Joint detection and tracking of boundaries using cooperative mobile sensor networks

Woojin Kim, D. Kwak, H. Kim
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引用次数: 6

Abstract

This paper considers a boundary tracking problem using mobile sensor networks, in which we design controllers for the mobile sensors to obtain the boundary of physical events. We set the boundary estimation problem as a classification problem of the region in which the physical events occurs, and employ support vector learning (SVL). By using the hyper-dimensional radius function obtained from SVL, we build the hyper-potential field to generate a velocity vector field which is globally attractive to a desired closed path with circulation at the desired speed. We also study stabilizing the collective configuration of the multiple mobile sensors. To coordinate the mobile sensors in the formation that encloses the boundary, we define virtual phases of mobile sensors and compute the desired speed of each mobile sensors minimizing the level of synchrony of the virtual phases. Both a simulation and an experiment is performed and the results demonstrate that this study provides good performance of the collective boundary tracking.
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基于协同移动传感器网络的边界联合检测与跟踪
本文研究了移动传感器网络的边界跟踪问题,设计了移动传感器的控制器来获取物理事件的边界。我们将边界估计问题设置为物理事件发生区域的分类问题,并采用支持向量学习(SVL)。利用由SVL得到的超维半径函数,我们建立了超势场,生成了一个速度矢量场,该速度矢量场对以期望速度循环的期望闭合路径具有全局吸引力。我们还研究了稳定多个移动传感器的整体结构。为了使移动传感器在包围边界的编队中协调一致,我们定义了移动传感器的虚拟相位,并计算了每个移动传感器的期望速度,使虚拟相位的同步程度最小化。仿真和实验结果表明,该方法具有良好的集体边界跟踪性能。
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