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Level Set Estimation Using Uncoordinated Mobile Sensors

机译:使用不协调的移动传感器进行水平集估计

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摘要

We develop level set estimation algorithms for a novel low cost sensor network architecture, where sensors are mounted on agents moving without an explicit objective of sensing. A level set in a planar scalar field is the set of points with field values greater than or equal to a specified value. We model the problem as a classification problem and evaluate a heuristic to reduce the amount of communication assuming that the base station uses a Support Vector Machine classifier. We then develop a fully distributed, low complexity solution which uses opportunistic information exchange to estimate level set boundaries locally at nodes selected using leader election. We observe that the learning rates of the boundary in a locality is proportional to the complexity. Effectiveness of the proposed scheme is evaluated using simulations with data from both synthetic and measured fields. Random way point mobility model is used for node motion and trade off of accuracy and of coverage with communication costs is studied.
机译:我们针对新颖的低成本传感器网络体系结构开发了水平集估计算法,其中传感器安装在移动的代理上而没有明确的检测目标。平面标量字段中设置的级别是字段值大于或等于指定值的点集。我们假设基站使用支持向量机分类器,将问题建模为分类问题,并评估启发式方法以减少通信量。然后,我们开发一种完全分布式的,低复杂度的解决方案,该解决方案使用机会信息交换来估计使用领导者选举选择的节点本地的级别集边界。我们观察到局部边界的学习率与复杂度成正比。使用来自合成场和实测场的数据进行仿真,评估了所提出方案的有效性。将随机路径点移动性模型用于节点运动,并研究了精度和覆盖范围以及通信成本之间的权衡。

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