物联网+小数据:改变店内购物分析和服务

Meera Radhakrishnan, Sougata Sen, Vigneshwaran Subbaraju, Archan Misra, R. Balan
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引用次数: 16

摘要

我们支持基于小型数据的沉浸式零售分析,将来自个人可穿戴设备和商店部署的传感器和物联网设备的传感器数据结合起来,为店内购物者创建实时、个性化的服务。关键挑战包括(a)适当地联合挖掘传感器和可穿戴设备数据,以捕获购物者的产品级交互,以及(b)明智地触发耗电的可穿戴传感器(例如,摄像头),以仅捕获购物者店内活动的相关部分。为了探索我们愿景的可行性,我们对5名戴着智能手表的用户进行了实验,他们与放置在我们实验室橱柜架上的物体进行了互动(粗略地模仿相应的杂货店互动)。最初的结果显示出了巨大的希望:识别拣货手势的准确率为94%,识别拣货货架位置的准确率为85%,准确识别拣货位置的准确率为61%(通过对智能手表摄像头数据的分析)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IoT+Small Data: Transforming in-store shopping analytics & services
We espouse a vision of small data-based immersive retail analytics, where a combination of sensor data, from personal wearable-devices and store-deployed sensors & IoT devices, is used to create real-time, individualized services for in-store shoppers. Key challenges include (a) appropriate joint mining of sensor & wearable data to capture a shopper's product-level interactions, and (b) judicious triggering of power-hungry wearable sensors (e.g., camera) to capture only relevant portions of a shopper's in-store activities. To explore the feasibility of our vision, we conducted experiments with 5 smartwatch-wearing users who interacted with objects placed on cupboard racks in our lab (to crudely mimic corresponding grocery store interactions). Initial results show significant promise: 94% accuracy in identifying an item-picking gesture, 85% accuracy in identifying the shelf-location from where the item was picked and 61% accuracy in identifying the exact item picked (via analysis of the smartwatch camera data).
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