English

Parseval Convolution Operators and Neural Networks

Signal Processing 2024-08-20 v1 Machine Learning Functional Analysis Machine Learning

Abstract

We first establish a kernel theorem that characterizes all linear shift-invariant (LSI) operators acting on discrete multicomponent signals. This result naturally leads to the identification of the Parseval convolution operators as the class of energy-preserving filterbanks. We then present a constructive approach for the design/specification of such filterbanks via the chaining of elementary Parseval modules, each of which being parameterized by an orthogonal matrix or a 1-tight frame. Our analysis is complemented with explicit formulas for the Lipschitz constant of all the components of a convolutional neural network (CNN), which gives us a handle on their stability. Finally, we demonstrate the usage of those tools with the design of a CNN-based algorithm for the iterative reconstruction of biomedical images. Our algorithm falls within the plug-and-play framework for the resolution of inverse problems. It yields better-quality results than the sparsity-based methods used in compressed sensing, while offering essentially the same convergence and robustness guarantees.

Keywords

Cite

@article{arxiv.2408.09981,
  title  = {Parseval Convolution Operators and Neural Networks},
  author = {Michael Unser and Stanislas Ducotterd},
  journal= {arXiv preprint arXiv:2408.09981},
  year   = {2024}
}
R2 v1 2026-06-28T18:16:45.469Z