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Real-time self-tracking in the Internet of Things

机译:物联网中的实时自我跟踪

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摘要

We investigate the problem of real-time self-tracking of tagged objects in a new system with low-cost “smart” tags. These tiny and battery-less devices will play a pivotal role in the infrastructure of the Internet of Things (IoT). With capabilities of low-power computation and tag-to-tag backscattered communication, no readers will be needed for running the Radio Frequency Identification (RFID) system. In order to allow for low-cost tags, self-tracking has to be performed with simple algorithms while still exhibiting high accuracy. In this paper we propose a linear observation model for which Kalman filtering (KF) is the optimal method. We also consider a nonlinear model for which we apply particle filtering (PF) of reduced complexity as the tracking method. The performance and computational complexity of the different methods are compared by computer simulations.
机译:我们研究了在具有低成本“智能”标签的新系统中对标签对象进行实时自我跟踪的问题。这些小型且无电池的设备将在物联网(IoT)的基础设施中发挥关键作用。具有低功耗计算和标签到标签反向散射通信的功能,将不需要阅读器即可运行射频识别(RFID)系统。为了允许使用低成本标签,必须使用简单的算法执行自跟踪,同时仍要表现出较高的准确性。在本文中,我们提出了一种线性观测模型,其中的卡尔曼滤波(KF)是最佳方法。我们还考虑了非线性模型,对其应用了降低复杂度的粒子滤波(PF)作为跟踪方法。通过计算机仿真比较了不同方法的性能和计算复杂性。

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