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Non-Iterative Recovery from Nonlinear Observations using Generative Models

Computer Vision and Pattern Recognition (CVPR), 2022
Abstract

In this paper, we aim to estimate the direction of an underlying signal from its nonlinear observations following the semi-parametric single index model (SIM). Unlike conventional compressed sensing where the signal is assumed to be sparse, we assume that the signal lies in the range of an LL-Lipschitz continuous generative model with bounded kk-dimensional inputs. This is mainly motivated by the tremendous success of deep generative models in various real applications. Our reconstruction method is non-iterative (though approximating the projection step may use an iterative procedure) and highly efficient, and it is shown to attain the near-optimal statistical rate of order (klogL)/m\sqrt{(k \log L)/m}, where mm is the number of measurements. We consider two specific instances of the SIM, namely noisy 11-bit and cubic measurement models, and perform experiments on image datasets to demonstrate the efficacy of our method. In particular, for the noisy 11-bit measurement model, we show that our non-iterative method significantly outperforms a state-of-the-art iterative method in terms of both accuracy and efficiency.

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