A fundamental problem in signal processing is to denoise a signal. While there are many well-performing methods for denoising signals defined on regular supports, such as images defined on two-dimensional grids of pixels, many important classes of signals are defined over irregular domains such as graphs. This paper introduces two untrained graph neural network architectures for graph signal denoising, provides theoretical guarantees for their denoising capabilities in a simple setup, and numerically validates the theoretical results in more general scenarios. The two architectures differ on how they incorporate the information encoded in the graph, with one relying on graph convolutions and the other employing graph upsampling operators based on hierarchical clustering. Each architecture implements a different prior over the targeted signals. To numerically illustrate the validity of the theoretical results and to compare the performance of the proposed architectures with other denoising alternatives, we present several experimental results with real and synthetic datasets.
翻译:信号处理中的一个基本问题是隐蔽信号。 虽然在常规支持上定义的信号解密方法有许多功能良好的方法,比如在像素二维网格上定义的图像,但许多重要的信号类别是在图解等非常规域下定义的。本文介绍了两个未经训练的图形神经网络结构,用于图形信号解密,为在简单设置中解密能力提供了理论保障,并在更一般性的假设中从数字上验证了理论结果。这两个结构在如何将图表中编码的信息纳入信息上存在差异,一个则依赖图形相形图,另一个则使用基于等级组合的图形采集操作器。每个结构在目标信号上采用了不同的先行结构。为了从数字上说明理论结果的有效性,并将拟议结构的性能与其他解密替代方法进行比较,我们用真实和合成数据集展示了若干实验结果。