Search Results for author: Vladislav Voroninski

Found 12 papers, 1 papers with code

Optimal Sample Complexity of Subgradient Descent for Amplitude Flow via Non-Lipschitz Matrix Concentration

no code implementations31 Oct 2020 Paul Hand, Oscar Leong, Vladislav Voroninski

We establish local convergence of subgradient descent with optimal sample complexity based on the uniform concentration of a random, discontinuous matrix-valued operator arising from the objective's gradient dynamics.

Compressive Phase Retrieval: Optimal Sample Complexity with Deep Generative Priors

no code implementations24 Aug 2020 Paul Hand, Oscar Leong, Vladislav Voroninski

Advances in compressive sensing provided reconstruction algorithms of sparse signals from linear measurements with optimal sample complexity, but natural extensions of this methodology to nonlinear inverse problems have been met with potentially fundamental sample complexity bottlenecks.

Compressive Sensing Retrieval

Nonasymptotic Guarantees for Spiked Matrix Recovery with Generative Priors

no code implementations NeurIPS 2020 Jorio Cocola, Paul Hand, Vladislav Voroninski

Many problems in statistics and machine learning require the reconstruction of a rank-one signal matrix from noisy data.

Deep Denoising: Rate-Optimal Recovery of Structured Signals with a Deep Prior

no code implementations ICLR 2019 Reinhard Heckel, Wen Huang, Paul Hand, Vladislav Voroninski

Deep neural networks provide state-of-the-art performance for image denoising, where the goal is to recover a near noise-free image from a noisy image.

Image Denoising

Phase Retrieval Under a Generative Prior

no code implementations NeurIPS 2018 Paul Hand, Oscar Leong, Vladislav Voroninski

Our formulation has provably favorable global geometry for gradient methods, as soon as $m = O(kd^2\log n)$, where $d$ is the depth of the network.

Retrieval

Rate-Optimal Denoising with Deep Neural Networks

no code implementations ICLR 2019 Reinhard Heckel, Wen Huang, Paul Hand, Vladislav Voroninski

Deep neural networks provide state-of-the-art performance for image denoising, where the goal is to recover a near noise-free image from a noisy observation.

Image Denoising

Global Guarantees for Enforcing Deep Generative Priors by Empirical Risk

no code implementations22 May 2017 Paul Hand, Vladislav Voroninski

We establish that in both cases, in suitable regimes of network layer sizes and a randomness assumption on the network weights, that the non-convex objective function given by empirical risk minimization does not have any spurious stationary points.

A Survey of Structure from Motion

no code implementations30 Jan 2017 Onur Ozyesil, Vladislav Voroninski, Ronen Basri, Amit Singer

The structure from motion (SfM) problem in computer vision is the problem of recovering the three-dimensional ($3$D) structure of a stationary scene from a set of projective measurements, represented as a collection of two-dimensional ($2$D) images, via estimation of motion of the cameras corresponding to these images.

Motion Estimation Simultaneous Localization and Mapping

ShapeFit and ShapeKick for Robust, Scalable Structure from Motion

no code implementations7 Aug 2016 Thomas Goldstein, Paul Hand, Choongbum Lee, Vladislav Voroninski, Stefano Soatto

We introduce a new method for location recovery from pair-wise directions that leverages an efficient convex program that comes with exact recovery guarantees, even in the presence of adversarial outliers.

The non-convex Burer-Monteiro approach works on smooth semidefinite programs

1 code implementation NeurIPS 2016 Nicolas Boumal, Vladislav Voroninski, Afonso S. Bandeira

Semidefinite programs (SDPs) can be solved in polynomial time by interior point methods, but scalability can be an issue.

Optimization and Control Numerical Analysis

Exact simultaneous recovery of locations and structure from known orientations and corrupted point correspondences

no code implementations16 Sep 2015 Paul Hand, Choongbum Lee, Vladislav Voroninski

This recovery theorem is based on a set of deterministic conditions that we prove are sufficient for exact recovery.

Translation

Cannot find the paper you are looking for? You can Submit a new open access paper.