English

PhaseCode: Fast and Efficient Compressive Phase Retrieval based on Sparse-Graph-Codes

Information Theory 2017-04-03 v2 math.IT

Abstract

We consider the problem of recovering a KK-sparse complex signal xx from mm intensity measurements. We propose the PhaseCode algorithm, and show that in the noiseless case, PhaseCode can recover an arbitrarily-close-to-one fraction of the KK non-zero signal components using only slightly more than 4K4K measurements when the support of the signal is uniformly random, with order-optimal time and memory complexity of Θ(K)\Theta(K). It is known that the fundamental limit for the number of measurements in compressive phase retrieval problem is 4Ko(K)4K - o(K) to recover the signal exactly and with no assumptions on its support distribution. This shows that under mild relaxation of the conditions, our algorithm is the first constructive \emph{capacity-approaching} compressive phase retrieval algorithm: in fact, our algorithm is also order-optimal in complexity and memory. Next, motivated by some important practical classes of optical systems, we consider a Fourier-friendly constrained measurement setting, and show that its performance matches that of the unconstrained setting. In the Fourier-friendly setting that we consider, the measurement matrix is constrained to be a cascade of Fourier matrices and diagonal matrices. We further demonstrate how PhaseCode can be robustified to noise. Throughout, we provide extensive simulation results that validate the practical power of our proposed algorithms for the sparse unconstrained and Fourier-friendly measurement settings, for noiseless and noisy scenarios. A key contribution of our work is the novel use of coding-theoretic tools like density evolution methods for the design and analysis of fast and efficient algorithms for compressive phase-retrieval problems.

Keywords

Cite

@article{arxiv.1408.0034,
  title  = {PhaseCode: Fast and Efficient Compressive Phase Retrieval based on Sparse-Graph-Codes},
  author = {Ramtin Pedarsani and Dong Yin and Kangwook Lee and Kannan Ramchandran},
  journal= {arXiv preprint arXiv:1408.0034},
  year   = {2017}
}

Comments

To appear in IEEE Transactions on Information Theory

R2 v1 2026-06-22T05:18:01.991Z