传感器网络中基于连通性和无边界的骨架提取

Wenping Liu, Hongbo Jiang, Chonggang Wang, Chang Liu, Yang Yang, Wenyu Liu, Bo Li
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引用次数: 11

摘要

在传感器网络中,骨架(也称为中轴)提取被认为是支持负载均衡路由和无位置分割等许多应用的一种有吸引力的方法。现有的文献解决方案严重依赖于已识别的边界,这限制了骨架提取算法的适用性。在本文中,我们在传感器网络中进行了基于连通性和无边界的骨架提取方案的第一次工作。详细地说,我们提出了一种简单、分布式和可扩展的算法,它可以正确地识别几个骨架节点,并将它们连接成一个有意义的网络表示,而不依赖于通信无线电模型或边界信息的任何约束。我们算法的关键思想是利用骨架点的必要条件(但不是充分条件):以骨架点x为中心的圆盘的相交面积相对于x生成的弦上的其他点是最大的,其中弦被称为连接x和边界上切点的线段。为此,我们提出了一个点的ε-中心性的概念,定量地衡量一个点的“中心”程度。因此,与由该点生成的弦上的其他点相比,骨架点应具有最大的ε-中心性值。仿真结果表明,该算法在低节点密度、节点分布偏态等情况下也能很好地适应网络。此外,我们还得到了网络的边界和分割结果两个副产品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Connectivity-based and Boundary-Free Skeleton Extraction in Sensor Networks
In sensor networks, skeleton (also known as medial axis) extraction is recognized as an appealing approach to support many applications such as load-balanced routing and location free segmentation. Existing solutions in the literature rely heavily on the identified boundaries, which puts limitations on the applicability of the skeleton extraction algorithm. In this paper, we conduct the first work of a connectivity-based and boundary free skeleton extraction scheme, in sensor networks. In detail, we propose a simple, distributed and scalable algorithm that correctly identifies a few skeleton nodes and connects them into a meaningful representation of the network, without reliance on any constraint on communication radio model or boundary information. The key idea of our algorithm is to exploit the necessary (but not sufficient) condition of skeleton points: the intersection area of the disk centered at a skeleton point x should be the largest one as compared to other points on the chord generated by x, where the chord is referred to as the line segment connecting x and the tangent point in the boundary. To that end, we present the concept of ε-centrality of a point, quantitatively measuring how "central" a point is. Accordingly, a skeleton point should have the largest value of ε-centrality as compared to other points on the chord generated by this point. Our simulation results show that the proposed algorithm works well even for networks with low node density or skewed nodal distribution, etc. In addition, we obtain two by-products, the boundaries and the segmentation result of the network.
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