Robust recovery of complex exponential signals from random Gaussian projections via low rank Hankel matrix reconstruction

03/10/2015
by   Jian-Feng Cai, et al.
0

This paper explores robust recovery of a superposition of R distinct complex exponential functions from a few random Gaussian projections. We assume that the signal of interest is of 2N-1 dimensional and R<<2N-1. This framework covers a large class of signals arising from real applications in biology, automation, imaging science, etc. To reconstruct such a signal, our algorithm is to seek a low-rank Hankel matrix of the signal by minimizing its nuclear norm subject to the consistency on the sampled data. Our theoretical results show that a robust recovery is possible as long as the number of projections exceeds O(R^2N). No incoherence or separation condition is required in our proof. Our method can be applied to spectral compressed sensing where the signal of interest is a superposition of R complex sinusoids. Compared to existing results, our result here does not need any separation condition on the frequencies, while achieving better or comparable bounds on the number of measurements. Furthermore, our method provides theoretical guidance on how many samples are required in the state-of-the-art non-uniform sampling in NMR spectroscopy. The performance of our algorithm is further demonstrated by numerical experiments.

READ FULL TEXT
research
04/30/2013

Robust Spectral Compressed Sensing via Structured Matrix Completion

The paper explores the problem of spectral compressed sensing, which aim...
research
01/27/2020

Compressed Sensing with 1D Total Variation: Breaking Sample Complexity Barriers via Non-Uniform Recovery

This paper investigates total variation minimization in one spatial dime...
research
09/26/2022

Uniform Exact Reconstruction of Sparse Signals and Low-rank Matrices from Phase-Only Measurements

The reconstruction of low-complexity, particularly sparse signal from ph...
research
09/07/2020

Compressed Sensing with 1D Total Variation: Breaking Sample Complexity Barriers via Non-Uniform Recovery (iTWIST'20)

This paper investigates total variation minimization in one spatial dime...
research
06/18/2022

Bioinspired random projections for robust, sparse classification

Inspired by the use of random projections in biological sensing systems,...
research
12/01/2014

Classification and Reconstruction of High-Dimensional Signals from Low-Dimensional Features in the Presence of Side Information

This paper offers a characterization of fundamental limits on the classi...
research
04/06/2016

Hankel Matrix Nuclear Norm Regularized Tensor Completion for N-dimensional Exponential Signals

Signals are generally modeled as a superposition of exponential function...

Please sign up or login with your details

Forgot password? Click here to reset