In recent years, Radio Frequency Identification (RFID) technology has been applied to improve numerous processes, such as inventory management in retail stores. However, automatic localization of RFID-tagged goods in stores is still a challenging problem. To address this issue, we equip fixtures (e.g., shelves) with reference tags and use data we collect during RFID-based stocktakes to map articles to fixtures. Knowing the location of goods enables the implementation of several practical applications, such as automated Money Mapping (i.e., a heat map of sales across fixtures). Specifically, we conduct controlled lab experiments and a case-study in two fashion retail stores to evaluate our article-to-fixture prediction approaches. The approaches are based on calculating distances between read event time series using DTW, and clustering of read events using DBSCAN. We find that, read events collected during RFID-based stocktakes can be used to assign articles to fixtures with an accuracy of more than 90%. Additionally, we conduct a pilot to investigate the challenges related to the integration of such a localization system in the day-to-day business of retail stores. Hence, in this paper we present an exploratory venture into novel and practical RFID-based applications in fashion retails stores, beyond the scope of stock management.
翻译:近年来,无线电频率识别(RFID)技术被用于改进许多流程,如零售商店的库存管理,然而,在零售商店中自动贴有RFID标签的货物的本地化仍是一个棘手的问题。为了解决这一问题,我们用参考标签装备固定装置(如架子),并利用我们在基于RFID的库存中收集的数据绘制固定物品的地图。了解货物的位置,可以实施若干实际应用,如自动货币映射(即跨固定装置销售热映射图)等。具体地说,我们进行控制实验室实验,在两家时装零售商店进行案例研究,以评价我们的货品到固定预测方法。这些方法基于使用DTW计算事件时间序列之间的距离,并利用DBSCAN对事件进行分组。我们发现,在基于RFID的库存中收集的事件可以用来指定固定物品的准确度超过90%。此外,我们进行试点,调查与将这种本地化系统纳入零售商店的日常业务有关的挑战。因此,我们在本文中探索了RFID零售商店的新版和零售商店的风险管理范围。