Convolutional Sparse Representations with Gradient Penalties
Computer Vision and Pattern Recognition
2021-03-25 v2 Image and Video Processing
Abstract
While convolutional sparse representations enjoy a number of useful properties, they have received limited attention for image reconstruction problems. The present paper compares the performance of block-based and convolutional sparse representations in the removal of Gaussian white noise. While the usual formulation of the convolutional sparse coding problem is slightly inferior to the block-based representations in this problem, the performance of the convolutional form can be boosted beyond that of the block-based form by the inclusion of suitable penalties on the gradients of the coefficient maps.
Cite
@article{arxiv.1705.04407,
title = {Convolutional Sparse Representations with Gradient Penalties},
author = {Brendt Wohlberg},
journal= {arXiv preprint arXiv:1705.04407},
year = {2021}
}