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Dive into the research topics where Vladislav Voroninski is active.

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Featured researches published by Vladislav Voroninski.


Siam Review | 2015

Phase Retrieval via Matrix Completion

Emmanuel J. Candès; Yonina C. Eldar; Thomas Strohmer; Vladislav Voroninski

This paper develops a novel framework for phase retrieval, a problem which arises in X-ray crystallography, diffraction imaging, astronomical imaging, and many other applications. Our approach, called PhaseLift, combines multiple structured illuminations together with ideas from convex programming to recover the phase from intensity measurements, typically from the modulus of the diffracted wave. We demonstrate empirically that a complex-valued object can be recovered from the knowledge of the magnitude of just a few diffracted patterns by solving a simple convex optimization problem inspired by the recent literature on matrix completion. More importantly, we also demonstrate that our noise-aware algorithms are stable in the sense that the reconstruction degrades gracefully as the signal-to-noise ratio decreases. Finally, we introduce some theory showing that one can design very simple structured illumination patterns such that three diffracted figures uniquely determine the phase of the object we wish to...


Siam Journal on Mathematical Analysis | 2013

SPARSE SIGNAL RECOVERY FROM QUADRATIC MEASUREMENTS VIA CONVEX PROGRAMMING

Xiaodong Li; Vladislav Voroninski

In this paper we consider a system of quadratic equations | |^2 = b_j, j = 1, ..., m, where x in R^n is unknown while normal random vectors z_j in R_n and quadratic measurements b_j in R are known. The system is assumed to be underdetermined, i.e., m < n. We prove that if there exists a sparse solution x, i.e., at most k components of x are non-zero, then by solving a convex optimization program, we can solve for x up to a multiplicative constant with high probability, provided that k <= O((m/log n)^(1/2)). On the other hand, we prove that k <= O(log n (m)^(1/2)) is necessary for a class of naive convex relaxations to be exact.


Communications on Pure and Applied Mathematics | 2013

PhaseLift: Exact and Stable Signal Recovery from Magnitude Measurements via Convex Programming

Emmanuel J. Candès; Thomas Strohmer; Vladislav Voroninski


arXiv: Mathematical Physics | 2013

Determination of all pure quantum states from a minimal number of observables

Damien Mondragon; Vladislav Voroninski


arXiv: Information Theory | 2016

An Elementary Proof of Convex Phase Retrieval in the Natural Parameter Space via the Linear Program PhaseMax.

Paul Hand; Vladislav Voroninski


conference on learning theory | 2018

Global Guarantees for Enforcing Deep Generative Priors by Empirical Risk

Paul Hand; Vladislav Voroninski


arXiv: Information Theory | 2016

Compressed Sensing from Phaseless Gaussian Measurements via Linear Programming in the Natural Parameter Space.

Paul Hand; Vladislav Voroninski


arXiv: Information Theory | 2016

Corruption Robust Phase Retrieval via Linear Programming.

Paul Hand; Vladislav Voroninski


arXiv: Mathematical Physics | 2013

Quantum Tomography From Few Full-Rank Observables.

Vladislav Voroninski


Communications on Pure and Applied Mathematics | 2018

ShapeFit: Exact Location Recovery from Corrupted Pairwise Directions

Paul Hand; Choongbum Lee; Vladislav Voroninski

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Choongbum Lee

Massachusetts Institute of Technology

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Wen Huang

Université catholique de Louvain

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Yonina C. Eldar

Technion – Israel Institute of Technology

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