演示了一个可以应用于许多无处不在的计算场景的实时实现。在我们的实验中,CrossMotion在99%的情况下找到了人的身体,平均在参考设备位置7厘米以内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CrossMotion: Fusing Device and Image Motion for User Identification, Tracking and Device Association
Identifying and tracking people and mobile devices indoors has many applications, but is still a challenging problem. We introduce a cross-modal sensor fusion approach to track mobile devices and the users carrying them. The CrossMotion technique matches the acceleration of a mobile device, as measured by an onboard internal measurement unit, to similar acceleration observed in the infrared and depth images of a Microsoft Kinect v2 camera. This matching process is conceptually simple and avoids many of the difficulties typical of more common appearance-based approaches. In particular, CrossMotion does not require a model of the appearance of either the user or the device, nor in many cases a direct line of sight to the device. We demonstrate a real time implementation that can be applied to many ubiquitous computing scenarios. In our experiments, CrossMotion found the person's body 99% of the time, on average within 7cm of a reference device position.
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