RSSi-Based Visitor Tracking in Museums via Cascaded AI Classifiers and Coloured Graph Representations

Elia Onofri, Alessandro Corbetta
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Abstract

Individual tracking of museum visitors based on portable radio beacons, an asset for behavioural analyses and comfort/performance improvements, is seeing increasing diffusion. Conceptually, this approach enables room-level localisation based on a network of small antennas (thus, without invasive modification of the existent structures). The antennas measure the intensity (RSSi) of self-advertising signals broadcasted by beacons individually assigned to the visitors. The signal intensity provides a proxy for the distance to the antennas and thus indicative positioning. However, RSSi signals are well-known to be noisy, even in ideal conditions (high antenna density, absence of obstacles, absence of crowd, ...). In this contribution, we present a method to perform accurate RSSi-based visitor tracking when the density of antennas is relatively low, e.g. due to technical constraints imposed by historic buildings. We combine an ensemble of "simple" localisers, trained based on ground-truth, with an encoding of the museum topology in terms of a total-coloured graph. This turns the localisation problem into a cascade process, from large to small scales, in space and in time. Our use case is visitors tracking in Galleria Borghese, Rome (Italy), for which our method manages >96% localisation accuracy, significantly improving on our previous work (J. Comput. Sci. 101357, 2021).
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通过级联AI分类器和彩色图形表示的基于rssi的博物馆访客跟踪
基于便携式无线电信标的博物馆游客个人跟踪——一种用于行为分析和舒适度/性能改进的资产——正日益普及。从概念上讲,这种方法可以基于小型天线网络实现房间级定位(因此,无需对现有结构进行侵入性修改)。天线测量的强度(RSSi)的自我广告信号广播的信标单独分配给游客。信号强度提供了到天线的距离的代理,从而指示定位。然而,众所周知,即使在理想条件下(高天线密度、没有障碍物、没有人群等),RSSi信号也会产生噪声。在这篇文章中,我们提出了一种在天线密度相对较低的情况下,例如由于历史建筑的技术限制,进行精确的基于rsi的访客跟踪的方法。我们结合了一组“简单”的定位器,这些定位器是基于ground-truth进行训练的,并以全彩色图的形式对博物馆拓扑结构进行编码。这就把定位问题变成了一个级联过程,从大尺度到小尺度,在空间和时间上。我们的用例是在罗马(意大利)的Galleria Borghese进行访客跟踪,我们的方法实现了96%的定位精度,显著提高了我们之前的工作(J. Comput)。科学通报,2016(2)。
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