Learning Filter Bank Sparsifying Transforms

03/06/2018
by   Luke Pfister, et al.
0

Data is said to follow the transform (or analysis) sparsity model if it becomes sparse when acted on by a linear operator called a sparsifying transform. Several algorithms have been designed to learn such a transform directly from data, and data-adaptive sparsifying transforms have demonstrated excellent performance in signal restoration tasks. Sparsifying transforms are typically learned using small sub-regions of data called patches, but these algorithms often ignore redundant information shared between neighboring patches. We show that many existing transform and analysis sparse representations can be viewed as filter banks, thus linking the local properties of patch-based model to the global properties of a convolutional model. We propose a new transform learning framework where the sparsifying transform is an undecimated perfect reconstruction filter bank. Unlike previous transform learning algorithms, the filter length can be chosen independently of the number of filter bank channels. Numerical results indicate filter bank sparsifying transforms outperform existing patch-based transform learning for image denoising while benefiting from additional flexibility in the design process.

READ FULL TEXT

page 12

page 13

research
08/03/2018

The Power of Complementary Regularizers: Image Recovery via Transform Learning and Low-Rank Modeling

Recent works on adaptive sparse and on low-rank signal modeling have dem...
research
06/25/2018

The Hamming and Golay Number-Theoretic Transforms

New number-theoretic transforms are derived from known linear block code...
research
01/13/2014

Insights into analysis operator learning: From patch-based sparse models to higher-order MRFs

This paper addresses a new learning algorithm for the recently introduce...
research
10/19/2018

Learning Multi-Layer Transform Models

Learned data models based on sparsity are widely used in signal processi...
research
01/13/2015

ℓ_0 Sparsifying Transform Learning with Efficient Optimal Updates and Convergence Guarantees

Many applications in signal processing benefit from the sparsity of sign...
research
04/29/2021

Star DGT: a Robust Gabor Transform for Speech Denoising

In this paper, we address the speech denoising problem, where white Gaus...
research
05/05/2018

Polar Wavelets in Space

Recent work introduced a unified framework for steerable and directional...

Please sign up or login with your details

Forgot password? Click here to reset