Stochastic Orthogonal Regularization for deep projective priors
Journal:
arXiv
Published Date:
May 19, 2025
Abstract
Many crucial tasks of image processing and computer vision are formulated as
inverse problems. Thus, it is of great importance to design fast and robust
algorithms to solve these problems. In this paper, we focus on generalized
projected gradient descent (GPGD) algorithms where generalized projections are
realized with learned neural networks and provide state-of-the-art results for
imaging inverse problems. Indeed, neural networks allow for projections onto
unknown low-dimensional sets that model complex data, such as images. We call
these projections deep projective priors. In generic settings, when the
orthogonal projection onto a lowdimensional model set is used, it has been
shown, under a restricted isometry assumption, that the corresponding
orthogonal PGD converges with a linear rate, yielding near-optimal convergence
(within the class of GPGD methods) in the classical case of sparse recovery.
However, for deep projective priors trained with classical mean squared error
losses, there is little guarantee that the hypotheses for linear convergence
are satisfied. In this paper, we propose a stochastic orthogonal regularization
of the training loss for deep projective priors. This regularization is
motivated by our theoretical results: a sufficiently good approximation of the
orthogonal projection guarantees linear stable recovery with performance close
to orthogonal PGD. We show experimentally, using two different deep projective
priors (based on autoencoders and on denoising networks), that our stochastic
orthogonal regularization yields projections that improve convergence speed and
robustness of GPGD in challenging inverse problem settings, in accordance with
our theoretical findings.