Optimal Worst-Case Coverage of Directional Field-of-View Sensor Networks

Jacob Adriaens, S. Megerian, M. Potkonjak
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引用次数: 95

Abstract

Sensor coverage is a fundamental sensor networking design and use issue that in general tries to answer the questions about the quality of sensing (surveillance) that a particular sensor network provides. Although isotropic sensor models and coverage formulations have been studied and analyzed in great depth recently, the obtained results do not easily extend to, and address the coverage of directional and field-of-view sensors such as imagers and video cameras. In this paper, we present an optimal polynomial time algorithm for computing the worst-case breach coverage in sensor networks that are comprised of directional "field-of-view" (FOV) sensors. Given a region covered by video cameras, a direct application of the presented algorithm is to compute "breach", which is defined as the maximal distance that any hostile target can maintain from the sensors while traversing through the region. Breach translates to "worst-case coverage" by assuming that in general, targets are more likely to be detected and observed when they are closer to the sensors (while in the field of view). The approach is amenable to the inclusion of any sensor detection model that is either independent of, or inversely proportional to distance from the targets. Although for the sake of discussion we mainly focus on square fields and model the sensor FOV as an isosceles triangle, we also discuss how the algorithm can trivially be extended to deal with arbitrary polygonal field boundaries and sensor FOVs, even in the presence of rigid obstacles. We also present several simulation-based studies of the scaling issues in such coverage problems and analyze the statistical properties of breach and its sensitivity to node density, locations, and orientations. A simple grid-based approximation approach is also analyzed for comparison and validation of the implementation
定向视场传感器网络的最优最坏情况覆盖
传感器覆盖是一个基本的传感器网络设计和使用问题,通常试图回答有关特定传感器网络提供的感知(监视)质量的问题。虽然各向同性传感器模型和覆盖公式最近已经进行了深入的研究和分析,但所获得的结果并不容易扩展到并解决定向和视场传感器(如成像仪和摄像机)的覆盖问题。在本文中,我们提出了一种最优多项式时间算法,用于计算由定向“视场”(FOV)传感器组成的传感器网络中的最坏情况破坏覆盖率。给定一个被摄像机覆盖的区域,该算法的直接应用是计算“缺口”,它被定义为任何敌对目标在穿过该区域时与传感器保持的最大距离。突破转化为“最坏情况覆盖范围”,假设一般情况下,目标更有可能被发现和观察到,当他们更接近传感器(而在视野范围内)。该方法适用于任何与目标距离无关或与目标距离成反比的传感器检测模型。虽然为了讨论的目的,我们主要关注方形场并将传感器视场建模为等腰三角形,但我们也讨论了如何将算法扩展到处理任意多边形场边界和传感器视场,甚至在存在刚性障碍物的情况下。我们还提出了一些基于模拟的研究,研究了这种覆盖问题中的尺度问题,并分析了缺口的统计特性及其对节点密度、位置和方向的敏感性。分析了一种简单的基于网格的逼近方法,并对其实现进行了比较和验证
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