为国土安全实时追踪无收发器的物体

F. Viani, G. Oliveri, A. Massa
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引用次数: 5

摘要

国土安全日益增长的需求加速了创新和非侵入性系统的发展,以定位和跟踪复杂环境中的移动物体。本文通过实例学习的方法,利用无线传感器网络节点上可用的接收信号强度指标作为输入数据,解决了无收发器目标的实时定位问题。这种方法既不使用专用传感器,也不使用放置在目标上的有源设备来定位空闲和移动的物体。在离线训练过程中定义自定义分类器,通过处理支持向量机的输出,可以实时生成存在的概率图。一些选定的实验结果验证了该方法在实际场景中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time tracking of transceiver-free objects for homeland security
The increasing demand in homeland security speeds up the development of innovative and non-invasive systems to localize and track moving objects in complex environments. In this paper the real-time localization of transceiver-free targets is addressed by means of learning by example methodology that exploits the received signal strength indicator available at the nodes of a wireless sensor network as input data. This approach uses neither dedicated sensors nor active devices put on the target to localize both idle and moving objects. The definition of a customized classifier during an offline training procedure enables the real-time generation of a probability map of presence by processing the output of the support vector machine. Some selected experimental results validate the effectiveness of the proposed methodology applied in real scenarios.
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