Computer Science Department, Campus de Viesques, University of Oviedo, Office 1.b.15, Gijón, 33003 Oviedo, Asturias, Spain.
Sensors (Basel). 2021 Mar 12;21(6):2007. doi: 10.3390/s21062007.
This paper deals with the automatic classification of customers on the basis of their movements around a sports shop center. We start by collecting coordinates from customers while they visit the store. Consequently, any costumer's path through the shop is formed by a list of coordinates, obtained with a frequency of one measurement per minute. A guess about the trajectory is constructed, and a number of parameters are calculated before performing a Clustering Process. As a result, we can identify several types of customers, and the dynamics of their behavior inside the shop. We can also monitor the state of the shop, identify different situations that appear during limited periods of time, and predict peaks in customer traffic.
本文讨论了基于顾客在体育用品商店中心的运动情况对其进行自动分类的问题。我们首先从顾客在商店访问时收集坐标开始。因此,顾客在商店中的任何路径都由每分钟测量一次的坐标列表组成。在执行聚类过程之前,我们可以构建一个轨迹猜测,并计算一些参数。结果,我们可以识别出几种类型的顾客,以及他们在商店中的行为动态。我们还可以监控商店的状态,识别在有限时间内出现的不同情况,并预测顾客流量高峰。