LGSPMLJul 9, 2024

Variational Learning ISTA

arXiv:2407.06646v11 citationsh-index: 27
Originality Incremental advance
AI Analysis

This work addresses a domain-specific challenge in compressed sensing for scenarios with uncertain or changing sensing conditions, offering a probabilistic method that is incremental over existing LISTA architectures.

The paper tackles the problem of sparse representation learning and signal reconstruction under varying sensing matrices by proposing VLISTA, a variational approach that learns a distribution over dictionaries and integrates it into an unfolded LISTA-based algorithm, achieving calibrated uncertainties and improved performance in experiments.

Compressed sensing combines the power of convex optimization techniques with a sparsity-inducing prior on the signal space to solve an underdetermined system of equations. For many problems, the sparsifying dictionary is not directly given, nor its existence can be assumed. Besides, the sensing matrix can change across different scenarios. Addressing these issues requires solving a sparse representation learning problem, namely dictionary learning, taking into account the epistemic uncertainty of the learned dictionaries and, finally, jointly learning sparse representations and reconstructions under varying sensing matrix conditions. We address both concerns by proposing a variant of the LISTA architecture. First, we introduce Augmented Dictionary Learning ISTA (A-DLISTA), which incorporates an augmentation module to adapt parameters to the current measurement setup. Then, we propose to learn a distribution over dictionaries via a variational approach, dubbed Variational Learning ISTA (VLISTA). VLISTA exploits A-DLISTA as the likelihood model and approximates a posterior distribution over the dictionaries as part of an unfolded LISTA-based recovery algorithm. As a result, VLISTA provides a probabilistic way to jointly learn the dictionary distribution and the reconstruction algorithm with varying sensing matrices. We provide theoretical and experimental support for our architecture and show that our model learns calibrated uncertainties.

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