标签展位:由RFID标签驱动的深度购物数据采集

Tianci Liu, Lei Yang, Xiangyang Li, Huaiyi Huang, Yunhao Liu
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引用次数: 37

摘要

为了保持竞争力,大量的数据挖掘技术已经被引入,以帮助商店更好地了解消费者的行为。然而,这些研究通常局限于客户交易数据。实际上,另一种“深度购物数据”,例如,哪些受到关注的商品没有被购买,以及为什么没有被购买,为推动产品设计提供了更有价值的信息。不幸的是,这些数据在遗留系统中完全被忽略了。本文介绍了一个名为TagBooth的创新系统,该系统使用COTS RFID设备来检测商品的运动并进一步发现顾客的行为。我们首先利用相位、RSS等物理层信息来挖掘标签商品的运动,然后设计一个全面的解决方案来识别顾客的行为。该系统已在实验室环境中进行了广泛的测试,并在实际零售商店中使用了半年。因此,TagBooth在获取深度购物数据方面普遍表现良好,准确率较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TagBooth: Deep shopping data acquisition powered by RFID tags
To stay competitive, plenty of data mining techniques have been introduced to help stores better understand consumers' behaviors. However, these studies are generally confined within the customer transaction data. Actually, another kind of `deep shopping data', e.g. which and why goods receiving much attention are not purchased, offers much more valuable information to boost the product design. Unfortunately, these data are totally ignored in legacy systems. This paper introduces an innovative system, called TagBooth, to detect commodities' motion and further discover customers' behaviors, using COTS RFID devices. We first exploit the motion of tagged commodities by leveraging physical-layer information, like phase and RSS, and then design a comprehensive solution to recognize customers' actions. The system has been tested extensively in the lab environment and used for half a year in real retail store. As a result, TagBooth generally performs well to acquire deep shopping data with high accuracy.
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