English

Learning $\ell_1$-based analysis and synthesis sparsity priors using bi-level optimization

Computer Vision and Pattern Recognition 2014-01-17 v1

Abstract

We consider the analysis operator and synthesis dictionary learning problems based on the the 1\ell_1 regularized sparse representation model. We reveal the internal relations between the 1\ell_1-based analysis model and synthesis model. We then introduce an approach to learn both analysis operator and synthesis dictionary simultaneously by using a unified framework of bi-level optimization. Our aim is to learn a meaningful operator (dictionary) such that the minimum energy solution of the analysis (synthesis)-prior based model is as close as possible to the ground-truth. We solve the bi-level optimization problem using the implicit differentiation technique. Moreover, we demonstrate the effectiveness of our leaning approach by applying the learned analysis operator (dictionary) to the image denoising task and comparing its performance with state-of-the-art methods. Under this unified framework, we can compare the performance of the two types of priors.

Keywords

Cite

@article{arxiv.1401.4105,
  title  = {Learning $\ell_1$-based analysis and synthesis sparsity priors using bi-level optimization},
  author = {Yunjin Chen and Thomas Pock and Horst Bischof},
  journal= {arXiv preprint arXiv:1401.4105},
  year   = {2014}
}

Comments

5 pages, 1 figure, appear at the Workshop on Analysis Operator Learning vs. Dictionary Learning, NIPS 2012

R2 v1 2026-06-22T02:47:35.874Z