Scampi: A Robust Approximate Message-Passing Framework for Compressive Imaging

J. Barbier, E. W. Tramel, & F. Krzakala

Scampi: A Robust Approximate Message-Passing Framework for Compressive Imaging
Visual comparison for some \(512 \times 512\) images: a zoom on the original image (left) is compared with the Scampi (center) and GrAMPA (right) reconstructions for different settings, all with a fixed SNIPE prior parameter \(\omega = 0\). From top to bottom are peppers at \(\alpha =0.1\) for an ISNR of 20dB, Lena at \(\alpha =0.5\) for an ISNR of 40dB, Barbara at \(\alpha =0.5\) for an ISNR of 30dB and phantom at \(\alpha =0.1\) for an ISNR of 20dB.

Astract

Reconstruction of images from noisy linear measurements is a core problem in image processing, for which convex optimization methods based on total variation (TV) minimization have been the long-standing state-of-the-art. We present an alternative probabilistic reconstruction procedure based on approximate message-passing, Scampi, which operates in the compressive regime, where the inverse imaging problem is underdetermined. While the proposed method is related to the recently proposed GrAMPA algorithm of Borgerding, Schniter, and Rangan, we further develop the probabilistic approach to compressive imaging by introducing an expectation-maximization learning of model parameters, making the Scampi robust to model uncertainties. Additionally, our numerical experiments indicate that Scampi can provide reconstruction performance superior to both GrAMPA as well as convex approaches to TV reconstruction. Finally, through exhaustive best-case experiments, we show that in many cases the maximal performance of both Scampi and convex TV can be quite close, even though the approaches are a priori distinct. The theoretical reasons for this correspondence remain an open question. Nevertheless, the proposed algorithm remains more practical, as it requires far less parameter tuning to perform optimally.

BibTeX

    conference{btk2015,
        Author = {Jean Barbier and Eric W. Tramel and Florent Krzakala},
        Booktitle = {Proc. Int. Mtg. on High-Dimensional Data Driven Science (HD\textasciicircum 3)},
        Title = {Scampi: a robust approximate message-passing framework for compressive imaging},
        Year = {2015}}
    
rss facebook twitter github gitlab youtube mail spotify lastfm instagram linkedin google google-plus pinterest medium googlescholar cv vimeo stackoverflow reddit quora quora