基于图的物联网网络海量接入随机抽样

Shiyu Zhai, Guobing Li, Zefeng Qi, Guomei Zhang
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引用次数: 3

摘要

本文从图信号处理(GSP)的角度研究了物联网网络中的海量接入问题。首先,我们揭示了物联网网络中海量接入与图信号采样的联系,并将海量接入问题建模为基于图的随机采样问题。其次,受压缩感知中限制等距特性(RIP)条件的启发,导出了限带图信号随机采样的RIP条件,首次证明了限带图信号可以在给定概率下从随机选择的噪声样本中恢复出来。基于所提出的RIP条件,通过最小化原始信号与恢复信号之间均方误差的切比雪夫近似或高斯近似来优化每个传感设备的采样概率。在Bunny图和Community图上的实验验证了随机抽样的稳定性,并展示了所提出的随机抽样方案的性能增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph-Based Random Sampling for Massive Access in IoT Networks
In this paper the massive access problem in IoT networks is studied from the perspective of graph signal processing (GSP). First, we reveal the connections of massive access in IoT networks and the sampling of a graph signal, and model the massive access problem as a graph-based random sampling problem. Second, inspired by the restricted isometry property (RIP) condition in compressed sensing, we derive the RIP condition for random sampling on band-limited graph signals, showing at the first time that band-limited graph signals can be recovered from randomly-selected noisy samples in a given probability. Based on the proposed RIP condition, the sampling probability of each sensing device is optimized through minimizing the Chebyshev or Gaussian approximations of mean square error between the original and the recovered signals. Experiments on the Bunny and Community graphs verify the stability of random sampling, and show the performance gain of the proposed random sampling solutions.
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