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Detecting Customers' Buying Events on a Real-Life Database

机译:在真实数据库中检测客户的购买事件

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Video Analytics covers a large set of methodologies which aim at automatically extracting information from video material. In the context of retail, the possibility to effortlessly gather statistics on customer shopping behavior is very attractive. In this work, we focus on the task of automatic classification of customer behavior, with the objecting to recognize buying events. The experiments are performed on several hours of video collected in a supermarket. Given the vast effort of the research community on the task of tracking, we assume the existence of a video tracking system capable of producing a trajectory for every individual, and currently manually annotate the input videos with trajectories. From the annotated video recordings, we extract features related to the spatio-temporal behavior of the trajectory, and to the user movement, and analyze the shopping sequences using a Hidden Markov Model (HMM). First results show that it is possible to discriminate between buying and non-buying behavior with an accuracy of 74%.
机译:视频分析涵盖了大量旨在自动从视频资料中提取信息的方法。在零售方面,毫不费力地收集有关客户购物行为的统计数据的可能性非常具有吸引力。在这项工作中,我们着重于对客户行为进行自动分类的任务,其目的是识别购买事件。实验是在超级市场收集的几个小时的视频上进行的。考虑到研究界在跟踪任务上的巨大努力,我们假设存在一个视频跟踪系统,该系统能够为每个人生成轨迹,并且当前使用轨迹手动注释输入的视频。从带注释的视频记录中,我们提取与轨迹的时空行为和用户移动有关的特征,并使用隐马尔可夫模型(HMM)分析购物序列。最初的结果表明,可以以74%的准确度区分购买行为和非购买行为。

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