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Reducing RFID Data Uncertainty using Mean Field Variational Inference

机译:使用平均场变分推理减少RFID数据不确定性

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In recent years, the RFID applications that are used for tracing and tracking the objects have been increased in many fields due to low cost of RFID tags. However, the raw data produced from RFID tags is redundant and noisy. Therefore, recent approaches apply a preprocessing step to clean raw data from redundant and noisy data. In this paper, a new approach for cleaning RFID data using variational inference technique is proposed. Our approach utilizes the data redundancy and prior knowledge together to improve the data quality. Moreover, it considers the physical constraints of the employed application to improve the data accuracy. Our approach is applied to the three-state RFID detection model. The results prove that our approach efficiently manages the uncertainty of the RFID data in large scale traceability networks.
机译:近年来,由于RFID标签的低成本,在许多领域中用于追踪和跟踪对象的RFID应用已经增加。但是,从RFID标签产生的原始数据是多余且嘈杂的。因此,最近的方法采用了预处理步骤,以从冗余和嘈杂的数据中清除原始数据。本文提出了一种使用变分推理技术清洗RFID数据的新方法。我们的方法结合了数据冗余和先验知识来提高数据质量。此外,它考虑了所用应用程序的物理约束以提高数据准确性。我们的方法被应用于三态RFID检测模型。结果证明,我们的方法可以有效地管理大规模可追溯网络中RFID数据的不确定性。

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