Graph scale-space theory for distributed peak and pit identification

Andreas Loukas, M. Cattani, Marco Zúñiga, Jie Gao
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引用次数: 10

Abstract

Graph filters are a recent and powerful tool to process information in graphs. Yet despite their advantages, graph filters are limited. The limitation is exposed in a filtering task that is common, but not fully solved in sensor networks: the identification of a signal's peaks and pits. Choosing the correct filter necessitates a-priori information about the signal and the network topology. Furthermore, in sparse and irregular networks graph filters introduce distortion, effectively rendering identification inaccurate, even when signal-specific information is available. Motivated by the need for a multi-scale approach, this paper extends classical results on scale-space analysis to graphs. We derive the family of scale-space kernels (or filters) that are suitable for graphs and show how these can be used to observe a signal at all possible scales: from fine to coarse. The gathered information is then used to distributedly identify the signal's peaks and pits. Our graph scale-space approach diminishes the need for a-priori knowledge, and reduces the effects caused by noise, sparse and irregular topologies, exhibiting: (i) superior resilience to noise than the state-of-the-art, and (ii) at least 20% higher precision than the best graph filter, when evaluated on our testbed.
分布式峰坑识别的图标度空间理论
图过滤器是最近出现的一种处理图中信息的强大工具。然而,尽管有这些优点,图形过滤器还是有局限性的。这种限制暴露在一个常见的滤波任务中,但在传感器网络中没有完全解决:信号的峰值和凹陷的识别。选择正确的滤波器需要有关信号和网络拓扑的先验信息。此外,在稀疏和不规则网络中,图滤波器引入了失真,即使在信号特定信息可用时,也会有效地使识别不准确。基于对多尺度方法的需要,本文将尺度空间分析的经典结果扩展到图。我们推导了适合于图形的尺度空间核(或滤波器)族,并展示了如何使用这些核来观察所有可能的尺度上的信号:从细到粗。然后,收集到的信息用于分布式地识别信号的波峰和波谷。我们的图尺度空间方法减少了对先验知识的需求,并减少了由噪声、稀疏和不规则拓扑引起的影响,表现出:(i)比最先进的噪声具有更好的恢复能力,(ii)在我们的测试平台上评估时,比最佳图过滤器的精度至少高出20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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