English

Unrolling PALM for sparse semi-blind source separation

Instrumentation and Methods for Astrophysics 2022-03-08 v2 Machine Learning Image and Video Processing Signal Processing

Abstract

Sparse Blind Source Separation (BSS) has become a well established tool for a wide range of applications - for instance, in astrophysics and remote sensing. Classical sparse BSS methods, such as the Proximal Alternating Linearized Minimization (PALM) algorithm, nevertheless often suffer from a difficult hyperparameter choice, which undermines their results. To bypass this pitfall, we propose in this work to build on the thriving field of algorithm unfolding/unrolling. Unrolling PALM enables to leverage the data-driven knowledge stemming from realistic simulations or ground-truth data by learning both PALM hyperparameters and variables. In contrast to most existing unrolled algorithms, which assume a fixed known dictionary during the training and testing phases, this article further emphasizes on the ability to deal with variable mixing matrices (a.k.a. dictionaries). The proposed Learned PALM (LPALM) algorithm thus enables to perform semi-blind source separation, which is key to increase the generalization of the learnt model in real-world applications. We illustrate the relevance of LPALM in astrophysical multispectral imaging: the algorithm not only needs up to 10410510^4-10^5 times fewer iterations than PALM, but also improves the separation quality, while avoiding the cumbersome hyperparameter and initialization choice of PALM. We further show that LPALM outperforms other unrolled source separation methods in the semi-blind setting.

Keywords

Cite

@article{arxiv.2112.05694,
  title  = {Unrolling PALM for sparse semi-blind source separation},
  author = {Mohammad Fahes and Christophe Kervazo and Jérôme Bobin and Florence Tupin},
  journal= {arXiv preprint arXiv:2112.05694},
  year   = {2022}
}

Comments

10th International Conference on Learning Representations, ICLR 2022. 21 pages

R2 v1 2026-06-24T08:12:39.328Z