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An Efficient Protocol for RFID Multigroup Threshold-Based Classification Based on Sampling and Logical Bitmap

机译:基于采样和逻辑位图的基于RFID多组阈值分类的高效协议

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摘要

Most existing research adopts a “flat” view of radio frequency identification (RFID) systems to perform various functions of collecting tag IDs, estimating the number of tags, detecting the missing tags, etc. However, in practice, tags are often attached to objects of different groups, which may represent different product types in a warehouse, different book categories in a library, etc. As we move from a flat view to an organized group view, there arise many interesting problems. One of them, called multigroup threshold-based classification, is the focus of this paper. It is to determine whether the number of objects in each group is above or below a prescribed threshold value. Solving this problem is important for inventory tracking applications. If the number of groups is very large, it will be inefficient to measure the groups one at a time. The best existing solution for multigroup threshold-based classification is based on generic group testing, whose design is however geared toward detecting a small number of populous groups. Its performance degrades quickly when the number of groups above the threshold becomes large. In this paper, we propose a new classification protocol based on tag sampling and logical bitmaps. It achieves high efficiency by measuring all groups in a mixed fashion. In the meantime, we show that the new method is able to perform threshold-based classification with an accuracy that can be preset to any desirable level, allowing tradeoff between time efficiency and accuracy.
机译:现有的大多数研究都采用射频识别(RFID)系统的“平面”视图来执行收集标签ID,估计标签数量,检测丢失的标签等各种功能。但是,在实践中,标签通常附着在对象上不同的组,它们可能代表仓库中的不同产品类型,图书馆中的不同书籍类别等。当我们从平面视图转到有组织的组视图时,会出现许多有趣的问题。其中之一,称为多组基于阈值的分类,是本文的重点。确定每个组中的对象数是高于还是低于规定的阈值。解决此问题对于库存跟踪应用程序很重要。如果组的数量很大,则一次测量一个组的效率很低。现有的基于多阈值分类的最佳解决方案是基于通用组测试,但是其设计旨在检测少量的人口群体。当阈值以上的组数变多时,其性能会迅速下降。在本文中,我们提出了一种基于标签采样和逻辑位图的新分类协议。通过以混合方式测量所有组来实现高效率。同时,我们证明了该新方法能够执行基于阈值的分类,并且其精度可以预设为任何所需的水平,从而可以在时间效率和精度之间进行权衡。

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