TY - JOUR
T1 - Untrained Graph Neural Networks for Denoising
AU - Rey, Samuel
AU - Segarra, Santiago
AU - Heckel, Reinhard
AU - Marques, Antonio G.
N1 - Publisher Copyright:
© 1991-2012 IEEE.
PY - 2022
Y1 - 2022
N2 - A fundamental problem in signal processing is to denoise a signal. While there are many well-performing methods for denoising signals defined on regular domains, including images defined on a two-dimensional pixel grid, many important classes of signals are defined over irregular domains that can be conveniently represented by a graph. This paper introduces two untrained graph neural network architectures for graph signal denoising, develops theoretical guarantees for their denoising capabilities in a simple setup, and provides empirical evidence 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. Finally, we provide numerical experiments with synthetic and real datasets that i) asses the denoising behavior predicted by our theoretical results and ii) compare the denoising performance of our architectures with that of existing alternatives.
AB - A fundamental problem in signal processing is to denoise a signal. While there are many well-performing methods for denoising signals defined on regular domains, including images defined on a two-dimensional pixel grid, many important classes of signals are defined over irregular domains that can be conveniently represented by a graph. This paper introduces two untrained graph neural network architectures for graph signal denoising, develops theoretical guarantees for their denoising capabilities in a simple setup, and provides empirical evidence 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. Finally, we provide numerical experiments with synthetic and real datasets that i) asses the denoising behavior predicted by our theoretical results and ii) compare the denoising performance of our architectures with that of existing alternatives.
KW - Geometric deep learning
KW - graph decoder
KW - graph signal denoising
KW - graph signal processing
UR - http://www.scopus.com/inward/record.url?scp=85144044285&partnerID=8YFLogxK
U2 - 10.1109/TSP.2022.3223552
DO - 10.1109/TSP.2022.3223552
M3 - Article
AN - SCOPUS:85144044285
SN - 1053-587X
VL - 70
SP - 5708
EP - 5723
JO - IEEE Transactions on Signal Processing
JF - IEEE Transactions on Signal Processing
ER -