On Exact and Robust Recovery for Plug-and-Play Compressed Sensing
In Plug-and-Play (PnP) algorithms, an off-the-shelf denoiser is used for image regularization. PnP yields state-of-the-art results, but its theoretical aspects are not well understood. This work considers the question: Similar to classical compressed sensing (CS), can we theoretically recover the gr...
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Zusammenfassung: | In Plug-and-Play (PnP) algorithms, an off-the-shelf denoiser is used for
image regularization. PnP yields state-of-the-art results, but its theoretical
aspects are not well understood. This work considers the question: Similar to
classical compressed sensing (CS), can we theoretically recover the
ground-truth via PnP under suitable conditions on the denoiser and the sensing
matrix? One hurdle is that since PnP is an algorithmic framework, its solution
need not be the minimizer of some objective function. It was recently shown
that a convex regularizer $\Phi$ can be associated with a class of linear
denoisers such that PnP amounts to solving a convex problem involving $\Phi$.
Motivated by this, we consider the PnP analog of CS: minimize $\Phi(x)$ s.t.
$Ax=A\xi$, where $A$ is a $m\times n$ random sensing matrix, $\Phi$ is the
regularizer associated with a linear denoiser $W$, and $\xi$ is the
ground-truth. We prove that if $A$ is Gaussian and $\xi$ is in the range of
$W$, then the minimizer is almost surely $\xi$ if $rank(W)\leq m$, and almost
never if $rank(W)> m$. Thus, the range of the PnP denoiser acts as a signal
prior, and its dimension marks a sharp transition from failure to success of
exact recovery. We extend the result to subgaussian sensing matrices, except
that exact recovery holds only with high probability. For noisy measurements $b
= A \xi + \eta$, we consider a robust formulation: minimize $\Phi(x)$ s.t.
$\|Ax-b\|\leq\delta$. We prove that for an optimal solution $x^*$, with high
probability the distortion $\|x^*-\xi\|$ is bounded by $\|\eta\|$ and $\delta$
if the number of measurements is large enough. In particular, we can derive the
sample complexity of CS as a function of distortion error and success rate. We
discuss the extension of these results to random Fourier measurements, perform
numerical experiments, and discuss research directions stemming from this work. |
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DOI: | 10.48550/arxiv.2207.13031 |