Smart Self-Checkout Carts Based on Deep Learning for Shopping Activity Recognition

Hong-Chuan Chi, M. A. Sarwar, Yousef-Awwad Daraghmi, Kuan Liu, Tsì-Uí İk, Yih-Lang Li
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引用次数: 9

Abstract

Fast and reliable communication plays a major role in the success of smart shopping applications. In a “Just Walk Out” shopping scenario, a video camera is installed on the cart to monitor shopping activities and transmit images to the cloud for processing so that items in the cart can be tracked and checked out. This paper proposes a prototype of a smart shopping cart based on image-based action recognition. Firstly, deep learning networks such as Faster R-CNN, YOLOv2, and YOLOv2-Tiny are utilized to analyze the content of each video frame. Frames are classified into three classes: No Hand, Empty Hand, and Holding Items. The classification accuracy based on Faster R-CNN, YOLOv2, or YOLOv2-Tiny is between 93.0% and 90.3%, and the processing speed of the three networks can be up to 5 fps, 39 fps, and 50 fps, respectively. Secondly, based on the sequence of frame classes, the timeline is divided into No Hand intervals, Empty Hand intervals, and Holding Items intervals. The accuracy of action recognition is 96%, and the time error is 0.119s on average. Finally, we categorize the events into four cases: No Change, placing, Removing, and Swapping. Even including the correctness of the item recognition, the accuracy of shopping event detection is 97.9%, which is higher than the minimal requirement to deploy such a system in a smart shopping environment. A demo of the system and a link to download the data set used in the paper are in Smart Shopping Cart Prototype or found at this URL: https://hackmd.io/abEiC83rQoqxz7zpL4Kh2w.
基于深度学习的购物活动识别智能自助结账车
快速可靠的通信对智能购物应用的成功起着重要作用。在“即走即出”的购物场景中,购物车上安装了一个摄像机来监控购物活动,并将图像传输到云端进行处理,以便跟踪购物车中的商品并结帐。提出了一种基于图像动作识别的智能购物车原型。首先,利用Faster R-CNN、YOLOv2、YOLOv2- tiny等深度学习网络对每一帧视频的内容进行分析。框架分为三类:无手、空手和持有物品。基于Faster R-CNN、YOLOv2和YOLOv2- tiny的分类准确率在93.0% ~ 90.3%之间,三种网络的处理速度分别可达5fps、39fps和50fps。其次,根据帧类的顺序,将时间轴划分为无手时间间隔、空手时间间隔和持有物品时间间隔。动作识别准确率为96%,时间误差平均为0.119s。最后,我们将事件分为四种情况:无更改、放置、移除和交换。即使包括商品识别的正确性,购物事件检测的准确率也达到97.9%,高于在智能购物环境中部署这样一个系统的最低要求。系统的演示和下载论文中使用的数据集的链接在智能购物车原型中或在此URL中找到:https://hackmd.io/abEiC83rQoqxz7zpL4Kh2w。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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