Graph-Based Signal Sampling with Adaptive Subspace Reconstruction for Spatially-Irregular Sensor Data

Darukeesan Pakiyarajah, Eduardo Pavez, Antonio Ortega
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Abstract

Choosing an appropriate frequency definition and norm is critical in graph signal sampling and reconstruction. Most previous works define frequencies based on the spectral properties of the graph and use the same frequency definition and $\ell_2$-norm for optimization for all sampling sets. Our previous work demonstrated that using a sampling set-adaptive norm and frequency definition can address challenges in classical bandlimited approximation, particularly with model mismatches and irregularly distributed data. In this work, we propose a method for selecting sampling sets tailored to the sampling set adaptive GFT-based interpolation. When the graph models the inverse covariance of the data, we show that this adaptive GFT enables localizing the bandlimited model mismatch error to high frequencies, and the spectral folding property allows us to track this error in reconstruction. Based on this, we propose a sampling set selection algorithm to minimize the worst-case bandlimited model mismatch error. We consider partitioning the sensors in a sensor network sampling a continuous spatial process as an application. Our experiments show that sampling and reconstruction using sampling set adaptive GFT significantly outperform methods that used fixed GFTs and bandwidth-based criterion.
基于图的信号采样与自适应子空间重构,用于空间不规则传感器数据
在图形信号采样和重建中,选择合适的频率定义和规范至关重要。之前的大多数工作都是根据图的频谱特性定义频率,并使用相同的频率定义和 $\ell_2$ 准则对所有采样集进行优化。我们之前的工作表明,使用采样集自适应规范和频率定义可以解决经典带限逼近中的难题,尤其是在模型不匹配和数据不规则分布的情况下。在这项工作中,我们提出了一种为基于 GFT 的采样集自适应插值量身定制的采样集选择方法。当图形对数据的逆协方差进行建模时,我们发现这种自适应 GFT 能够将带限模型失配误差定位到高频率,而光谱折叠特性允许我们在重建中跟踪这种误差。我们将传感器网络中对连续空间过程进行采样的传感器分区视为一种应用。实验表明,使用采样集自适应 GFT 进行采样和重建的效果明显优于使用固定 GFT 和基于带宽准则的方法。
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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