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A hidden Markov model for distinguishing between RFID-tagged objects in adjacent areas

机译:用于区分邻近区域中的RFID标记对象的隐马尔可夫模型

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Distinguishing between RFID-tagged objects within different areas poses an important building block for many RFID-based applications. Existing localization techniques, however, often cannot reliably distinguish between tagged objects that are close to the border of adjacent areas. Against this backdrop, we present a hybrid approach based on an ANN and a HMM that leverages not only low-level RFID data streams but also information about physical constraints and process knowledge and thus incorporates scene dynamics. We experimentally demonstrate the performance of our approach considering a RFID-based smart fitting room which is a practically relevant application with limited process control in an environment with strong multipath reflections and non-line-of-sight effects. Our results show that our approach is able to reliably distinguish between tagged objects within different cabins. This includes objects hanging on coat hooks at partition walls of adjacent cabins, i.e., at a maximum distance of 5 centimeters to the border of an adjacent area.
机译:区分不同区域内的RFID标记对象为许多基于RFID的应用程序带来了一个重要的构建块。然而,现有的本地化技术通常不能可靠地区分靠近相邻区域的边界的标记物体。在此背景下,我们介绍了一种基于ANN的混合方法和一个HMM,不仅利用低级RFID数据流,而且提供有关物理限制和过程知识的信息,从而结合了场景动态。我们通过实验展示了考虑到基于RFID的智能配件室的方法的性能,这是一种在具有强大多径反射和非视线效果的环境中具有有限过程控制的实际相关应用。我们的结果表明,我们的方法能够可靠地区分不同舱内的标记物体。这包括悬挂在邻近舱室的分隔壁的涂层上的物体,即,在邻近区域的边界的最大距离处。

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