Publication Date: 7/6/2020
Event: IEEE International Conference on Computer Communications (IEEE Infocom 2020)
Reference: pp. 1-10, 2020
Authors: Shasha Li, NEC Laboratories America, Inc., University of California, Riverside; Mustafa Y. Arslan, NEC Laboratories America, Inc.; Mohammad A. Khojastepour, NEC Laboratories America, Inc.; Srikanth V. Krishnamurthy, University of California, Riverside; Sampath Rangarajan, NEC Laboratories America, Inc.
Abstract: RFID applications for taking inventory and processing transactions in point-of-sale (POS) systems improve operational efficiency but are not designed to provide insights about customers’ interactions with products. We bridge this gap by solving the proximity grouping problem to identify groups of RFID tags that stay in close proximity to each other over time. We design DeepTrack, a framework that uses deep learning to automatically track the group of items carried by a customer during her shopping journey. This unearths hidden purchase behaviors helping retailers make better business decisions and paves the way for innovative shopping experiences such as seamless checkout (‘a la Amazon Go). DeepTrack employs a recurrent neural network (RNN) with the attention mechanism, to solve the proximity grouping problem in noisy settings without explicitly localizing tags. We tailor DeepTrack’s design to track not only mobile groups (products carried by customers) but also flexibly identify stationary tag groups (products on shelves). The key attribute of DeepTrack is that it only uses readily available tag data from commercial off-the-shelf RFID equipment. Our experiments demonstrate that, with only two hours training data, DeepTrack achieves a grouping accuracy of 98.18% (99.79%) when tracking eight mobile (stationary) groups.
Publication Link: https://ieeexplore.ieee.org/document/9155357