GAN-based Projector for Faster Recovery in Compressed Sensing with Convergence Guarantees

A Generative Adversarial Network (GAN) with generator trained to model the prior of images has been shown to perform better than sparsity-based regularizers in ill-posed inverse problems. In this work, we propose a new method of deploying a GAN-based prior to solve linear inverse problems using projected gradient descent (PGD). Our method learns a network-based projector for use in the PGD algorithm, eliminating the need for expensive computation of the Jacobian of . Experiments show that our approach provides a speed-up of over earlier GAN-based recovery methods for similar accuracy in compressed sensing. Our main theoretical result is that if the measurement matrix is moderately conditioned for range() and the projector is -approximate, then the algorithm is guaranteed to reach reconstruction error in steps in the low noise regime. Additionally, we propose a fast method to design such measurement matrices for a given . Extensive experiments demonstrate the efficacy of this method by requiring fewer measurements than random Gaussian measurement matrices for comparable recovery performance.
View on arXiv