ButterflyNet2D: Bridging Classical Methods and Neural Network Methods in Image Processing
Computer Vision and Pattern Recognition
2022-12-01 v1 Machine Learning
Numerical Analysis
Numerical Analysis
Abstract
Both classical Fourier transform-based methods and neural network methods are widely used in image processing tasks. The former has better interpretability, whereas the latter often achieves better performance in practice. This paper introduces ButterflyNet2D, a regular CNN with sparse cross-channel connections. A Fourier initialization strategy for ButterflyNet2D is proposed to approximate Fourier transforms. Numerical experiments validate the accuracy of ButterflyNet2D approximating both the Fourier and the inverse Fourier transforms. Moreover, through four image processing tasks and image datasets, we show that training ButterflyNet2D from Fourier initialization does achieve better performance than random initialized neural networks.
Cite
@article{arxiv.2211.16578,
title = {ButterflyNet2D: Bridging Classical Methods and Neural Network Methods in Image Processing},
author = {Gengzhi Yang and Yingzhou Li},
journal= {arXiv preprint arXiv:2211.16578},
year = {2022}
}