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Dynamic threshold based sliding-window filtering technique for RFID data

机译:基于动态阈值的RFID数据滑动窗口过滤技术

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RFID (radio frequency identification) technology uses radio waves to transfer data between readers and movable tagged objects. In a networked environment of RFID readers, enormous data is generated from the proliferation of RFID readers. In RFID environment, the database becomes more pervasive, therefore, various data quality issues regarding data legacy, data uniformity and data duplication arise. The raw data generated from the readers can't be directly used by the application. Thus, the RFID data repositories must cope with a number of quality issues. These data quality issues include data redundancy, noise removal and synonymy, to name a few. Therefore, data generated in large volume has to be automatically filtered, processed and transformed. In this paper, we have investigated the existing literature on filtering techniques. Finally, we have proposed a dynamic threshold based sliding-window filtering technique for data generated from RFID networked reader. We have presented a scenario where the raw data occurs less than the defined threshold value and noise occurs more than the threshold. In this case, the existing filtering technique recognizes noise as a RFID data and discards the real raw RFID data. Therefore, we have proposed the updation of threshold value periodically and examination of EPC data format and associate values (header information).
机译:RFID(射频识别)技术使用无线电波在阅读器和可移动的带标签物体之间传输数据。在RFID阅读器的网络环境中,RFID阅读器的泛滥产生了巨大的数据。在RFID环境中,数据库变得更加普遍,因此,出现了有关数据遗留,数据统一性和数据重复的各种数据质量问题。从阅读器生成的原始数据不能被应用程序直接使用。因此,RFID数据存储库必须解决许多质量问题。这些数据质量问题包括数据冗余,噪声消除和同义词。因此,必须自动过滤,处理和转换大量生成的数据。在本文中,我们研究了有关过滤技术的现有文献。最后,我们提出了一种基于动态阈值的滑动窗口滤波技术,用于从RFID网络阅读器生成的数据。我们提出了一种场景,其中原始数据出现的时间少于定义的阈值,而噪声出现的时间大于阈值。在这种情况下,现有的过滤技术将噪声识别为RFID数据并丢弃实际的原始RFID数据。因此,我们建议定期更新阈值,并检查EPC数据格式和关联值(标头信息)。

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