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Connectivity-based skeleton extraction in wireless sensor networks

机译:无线传感器网络中基于连接的骨架提取

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摘要

Many sensor network applications are tightly coupled with the geometric environment where the sensor nodes are deployed. The topological skeleton extraction for the topology has shown great impact on the performance of such services as location, routing, and path planning in wireless sensor networks. Nonetheless, current studies focus on using skeleton extraction for various applications in wireless sensor networks. How to achieve a better skeleton extraction has not been thoroughly investigated. There are studies on skeleton extraction from the computer vision community; their centralized algorithms for continuous space, however, are not immediately applicable for the discrete and distributed wireless sensor networks. In this paper, we present a novel Connectivity-bAsed Skeleton Extraction (CASE) algorithm to compute skeleton graph that is robust to noise, and accurate in preservation of the original topology. In addition, CASE is distributed as no centralized operation is required, and is scalable as both its time complexity and its message complexity are linearly proportional to the network size. The skeleton graph is extracted by partitioning the boundary of the sensor network to identify the skeleton points, then generating the skeleton arcs, connecting these arcs, and finally refining the coarse skeleton graph. We believe that CASE has broad applications and present a skeleton-assisted segmentation algorithm as an example. Our evaluation shows that CASE is able to extract a well-connected skeleton graph in the presence of significant noise and shape variations, and outperforms the state-of-the-art algorithms.
机译:许多传感器网络应用与部署传感器节点的几何环境紧密结合。拓扑的拓扑骨架提取已对诸如无线传感器网络中的位置,路由和路径规划之类的服务的性能产生了很大影响。尽管如此,当前的研究集中在将骨架提取用于无线传感器网络的各种应用中。如何更好地提取骨骼还没有被彻底研究。对计算机视觉社区的骨骼提取进行了研究;然而,它们针对连续空间的集中式算法不适用于离散和分布式无线传感器网络。在本文中,我们提出了一种新颖的基于连通性的骨架提取(CASE)算法,以计算对噪声具有鲁棒性并能准确保留原始拓扑的骨架图。另外,由于不需要集中操作,因此可以分配CASE,并且由于其时间复杂度和消息复杂度与网络大小成线性比例,因此可以进行扩展。通过划分传感器网络的边界以识别骨架点,然后生成骨架弧线,连接这些弧线,最后精炼粗略的骨架图,可以提取骨架图。我们认为,CASE具有广泛的应用前景,并以骨架辅助分割算法为例。我们的评估表明,在存在明显的噪声和形状变化的情况下,CASE能够提取出连接良好的骨架图,并且性能优于最新的算法。

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