Tracking Persons using Particle Filter Fusing Visual and Wi-Fi Localizations for Widely Distributed Camera

Takashi Miyaki, T. Yamasaki, K. Aizawa
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引用次数: 22

Abstract

This paper describes an object tracking scheme employs sensor fusion approach which is composed of visual information and location information estimated from Wi-Fi signals. Location information is calculated by a set of received signal strength values of beacon packets from Wi-Fi access points (APs) around the targets. Different from the conventional approaches which use another kind of sensors, our approach can cover wider areas both indoor and outdoor with lower cost because of characteristics of Wi-Fi signals. Particle filter is applied to combine these two different kinds of sensory input to track the target continuously. Wi-Fi observation model is involved in a conventional visual particle filtering scheme in order to evaluate importance weights of each particle. By using multiple modality, robust tracking performance is achieved even if reliability of one sensory input declines. In this paper, we present experimental results applied to outdoor surveillance camera environment.
基于粒子滤波融合视觉和Wi-Fi定位的广泛分布摄像机跟踪
本文提出了一种利用视觉信息和从Wi-Fi信号中估计的位置信息相结合的传感器融合方法的目标跟踪方案。位置信息由目标周围Wi-Fi接入点(ap)接收到的信标数据包的一组信号强度值计算得到。与传统的使用另一种传感器的方法不同,由于Wi-Fi信号的特性,我们的方法可以覆盖更广泛的室内和室外区域,并且成本更低。采用粒子滤波将两种不同的感官输入结合起来,实现对目标的连续跟踪。在Wi-Fi观测模型中加入传统的视觉粒子滤波方案,以评估每个粒子的重要权重。通过使用多模态,即使一个感官输入的可靠性下降,也能实现鲁棒的跟踪性能。本文给出了应用于室外监控摄像机环境的实验结果。
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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